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Finding Optimal Farming Practices to Increase Crop Yield Through Global-Best Harmony Search and Predictive Models, a Data-Driven Approach

机译:通过全球最佳的和谐搜索和预测模型找到一种最佳的耕作方式,以提高农作物的产量,这是一种数据驱动的方法

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Increasing crops' yields to meet the world's demand for food is one of the great challenges of these times. To achieve this, fanners must make the best decisions based on the resources available for them. In this paper, we propose the use of Global-best Harmony Search (GHS) to find the optimal farming practices and increase the yields according to the local climate and soil characteristics, following the principles of site-specific agriculture. We propose to build an aptitude function based on a random forest model trained on farms' data combined with open data sources for climate and soil. The result is an optimizer that uses a data-driven approach and generates information on the optimized farming practices, allowing the fanner to harness the full potential of his land. The approach was tested on a case-study on maize in the state of Chiapas, Mexico, where the adoption of the practices suggested by our approach was estimated to increase average yield by 1.7 ton/ha, contributing to closing the yield gap. The proposal has the potential to be scaled to other locations, other response variables and other crops.
机译:增加农作物的单产以满足世界对粮食的需求是这些时代的巨大挑战之一。为此,粉丝必须根据可用资源做出最佳决策。在本文中,我们建议遵循特定地点的农业原则,使用全球最佳和谐搜索(GHS)来找到最佳的耕作方式,并根据当地的气候和土壤特征增加产量。我们建议基于对农场数据进行训练的随机森林模型,并结合针对气候和土壤的开放数据源,构建一个智能函数。结果是使用数据驱动方法的优化器,并生成有关优化耕作方式的信息,从而使爱好者能够充分利用其土地的潜力。该方法在墨西哥恰帕斯州的一个玉米案例研究中进行了测试,据估计,采用我们方法所建议的做法后,估计平均单产可增加1.7吨/公顷,有助于缩小单产差距。该提案有可能扩展到其他位置,其他响应变量和其他作物。

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