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首页> 外文期刊>Transportation Infrastructure Geotechnology >Artificial Neural Network Prediction Models for Maximum Dry Density and Optimum Moisture Content of Stabilized Soils
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Artificial Neural Network Prediction Models for Maximum Dry Density and Optimum Moisture Content of Stabilized Soils

机译:稳定土壤最大干密度和最佳水分含量的人工神经网络预测模型

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Artificial neural network (ANN) has been applied to many geotechnical engineering problems and has demonstrated many modeling for soil permeability and hydraulic conductivity, soil compaction, and so on. Compaction is one of the most important coefficients for soil improvement. Since many prediction models were used to predicate the maximum dry density and optimum water content for soil alone and soil stabilized with lime, cement, and asphalt, this study is continued from previous studies to present the application of artificial neural network for modeling maximum dry density and optimum water content for soil stabilized with nano-materials. Feed-forward artificial neural network with back-propagation algorithm is utilized to construct comprehensive and accurate models relating the maximum dry density and optimum water content of stabilized soil to the properties of natural soil such as particle-size distribution, plasticity and the type and quantity of stabilizing additives. Two sets of separate ANN prediction models and statistical models, one for maximum dry density and the other for optimum water content are developed for three types of nano-materials, and a combined ANN model for both maximum dry density and optimum water content outputs is developed. The maximum dry density and optimum water content data were trained with the soil’s classification properties and the type and quantity of nano-material additives. A comparison with the test data indicated that the accuracy of the prediction of ANN models was more than 97%. Moreover, the results show that the ANN models are better than the statistical models.
机译:人工神经网络(ANN)已被应用到许多岩土工程问题中,并展示了许多土壤渗透率和水力传导率,土壤压实等模型。压实是土壤改良的最重要系数之一。由于许多预测模型用于预测仅土壤以及用石灰,水泥和沥青稳定的土壤的最大干密度和最佳含水量,因此本研究是在先前研究的基础上继续进行的,提出了人工神经网络在最大干密度建模中的应用纳米材料稳定化土壤的最佳水分含量。利用具有反向传播算法的前馈人工神经网络来构建全面,准确的模型,该模型将稳定土壤的最大干密度和最佳含水量与天然土壤的性质(例如粒度分布,可塑性以及类型和数量)相关联稳定添加剂。针对三种类型的纳米材料开发了两组独立的ANN预测模型和统计模型,一套用于最大干密度,另一套用于最佳水含量,并开发了用于最大干密度和最佳水含量输出的组合ANN模型。利用土壤的分类特性以及纳米材料添加剂的类型和数量对最大干密度和最佳含水量数据进行了训练。与测试数据的比较表明,人工神经网络模型的预测准确性超过97%。此外,结果表明,人工神经网络模型优于统计模型。

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