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Artificial Neural Network for Classification and Analysis of Degraded Soils

机译:人工神经网络在退化土壤分类与分析中的应用

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This study aimed to evaluate the Artificial Neural Network (ANN) to establish a classification and analysis of degraded soils and its recovery in response to lime and gypsum application. The analyzed degraded soil was classified as Oxisol, and the physical attributes considered were: soil density, soil porosity (macroporosity and microporosity) and soil penetration resistance. The ANN used in this study is the backpropagation composed of two layers, the middle layer and the output layer, with supervised training. The network has four inputs, that are the physical attributes of the soil, in the middle layer the network contains ten neurons and the output layer only one neuron, which has the function of informing if the soil was recovered (R), partially recovered (PR) or not recovered (NR). The analyzed data come from the year 2012, concerning the depths 0.0 - 0.1 m, 0.1 - 0.2 m and 0.2 - 0.4 m. Considering the performance of ANN, it was verified that the network obtained an adequate training to classify the degraded soils, showing low mean square error of analyzed data. Therefore, ANN is considered an interesting alternative and a powerful automatic tool to classify degraded soils during recovery process.
机译:这项研究旨在评估人工神经网络(ANN),以建立退化土壤的分类和分析及其对石灰和石膏施用的响应。分析的降解土壤被归类为Oxisol,考虑的物理属性为:土壤密度,土壤孔隙度(大孔隙度和微孔度)和土壤渗透阻力。在这项研究中使用的人工神经网络是由两层组成的反向传播,中间层和输出层在监督训练下进行。该网络有四个输入,它们是土壤的物理属性,在中间层,该网络包含十个神经元,输出层仅包含一个神经元,其功能是告知土壤是否被恢复(R),部分恢复( PR)或未恢复(NR)。分析数据来自2012年,深度为0.0-0.1 m,0.1-0.2 m和0.2-0.4 m。考虑到人工神经网络的性能,证明该网络获得了足够的训练以对退化的土壤进行分类,显示出较低的均方误差。因此,人工神经网络被认为是在恢复过程中对退化土壤进行分类的一种有趣且功能强大的自动工具。

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