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An artificial neural network for classifying and predicting soil moisture and temperature using Levenberg-Marquardt algorithm

机译:利用Levenberg-Marquardt算法对土壤水分和温度进行分类和预测的人工神经网络

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The purpose of this study was to design an artificial neural network that classifies soils and quantitatively predict the soil moisture and temperature in a given soil type based on the remotely sensed data. Two different training algorithms, viz., backpropagation (BP) and Levenberg-Marquardt (LM), were employed. The accuracy of the networks studied ranged from 96.68 to 98.8%. The networks trained with LM algorithm were faster. It is concluded that neural networks can be used as a paradigm in soil classification as well as in predicting the quantity of soil moisture and temperature accurately, using remotely sensed microwave data, and thus helps achieve a proper crop management.
机译:这项研究的目的是设计一个人工神经网络,该网络可以对土壤进行分类,并根据遥感数据定量预测给定土壤类型中的土壤水分和温度。使用了两种不同的训练算法,即反向传播(BP)和Levenberg-Marquardt(LM)。研究的网络的准确性范围为96.68至98.8%。使用LM算法训练的网络速度更快。结论是,神经网络可以用作土壤分类的范例,并可以利用遥感的微波数据准确地预测土壤水分和温度的数量,从而有助于实现适当的作物管理。

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