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Smart Agriculture ›› 2026, Vol. 8 ›› Issue (2): 1-17.doi: 10.12133/j.smartag.SA202512027

• 专题--多源遥感驱动数字农业创新与实践 •    

对地观测驱动的数字(智慧)农业研究前沿与应用案例

吴炳方1(), 马慧1,2, 张淼1,2, 潘庆成1,2, 张翔3,4, 陈水森5, 邱炳文6, 徐新刚7, 刘建红8, 范锦龙9, 黄健熙10,11, 江佳乐12, 何昌垂13   

  1. 1. 中国科学院空天信息创新研究院遥感与数字地球全国重点实验室,北京 100101,中国
    2. 中国科学院大学资源与环境学院,北京 101408,中国
    3. 中国地质大学(武汉) 国家地理信息系统工程技术研究中心/地理与信息工程学院,湖北 武汉 430074,中国
    4. 湖北珞珈实验室,湖北 武汉 430079,中国
    5. 广东省科学院广州地理研究所/广东省遥感大数据应用工程技术研究中心,广东 广州 510070,中国
    6. 福州大学数字中国研究院(福建)空间数据挖掘与信息共享教育部重点实验室,福建 福州 350108,中国
    7. 北京市农科学院信息技术研究中心/农业农村部农业遥感机理与定量遥感重点实验室,北京 100097,中国
    8. 西北大学城市与环境学院,陕西 西安 710127,中国
    9. 北京师范大学地理科学学部,北京 100875,中国
    10. 西南交通大学地球科学与工程学院,四川 成都 611756,中国
    11. 中国农业大学土地科学与技术学院,北京 100083,中国
    12. 中山大学大气科学学院/广东省陆地-海洋生态系统碳中和科学数据中心,广东 珠海 519082,中国
    13. 原联合国粮食及农业组织,罗马 00153,意大利
  • 收稿日期:2025-12-29 出版日期:2026-03-30
  • 基金项目:
    国家自然科学基金(42461144211); 广州市科技计划重点项目(2025B03J0067)
  • 通信作者:
    吴炳方,博士,研究员,研究方向为农业遥感。E-mail:

Earth Observation-Driven Digital (Smart) Agriculture: Research Frontiers and Application Cases

WU Bingfang1(), MA Hui1,2, ZHANG Miao1,2, PAN Qingcheng1,2, ZHANG Xiang3,4, CHEN Shuisen5, QIU Bingwen6, XU Xingang7, LIU Jianhong8, FAN Jinlong9, HUANG Jianxi10,11, JIANG Jiale12, HE Changchui13   

  1. 1. State Key Laboratory of Remote Sensing and Digital Earth, Aerospace Information Research Institute, Chinese Academy of Sciences, Beijing 100101, China
    2. College of Resources and Environment, University of Chinese Academy of Sciences, Beijing 101408, China
    3. National Engineering Research Center of Geographic Information System, School of Geography and Information Engineering, China University of Geosciences, Wuhan 430074, China
    4. Hubei Luojia Laboratory, Wuhan 430079, China
    5. GuangDong Engineering Technology Research Center of Remote Sensing Big Data Application, Guangzhou Institute of Geography, Guangdong Academy of Sciences, Guangzhou 510070, China
    6. Key Laboratory of Spatial Data Mining & Information Sharing of Ministry of Education, Academy of Digital China (Fujian), Fuzhou University, Fuzhou 350116, China
    7. Key Laboratory of Quantitative Remote Sensing in Agriculture of Ministry of Agriculture and Rural Affairs, Information Technology Research Center, Beijing Academy of Agriculture and Forestry Sciences, Beijing 100097, China
    8. College of Urban and Environmental Sciences, Northwest University, Xi'an 710127, China
    9. Faculty of Geographical Science, Beijing Normal University, Beijing 100875, China
    10. Faculty of Geosciences and Engineering, Southwest Jiaotong University, Chengdu 611756, China
    11. College of Land Science and Technology, China Agricultural University, Beijing 100083, China
    12. Guangdong Province Data Center of Terrestrial and Marine Ecosystems Carbon Cycle, School of Atmospheric Sciences, Sun Yat-sen University, Zhuhai 519082, China
    13. Former Food and Agriculture Organization of the United Nations (FAO), Rome 00153, Italy
  • Received:2025-12-29 Online:2026-03-30
  • Foundation items:National Natural Science Foundation of China(42461144211); Key Project of Guangzhou Science and Technology Plan(2025B03J0067)
  • Corresponding author:
    WU Bingfang, E-mail:

摘要:

【目的/意义】 数字农业的本质在于通过物联网、大数据、人工智能及遥感等信息技术,实现农业生产全过程的数字化映射与智能化管控。对地观测技术作为关键的数据引擎与推动力,为农业特别是种植业的数字化转型提供了不可或缺的空间信息支撑。本文从对地观测的视角出发,剖析其驱动的数字(智慧)农业研究前沿与典型案例。 【进展】 当前,研究前沿聚焦于三个领域。一是农情智慧监测,整合高分辨率遥感数据和机器学习技术,实现全口径作物制图、精准产量预测和灾害监测、评估与预警等。二是数字孪生农场,将农业生产全要素数字化建模,动态科学指导精准农业生产,提高生产效率与效益,减少对环境的影响。三是农业系统韧性,通过量化韧性措施的贡献,帮助农业系统应对气候变化挑战。在此基础上,本文结合农情遥感智能监测系统与农业水管理系统两个典型案例,展示了数字(智慧)农业在宏观政策支持和农业生产赋能的云端服务能力。进而分析了影响数字(智慧)农业商业化和业务化进程的多重阻力。 【结论/展望】 数字农业不仅是提升生产效率、保障粮食安全的关键路径,更是推动农业智慧转型、增强农业韧性的一种新型生产要素与系统性能力,即农业领域的“新质生产力”,其系统解决方案与商业模式有望在全球农业变革中形成“中国名片”,助力零饥饿目标的实现。

关键词: 数字农业, 对地观测, 数字孪生, 可持续发展, 粮食安全, 农业韧性

Abstract:

[Significance] Digital agriculture is unequivocally the core driving force for modern agricultural transformation, fundamentally aiming to achieve full-process digital mapping and intelligent management of production through the deep integration of advanced information technologies such as the Internet of Things, big data, artificial intelligence (AI), and remote sensing, with earth observation (EO) technology serving as the essential data engine providing indispensable spatial information support for this systemic shift. However, the current landscape of digital agriculture development remains unbalanced, exhibiting a tendency to be "heavy on transactions and light on production", where the core production links suffer from low digitalization penetration rates; furthermore, the profound knowledge embedded within the vast corpus of EO data has yet to be fully extracted and interpreted, leading to a situation where many established algorithms demonstrate insufficient robustness and universality when confronted with the complexity and diversity of global cropping systems, thereby limiting their practical efficacy. Crucially, an over-reliance on technology to optimize production efficiency alone, without ecological guidance, can induce secondary environmental risks, such as exacerbating regional groundwater depletion or contributing to a decline in biodiversity through agricultural landscape simplification, thus necessitating an approach that promotes the deep coupling of EO technology with agronomic principles and local ecological practices to construct a resilient smart agricultural system that achieves a holistic balance between productivity, resource efficiency, and ecological integrity. [Progress] The current research frontiers of EO-driven digital agriculture primarily converge on three critical domains: intelligent crop condition monitoring, digital twin farming systems, and the enhancement of agricultural system resilience. Intelligent monitoring utilizes the fusion of high-resolution remote sensing imagery and machine learning frameworks to enable large-scale, comprehensive crop mapping and the fine-grained identification of crop types at the field scale, with next-generation yield prediction models integrating advanced deep learning techniques to significantly improve accuracy, while remote sensing is also effectively employed for agricultural disaster monitoring. The digital twin farming system represents an advanced stage of precision agriculture, centered on digitally modeling all agricultural production elements to construct a highly consistent virtual replica of the physical environment, operating through a real-time closed-loop mechanism of perception, simulation and analysis, and decision-making support to guide optimal interventions; successful applications include intelligent water resource scheduling in Chinese irrigation districts and the use of AI vision algorithms to manage complex biological processes like crab farming, although the field must overcome the issue of "pseudo-twins" that focuses on mere visualization rather than driving concrete operational decisions. The focus on agricultural system resilience is supported by digital agriculture providing crucial spatial data on global crop yields, cultivated land distribution, and practices like terracing. To illustrate the practical efficacy of these technologies, this paper analyzes two representative application cases. First, the CropWatch system represents a paradigm shift in agricultural monitoring by constructing a "Cloud-Edge" collaborative ecosystem. It integrates machine learning with a "Pre-training, Prompting, and Fine-tuning" large language model (LLM) framework to automate remote sensing-based crop monitoring, report generation and enhance decision-support intelligence. Through open application programming interfaces (APIs) and multi-scale capabilities, CropWatch provides cross-scale information and decision support from macro-level policy support to micro-level farm management, serving as a global public good that bridges the digital divide in developing nations. Second, in the domain of agricultural water management, the ETWatch technical system demonstrates a robust solution for the precise governance of water resources. By achieving high-resolution evapotranspiration (ET) monitoring from basin to field scales, it enables the accurate assessment of water productivity and the optimization of irrigation schedules. Crucially, this technology is successfully embedded into institutional mechanisms, such as water rights allocation and tiered pricing based on actual consumption, thereby realizing a transformation from empirical water use to data-driven, precise regulation. [Conclusions and Prospects] In sum, digital (smart) agriculture is rapidly transcending its role as a mere extension of agricultural informatization to become the "new-quality productivity" driving high-quality agricultural development, achieving this by fundamentally restructuring production factors, enhancing resource efficiency, strengthening risk response capabilities, and promoting value chain upgrading, thereby offering critical momentum for constructing a more efficient, greener, and sustainable modern agricultural system. Given China's pronounced global advantages in the digital economy, information technology, remote sensing, and intelligent equipment, the nation is well-positioned to integrate these strengths to construct comprehensive, full-chain smart agricultural solutions whose mature systemic models and business paradigms can ultimately form a "China Card" in the global agricultural revolution, contributing Chinese wisdom and solutions towards the realization of global food security and the zero-hunger goal.

Key words: digital agriculture, earth observation, digital twin, sustainable development, food security, agricultural resilience

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