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首页> 外文期刊>Canadian Journal of Civil Engineering >Predictive models for dynamic modulus using weighted least square nonlinear multiple regression model
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Predictive models for dynamic modulus using weighted least square nonlinear multiple regression model

机译:使用加权最小二乘非线性多元回归模型的动态模量预测模型

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摘要

The objectives of this paper are (1) to evaluate the dynamic modulus prediction models and (2) to develop an al-ternative prediction model using the nonlinear multiple regression method. A total of 14 field produced mixture types (in a total of 1314 measurements) with various designed traffic levels and aggregate sizes were used. Two prediction models, the Witczak prediction model developed in 2006 and the Hirsch model developed in 2003, were revised in this study. In addition, the revised Witczak prediction equation was simplified using fewer independent variables (11 variables instead of 21 variables); and values of the newly revised coefficients with improved accuracy for Hirsch model are presented in this paper. A new model using the weighted least square nonlinear multiple regression model (WLS NLR) was developed in this study. It was found that the WLS NLR has a better prediction when compared with other prediction models used in this study.
机译:本文的目标是(1)评估动态模量预测模型,以及(2)使用非线性多元回归方法开发替代预测模型。总共使用了14种现场生产的混合气类型(总共进行了1314次测量),具有不同的设计流量水平和总量。本研究修订了两个预测模型,即2006年开发的Witczak预测模型和2003年开发的Hirsch模型。另外,使用更少的自变量(11个变量而不是21个变量)简化了修订的Witczak预测方程。以及本文提出的具有改进精度的Hirsch模型新修正系数的值。在这项研究中,开发了使用加权最小二乘非线性多元回归模型(WLS NLR)的新模型。发现与本研究中使用的其他预测模型相比,WLS NLR具有更好的预测。

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