A study on the impact on predicted soil moisture based on machine learning-based open-field environment variables

Gwang Hoon Jung, Meong-Hun Lee
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Abstract

As understanding sudden climate change and agricultural productivity becomes increasingly important due to global warming, soil moisture prediction is emerging as a key topic in agriculture. Soil moisture has a significant impact on crop growth and health, and proper management and accurate prediction are key factors in improving agricultural productivity and resource management. For this reason, soil moisture prediction is receiving great attention in agricultural and environmental fields. In this paper, we collected and analyzed open field environmental data using a pilot field through random forest, a machine learning algorithm, obtained the correlation between data characteristics and soil moisture, and compared the actual and predicted values of soil moisture. As a result of the comparison, the prediction rate was about 92%. It was confirmed that the accuracy was . If soil moisture prediction is carried out by adding crop growth data variables through future research, key information such as crop growth speed and appropriate irrigation timing according to soil moisture can be accurately controlled to increase crop quality and improve productivity and water management efficiency. It is expected that this will have a positive impact on resource efficiency.
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基于机器学习的露地环境变量对预测土壤湿度影响的研究
由于全球变暖,了解气候突变和农业生产率变得越来越重要,土壤水分预测正成为农业领域的一个重要课题。土壤水分对作物的生长和健康有重大影响,适当的管理和准确的预测是提高农业生产力和资源管理的关键因素。因此,土壤水分预测在农业和环境领域受到极大关注。本文通过机器学习算法随机森林对试验田的露地环境数据进行了采集和分析,得到了数据特征与土壤湿度之间的相关性,并对土壤湿度的实际值和预测值进行了比较。比较结果显示,预测率约为 92%。如果通过今后的研究增加作物生长数据变量来进行土壤水分预测,就能准确控制作物生长速度和根据土壤水分确定适当的灌溉时间等关键信息,从而提高作物品质,改善生产力和水资源管理效率。预计这将对资源效率产生积极影响。
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