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Using artificial neural network to predict dry density of soil from thermal conductivity

机译:使用人工神经网络从热导率预测土壤干密度

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Artificial neural network (ANN) was used to predict the dry density of soil from its thermal conductivity. The study area is a farmland located in Abeokuta, Ogun State, Southwestern Nigeria. Thirty points were sampled in a grid pattern, and the thermal conductivities were measured using KD-2 Pro thermal analyser. Samples were collected from 20 sample points to determine the dry density in the laboratory. MATLAB was used to perform the ANN analysis in order to predict the dry density of soil. The ANN was able to predict dry density with a root-mean-square error (RMSE) of 0.50 and a correlation coefficient (R~(2)) of 0.80. The validation of our model between the actual and predicted dry densities shows R~(2) to be 0.99. This fit shows that the model can be applied to predict the dry density of soil in study areas where the thermal conductivities are known.
机译:人工神经网络(ANN)用于根据土壤的热导率预测土壤的干燥密度。研究区域是位于尼日利亚西南部奥贡州Abeokuta的一块农田。以网格模式采样了30个点,并使用KD-2 Pro热分析仪测量了热导率。从20个采样点收集样品,以确定实验室的干密度。为了预测土壤的干密度,使用MATLAB进行了ANN分析。人工神经网络能够以0.50的均方根误差(RMSE)和0.80的相关系数(R〜(2))预测干密度。在实际和预测的干密度之间的模型验证表明,R〜(2)为0.99。这种拟合表明,该模型可用于预测导热系数已知的研究区域中土壤的干密度。

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