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Data compression by principal component analysis (PCA) in modelling of soil density parameters based on soil granulation

机译:基于土壤颗粒化的土壤密度参数建模中的主成分分析(PCA)数据压缩

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摘要

The parameter for the density specification of naturally compacted non-cohesive soils and soils in embankments of hydraulic structures is the density index (ID). The parameter used to control the quality of compaction of cohesive and non-cohesive soils artificially thickened, embedded in a variety of embankments is the degree of compaction (Is). In order to determine the parameters of density (ID or Is), compaction parameters (rho(dmin), rho(dmax) or rho(ds), w(opt)) should be examined in a laboratory, which often is a long and difficult procedure to carry out. Therefore, there is a need for methods of improving and shortening the test of compaction parameters based on the development and application of useful correlations. Since compaction parameters are dependent on the soil granulation, a method based on regression and artificial neural networks was applied to develop required correlations. Due to the large number of input variables of neural networks in relation to the number of case studies, a PCA method was used to reduce the number of input variables, which resulted in reduction in the size of neural networks.
机译:天然压实的非粘性土壤和水工路堤中土壤的密度规格参数是密度指数(ID)。用于控制人工增稠的粘性和非粘性土的压实质量的参数是嵌入在各种路堤中的压实度(Is)。为了确定密度参数(ID或Is),应在实验室中检查压实参数(rho(dmin),rho(dmax)或rho(ds),w(opt)),这通常很长且难以执行的程序。因此,需要基于有用的相关性的发展和应用来改进和缩短压实参数的测试的方法。由于压实参数取决于土壤颗粒度,因此采用了基于回归和人工神经网络的方法来开发所需的相关性。由于与案例研究数量相关的神经网络输入变量数量众多,因此使用了PCA方法来减少输入变量的数量,从而减少了神经网络的规模。

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