湖北农业科学 ›› 2026, Vol. 65 ›› Issue (6): 213-220.doi: 10.14088/j.cnki.issn0439-8114.2026.06.033

• 农业工程 • 上一篇    下一篇

基于双通道检索增强的农业病虫害Agent智能诊断系统

刘疆泉, 李永可   

  1. 新疆农业大学计算机与信息工程学院,乌鲁木齐 830052
  • 收稿日期:2026-03-26 出版日期:2026-06-25 发布日期:2026-06-26
  • 通讯作者: 李永可(1985-),男,河南许昌人,副教授,博士,主要从事智慧农业研究工作,(电子信箱)553667423@qq.com。
  • 作者简介:刘疆泉(2000-),男,江西吉安人,在读硕士研究生,研究方向为大语言模型,(电子信箱)mukuro_ljq@qq.com。

Dual-channel retrieval-augmented Agent system for intelligent diagnosis of agricultural pests and diseases

LIU Jiang-quan, LI Yong-ke   

  1. College of Computer and Information Engineering, Xinjiang Agricultural University, Urumqi 830052, China
  • Received:2026-03-26 Published:2026-06-25 Online:2026-06-26

摘要: 针对现有通用大语言模型在农业病虫害诊断中存在的专业知识约束不足、长链条推理能力弱以及可能产生事实性幻觉等问题,提出一种融合知识图谱与大语言模型的Agent双通道智能诊断系统。在数据层,设计三元组感知高效去噪机制(TAED),剔除低质量冗余数据,构建用于领域微调语料库。在模型层,提出阶段自适应思维链(PA-CoT)策略,通过指令微调使模型习得诊断逻辑,降低逻辑跳跃带来的幻觉。在架构层,构建基于意图识别的Agent双通道检索机制,实现非结构化语义信息与结构化知识的互补增强。结果表明,该系统在复杂农业诊断任务中的准确率达82.4%,幻觉率为10.8%,在推理完整性与知识准确性上优于传统检索增强(RAG)方法,可为农业智能专家系统的落地应用提供解决方案。

关键词: 农业病虫害诊断, 大语言模型, 知识图谱, 双通道检索

Abstract: To address the issues of insufficient professional knowledge constraints, limited long-chain reasoning capabilities, and possible factual hallucinations in existing general large language models for agricultural pest and disease diagnosis, this study proposed an Agent-based dual-channel intelligent diagnostic system integrating knowledge graphs and large language models. At the data level, a Triple-Aware Efficient Denoising (TAED) mechanism was designed to eliminate low-quality redundant data and construct a corpus for domain-specific fine-tuning. At the model level, a Phased-Adaptive Chain-of-Thought (PA-CoT) strategy was proposed. Through instruction fine-tuning, the model learned diagnostic logic and reduced the risk of hallucinations caused by logical jumps. At the architecture level, an intent recognition-based Agent dual-channel retrieval mechanism was constructed to achieve the complementary enhancement of unstructured semantic information and structured knowledge. Experimental results demonstrated that the proposed system achieved an accuracy of 82.4% and a hallucination rate of 10.8% in complex agricultural diagnostic tasks. It outperformed traditional Retrieval-Augmented Generation (RAG) methods in terms of reasoning completeness and knowledge accuracy, providing a solution for the practical application of agricultural intelligent expert systems.

Key words: agricultural pest and disease diagnosis, large language models, knowledge graph, dual-channel retrieval

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