Machine Learning Models to Predict Soil Moisture for Irrigation Schedule

Md Nahin Islam, D. Logofătu
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Abstract

The agriculture industry must alter its operations in the context of climate change. Farmers can plan their irrigation operations more effectively and efficiently with the exact measurement and forecast of moisture content in their fields. Sensor-based irrigation and machine learning algorithms have the potential to facilitate farmers with significantly effective water management solutions. However, today’s machine learning methods based on sensor data necessitate a huge quantity of data for effective training, which poses a number of challenges including affordability, battery life, internet availability, evaporation issues, and other factors. The purpose of this report is to find an efficient machine learning model by doing metric evaluation and comparing the R-squared value, that can predict soil humidity within a certain crop field scenario for the next couple of days using historical data.
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预测灌溉计划土壤湿度的机器学习模型
农业必须在气候变化的背景下改变其经营方式。农民可以通过精确测量和预测田地中的水分含量,更有效地规划灌溉作业。基于传感器的灌溉和机器学习算法有可能为农民提供非常有效的水管理解决方案。然而,当今基于传感器数据的机器学习方法需要大量数据进行有效训练,这带来了许多挑战,包括可负担性、电池寿命、互联网可用性、蒸发问题和其他因素。本报告的目的是通过度量评估和比较r平方值来找到一个有效的机器学习模型,该模型可以使用历史数据预测未来几天特定农田场景中的土壤湿度。
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