2016
DOI: 10.1002/ecs2.1263
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A data‐driven, machine learning framework for optimal pest management in cotton

Abstract: Citation: Meisner, M. H., J. A. Rosenheim, and I. Tagkopoulos. 2016. A data-driven, machine learning framework for optimal pest management in cotton. Ecosphere 7(3):e01263. 10.1002/ecs2.1263Abstract. Despite the significant effects of agricultural pest management on crop yield, profit, environmental quality, and sustainability, farmers oftentimes lack data-driven decision support to help optimize pest management strategies. To address this need, we curated a comprehensive data set that consists of pest, pest m… Show more

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Cited by 9 publications
(3 citation statements)
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“…Bayesian networks have been applied to determine water use and the development of sustainable agriculture, as presented in the research by [126], carried out in the Apulia region of southern Italy. In the San Joaquin Valley in California, United States, a study was carried out to generate an optimal management policy for pest management in cotton crops, which balances the loss of yield and the cost of pesticide applications [127]. This application employs a Markov decision process model.…”
Section: Bayesian and Markov Networkmentioning
confidence: 99%
“…Bayesian networks have been applied to determine water use and the development of sustainable agriculture, as presented in the research by [126], carried out in the Apulia region of southern Italy. In the San Joaquin Valley in California, United States, a study was carried out to generate an optimal management policy for pest management in cotton crops, which balances the loss of yield and the cost of pesticide applications [127]. This application employs a Markov decision process model.…”
Section: Bayesian and Markov Networkmentioning
confidence: 99%
“…The occurrence of pests has a close relationship with several factors, such as crop status, soil conditions, and meteorological information [58]. When managing pest problems, it is necessary to take pest, crop, and environment data into account.…”
Section: Case Study: a Cbr-based Agricultural Decision Support Systemmentioning
confidence: 99%
“…Data-driven approaches, especially machine learning, can accelerate the discovery of the VOCs related to smoke taint and the predictive modeling of the smoke taint index. In recent years, machine learning algorithms as a part of the Artificial Intelligence (AI) have increasingly been applied in food science and agriculture for a sustainable food system, including predicting micronutrients, creating food ontologies and knowledge bases, precision agriculture, and crop and animal management . Although VOCs in smoke-affected grapes and wine have been reported, the levels contributing to the smoke taint effect of VOCs have been evaluated, and a few studies that model the smoke flavor based on chemical composition have been published recently, the number of studies focusing on data-driven approaches, especially predictive modeling of smoke taint based on VOC concentrations, are still limited.…”
Section: Introductionmentioning
confidence: 99%