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首页> 外文期刊>Iranian Journal of Science and Technology, Transactions of Civil Engineering >Determination of Shear Strength Parameters of Municipal Solid Waste from Its Physical Properties
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Determination of Shear Strength Parameters of Municipal Solid Waste from Its Physical Properties

机译:从物理性质确定市政固体废物的剪切强度参数

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摘要

In this research, artificial neural networks (ANNs) were used to present models for predicting the shear strength parameters of the municipal solid waste (MSW) obtained from the triaxial tests results from the literature. Two kinds of neural networks were used in this paper, including radial basis function (RBF) and multilayer perceptron (MLP). Physical properties of MSW, including the fiber content, moisture content, dry unit weight and axial strain, were used as the input data and the drained MSW shear strength parameters; that is, cohesion and friction angle were considered as the output data. In this paper, 80 and 90% of the total set of data were used for training of the networks and then they were tested for the total set of data (100% of the data) to obtain the best neural network model and to find out the effect of learning for prediction of both sets of data (learning and testing set of data). The results of the correlation coefficient parameter lead us to the fact that the networks with similar geometry, but more training data, predict more accurately. This value for the MLP with 80% training data is the minimum and equal to 0.95 and 0.86 for the cohesion and friction angle, respectively. It is maximum for RBF network with 90% training data and equal to 0.97 and 0.89 for the cohesion and friction angle, respectively. In addition, the RBF networks predict less mean relative values relative to the MLP networks. Among the different networks, mean relative error for RBF network with 90% training data is minimum and equal to 7.4 for the cohesion and 8 for the friction angle, respectively. Based on the analysis of the statistical parameters, the RBF network predicts more accurately. Results show that the ANNs are powerful tools for predicting the shear strength parameters of MSW.
机译:在该研究中,人工神经网络(ANNS)用于提出用于预测从文献中获得的城市固体废物(MSW)的剪切强度参数的模型。本文使用了两种神经网络,包括径向基函数(RBF)和多层erceptron(MLP)。 MSW的物理性质,包括纤维含量,水分含量,干燥单位重量和轴向应变,用作输入数据和排出的MSW剪切强度参数;也就是说,凝聚力和摩擦角被认为是输出数据。在本文中,80%和90%的数据集合用于培训网络,然后测试它们的总数据集(100%的数据),以获得最佳的神经网络模型并找出学习对两组数据预测的影响(学习和测试集合)。相关系数参数的结果引导我们到具有类似几何形状的网络,但更多的培训数据,预测更准确。具有80%训练数据的MLP的该值分别为凝聚和摩擦角的最小且等于0.95和0.86。对于凝聚和摩擦角度,RBF网络具有90%训练数据的RBF网络,分别为0.97和0.89。另外,RBF网络相对于MLP网络预测了更少的平均相对值。在不同的网络中,具有90%训练数据的RBF网络的平均相对误差分别为摩擦角的内聚力和8的最小且等于7.4。基于对统计参数的分析,RBF网络更准确地预测。结果表明,ANNS是预测MSW剪切强度参数的强大工具。

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