Agricultural regions in rural areas face damage from climate-related risks, including droughts, heavy rainfall, and shifting weather patterns. Prior research calls for adaptive risk-management solutions and decision-making strategies. To this end, artificial intelligence (AI), particularly agentic AI, offers a promising path forward. Agentic AI systems consist of autonomous, specialized agents capable of solving complex, dynamic tasks. While past systems have relied on single-agent models or have used multi-agent frameworks only for static functions, there is a growing need for architectures that support dynamic collaborative reasoning and context-aware outputs. To bridge this gap, we present AgroAskAI, a multi-agent reasoning system for climate adaptation decision support in agriculture, with a focus on vulnerable rural communities. AgroAskAI features a modular, role-specialized architecture that uses a chain-of-responsibility approach to coordinate autonomous agents, integrating real-time tools and datasets. The system has built-in governance mechanisms that mitigate hallucination and enable internal feedback for coherent, locally relevant strategies. The system also supports multilingual interactions, making it accessible to non-English-speaking farmers. Experiments on common agricultural queries related to climate adaptation show that, with additional tools and prompt refinement, AgroAskAI delivers more actionable, grounded, and inclusive outputs. Our experimental results highlight the potential of agentic AI for sustainable and accountable decision support in climate adaptation for agriculture.
翻译:农村地区的农业区域正面临干旱、强降雨及天气模式变化等气候相关风险带来的损害。先前研究呼吁采用适应性风险管理方案与决策策略。为此,人工智能(AI),尤其是智能体AI,提供了一条前景广阔的发展路径。智能体AI系统由能够解决复杂动态任务的自主专业化智能体构成。尽管既往系统依赖单智能体模型,或仅将多智能体框架用于静态功能,但当前日益需要支持动态协同推理与情境感知输出的架构。为填补这一空白,我们提出了AgroAskAI——一个面向农业气候适应决策支持的多智能体推理系统,重点关注脆弱的农村社区。AgroAskAI采用模块化、角色专业化的架构,通过责任链模式协调自主智能体,整合实时工具与数据集。该系统内置治理机制,可缓解幻觉现象,并通过内部反馈生成连贯且符合本地情境的策略。系统同时支持多语言交互,使非英语农户也能便捷使用。针对气候适应相关常见农业咨询的实验表明,在附加工具与提示优化的辅助下,AgroAskAI能提供更具可操作性、事实依据和包容性的输出结果。我们的实验结果凸显了智能体AI在农业气候适应领域实现可持续、可问责决策支持的潜力。