首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >Evolution of Deep Neural Network Architecture Using Particle Swarm Optimization to Improve the Performance in Determining the Friction Angle of Soil
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Evolution of Deep Neural Network Architecture Using Particle Swarm Optimization to Improve the Performance in Determining the Friction Angle of Soil

机译:利用粒子群优化的深神经网络架构的演变,提高土壤摩擦角度的性能

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This study focuses on the use of deep neural network (DNN) to predict the soil friction angle, one of the crucial parameters in geotechnical design. Besides, particle swarm optimization (PSO) algorithm was used to improve the performance of DNN by selecting the best structural DNN parameters, namely, the optimal numbers of hidden layers and neurons in each hidden layer. For this aim, a database containing 245 laboratory tests collected from a project in Ho Chi Minh city, Vietnam, was used for the development of the proposed hybrid PSO-DNN model, including seven input factors (soil state, standard penetration test value, unit weight of soil, void ratio, thickness of soil layer, top elevation of soil layer, and bottom elevation of soil layer) and the friction angle was considered as the target. The data set was divided into three parts, namely, the training, validation, and testing sets for the construction, validation, and testing phases of the model. Various quality assessment criteria, namely, the coefficient of determination ( R 2 ), mean absolute error (MAE), and root mean square error (RMSE), were used to estimate the performance of PSO-DNN models. The PSO algorithm showed a remarkable ability to find out an optimal DNN architecture for the prediction process. The results showed that the PSO-DNN model using 10 hidden layers outperformed the DNN model, in which the average correlation improvement increased R 2 by 1.83%, MAE by 5.94%, and RMSE by 8.58%. Besides, a global sensitivity analysis technique was used to detect the most important inputs, and it showed that, among the seven input variables, the elevation of top and bottom of soil played an important role in predicting the friction angle of soil.
机译:本研究侧重于使用深神经网络(DNN)来预测土壤摩擦角,岩土设计中的一个关键参数之一。此外,粒子群优化(PSO)算法用于通过选择最佳结构DNN参数来改善DNN的性能,即每个隐藏层中的隐藏层和神经元的最佳数量。为此目的,一个数据库,其中包括从越南胡志明市的项目中收集的245个实验室测试,用于开发提出的混合PSO-DNN模型,包括七种输入因素(土壤状态,标准渗透试验值,单位土壤重量,空隙率,土层厚度,土层顶部高度,土壤层的底部高度)和摩擦角被认为是靶标。数据集分为三个部分,即培训,验证和测试集的施工,验证和模型测试阶段。各种质量评估标准,即确定系数(R 2),平均绝对误差(MAE)和均方根误差(RMSE)用于估计PSO-DNN模型的性能。 PSO算法显示出了解预测过程的最佳DNN架构的能力。结果表明,使用10个隐藏层的PSO-DNN模型表现出DNN模型,其中平均相关性改善将R 2增加1.83%,MAE为5.94%,RMSE为8.58%。此外,使用全局敏感性分析技术来检测最重要的输入,并且显示,在七个输入变量中,土壤顶部和底部的仰角在预测土壤的摩擦角度时发挥着重要作用。

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