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AI4AS:关键要素、面临挑战与路径建议

赵瑞雪1,2(), 杨潇1,2(), 张丹丹1,2, 李娇1,2, 黄永文1,2, 鲜国建1,4(), 寇远涛1,2, 孙坦3,4()   

  1. 1. 中国农业科学院农业信息研究所,北京 100081
    2. 农业融合出版知识挖掘与知识服务重点实验室,北京 100081
    3. 中国农业科学院,北京 100081
    4. 农业农村部农业大数据重点实验室,北京 100081
  • 收稿日期:2025-02-21 出版日期:2025-05-22
  • 基金项目:
    科学技术部科技创新2030-新一代人工智能重大项目(2021ZD0113705); 中央级公益性科研院所基本科研业务费专项(Y2025ZZ28)
  • 作者简介:

    赵瑞雪,博士,研究员,研究方向为信息与信息系统、知识服务。E-mail:

    杨 潇,博士研究生,研究方向为知识发现与知识服务。E-mail:

    YANG Xiao, E-mail:

    (赵瑞雪、杨潇并列第一作者)

  • 通信作者:
    鲜国建,博士,研究员,研究方向为关联数据与知识服务。E-mail:
    孙 坦,博士,研究馆员,研究方向为数字信息描述与组织。E-mail:

Artificial Intelligence for Agricultural Intelligent Research: Key Elements, Challenges and Pathways

ZHAO Ruixue1,2(), YANG Xiao1,2(), ZHANG Dandan1,2, LI Jiao1,2, HUANG Yongwen1,2, XIAN Guojian1,4(), KOU Yuantao1,2, SUN Tan3,4()   

  1. 1. Agricultural Information Institute of CAAS, Beijing 100081, China
    2. Key Laboratory of Knowledge Mining and Knowledge Services in Agricultural Converging Publishing, National Press and Publication Administration, Beijing 100081, China
    3. Chinese Academy of Agricultural Sciences, Beijing 100081, China
    4. Key Laboratory of Agricultural Big Data, Ministry of Agriculture and Rural Affairs, Beijing 100081, China
  • Received:2025-02-21 Online:2025-05-22
  • Foundation items:National Science and Technology Major Project(2021ZD0113705); Fundamental Research Funds for the Central Public Welfare Research Institutes(Y2025ZZ28)
  • About author:

    ZHAO Ruixue, E-mail:

  • Corresponding author:
    XIAN Guojian, E-mail:
    SUN Tan, E-mail:

摘要:

[目的/意义] AI4S作为人工智能(Artificial Intelligence, AI)与科学研究深度融合的新兴形态,引发了科研范式的深刻变革,通过AI技术加速科学发现,推动科学研究从传统的经验、直觉驱动向数据与AI共同驱动转变,已在众多科学领域实现了创新突破,也为农业科研转型带来新的机遇。 [进展] 本文梳理并分析了AI4S发展现状及其对农业科研产生的影响,研究发现近年来AI4S已取得显著进展,国内外积极布局相关前沿领域并出台系列政策以抢占新一轮科技战略制高点,且在多个学科领域得到了广泛应用。在农业科研领域,AI4S在加速多学科交叉融合、促进科研效率提升、助力复杂问题突破、驱动科研范式变革及升级科研基础设施五个方面发挥了重要作用。 [结论/展望] 面向农业科研新需求、核心领域与研究过程,提出了农业智能科研(AI for Agricultural Science, AI4AS)的概念及体系关键要素,涵盖大科学基础设施、大数据资源、大模型算法和大协同平台等部分。最后,针对数据资源、模型能力、科研生态以及人才培养等挑战,从顶层设计规划、关键技术体系、协同创新体系、学科体系建设、复合人才引育等角度,提出打造面向AI4S发展的农业科研新体系的实现路径与具体建议。

关键词: AI4S, 农业智能科研, 体系框架, 路径建议, 科研范式

Abstract:

[Significance] AI for Science (AI4S), as an emerging paradigm of deep integration between artificial intelligence (AI) and scientific research, has triggered profound transformations in research methodologies. By accelerating scientific discovery through AI technologies, it promotes the transition of scientific research from traditional experience- and intuition-driven approaches to data- and AI-co-driven methodologies. This shift has led to innovative breakthroughs across numerous scientific domains and presents new opportunities for the transformation of agricultural research. With its powerful capabilities in data processing, intelligent analysis, and pattern recognition, AI can break through the cognitive limitations of field scientists and is gradually becoming an indispensable tool in modern agricultural scientific research, injecting new impetus into the intelligent, efficient, and collaborative development of agricultural scientific research. [Progress] This paper systematically reviews the current advancements in AI4S and its impact on agricultural research. It is show that AI4S has led to a wave of countries around the world vying for the commanding heights of a new round of scientific and technological strategies. Developed countries such as those in Europe and America have laid out the frontier fields of AI4S and introduced relevant policies. Meanwhile, some top universities and research institutions are accelerating related research, and technology giants are actively cultivating related industries to promote the application and layout of AI technology in scientific research. In recent years, AI4S has witnessed remarkable development, showing great potential in multiple disciplinary fields and has been widely applied in data mining, model construction, and result prediction. In the field of agricultural scientific research, AI4S has played an important role in accelerating multi-disciplinary integration, promoting the improvement of the scientific research efficiency, facilitating the breakthrough of complex problems, driving the transformation of the scientific research paradigm, and upgrading scientific research infrastructure. The continuous progress of information technology and synthetic biology has made the interdisciplinary integration of agriculture and multiple disciplines increasingly closer The deep integration of AI and agricultural scientific research not only improves the application level of AI in the agricultural field but also drives the transformation of traditional agricultural scientific research models towards intelligence, data-driven, and collaborative directions, providing new possibilities for agricultural scientific and technological innovation. The new agricultural digital infrastructure is characterized by intelligent data collection, edge computing power deployment, high-throughput network transmission, and distributed storage architecture, aiming to break through the bottlenecks of traditional agricultural scientific research facilities in terms of real-time performance, collaboration, and scalability. Taking emerging disciplines such as Agrinformatics and climate-focused Agriculture-Forestry-AI (AgFoAI) as examples, they focus on using AI technology to analyze agricultural data, construct crop growth models, and climate change models, etc., to promote the development and innovation of agricultural scientific research. [Conclusions and Prospects] With its robust capabilities in data processing, intelligent analysis, and pattern recognition, AI is increasingly becoming an indispensable tool in modern agricultural scientific research. To address emerging demands, core domains, and research processes in agricultural research, the concept of agricultural intelligent research is proposed, characterized by human-machine collaboration and interdisciplinary integration. This paradigm employs advanced data analytics, pattern recognition, and predictive modeling to perform in-depth mining and precise interpretation of multidimensional, full-lifecycle, large-scale agricultural datasets. By comprehensively unraveling the intrinsic complexities and latent patterns of research subjects, it autonomously generates novel, scientifically grounded, and high-value research insights, thereby driving agricultural research toward greater intelligence, precision, and efficiency. The framework's core components encompass big science infrastructure (supporting large-scale collaborative research), big data resources (integrating heterogeneous agricultural datasets), advanced AI model algorithms (enabling complex simulations and predictions), and collaborative platforms (facilitating cross-disciplinary and cross-institutional synergy). Finally, in response to challenges related to data resources, model capabilities, research ecosystems, and talent development, actionable pathways and concrete recommendations are outlined from the perspectives of top-level strategic planning, critical technical ecosystems, collaborative innovation ecosystems, disciplinary system construction, and interdisciplinary talent cultivation, aiming to establish a new AI4S-oriented agricultural research framework.

Key words: AI4S, agricultural intelligent research, system framework, implementation pathways, research paradigm

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