基于DEPSO-BP神经网络的沥青路面性能预测

IF 1.1 4区 工程技术 Q3 ENGINEERING, CIVIL
Rui Tao, Pengfei Ding, Rui Peng, Jiangang Qiao
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引用次数: 0

摘要

随着机器学习在计算机科学和其他领域的应用迅速普及,神经网络技术在预测和解决非线性关系以及处理不确定的大面积路面问题方面具有高效率,已经成功地模拟了在用路面的性能。本文针对沥青路面预防性养护的最佳时机问题,以准确预测公路沥青路面的状况指数(pavement condition index, PCI),建立了以预防性养护适宜性为核心的高精度、长周期、多因素预测模型。该预测模型称为差分进化粒子群优化反向传播(DEPSO-BP)神经网络,通过灰色关联分析(GCA)确定预测模型的输入维数,并利用DEPSO提高BP神经网络的搜索效率和参数连续性预测模型的沥青路面使用性能。最后以甘肃省青兰高速公路(G22) PCI为例进行验证,并与4种模型的预测结果进行比较。结果表明,基于DEPSO-BP神经网络的多因素预测模型具有良好的泛化能力。该模型对提高道路养护经济效益具有重要意义,可在长周期过程中为后续道路养护预算应用和决策方案提供模型参考和科学依据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of asphalt pavement performance based on DEPSO-BP neural network
With the application of machine learning rapidly gaining popularity in computer science and other fields, neural network techniques have successfully simulated the performance of in-service pavements as they are efficient in predicting and solving nonlinear relationships and in dealing with uncertain large-area pavement problems. In this paper, we address the problem of the optimal timing of preventive maintenance of asphalt pavements to accurately predict the condition index (pavement condition index, PCI) of highway asphalt pavements and develop a highly accurate, long-period, multifactor prediction model with the suitability of preventive maintenance at its core. The prediction model is called differential evolution particle swarm optimization back propagation (DEPSO-BP) neural network, and the input dimension of the prediction model is determined by gray correlation analysis (GCA), and DEPSO is used to improve the search efficiency of BP neural network and the asphalt pavement usage performance with parameter continuity prediction model. Finally, the Qinglan Highway (G22) PCI of Gansu Province, China, is selected for example validation, and the prediction results are compared with those of the four models. The results show that the multifactor prediction model based on DEPSO-BP neural network has good generalization ability. This model is important for improving the economic efficiency of road maintenance, and can be used in the long-cycle process to provide model reference and scientific basis for the subsequent road maintenance budget application and decision-making scheme.
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来源期刊
Canadian Journal of Civil Engineering
Canadian Journal of Civil Engineering 工程技术-工程:土木
CiteScore
3.00
自引率
7.10%
发文量
105
审稿时长
14 months
期刊介绍: The Canadian Journal of Civil Engineering is the official journal of the Canadian Society for Civil Engineering. It contains articles on environmental engineering, hydrotechnical engineering, structural engineering, construction engineering, engineering mechanics, engineering materials, and history of civil engineering. Contributors include recognized researchers and practitioners in industry, government, and academia. New developments in engineering design and construction are also featured.
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