Crop management recommendations: Agroptimizer decision support tool vs. local experts

IF 0.8 Q3 AGRONOMY Crop, Forage and Turfgrass Management Pub Date : 2024-04-03 DOI:10.1002/cft2.20277
Spyridon Mourtzinis, Shawn P. Conley
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Abstract

Farmers are making decisions every year under weather variability, input cost fluctuations, and commodity price uncertainty. Traditional replicated field trials cannot recommend actionable knowledge at the field level accounting for all sources of variability and uncertainty. Decision support tools aim to fill the gap that traditional agricultural research cannot. Agroptimizer (www.agroptimizer.com), a machine learning cloud-based decision support tool (DST) has a user-friendly interface that users can easily input field and management information and was designed to identify optimum corn and soybean cropping systems, for maximum yield and profit, across the United States. The recommended management practices of the DST were compared against cropping systems that were generated by University of Wisconsin researchers (called typical hereafter) across Wisconsin between 2021 and 2023. Agroptimizer recommendations for corn resulted in similar yield and profit compared to typical. For soybean, Agroptimizer recommendations resulted in increased yield and similar profit compared to typical. There was no downside yield and profit risk difference between Agroptimizer-based and typical cropping systems for both crops. Overall results showed that Agroptimizer successfully identified cropping systems that resulted in high yield and profit for both crops suggesting that in the absence of available expert recommendation, it can provide management practices with high yield and profit potential. Agroptimizer is being constantly updated and will be evaluated in additional locations across the United States in subsequent years.

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作物管理建议:Agroptimizer 决策支持工具与当地专家的比较
农民每年都要在天气多变、投入成本波动和商品价格不确定的情况下做出决策。传统的重复田间试验无法在田间层面提供可操作的知识,无法考虑所有的变异性和不确定性来源。决策支持工具旨在弥补传统农业研究的不足。Agroptimizer(www.agroptimizer.com)是一款基于机器学习的云决策支持工具(DST),具有用户友好型界面,用户可以轻松输入田间和管理信息,其设计目的是在全美范围内确定最佳的玉米和大豆种植系统,以实现最高产量和利润。DST 推荐的管理方法与威斯康星大学研究人员在 2021 年至 2023 年期间在威斯康星州各地生成的种植系统(以下称为典型系统)进行了比较。Agroptimizer 推荐的玉米产量和利润与典型值相近。对于大豆,Agroptimizer 建议的产量和利润与典型值相近。基于 Agroptimizer 的种植系统与典型种植系统相比,两种作物的产量和利润风险都没有下降。总体结果表明,Agroptimizer 成功确定了两种作物的高产和高利润种植系统,这表明在没有专家建议的情况下,Agroptimizer 可以提供具有高产和高利润潜力的管理方法。Agroptimizer 正在不断更新,随后几年将在美国其他地方进行评估。
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来源期刊
Crop, Forage and Turfgrass Management
Crop, Forage and Turfgrass Management Agricultural and Biological Sciences-Agronomy and Crop Science
CiteScore
1.30
自引率
16.70%
发文量
49
期刊介绍: Crop, Forage & Turfgrass Management is a peer-reviewed, international, electronic journal covering all aspects of applied crop, forage and grazinglands, and turfgrass management. The journal serves the professions related to the management of crops, forages and grazinglands, and turfgrass by publishing research, briefs, reviews, perspectives, and diagnostic and management guides that are beneficial to researchers, practitioners, educators, and industry representatives.
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