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Support vector machine to predict the indirect tensile strength of foamed bitumen-stabilised base course materials

机译:支持向量机预测泡沫沥青稳定基层材料的间接拉伸强度

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摘要

Indirect tensile strength (ITS) crucially plays a significant role as a main feature for mix design of foamed bitumen-stabilised base course layers. Due to time-consuming and equipment requirements for conducting the ITS test, it appears to be demanded to develop the numerical models in order to predict the ITS of a foamed bitumen-stabilised base course. In this paper, the novel artificial intelligence algorithm of support vector machine regression (SVR) has been applied to predict the accurate value of indirect tensile strength (ITS) of the foamed bitumen-stabilised base course. Moreover, two kernels of SVR including the polynomial kernel and radial basis function (RBF) kernel have been investigated to predict the accurate ITS values of both unsoaked and soaked foamed bitumen-stabilised base separately. In order to create the model and to validate the algorithm performance, about 80% of data were randomly selected as the training data set and the remaining ones applied as the testing data set. The obtained results indicate that the developed SVR models produce a high prediction ability for this study. In addition, the obtained predicting correlation coefficients (R-2) of polynomial and RBF kernels for both unsoaked and soaked samples were compared individually and, eventually, the RBF kernel of the SVR model was selected as the most accurate computational predicting model.
机译:间接拉伸强度(ITS)作为泡沫沥青稳定基层的混合设计的主要特征至关重要。由于进行ITS测试的时间和设备要求,似乎需要开发数值模型来预测泡沫沥青稳定基层的ITS。本文采用了一种新的支持向量机回归(SVR)人工智能算法来预测泡沫沥青稳定基层的间接抗拉强度(ITS)的准确值。此外,已经研究了SVR的两个内核,包括多项式内核和径向基函数(RBF)内核,以分别预测未浸泡和浸泡的泡沫沥青稳定基料的准确ITS值。为了创建模型并验证算法性能,随机选择了大约80%的数据作为训练数据集,其余的用作测试数据集。获得的结果表明,所开发的SVR模型对该研究产生了很高的预测能力。此外,分别比较了未浸泡和浸泡样品的多项式和RBF核的预测相关系数(R-2),最终选择了SVR模型的RBF核作为最准确的计算预测模型。

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