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Evaluating soil reinforcement by plant roots using artificial neural networks

机译:使用人工神经网络评估植物根部的土壤加固

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Soil reinforcement by plant roots and its response to influencing factors are very important for bank stability evaluation and control. Models with improved accuracy are urgently needed for evaluating soil reinforcement. Using a back-propagation (BP) learning algorithm, an artificial neural network (ANN) model with five input variables, including the number of roots, root area ratio, root tensile strength, soil shear strength, and soil moisture content, was developed to simulate the response of soil reinforcement to these factors. A connection weight approach was used to understand the relative importance of each factor. Using a data set published in 2003 and collected in Australia, soil reinforcement of four trees, Casuarina glauca, Eucalyptus amplifolia, Eucalyptus elata and Acacia floribunda, was simulated using three models: BP-ANN, one described by Wu et al. in 1979 and the 2005 fibre bundle model (FBM) of Pollen and Simon. Comparisons of results from these models showed that the BP-ANN model most accurately estimated the soil reinforcement. The simulated results indicated that only the effect of soil moisture content on soil reinforcement was negative. The influence of the other four factors was positive, and the relative importance was in the order: root area ratio > root tensile strength > the number of roots > soil shear strength. This study provides a new approach to soil reinforcement estimation and improves our understanding of soil resistance and bank stability.
机译:植物根系对土壤的强化作用及其对影响因素的响应对河岸稳定性评价和控制非常重要。迫切需要精度更高的模型来评估土壤加固。使用反向传播(BP)学习算法,开发了具有五个输入变量的人工神经网络(ANN)模型,其中包括根数,根面积比,根抗张强度,土壤抗剪强度和土壤水分含量模拟土壤加固对这些因素的响应。使用连接权重方法来了解每个因素的相对重要性。使用2003年发布并在澳大利亚收集的数据集,使用以下三种模型模拟了4种树的土壤强化:木麻黄,桉树桉,桉树和金合欢树:BP-ANN,Wu等人描述的一种。 1979年的Pollen和Simon的2005年光纤束模型(FBM)。这些模型的结果比较表明,BP-ANN模型最准确地估算了土壤加固。模拟结果表明,仅土壤水分含量对土壤加固的影响为负。其他四个因素的影响为正,相对重要性依次为:根面积比>根抗张强度>根数>土壤抗剪强度。这项研究为土壤加固估算提供了一种新方法,并增进了我们对土壤阻力和河岸稳定性的理解。

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