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首页> 外文期刊>Arabian journal of geosciences >New empirical equation to estimate the soil moisture content based on thermal properties using machine learning techniques
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New empirical equation to estimate the soil moisture content based on thermal properties using machine learning techniques

机译:基于机器学习技术的热性能估算土壤水分含量的新经验方程

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摘要

Information about soil moisture content is crucial for the sustenance of agricultural system because it helps to make decision on irrigation scheduling and water management. However, the conventional procedures for determining the soil moisture content need much effort, and time-consuming with large dataset. It is known that soil thermal properties have significant influence on the moisture content of soil. Therefore, the soil moisture content can be determined based on the soil thermal properties, which can easily be measured with portable equipment known as KD2 Pro. This study presents an alternative technique for estimating the soil moisture content from thermal properties using machine learning (ML). Actual measurements of moisture contents and thermal properties at seventy-five points were used. Three ML techniques including artificial neural network (ANN), fuzzy logic (FL), and support vector machine (SVM) were used to predict the moisture content of soil from its thermal properties (thermal conductivity, thermal diffusivity, and specific heat). The results show that all the three techniques (ANN, FL, and SVM) were able to predict moisture content with acceptable errors where the average absolute error is around 5.65%. Moreover, a new empirical equation is presented to allow quick estimation of the moisture content. Ultimately, the developed models can be employed to predict the soil moisture content in any farmland with known thermal properties, which will lead to cost reduction and less time and effort to determine soil moisture content.
机译:有关土壤水分含量的信息对于农业系统的寄托至关重要,因为它有助于决定灌溉调度和水管理。然而,用于确定土壤水分含量的常规程序需要很大的努力,并且用大型数据集耗时。众所周知,土壤热性能对土壤的水分含量具有显着影响。因此,可以基于土壤热性能来确定土壤含水量,这可以通过称为KD2 Pro的便携式设备轻松测量。本研究提供了一种替代技术,用于使用机器学习(ML)从热性能估算土壤水分含量。使用七十五点的水分含量和热性能的实际测量。包括人工神经网络(ANN),模糊逻辑(FL)和支持向量机(SVM)的三毫升技术用于预测其热性质(导热,热扩散率和特定热量)的土壤的水分含量。结果表明,所有三种技术(ANN,FL和SVM)能够预测水分含量,其中平均绝对误差约为5.65%。此外,提出了一种新的经验方程以允许快速估计水分含量。最终,可以使用开发的模型来预测任何具有已知热性能的农田中的土壤水分含量,这将导致降低成本和确定土壤含量的时间和努力。

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