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首页> 外文期刊>International Journal of Technology >Prediction of the High-Temperature Performance of a Geopolymer Modified Asphalt Binder using Artificial Neural Networks
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Prediction of the High-Temperature Performance of a Geopolymer Modified Asphalt Binder using Artificial Neural Networks

机译:使用人工神经网络预测地质聚合物改性沥青粘合剂的高温性能

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摘要

Complexity in the behaviour of an asphalt binder is further escalated with geopolymer (fly ash and alkali liquid) modification, thus making it difficult to accurately predict the performance of the binder. This study employs artificial neural network modelling to predict the complex shear modulus, storage modulus, loss modulus and phase angle outcomes of experimental results from dynamic shear rheometer (DSR) oscillation tests under four separate scenarios. The proposed artificial neural network models received test conditions (temperature and frequency) and three different geopolymer concentrations (3%, 5% and 7% by the weight of bitumen) as the predictor parameters.? The variants of the optimal algorithms were Levenberg-Marquardt (LM), Scaled conjugate gradient and Polak-Ribiere conjugate gradient (CPG) training algorithms with different combinations of network structures and tan-sig and log-sig as activation functions. The coefficient of determination, covariance and root mean square error (RMSE) were used as statistical measures of model prediction performance. Based on the statistical performance indicators, the LM algorithm with a 3-5-1 network architecture and tan-sig as the activation function was the best performing model for predicting the complex modulus with R2 values of 0.996 for the training dataset and 0.971 for the testing dataset and RMSE values of 0.118 and 0.139 for the training and testing datasets, respectively. Furthermore, it was observed that the least efficient model was the phase angle prediction model developed with the CPG training algorithm, which had a 3-8-1 network architecture and log-sig as the activation function.? The model yielded R2 values of 0.909 and 0.829 for the training and testing datasets, respectively. Poor prediction performance for the testing dataset indicated that the model was unable to learn complexity in the data and would perform below a significance level of 0.90 in predicting using untrained data.
机译:在沥青粘合剂的行为中的复杂性进一步升级了地质聚合物(飞灰和碱液体)改性,因此难以准确地预测粘合剂的性能。该研究采用人工神经网络建模,以预测动态剪切流量计(DSR)振荡测试在四个独立场景下的实验结果的复杂剪切模量,储存模量,损耗模量和相位角结果。提出的人工神经网络模型接受了测试条件(温度和频率)和三种不同的地质聚合物浓度(3%,5%和7%的沥青重量)作为预测器参数。最佳算法的变种是Levenberg-Marquardt(LM),缩放共轭梯度和波隆 - Ribiere缀合物梯度(CPG)训练算法,具有网络结构和TAN-SIG的不同组合和LOG-SIG作为激活功能。使用系数,协方差和均方误差(RMSE)被用作模型预测性能的统计测量。基于统计性能指标,带有3-5-1网络架构和TAN-SIG作为激活功能的LM算法是最佳性能模型,用于预测训练数据集的R2值为0.996的复数模量和0.971为培训和测试数据集测试数据集和RMSE值为0.118和0.139。此外,观察到最低效率模型是与CPG训练算法开发的相位角预测模型,该算法具有3-8-1网络架构和Log-SIG作为激活功能。该模型分别产生0.909和0.829的R2值,分别用于训练和测试数据集。测试数据集的预测性能差表明,该模型无法学习数据中的复杂性,并且在使用未训练的数据预测时,将在0.90的显着性水平下执行。

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