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    30 March 2025, Volume 7 Issue 2
    Topic--Development and Application of the Big Data Platform for Grain Production
    Grain Production Big Data Platform: Progress and Prospects | Open Access
    YANG Guijun, ZHAO Chunjiang, YANG Xiaodong, YANG Hao, HU Haitang, LONG Huiling, QIU Zhengjun, LI Xian, JIANG Chongya, SUN Liang, CHEN Lei, ZHOU Qingbo, HAO Xingyao, GUO Wei, WANG Pei, GAO Meiling
    2025, 7(2):  1-12.  doi:10.12133/j.smartag.SA202409014
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    [Significance] The explosive development of agricultural big data has accelerated agricultural production into a new era of digitalization and intelligentialize. Agricultural big data is the core element to promote agricultural modernization and the foundation of intelligent agriculture. As a new productive forces, big data enhances the comprehensive intelligent management decision-making during the whole process of grain production. But it faces the problems such as the indistinct management mechanism of grain production big data resources, the lack of the full-chain decision-making algorithm system and big data platform for the whole process and full elements of grain production. [Progress] Grain production big data platform is a comprehensive service platform that uses modern information technologies such as big data, Internet of Things (IoT), remote sensing and cloud computing to provide intelligent decision-making support for the whole process of grain production based on intelligent algorithms for data collection, processing, analysis and monitoring related to grain production. In this paper, the progress and challenges in grain production big data, monitoring and decision-making algorithms are reviewed, as well as big data platforms in China and worldwide. With the development of the IoT and high-resolution multi-modal remote sensing technology, the massive agricultural big data generated by the "Space-Air-Ground" Integrated Agricultural Monitoring System, has laid an important foundation for smart agriculture and promoted the shift of smart agriculture from model-driven to data-driven. However, there are still some issues in field management decision-making, such as the requirements for high spatio-temporal resolution and timeliness of the information are difficult to meet, and the algorithm migration and localization methods based on big data need to be studied. In addition, the agricultural machinery operation and spatio-temporal scheduling algorithm based on remote sensing and IoT monitoring information to determine the appropriate operation time window and operation prescription, needs to be further developed, especially the cross-regional scheduling algorithm of agricultural machinery for summer harvest in China. Aiming to address the issues of non-bi-connected monitoring and decision-making algorithms in grain production, as well as the insufficient integration of agricultural machinery and information perception, a framework for the grain production big data intelligent platform based on digital twins is proposed. The platform leverages multi-source heterogeneous grain production big data and integrates a full-chain suit of standardized algorithms, including data acquisition, information extraction, knowledge map construction, intelligent decision-making, full-chain collaboration of agricultural machinery operations. It covers the typical application scenarios such as irrigation, fertilization, pests and disease management, emergency response to drought and flood disaster, all enabled by digital twins technology. [Conclusions and Prospects] The suggestions and trends for development of grain production big data platform are summarized in three aspects: (1) Creating an open, symbiotic grain production big data platform, with core characteristics such as open interface for crop and environmental sensors, maturity grading and a cloud-native packaging mechanism for core algorithms, highly efficient response to data and decision services; (2) Focusing on the typical application scenarios of grain production, take the exploration of technology integration and bi-directional connectivity as the base, and the intelligent service as the soul of the development path for the big data platform research; (3) The data-algorithm-service self-organizing regulation mechanism, the integration of decision-making information with the intelligent equipment operation, and the standardized, compatible and open service capabilities, can form the new quality productivity to ensure food safety, and green efficiency grain production.

    Analysis of the Spatial Temporal Evolution Pattern and Influencing Factors of Grain Production in Sichuan Province of China | Open Access
    ZHENG Ling, MA Qianran, JIANG Tao, LIU Xiaojing, MOU Jiahui, WANG Canhui, LAN Yu
    2025, 7(2):  13-25.  doi:10.12133/j.smartag.SA202411013
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    [Objective] Sichuan province, recognized as a strategic core region for China's food security, exhibits spatiotemporal dynamics in grain production that have significant implications for regional resource allocation and national food strategies. Previous studies have primarily focused on spatial dimension of grain production, treating temporal and spatial characteristics separately. This approach neglected the non-stationary effects of time and failed to integrate the evolution patterns of time and space in a coherent manner. Consequently, the interrelationship between the temporal evolution and spatial distribution of grain production was not fully elucidated. A spatiotemporal integrated analysis framework along with a method for extracting spatiotemporal features was proposed in this study. The objective is to elucidate the spatial pattern temporal variations in Sichuan province, thereby providing a scientific basis for regional food security management. [Methods] The study was based on county-level panel data of Sichuan province spanning the years 2000 to 2019. Multiple spatiotemporal analysis techniques were employed to comprehensively examine the evolution of grain production and to identify its driving mechanisms. Initially, standard deviation ellipse analysis and the centroid migration trajectory model were applied to assess the spatial distribution of major grain-producing areas and their temporal migration trends. This analysis enabled the identification of spatial agglomeration patterns and the direction of change in grain production. Subsequently, a three-dimensional spatiotemporal framework was constructed based on the space-time cube model. This framework integrated both temporal and spatial information. Hotspot analysis and the local Moran's I statistic were then utilized to systematically identify the distribution of cold and hot spots as well as spatial clustering patterns in county-level grain output. This approach revealed the spatiotemporal hotspots, clustering characteristics, and the evolving trends of grain production over time. Finally, a spatiotemporal geographically weighted regression model was employed to quantitatively assess the influence of various factors on grain production. These factors included natural elements (such as topography, climate, and soil properties), agricultural factors (such as the total sown area, mechanization level, and irrigation conditions), economic factors (such as per capita gross domestic product and rural per capita disposable income), and human factors (such as rural population and nighttime light intensity). The analysis elucidated the spatial heterogeneity and evolution of the principal driving forces affecting grain production in the province. [Results and Discussions] A high-yield core area was established on the eastern Sichuan plain, with its spatial distribution exhibiting a pronounced northeast-southwest orientation. The production centroid consistently remained near Lezhi County, although it experienced significant shifts during the periods 2000-2001 and 2009-2010. In contrast, the grain production levels in the western Sichuan plateau and the central hilly regions were relatively low. Over the past two decades, the province demonstrated seven distinct patterns in the distribution of cold and hot spots and three clustering patterns in grain production. Specifically, grain output on the Chengdu Plain continuously increased, the decline in production on the western plateau decelerated, and production in the central region consistently decreased. Approximately 64.77% of the province exhibited potential for increased production, particularly in the western region, where improvements in natural conditions and the gradual enhancement of agricultural infrastructure contributed to significant yield growth potential. Conversely, roughly 16.93% of the areas, characterized by complex topography and limited resources, faced potential yield reductions due to resource scarcity and restrictive cultivation conditions. The analysis further revealed that agricultural factors served as the dominant determinants influencing the spatiotemporal characteristics of grain production. In this regard, the total sown area and the area of cultivated land acted as positive contributors. Natural factors, including slope, soil pH, and annual sunshine duration, exerted negative effects. Although human and economic factors had relatively minor influences, indicators such as population density and nighttime light intensity also played a moderating role in regional grain production. The maintenance of agricultural land area proved crucial in safeguarding and enhancing grain yields, while improvements in natural resource conditions further bolstered production capacity. These findings underscored the inherent spatiotemporal disparities in grain production within Sichuan province and revealed the impact of agricultural resource allocation, environmental conditions, and policy support on the heterogeneity of spatial production changes. [Conclusions] The proposed spatiotemporal integrated analysis framework provided a novel perspective for elucidating the dynamic evolution and driving mechanisms of grain production in Sichuan province. The findings demonstrated that the grain production pattern exhibited complex characteristics, including regional concentration, dynamic spatiotemporal evolution, and the interplay of multiple factors. Based on these results, future policies should emphasize the construction of high-standard farmland, the promotion of precision agriculture technologies, and the rational adjustment of agricultural resource allocation. Such measures are intended to enhance agricultural production efficiency and to improve the regional eco-agricultural system. Ultimately, these recommendations aim to furnish both theoretical support and practical guidance for the establishment of a stable and efficient grain production system and for advancing the development of Sichuan province as a key granary.

    Knowledge Graph Driven Grain Big Data Applications: Overview and Perspective | Open Access
    YANG Chenxue, LI Xian, ZHOU Qingbo
    2025, 7(2):  26-40.  doi:10.12133/j.smartag.SA202501004
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    [Significance] Grain production spans multiple stages and involves numerous heterogeneous factors, including agronomic inputs, natural resources, environmental conditions, and socio-economic variables. However, the associated data generated throughout the entire production process, ranging from cultivation planning to harvest evaluation, remains highly fragmented, unstructured, and semantically diverse. This complexity data, combined with the lack of integrated core algorithms to support decision-making, has severely limited the potential of big data to drive innovation in grain production. Knowledge graph technology, by offering structured and semantically-rich representations of complex data, enables the integration of multi-source and heterogeneous data, enhances semantic mining and reasoning capabilities, and provides intelligent, knowledge-driven support for sustainable grain production, thereby addressing these challenges effectively. [Progress] This paper systematically reviewed the current research and application progress of knowledge graphs in the grain production big data. A comprehensive knowledge graph driven framework was proposed based on a hybrid paradigm combining data-driven modeling and domain knowledge guidance to support the entire grain production lifecycle and addressed three primary dimensions of data complexity: Structural diversity, relational heterogeneity, and semantic ambiguity. The key techniques of constructing multimodal knowledge map and temporal reasoning for grain production were described. First, an agricultural ontology system for grain production was designed, incorporating domain-specific concepts, hierarchical relationships, and attribute constraints. This ontology provided the semantic foundation for knowledge modeling and alignment. Second, multimodal named entity recognition (NER) techniques were employed to extract entities such as crops, varieties, weather conditions, operations, and equipment from structured and unstructured data sources, including satellite imagery, agronomic reports, Internet of Things sensor data, and historical statistics. Advanced deep learning models, such as bidirectional encoder representations from transformers (BERT) and vision-language transformers, were used to enhance recognition accuracy across text and image modalities. Third, the system implemented multimodal entity linking and disambiguation, which connected identical or semantically similar entities across different data sources by leveraging graph embeddings, semantic similarity measures, and rule-based matching. Finally, temporal reasoning modules were constructed using temporal knowledge graphs and logical rules to support dynamic inference over time-sensitive knowledge, such as crop growth stages, climate variations, and policy interventions. The proposed knowledge graph driven system enabled the development of intelligent applications across multiple stages of grain production. In the pre-production stage, knowledge graphs supported decision-making in resource allocation, crop variety selection, and planting schedule optimization based on past data patterns and predictive inference. During the in-production stage, the system facilitated precision operations, such as real-time fertilization and irrigation by reasoning over current field status, real-time sensor inputs, and historical trends. In the post-production stage, it enabled yield assessment and economic evaluation through integration of production outcomes, environmental factors, and policy constraints. [Conclusions and Prospects] Knowledge graph technologies offer a scalable and semantically-enhanced approach for unlocking the full potential of grain production big data. By integrating heterogeneous data sources, representing domain knowledge explicitly, and supporting intelligent reasoning, knowledge graphs can provide visualization, explainability, and decision support across various spatial scales, including national, provincial, county-level, and large-scale farm contexts. These technologies are of great scientific and practical significance in supporting China's national food security strategy and advancing the goals of storing grain in the land and storing grain in technology. Future directions include the construction of cross-domain agricultural knowledge fusion systems, dynamic ontology evolution mechanisms, and federated knowledge graph platforms for multi-region data collaboration under data privacy constraints.

    Graph Neural Networks for Knowledge Graph Construction: Research Progress, Agricultural Development Potential, and Future Directions | Open Access
    YUAN Huan, FAN Beilei, YANG Chenxue, LI Xian
    2025, 7(2):  41-56.  doi:10.12133/j.smartag.SA202501007
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    [Significance] Graph neural networks (GNN) have emerged as a powerful tool in the realm of data analysis, particularly in knowledge graph construction. By capitalizing on the interaction and message passing among nodes in a graph, GNN can capture intricate relationships, making them widely applicable in various tasks, including knowledge representation, extraction, fusion, and inference. In the context of agricultural knowledge graph (AKG) development and knowledge service application, however, the agricultural domain presents unique challenges. These challenges encompass data with high multi-source heterogeneity, dynamic spatio-temporal changes in knowledge, complex relationships, and stringent requirements for interpretability. Given its strengths in graph structure data modeling, GNNs hold great promise in addressing these difficulties. For instance, in agricultural data, information from weather sensors, soil monitoring devices, and historical crop yield records varies significantly in format and type, and the ability of GNNs to handle such heterogeneity becomes crucial. [Progress] Firstly, this paper provides a comprehensive overview of the representation methods and fundamental concepts of GNNs was presented. The main structures, basic principles, characteristics, and application directions of five typical GNN models were discussed, including recursive graph neural networks (RGNN), convolutional graph neural networks (CGNN), graph auto-encoder networks (GAE), graph attention networks (GAT), and spatio-temporal graph neural networks(STGNN). Each of these models has distinct advantages in graph feature extraction, which are leveraged for tasks such as dynamic updates, knowledge completion, and complex relationship modeling in knowledge graphs. For example, STGNNs are particularly adept at handling the time-series and spatial data prevalent in agriculture, enabling more accurate prediction of crop growth patterns. Secondly, how GNN utilize graph structure information and message passing mechanisms to address issues in knowledge extraction related to multi-source heterogeneous data fusion and knowledge representation was elucidated. It can enhance the capabilities of entity recognition disambiguation and multi-modal data entity recognition. For example, when dealing with both textual descriptions of agricultural pests and corresponding image data, GNNs can effectively integrate these different modalities to accurately identify the pests. It also addresses the tasks of modeling complex dependencies and long-distance relationships or multi-modal relation extraction, achieving precise extraction of complex, missing information, or multi-modal events. Furthermore, GNNs possess unique characteristics, such as incorporating node or subgraph topology information, learning deep hidden associations between entities and relationships, generating low-dimensional representations encoding structure and semantics, and learning or fusing iterative non-linear neighborhood feature relationships on the graph structure, make it highly suitable for tasks like entity prediction, relation prediction, denoising, and anomaly information inference. These applications significantly enhance the construction quality of knowledge graphs. In an agricultural setting, this means more reliable predictions of disease outbreaks based on the relationships between environmental factors and crop health. Finally, in-depth analyses of typical cases of intelligent applications based on GNNs in agricultural knowledge question answering, recommendation systems, yield prediction, and pest monitoring and early warning are conducted. The potential of GNNs for constructing temporal agricultural knowledge models is explored, and its ability to adapt to the changing nature of agricultural data over time is highlighted. [Conclusions and Prospects] Research on constructing AKGs using GNNs is in its early stages. Future work should focus on key technologies like deep multi-source heterogeneous data fusion, knowledge graph evolution, scenario-based complex reasoning, and improving interpretability and generalization. GNN-based AKGs are expected to take on professional roles such as virtual field doctors and agricultural experts. Applications in pest control and planting decisions will be more precise, and intelligent tools like smart agricultural inputs and encyclopedia retrieval systems will be more comprehensive. By representing and predicting entities and relationships in agriculture, GNN-based AKGs can offer efficient knowledge services and intelligent solutions for sustainable agricultural development.

    Research Progress on Remote Sensing Monitoring and Intelligent Decision-Making Algorithms for Rice Production | Open Access
    ZHAO Bingting, HUA Chuanhai, YE Chenyang, XIONG Yuchun, QIAN Tao, CHENG Tao, YAO Xia, ZHENG Hengbiao, ZHU Yan, CAO Weixing, JIANG Chongya
    2025, 7(2):  57-72.  doi:10.12133/j.smartag.SA202501002
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    [Significance] Rice is a staple food crop worldwide, and ccurate monitoring of its growth is crucial for global food security. Remote sensing serves as a powerful tool in modern agriculture. By integrating remote sensing with intelligent decision-making algorithms, farmers can achieve more precise and sustainable rice cultivation. To provide actionable insights and guidance for researchers in this field, this review examines the latest advancements in remote sensing and smart algorithms for rice farming, while addressing current challenges and future trends. [Progress] Currently, remote sensing-based monitoring systems for rice production have been comprehensively implemented across the entire production cycle. For planting distribution identification, optical remote sensing and synthetic aperture radar (SAR) technologies complement each other to enhance accuracy through data fusion. Regarding growth period monitoring, a robust technical framework has been established, incorporating the empirical threshold method, shape model approach, and machine learning classification techniques. Dynamic evaluation of growth status is enabled by constructing correlation models between remote sensing features and biophysical parameters. Disaster monitoring systems provide rapid responses to various natural disasters. Yield and quality predictions integrate crop models, remote sensing data, and machine learning algorithms. Intelligent decision-making algorithms are deeply embedded in all stages of rice production. For instance, during planting planning, the integration of geographic information systems (GIS) and multi-criteria evaluation methods facilitates regional suitability assessments and farm-level quantitative designs. In topdressing management, nitrogen-based intelligent algorithms have significantly improved fertilization precision. Irrigation optimization achieves water conservation and emission reduction by synthesizing soil moisture and meteorological data. Finally, precise pesticide application prescriptions are generated using remote sensing and unmanned aerial vehicle (UAV) technologies. [Conclusions and Prospects] Despite significant progress, current research faces persistent challenges, including difficulties in multi-source data fusion, complexities in acquiring prior knowledge, insufficient model standardization, and barriers to large-scale technology implementation. Future efforts should prioritize the following six directions: (1) Technological innovation: Advance collaborative analysis of multi-source remote sensing data, design optimized data fusion algorithms, and construct an integrated air-space-ground monitoring network; (2) Intelligent algorithms: Explore cutting-edge techniques such as generative adversarial networks (GANs) and federated learning to enhance model adaptability across diverse environments; (3) Research scale: Establish a global rice growth monitoring system and develop multi-factor coupling models to assess climate change impacts; (4) Technology dissemination: Strengthen demonstration projects, reduce equipment costs, and cultivate interdisciplinary professionals; (5) Standards and protocols: Promote internationally unified standards for monitoring and decision - making frameworks; (6) System integration: Leverage technologies such as digital twins and blockchain to develop smart agriculture platforms for end-to-end intelligent management. Through multi-dimensional innovation, these advancements will significantly elevate the intelligence of rice production, offering robust support for global food security and sustainable agricultural development.

    Bi-Intentional Modeling and Knowledge Graph Diffusion for Rice Variety Selection and Breeding Recommendation | Open Access
    QIAO Lei, CHEN Lei, YUAN Yuan
    2025, 7(2):  73-80.  doi:10.12133/j.smartag.SA202412025
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    [Objective] Selection of rice varieties requires consideration of several factors, such as yield, fertility, disease resistance and resistance to downfall. In order to meet the user's rice variety selection needs, help users quickly access to the rice varieties they need, improve efficiency, and further promote the informatization and intelligence of rice breeding work, the bi-intentional modeling and knowledge graph diffusion model, an advanced method was proposed. [Methods] The research work was mainly carried out at two levels: Data and methodology. At the data level, considering the current lack of relevant data support for rice variety selection and breeding recommendation, a certain amount of recommendation dataset was constructed. The rice variety selection recommendation dataset consisted of two parts: Interaction data and knowledge graph. For the interaction data, the rice varieties that had been planted in the region were collected on a region-by-region basis, and then a batch of users was simulated and generated from the region. The corresponding rice varieties were assigned to the generated users according to the random sampling method to construct the user-item interaction data. For the knowledge graph, detailed text descriptions of rice varieties were first collected, and then information was extracted from them to construct data in ternary format from multiple varietal characteristics, such as selection unit, varietal category, disease resistance, and cold tolerance. At the methodological level, a model of bi-intentional modeling and knowledge graph diffusion (BMKGD) was proposed. The intent factor in the interaction behavior and the denoising process of the knowledge graph were both taken into account by the BMKGD model. Intentions were usually considered from two perspectives: individual independence and conformity. A dual intent space was chosen to be built by the model to represent both perspectives. For the problem of noisy data in the knowledge graph, denoising was carried out by combining the idea of the diffusion model. Random noise was introduced to destroy the original structure when the knowledge graph was initialized, and the original structure was restored through iterative learning. The denoising was completed in this process. After that, cross-view contrastive learning was carried out in both views. [Results and Discussions] The method proposed achieved optimal performance in the rice variety selection dataset, with recall and normalized discounted cumulative gain (NDCG) values improved by 2.9% and 3.7% compared to the suboptimal model. The performance improvement validated the effectiveness of the method to some extent, indicating that the BMKGD model was more suitable for rice variety recommendation. The Recall value of the BMKGD model on the rice variety selection dataset was 0.327 6, meeting the basic requirements of the recommendation system. The analysis revealed that the collaborative signals in the interaction data played a major role, while the quality of the constructed knowledge graph still had some room for improvement. The module variants with key components removed all exhibited a decrease in performance compared to the original model, which validated the effectiveness of the modules. The performance degradation of the model variants with each component removed varied, indicating that different components played different roles. The performance drop of the model variant with the cross-view contrastive learning module removed was small, indicating that there was some room for improvement in the module to fully utilize the collaborative relationship between the two views. Conclusions The BMKGD model proposed in this paper achieves good performance on the rice variety selection dataset and accomplishes the recommendation task well. It shows that the model can be used to support the rice variety selection and breeding work and help users to select suitable rice varieties.

    Extracting Method of the Cultivation Aera of Rice Based on Sentinel-1/2 and Google Earth Engine (GEE): A Case Study of the Hangjiahu Plain | Open Access
    E Hailin, ZHOU Decheng, LI Kun
    2025, 7(2):  81-94.  doi:10.12133/j.smartag.SA202502003
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    [Objective] Accurate monitoring of rice planting areas is vital for ensuring national food security, evaluating greenhouse gas emissions, optimizing water resource allocation, and maintaining agricultural ecosystems. In recent years, the integration of remote sensing technologies—particularly the fusion of optical and synthetic aperture radar (SAR) data—has significantly enhanced the capacity to monitor crop distribution, even under challenging weather conditions. However, many current studies still rely heavily on phenological features captured at specific key stages, such as the transplanting phase, while overlooking the complete temporal dynamics of vegetation and water-related indices throughout the entire rice growth cycle. There is an urgent need for a method that fully leverages the time-series characteristics of remote sensing indices to enable accurate, scalable, and timely rice mapping. [Methods] Focusing on the Hangjiahu Plain, a typical rice-growing region in eastern China, a novel approach—dynamic NDVI-SDWI Fusion method for rice mapping (DNSF-Rice) was proposed in this research to accurately extract rice planting areas by synergistically integrating Sentinel-1 SAR and Sentinel-2 optical imagery on the google earth engine (GEE) platform. The methodological framework included the following three steps: First, using Sentinel-2 imagery, a time series of the normalized difference vegetation index (NDVI) was constructed. By analyzing its temporal dynamics across key rice growth stages, potential rice planting areas were identified through a threshold-based classification method; Second, a time series of the Sentinel-1 dual-polarized water index (SDWI) was generated to analyze its dynamic changes throughout the rice growth cycle. A thresholding algorithm was then applied to extract rice field distribution based on microwave data, considering the significant irrigation involved in rice cultivation; Finally, the spatial intersection of the NDVI-derived and SDWI-derived results was intersected to generate the final rice planting map. This step ensures that only pixels exhibiting both vegetation growth and irrigation signals were classified as rice. The classification datasets spanned five consecutive years from 2019 to 2023, with a spatial resolution of 10 m. [Results and Discussions] The proposed method demonstrated high accuracy and robust performance in mapping rice planting areas. Over the study period, the method achieved an overall accuracy of over 96% and an F1-Score exceeding 0.96, outperforming several benchmark products in terms of spatial consistency and precision. The integration of NDVI and SDWI time-series features enabled effective identification of rice fields, even under the challenging conditions of frequent cloud cover and variable precipitation typical in the study area. Interannual analysis revealed a consistent increase in rice planting areas across the Hangjiahu Plain from 2019 to 2023. The remote sensing-based rice area estimates were in strong agreement with official agricultural statistics, further validating the reliability of the proposed method. The fusion of optical and SAR data proved to be a valuable strategy, effectively compensating for the limitations inherent in single-source imagery, especially during the cloudy and rainy seasons when optical imagery alone was often insufficient. Furthermore, the use of GEE facilitated the rapid processing of large-scale time-series data, supporting the operational scalability required for regional rice monitoring. This study emphasized the critical importance of capturing the full temporal dynamics of both vegetation and water signals throughout the entire rice growth cycle, rather than relying solely on fixed phenological stages. [Conclusions] By leveraging the complementary advantages of optical and SAR imagery and utilizing the complete time-series behavior of NDVI and SDWI indices, the proposed approach successfully mapped rice planting areas across a complex monsoon climate region over a five-year period. The method has been proven to be stable, reproducible, and adaptable for large-scale agricultural monitoring applications.

    Extraction Method of Maize Plant Skeleton and Phenotypic Parameters Based on Improved YOLOv11-Pose | Open Access
    NIU Ziang, QIU Zhengjun
    2025, 7(2):  95-105.  doi:10.12133/j.smartag.SA202501001
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    [Objective] Accurate extraction of maize plant skeletons and phenotypic parameters is fundamental for acquisition of plant growth data, morphological analysis, and agricultural management. However, leaf occlusion and complex backgrounds in dense planting environments pose significant challenges to skeleton and parameters extraction. A maize plant skeleton and phenotypic parameters extraction method suitable for dense field environments was proposed in this research to enhance the extraction precision and efficiency, and provide technical support for maize growth data acquisition. [Methods] An improved YOLOv11-Pose multi-object keypoint detection network was introduced, a top-down detection framework was adopted to detect maize plant keypoints and reconstruct skeletons. A uniform sampling algorithm was used to design a keypoint representation method tailored for maize skeletons and optimize task adaptability. Additionally, a single-head self-attention mechanism and a convolutional block attention module were incorporated to guide the model's focus on occluded regions and connected parts, thereby improve its adaptability to complex scenarios. [Results and Discussion] In dense field maize environments, experimental results showed that when the number of uniformly sampled keypoints was set to 10, the Fréchet distance reached its minimum value of 79.008, effectively preserving the original skeleton's morphological features while avoiding the negative impact of redundant points. Under this configuration, the improved YOLOv11-Pose model achieved a bounding box detection precision of 0.717. The keypoint detection mAP50 and mAP50-95 improved by 10.9% and 23.8%, respectively, compared to the original model, with an inference time of 52.7 ms per image. The results demonstrated the model's superior performance and low computational cost in complex field environments, particularly in keypoint detection tasks with enhanced accuracy and robustness. The study further combined the results of skeleton extraction and spatial geometric information to achieve a plant height measurement mean average error (MAE) of 2.435 cm, the detection error of leaf age was less than one growth period, and the measurement error of leaf length was 3.482%, verifying the effectiveness and practicability of the proposed method in the application of phenotypic parameter measurement. [Conclusion] The proposed improved YOLOv11-Pose model can efficiently and accurately extract maize plant skeletons, meeting the demands of ground-based maize growth data acquisition. The research could provide technical support for phenotypic data acquisition in grain production and precision agricultural management.

    Improvement of HLM Modeling for Winter Wheat Yield Estimation Under Drought Conditions | Open Access
    ZHAO Peiqin, LIU Changbin, ZHENG Jie, MENG Yang, MEI Xin, TAO Ting, ZHAO Qian, MEI Guangyuan, YANG Xiaodong
    2025, 7(2):  106-116.  doi:10.12133/j.smartag.SA202408009
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    [Objective] Winter wheat yield is crucial for national food security and the standard of living of the population. Existing crop yield prediction models often show low accuracy under disaster-prone climatic conditions. This study proposed an improved hierarchical linear model (IHLM) based on a drought weather index reduction rate, aiming to enhance the accuracy of crop yield estimation under drought conditions. [Methods] HLM was constructed using the maximum enhanced vegetation index-2 (EVI2max), meteorological data (precipitation, radiation, and temperature from March to May), and observed winter wheat yield data from 160 agricultural survey stations in Shandong province (2018-2021). To validate the model's accuracy, 70% of the data from Shandong province was randomly selected for model construction, and the remaining data was used to validate the accuracy of the yield model. HLM considered the variation in meteorological factors as a key obstacle affecting crop growth and improved the model by calculating the relative meteorological factors. The calculation of relative meteorological factors helped reduce the impact of inter-annual differences in meteorological data. The accuracy of the HLM model was compared with that of the random forest (RF), Support Vector Regression (SVR), and Extreme Gradient Boosting (XGBoost) models. The HLM model provided more intuitive interpretation, especially suitable for processing hierarchical data, which helped capture the variability of winter wheat yield data under drought conditions. Therefore, a drought weather index reduction rate model from the agricultural insurance industry was introduced to further optimize the HLM model, resulting in the construction of the IHLM model. The IHLM model was designed to improve crop yield prediction accuracy under drought conditions. Since the precipitation differences between Henan and Shandong provinces were small, to test the transferability of the IHLM model, Henan province sample data was processed in the same way as in Shandong, and the IHLM model was applied to Henan province to evaluate its performance under different geographical conditions. [Results and Discussions] The accuracy of the HLM model, improved based on relative meteorological factors (rMF), was higher than that of RF, SVR, and XGBoost. The validation accuracy showed a Pearson correlation coefficient (r) of 0.76, a root mean squared error (RMSE) of 0.60 t/hm2, and a normalized RMSE (nRMSE) of 11.21%. In the drought conditions dataset, the model was further improved by incorporating the relationship between the winter wheat drought weather index and the reduction rate of winter wheat yield. After the improvement, the RMSE decreased by 0.48 t/hm2, and the nRMSE decreased by 28.64 percentage points, significantly enhancing the accuracy of the IHLM model under drought conditions. The IHLM model also demonstrated good applicability when transferred to Henan province. [Conclusions] The IHLM model developed in this study improved the accuracy and stability of crop yield predictions, especially under drought conditions. Compared to RF, SVR, and XGBoost models, the IHLM model was more suitable for predicting winter wheat yield. This research can be widely applied in the agricultural insurance field, playing a significant role in the design of agricultural insurance products, rate setting, and risk management. It enables more accurate predictions of winter wheat yield under drought conditions, with results that are closer to actual outcomes.

    Agricultural Drought Monitoring in Arid Irrigated Areas Based on TVDI Combined with ICEEMDAN-ARIMA Model | Open Access
    WEI Yuxin, LI Qiao, TAO Hongfei, LU Chunlei, LUO Xu, MAHEMUJIANG Aihemaiti, JIANG Youwei
    2025, 7(2):  117-131.  doi:10.12133/j.smartag.SA202502005
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    [Objective] Drought, one of the most frequent natural disasters globally, is characterized by its extensive impact area, prolonged duration, and significant harm. Large scale irrigation areas, as important pillars of China's agricultural economy, often have their benefits severely restricted by drought disasters. Therefore, quickly and accurately grasping the regional drought situation is of great significance. It can not only effectively improve the utilization efficiency of water resources and reduce agricultural production losses but also promote the sustainable development of regional agriculture. [Methods] The Santun river irrigation area in Xinjiang, an arid - zone irrigation area, was taken as an research object. Based on Landsat TM/ETM+/OLI_TIRS series data, the temperature vegetation drought index (TVDI) and the vegetation temperature condition index (VTCI) were calculated. Using in situ the soil water content of the 0-10 cm soil layer in the study area measured by the Smart Soil Moisture Monitor, an applicability analysis of the drought monitoring effects of TVDI and VTCI was carried out to select the remote sensing monitoring index suitable for drought research in the study area. Based on the selected drought monitoring index, methods such as linear trend analysis and Theil - Sen + Mann - Kendall trend test were used to explore the temporal and spatial distribution characteristics and change trends of drought in the study area from 2005 to 2022. Meanwhile, with the help of machine learning algorithms, an ICEEMDAN - ARIMA combined model was constructed to predict the drought situation in the study area in spring, summer, and autumn of 2023. The prediction performance of the ICEEMDAN - ARIMA combined model was evaluated using root mean square error (RMSE), mean absolute error (MAE), and coefficient of determination (R2). [Results and Discussions] The research results show that there were varying degrees of linear correlations between the two drought indices, TVDI and VTCI, inverted from remote sensing data, and the soil water content of the 0-10 cm surface soil layer in the Santun river irrigation area of Xinjiang. The coefficient of determination between TVDI and the measured soil water content was greater than 0.51 in all periods, with an overall fitting coefficient of 0.57, and the slopes of the fitting equations were all negative, indicating a significant negative correlation. In contrast, the highest coefficient of determination of VTCI was only 0.33, and its overall monitoring effect was significantly weaker than that of TVDI. In terms of temporal and spatial distribution, the drought situation in the study area showed a slow-increasing trend from 2005 to 2022. The growth rate of TVDI was 0.01/10 a, and it had strong spatial heterogeneity, specifically manifested as the spatial distribution characteristic that the southern and southwestern regions of the irrigation area were drier than the northern and northeastern regions. The results of the drought trend analysis indicated that from 2005 to 2022, the distribution of Sen change rate data in the study area conforms to the normal distribution (P < 0.01), and the Sen slopes of more than 72.83% of the regions were greater than zero. At the same time, according to the classification criteria of the Sen + Mann - Kendall trend test, six types of drought change trends were divided. The area proportions of the extremely significant mitigation, significant mitigation, slight mitigation, extremely significant drying, significant drying, and slight drying categories were 0.73%, 1.78%, 24.31%, 5.33%, 9.43%, and 58.42%, respectively. The area proportions of the slight drying and slight mitigation categories were the largest, accounting for a total of 82.73% of the total area of the study area. The ICEEMDAN - ARIMA combined model constructed with the help of machine learning algorithms achieved good results in predicting the drought situation in the study area in 2023. The average value of R2 reached 0.962, demonstrating high robustness and good prediction performance. [Conclusions] The research results systematically characterizes the characteristics of agricultural drought changes in the Santun river irrigation area of Xinjiang over a long - time series, and reveals that the ICEEMDAN - ARIMA combined model has good prediction accuracy in agricultural drought prediction research. This study can provide important references for the construction of drought early warning and forecasting systems, water resource management, and the sustainable development of agriculture in arid-zone irrigation areas.

    Overview Article
    Key Technologies and Prospects of Laser Weeding Robots | Open Access
    YU Zhongyi, WANG Hongyu, HE Xiongkui, ZHAO Lei, WANG Yuanyuan, SUN Hai
    2025, 7(2):  132-145.  doi:10.12133/j.smartag.SA202410031
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    [Significance] Grass damage in farmland seriously restricts the quality and yield of crop planting and production, and promotes the occurrence of pests and diseases. Weed control is a necessary measure for high yield and high quality of crops. Currently, there are five main weed control methods: Manual, biological, thermal, mechanical, and chemical weed control. Traditional chemical weed control methods are gradually limited due to soil pollution and ecological balance disruption. Intelligent laser weeding technology, with the characteristics of environmental protection, high efficiency, flexibility, and automation, as an emerging and promising ecological and environmental protection new object control method for field weeds, has become the core direction to replace chemical weeding in recent years. The laser weeding robot is the carrier of laser weeding technology, an important manifestation of the development of modern agriculture towards intelligence and precision, and has great application and promotion value. [Progress] Laser weeding is currently a research hotspot to develop and study key technologies and equipment for smart agriculture, and has achieved a series of significant results, greatly promoting the promotion and application of intelligent laser weeding robots in the field. Laser weed control technology achieves precise weed control through thermal, photochemical, and photodynamic effects. In this article, the research background of laser weeding was introduced, its key technologies, operation system and equipment were discussed in details, covering aspects such as operating principles, system architecture, seedling, weed recognition and localization, robot navigation and path planning, as well as actuator control technologies. Then, based on the current research status of laser weeding robots, the existing problems and development trends of intelligent laser weeding robots were prospected. [Conclusion and Prospect] Based on the different field grass conditions in different regions, a large number of indoor and outdoor experiments on laser weed control should be carried out in the future to further verify the technical effectiveness and feasibility of laser field weed control, providing support for the research and application of laser weed control equipment technology. Despite facing challenges such as high costs and poor environmental adaptability, with the integration of technologies such as artificial intelligence and the Internet of Things, as well as policy support, laser weeding is expected to become an important support for sustainable agricultural development.

    Information Processing and Decision Making
    A Lightweight Model for Detecting Small Targets of Litchi Pests Based on Improved YOLOv10n | Open Access
    LI Zusheng, TANG Jishen, KUANG Yingchun
    2025, 7(2):  146-159.  doi:10.12133/j.smartag.SA202412003
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    Objective The accuracy of identifying litchi pests is crucial for implementing effective control strategies and promoting sustainable agricultural development. However, the current detection of litchi pests is characterized by a high percentage of small targets, which makes target detection models challenging in terms of accuracy and parameter count, thus limiting their application in real-world production environments. To improve the identification efficiency of litchi pests, a lightweight target detection model YOLO-LP (YOLO-Litchi Pests) based on YOLOv10n was proposed. The model aimed to enhance the detection accuracy of small litchi pest targets in multiple scenarios by optimizing the network structure and loss function, while also reducing the number of parameters and computational costs. Methods Two classes of litchi insect pests (Cocoon and Gall) images were collected as datasets for modeling in natural scenarios (sunny, cloudy, post-rain) and laboratory environments. The original data were expanded through random scaling, random panning, random brightness adjustments, random contrast variations, and Gaussian blurring to balance the category samples and enhance the robustness of the model, generating a richer dataset named the CG dataset (Cocoon and Gall dataset). The YOLO-LP model was constructed after the following three improvements. Specifically, the C2f module of the backbone network (Backbone) in YOLOv10n was optimized and the C2f_GLSA module was constructed using the global-to-local spatial aggregation (GLSA) module to focus on small targets and enhance the differentiation between the targets and the backgrounds, while simultaneously reducing the number of parameters and computation. A frequency-aware feature fusion module (FreqFusion) was introduced into the neck network (Neck) of YOLOv10n and a frequency-aware path aggregation network (FreqPANet) was designed to reduce the complexity of the model and address the problem of fuzzy and shifted target boundaries. The SCYLLA-IoU (SIoU) loss function replaced the Complete-IoU (CIoU) loss function from the baseline model to optimize the target localization accuracy and accelerate the convergence of the training process. Results and Discussions YOLO-LP achieved 90.9%, 62.2%, and 59.5% for AP50, AP50:95, and AP-Small50:95 in the CG dataset, respectively, and 1.9%, 1.0%, and 1.2% higher than the baseline model. The number of parameters and the computational costs were reduced by 13% and 17%, respectively. These results suggested that YOLO-LP had a high accuracy and lightweight design. Comparison experiments with different attention mechanisms validated the effectiveness of the GLSA module. After the GLSA module was added to the baseline model, AP50, AP50:95, and AP-Small50:95 achieved the highest performance in the CG dataset, reaching 90.4%, 62.0%, and 59.5%, respectively. Experiment results comparing different loss functions showed that the SIoU loss function provided better fitting and convergence speed in the CG dataset. Ablation test results revealed that the validity of each model improvement and the detection performance of any combination of the three improvements was significantly better than the baseline model in the YOLO-LP model. The performance of the models was optimal when all three improvements were applied simultaneously. Compared to several mainstream models, YOLO-LP exhibited the best overall performance, with a model size of only 5.1 MB, 1.97 million parameters (Params), and a computational volume of 5.4 GFLOPs. Compared to the baseline model, the detection of the YOLO-LP performance was significantly improved across four multiple scenarios. In the sunny day scenario, AP50, AP50:95, and AP-Small50:95 increased by 1.9%, 1.0 %, and 2.0 %, respectively. In the cloudy day scenario, AP50, AP50:95, and AP-Small50:95 increased by 2.5%, 1.3%, and 1.3%, respectively. In the post-rain scenario, AP50, AP50:95, and AP-Small50:95 increased by 2.0%, 2.4%, and 2.4%, respectively. In the laboratory scenario, only AP50 increased by 0.7% over the baseline model. These findings indicated that YOLO-LP achieved higher accuracy and robustness in multi-scenario small target detection of litchi pests. Conclusions The proposed YOLO-LP model could improve detection accuracy and effectively reduce the number of parameters and computational costs. It performed well in small target detection of litchi pests and demonstrated strong robustness across different scenarios. These improvements made the model more suitable for deployment on resource-constrained mobile and edge devices. The model provided a valuable technical reference for small target detection of litchi pests in various scenarios.

    Chilli-YOLO: An Intelligent Maturity Detection Algorithm for Field-Grown Chilli Based on Improved YOLOv10 | Open Access
    SI Chaoguo, LIU Mengchen, WU Huarui, MIAO Yisheng, ZHAO Chunjiang
    2025, 7(2):  160-171.  doi:10.12133/j.smartag.SA202411002
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    [Objective] In modern agriculture, the rapid and accurate detection of chillies at different maturity stages is a critical step for determining the optimal harvesting time and achieving intelligent sorting of field-grown chillies. However, existing target detection models face challenges in efficiency and accuracy when applied to the task of detecting chilli maturity, which limit their widespread use and effectiveness in practical applications. To address these challenges, a new algorithm, Chilli-YOLO, was proposed for achieving efficient and precise detection of chilli maturity in complex environments. [Methods] A comprehensive image dataset was collected, capturing chillis under diverse and realistic agricultural conditions, including varying lighting conditions, camera angles, and background complexities. These images were then meticulously categorized into four distinct maturity stages: Immature, transitional, mature, and dried. Data augmentation techniques were employed to expand the dataset and enhance the model's generalization capabilities. To develop an accurate and efficient chili maturity detection system, the YOLOv10s object detection network was chosen as the foundational architecture. The model's performance was further enhanced through strategic optimizations targeting the backbone network. Specifically, standard convolutional layers were replaced with Ghost convolutions. This technique generated more feature maps from fewer parameters, resulting in significant computational savings and improved processing speed without compromising feature extraction quality. Additionally, the C2f module was substituted with the more computationally efficient GhostConv module, further reducing redundancy and enhancing the model's overall efficiency. To improve the model's ability to discern subtle visual cues indicative of maturity, particularly in challenging scenarios involving occlusion, uneven lighting, or complex backgrounds, the partial self-attention (PSA) module within YOLOv10s was replaced with the second-order channel attention (SOCA) mechanism. SOCA leverages higher-order feature correlations to more effectively capture fine-grained characteristics of the chillis. This enabled the model to focus on relevant feature channels and effectively identify subtle maturity-related features, even when faced with significant visual noise and interference. Finally, to refine the precision of target localization and minimize bounding box errors, the extended intersection over union (XIoU) loss function was integrated into the model training process. XIoU enhances the traditional IoU loss by considering factors such as the aspect ratio difference and the normalized distance between the predicted and ground truth bounding boxes. By optimizing for these factors, the model achieved significantly improved localization accuracy, resulting in a more precise delineation of chillis in the images and contributing to the overall enhancement of the detection performance. The combined implementation of these improvements aimed to construct an effective approach to correctly classify the maturity level of chillis within the challenging and complex environment of a real-world farm. [Results and Discussion] The experimental results on the custom-built chilli maturity detection dataset showed that the Chilli-YOLO model performed excellently across multiple evaluation metrics. The model achieved an accuracy of 90.7%, a recall rate of 82.4%, and a mean average precision (mAP) of 88.9%. Additionally, the model's computational load, parameter count, model size, and inference time were 18.3 GFLOPs, 6.37 M, 12.6 M, and 7.3 ms, respectively. Compared to the baseline model, Chilli-YOLO improved accuracy by 2.6 percent point, recall by 2.8 percent point and mAP by 2.8 percent point. At the same time, the model's computational load decreased by 6.2 GFLOPs, the parameter count decreased by 1.67 M, model size reduced by 3.9 M. These results indicated that Chilli-YOLO strikes a good balance between accuracy and efficiency, making it capable of fast and precise detection of chilli maturity in complex agricultural environments. Moreover, compared to earlier versions of the YOLO model, Chilli-YOLO showed improvements in accuracy of 2.7, 4.8, and 5 percent point over YOLOv5s, YOLOv8n, and YOLOv9s, respectively. Recall rates were higher by 1.1, 0.3, and 2.3 percent point, and mAP increased by 1.2, 1.7, and 2.3 percent point, respectively. In terms of parameter count, model size, and inference time, Chilli-YOLO outperformed YOLOv5. This avoided the issue of YOLOv8n's lower accuracy, which was unable to meet the precise detection needs of complex outdoor environments. When compared to the traditional two-stage network Faster RCNN, Chilli-YOLO showed significant improvements across all evaluation metrics. Additionally, compared to the one-stage network SSD, Chilli-YOLO achieved substantial gains in accuracy, recall, and mAP, with increases of 16.6%, 12.1%, and 16.8%, respectively. Chilli-YOLO also demonstrated remarkable improvements in memory usage, model size, and inference time. These results highlighted the superior overall performance of the Chilli-YOLO model in terms of both memory consumption and detection accuracy, confirming its advantages for chilli maturity detection. [Conclusions] The proposed Chilli-YOLO model optimizes the network structure and loss functions, not only can significantly improve detection accuracy but also effectively reduce computational overhead, making it better suites for resource-constrained agricultural production environments. The research provides a reliable technical reference for intelligent harvesting of chillies in agricultural production environments, especially in resource-constrained settings.

    Defogging Remote Sensing Images Method Based on a Hybrid Attention-Based Generative Adversarial Network | Open Access
    MA Liu, MAO Kebiao, GUO Zhonghua
    2025, 7(2):  172-182.  doi:10.12133/j.smartag.SA202410011
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    [Objective] Remote sensing images have become an important data source in fields such as surface observation, environmental monitoring, and natural disaster prediction. However, the acquisition of remote sensing images is often affected by weather phenomena such as fog and clouds, which reduces the image quality and poses challenges to subsequent analysis and processing tasks. In recent years, the introduction of attention mechanisms has enabled models to better capture and utilize important features in images, thereby significantly improving defogging performance. However, traditional channel attention mechanisms usually rely on global average pooling to summarize feature information. Although this method simplifies the complexity of calculations, it is not satisfactory when dealing with images with significant local changes and sensitivity to outliers. In addition, remote sensing images usually cover a wide area, and the diverse terrain makes the fog pattern more complex. Therefore, to address this issue, a hybrid attention-based generative adversarial network hybrid attention-based generative adversarial network (HAB-GAN) was proposed in this research, which integrates an efficient channel attention (ECA) module and a spatial attention block (SAB). [Method] By merging feature extraction from both channel and spatial dimensions, the model effectively enhanced its ability to identify and recover hazy areas in remote sensing images. In HAB-GAN, the ECA module captured local cross-channel interactions, addressing the shortcomings of traditional global averaged pooling in terms of insufficient sensitivity to local detail information. The ECA module used a global average pooling strategy without dimensionality reduction, automatically adapting to the characteristics of each channel without introducing extra parameters, thereby enhancing the inter-channel dependencies. ECA emploied a one-dimensional convolution operation, which used a learnable kernel size to adaptively determine the range of channel interactions. This design effectively avoided the over-smoothing of global features common in traditional pooling layers, allowing the model to more precisely extract local detailed while maintaining low computational complexity. The SAB module introduced a weighted mechanism on the spatial dimension by constructing a spatial attention map to enhance the model's ability to identify hazy areas in the image. This module extracted feature maps through convolution operations and applies attention weighting in both horizontal and vertical directions, highlighting regions with severe haze, allowing the model to better capture spatial information in the image, thereby enhancing dehazing performance. The generator of HAB-GAN combined residual network structures with hybrid attention modules. It first extracted initial features from input images through convolutional layers and then passed these features through several residual blocks. The residual blocks effectively mitigated the vanishing gradient problem in deep neural networks and maintain feature consistency and continuity by passing input features directly to deeper network layers through skip connections. Each residual block incorporated ECA and SAB modules, enabling precise feature learning through weighted processing in both channel and spatial dimensions. After extracting effective features, the generator generated dehazed images through convolution operations. The discriminator adopted a standard convolutional neural network architecture, focusing on extracting local detail features from the images generated by the generator. It consisted of multiple convolutional layers, batch normalization layers, and Leaky ReLU activation functions. By extracting local features layer by layer and down-sampling, the discriminator progressively reduced the spatial resolution of the images, evaluating their realism at both global and local levels. The generator and discriminator were jointly optimized through adversarial training, where the generator aimed to produce increasingly realistic dehazed images, and the discriminator continually improved its ability to distinguish between real and generated images, thereby enhancing the learning effectiveness and image quality of the generator. [Results and Discussions] To validate the effectiveness of HAB-GAN, experiments were conducted on the remote sensing image scene classification 45 (RESISC45) dataset. The experimental results demonstrated that compared to existing dehazing models, HAB-GAN excels in key evaluation metrics such as peak signal-to-noise ratio (PSNR) and structural similarity index (SSIM). Specifically, compared to SpA GAN, HAB-GAN improved PSNR by 2.642 5 dB and SSIM by 0.012 2; Compared to HyA-GAN, PSNR improved by 1.138 dB and SSIM by 0.001 9. Additionally, to assess the generalization capability of HAB-GAN, further experiments were conducted on the RICE2 dataset to verify its performance in cloud removal tasks. The results showed that HAB-GAN also performs exceptionally well in cloud removal tasks, with PSNR improving by 3.593 2 dB and SSIM improving by 0.040 2. Compared to HyA-GAN, PSNR and SSIM increased by 1.854 dB and 0.012 4, respectively. To further explored the impact of different modules on the model's performance, ablation experiments were designed, gradually removing the ECA module, the SAB module, and the entire hybrid attention module. The experimental results showed that removing the ECA module reduced PSNR by 2.642 5 dB and SSIM by 0.012 2; Removing the SAB module reduced PSNR by 2.955 dB and SSIM by 0.008 7, and removing the entire hybrid attention module reduced PSNR and SSIM by 3.866 1 dB and 0.033 4, respectively. [Conclusions] The proposed HAB-GAN model not only performs excellently in dehazing and beclouding tasks but also significantly enhances the clarity and detail recovery of dehazed images through the synergistic effect of the ECA module and the SAB module. Additionally, its strong performance across different remote sensing datasets further validates its effectiveness and generalization ability, showcasing broad application potential particularly in fields such as agriculture, environmental monitoring, and disaster prediction, where high-quality remote sensing data is crucial. HAB-GAN is poised to become a valuable tool for improving data reliability and supporting more accurate decision-making and analysis.

    Spatiotemporal Pattern and Multi-Scenario Simulation of Land Use Conflicts: A Case Study of Shandong Section of the Yellow River Basin | Open Access
    DONG Guanglong, YIN Haiyang, YAO Rongyan, YUAN Chenzhao, QU Chengchuang, TIAN Yuan, JIA Min
    2025, 7(2):  183-195.  doi:10.12133/j.smartag.SA202409007
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    [Objective] The frequent occurrence of land use conflicts, such as the occupation of arable land by urban construction land expansion, non-grain use of arable land, and the shrinking of ecological space, poses multiple pressures on the Shandong section of the Yellow River in terms of economic development, arable land protection, and ecological conservation. Accurately identifying and predicting future trends of land-use conflicts in the Shandong section of the Yellow River under various scenarios will provide a reference for the governance of land use conflicts, rational land resource utilization, and optimization of the national land spatial pattern in this region. [Methods] The data used mainly includs land use data, elevation data, basic geographic information data, meteorological data, protected area data, and socio-economic data. Drawing from the concept of ecological risk assessment, an "External Pressure + Vulnerability-Stability" model was constructed. Indicators such as area-weighted average patch fractal dimension, landscape value of land use types, and patch density were used to quantify and characterize land use conflicts in the Shandong section of the Yellow River from 2000 to 2020. Subsequently, the CA-Markov model was employed to establish cellular automata transition rules, with a 10-year simulation period using a default 5×5 cellular filter matrix, projecting 2030 land use conflict patterns under natural development, cultivated land protection, and ecological conservation scenarios. [Results and Discussions] From 2000 to 2020, significant changes in land use were observed in the Shandong section of the Yellow River, mainly characterized by rapid expansion of urban construction land and a reduction in grassland and arable land. Urban construction land increased by 4 346 km2, with its proportion rising from 13.50% in 2000 to 18.67% in 2020. During the study period, the level of land use conflict showed a mitigating trend, with the average land use conflict index decreasing from 0.567 in 2000 to 0.522 in 2020. Medium conflict has been the dominant type of land use conflict in the Shandong section of the Yellow River, followed by low conflict, while high conflict accounted for the smallest proportion. This indicates that land use conflicts in the region were generally controllable. The spatial pattern of land use conflicts in the Shandong section of the Yellow River remained relatively stable. Low conflicts were mainly distributed in areas with high concentration of arable land and water bodies, as well as in urban built-up areas. Medium conflicts were most widespread, especially in the transitional zones between arable land and rural settlements, and between arable land and forest land. The proportion of high conflict decreased from 19.34% in 2000 to 8.61% in 2020, mainly clustering in the transitional zones between urban construction land and other land types, the land type interlacing belt in the Central Shandong Hills, and along the Yellow River. The multi-scenario land use simulation results for 2030 showed significant differences in land use changes under different scenarios. Under the natural development scenario, the level of land use conflict was expected to deteriorate, with the most severe conflict situation. While both arable land protection and ecological conservation scenarios demonstrate partial conflict mitigation, the expansion of arable land occurs at the expense of ecological spaces, potentially compromising regional ecological security. In contrast, under the ecological conservation scenario, by prioritizing ecological protection and highlighting the protection of the ecological environment, the expansion of urban construction land and the reclamation of arable land, which cause ecological damage, were effectively curbed. Notably, this scenario exhibited the lowest proportion of high conflicts and demonstrated superior conflict mitigation effectiveness. [Conclusions] Land use conflicts in the Shandong section of the Yellow River have been somewhat mitigated, with the main form of conflict being the rapid expansion of urban construction land encroaching on arable land and ecological land. The ecological conservation scenario effectively balances the relationship between arable land protection, ecological security, and urbanization development, and is an optimal strategy for alleviating land use conflicts in the Shandong section of the Yellow River.