AgGym:用于超精确管理规划的农业生物压力模拟环境

Mahsa Khosravi, Matthew Carroll, Kai Liang Tan, Liza Van der Laan, Joscif Raigne, Daren S. Mueller, Arti Singh, Aditya Balu, Baskar Ganapathysubramanian, Asheesh Kumar Singh, Soumik Sarkar
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引用次数: 0

摘要

农业生产需要对杀菌剂、杀虫剂和除草剂等投入品进行精心管理,以确保作物高产、盈利和种子质量上乘。目前最先进的大田作物管理依赖于粗放型的作物管理策略,即在整块田地上喷洒病虫害控制化学品,从而导致成本增加,土壤和作物管理达不到最佳状态。为了克服这些挑战并优化作物生产,我们在虚拟田间环境中利用机器学习工具,为农民生成本地化管理计划,在管理生物威胁的同时实现利润最大化。具体来说,我们提出了 AgGym,这是一个模块化、作物和胁迫不可知论的模拟框架,用于模拟生物胁迫在田间的传播,并估算使用和不使用化学处理的产量损失。我们利用真实数据进行的验证表明,AgGym 可以利用有限的数据进行定制,以模拟各种生物胁迫条件下的产量结果。我们进一步证明,使用AgGym可以训练深度强化学习(RL)策略,设计出超精确的生物胁迫缓解策略,从而有可能以更少的化学药剂和更低的成本提高产量。我们提出的框架可提供个性化决策支持,从而将生物胁迫管理从基于时间表的被动式管理转变为机会主义和指令性管理。我们还将 AgGym 软件实现作为社区资源发布,并邀请专家为这一开源的模块化环境框架做出贡献。源代码可从以下网址获取:https://github.com/SCSLabISU/AgGym。
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AgGym: An agricultural biotic stress simulation environment for ultra-precision management planning
Agricultural production requires careful management of inputs such as fungicides, insecticides, and herbicides to ensure a successful crop that is high-yielding, profitable, and of superior seed quality. Current state-of-the-art field crop management relies on coarse-scale crop management strategies, where entire fields are sprayed with pest and disease-controlling chemicals, leading to increased cost and sub-optimal soil and crop management. To overcome these challenges and optimize crop production, we utilize machine learning tools within a virtual field environment to generate localized management plans for farmers to manage biotic threats while maximizing profits. Specifically, we present AgGym, a modular, crop and stress agnostic simulation framework to model the spread of biotic stresses in a field and estimate yield losses with and without chemical treatments. Our validation with real data shows that AgGym can be customized with limited data to simulate yield outcomes under various biotic stress conditions. We further demonstrate that deep reinforcement learning (RL) policies can be trained using AgGym for designing ultra-precise biotic stress mitigation strategies with potential to increase yield recovery with less chemicals and lower cost. Our proposed framework enables personalized decision support that can transform biotic stress management from being schedule based and reactive to opportunistic and prescriptive. We also release the AgGym software implementation as a community resource and invite experts to contribute to this open-sourced publicly available modular environment framework. The source code can be accessed at: https://github.com/SCSLabISU/AgGym.
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