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EVALUATION OF THE COMPRESSIBILITY PARAMETERS OF SOILS USING SOFT COMPUTING METHODS

机译:用软计算方法评估土的可压缩性参数

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摘要

The compressibility parameters such as the compression index and the recompression index are necessary in the settlement calculation for fine-grained soils that is essential to geotechnical designs. However, determination of the compressibility parameters from odometer tests takes a relatively long time and leads to a very demanding experimental working program in the laboratory. Geotechnical engineering literature involves many studies based on multiple regression analysis (MLR). This study was aimed at predicting the compressibility parameters by soft computing methods such as artificial neural networks (ANN) and the quasi-Newton algorithm developed with the differential evolution method (QN-DE). The selected variables for each method are the index parameters of natural finegrained soils such as natural water content and initial void ratio. The results obtained from MLR, ANN, and QN-DE models were compared with each other at the end of the study.
机译:在土工设计中必不可少的细颗粒土的沉降计算中,诸如压缩指数和再压缩指数之类的可压缩性参数是必需的。然而,从里程表测试确定可压缩性参数花费相对较长的时间,并且导致实验室中非常苛刻的实验工作程序。岩土工程文献涉及基于多元回归分析(MLR)的许多研究。这项研究旨在通过软计算方法(如人工神经网络(ANN)和由差分演化方法(QN-DE)开发的拟牛顿算法)来预测可压缩性参数。每种方法选择的变量是天然细粒土壤的指标参数,例如天然水含量和初始孔隙率。在研究结束时,将从MLR,ANN和QN-DE模型获得的结果进行了比较。

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