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Investigation of complex modulus of base and EVA modified bitumen with Adaptive-Network-Based Fuzzy Inference System

机译:基于自适应网络的模糊推理系统研究基层和EVA改性沥青的复模量

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This study aims to model the complex modulus of base and ethylene-vinyl-acetate (EVA) modified bitumen by using Adaptive-Network-Based Fuzzy Inference System (ANFIS). The complex modulus of base and EVA polymer modified bitumen (PMB) samples were determined using dynamic shear rheometer (DSR). PMB samples have been produced by mixing a 50/70 penetration grade base bitumen with EVA copolymer at five different polymer contents. In ANFIS modeling, the bitumen temperature, frequency and EVA content are the parameters for the input layer and the complex modulus is the parameter for the output layer. The hybrid learning algorithm related to the ANFIS has been used in this study. The variants of the algorithm used in the study are two input membership functions and three input membership functions for each of the all inputs. The input membership functions are triangular, gbell, gauss2, and gauss. The results showed that EVA polymer modified bitumens display reduced temperature susceptibility than base bitumens. In the light of analysis the Adaptive-Network-Based Fuzzy Inference System and statistical methods can be used for modeling the complex modulus of bitumen under varying temperature and frequency. The analysis indicated that the training accuracy is improved by decreasing the number of input membership functions and the utilization of the two gauss input membership functions appeared to be most optimal topology. Besides, it is realized that the predicted complex modulus is closely related with the measured (actual) complex modulus.
机译:本研究旨在通过使用基于自适应网络的模糊推理系统(ANFIS)对基础和乙烯-乙酸乙烯酯(EVA)改性沥青的复数模量进行建模。使用动态剪切流变仪(DSR)确定基础样品和EVA聚合物改性沥青(PMB)样品的复数模量。通过将50/70渗透等级的基础沥青与EVA共聚物以五种不同的聚合物含量混合来生产PMB样品。在ANFIS建模中,沥青温度,频率和EVA含量是输入层的参数,复数模量是输出层的参数。这项研究中使用了与ANFIS相关的混合学习算法。本研究中使用的算法的变体是,对于所有输入中的每一个,两个输入隶属度函数和三个输入隶属度函数。输入隶属函数为三角形,gbell,gauss2和gauss。结果表明,EVA聚合物改性的沥青显示出比基础沥青更低的温度敏感性。根据分析,可以使用基于自适应网络的模糊推理系统和统计方法来模拟在温度和频率变化的情况下沥青的复数模量。分析表明,通过减少输入隶属度函数的数量可以提高训练精度,并且两个高斯输入隶属度函数的利用似乎是最理想的拓扑。此外,认识到预测的复数模量与测量的(实际)复数模量密切相关。

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