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
{"title":"AgGym:用于超精确管理规划的农业生物压力模拟环境","authors":"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","doi":"arxiv-2409.00735","DOIUrl":null,"url":null,"abstract":"Agricultural production requires careful management of inputs such as\nfungicides, insecticides, and herbicides to ensure a successful crop that is\nhigh-yielding, profitable, and of superior seed quality. Current\nstate-of-the-art field crop management relies on coarse-scale crop management\nstrategies, where entire fields are sprayed with pest and disease-controlling\nchemicals, leading to increased cost and sub-optimal soil and crop management.\nTo overcome these challenges and optimize crop production, we utilize machine\nlearning tools within a virtual field environment to generate localized\nmanagement plans for farmers to manage biotic threats while maximizing profits.\nSpecifically, we present AgGym, a modular, crop and stress agnostic simulation\nframework to model the spread of biotic stresses in a field and estimate yield\nlosses with and without chemical treatments. Our validation with real data\nshows that AgGym can be customized with limited data to simulate yield outcomes\nunder various biotic stress conditions. We further demonstrate that deep\nreinforcement learning (RL) policies can be trained using AgGym for designing\nultra-precise biotic stress mitigation strategies with potential to increase\nyield recovery with less chemicals and lower cost. Our proposed framework\nenables personalized decision support that can transform biotic stress\nmanagement from being schedule based and reactive to opportunistic and\nprescriptive. We also release the AgGym software implementation as a community\nresource and invite experts to contribute to this open-sourced publicly\navailable modular environment framework. The source code can be accessed at:\nhttps://github.com/SCSLabISU/AgGym.","PeriodicalId":501479,"journal":{"name":"arXiv - CS - Artificial Intelligence","volume":"81 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-09-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"AgGym: An agricultural biotic stress simulation environment for ultra-precision management planning\",\"authors\":\"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\",\"doi\":\"arxiv-2409.00735\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Agricultural production requires careful management of inputs such as\\nfungicides, insecticides, and herbicides to ensure a successful crop that is\\nhigh-yielding, profitable, and of superior seed quality. Current\\nstate-of-the-art field crop management relies on coarse-scale crop management\\nstrategies, where entire fields are sprayed with pest and disease-controlling\\nchemicals, leading to increased cost and sub-optimal soil and crop management.\\nTo overcome these challenges and optimize crop production, we utilize machine\\nlearning tools within a virtual field environment to generate localized\\nmanagement plans for farmers to manage biotic threats while maximizing profits.\\nSpecifically, we present AgGym, a modular, crop and stress agnostic simulation\\nframework to model the spread of biotic stresses in a field and estimate yield\\nlosses with and without chemical treatments. Our validation with real data\\nshows that AgGym can be customized with limited data to simulate yield outcomes\\nunder various biotic stress conditions. 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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.