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Strength characteristics modeling of lateritic soils using adaptive neural networks

机译:利用自适应神经网络对红土的强度特性建模

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摘要

Laterite, as a soil group rather than a particular material, is more commonly found in the leached soils of humid tropics. It is difficult to assess the strength parameters of lateritic soils from the existing literature due to variability in test methods, degree of compaction, and actual soil characteristics. The California Bearing Ratio (CBR) has been suggested as a more realistic basis for evaluating the quality and strength of lateritic soils and gravels for their use in pavement construction. This paper examines the use of neural networks, especially, generalized adaptive neural networks, for modeling the field strength characteristics based on CBR, and compares the results to a more traditional back-propagation neural network approach. It is found that both methods are fairly applicable in strength characteristics modeling of lateritic soils. However, the generalized adaptive neural network seems to be more successful in its predictive capability, and demonstrates that few input variables are needed to determine the strength characteristics of lateritic soils. The input data to the adaptive neural network include the index properties, field density and moisture content.
机译:红土作为土壤群而不是特定的物质,更常见于热带潮湿的淋溶土壤中。由于测试方法,压实度和实际土壤特性的差异,很难从现有文献中评估红土的强度参数。已建议使用加利福尼亚承载比(CBR)作为评估用于路面施工的红土和砾石的质量和强度的更现实的基础。本文研究了神经网络(尤其是广义自适应神经网络)在基于CBR的场强特征建模中的应用,并将结果与​​更传统的反向传播神经网络方法进行了比较。发现这两种方法在红土的强度特性建模中都相当适用。然而,广义自适应神经网络的预测能力似乎更为成功,并且证明了确定红土的强度特性所需的输入变量很少。自适应神经网络的输入数据包括索引属性,场密度和水分含量。

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