Beijing Key Laboratory for Cooperative Vehicle Infrastructure Systems and Safety Control, School of Transportation Science and Engineering, Beihang University, Beijing 100191, People's Republic of China.
Beijing Municipal Road and Bridge Management and Maintenance Group Co. LTD, Beijing 100097, People's Republic of China.
Philos Trans A Math Phys Eng Sci. 2023 Sep 4;381(2254):20220175. doi: 10.1098/rsta.2022.0175. Epub 2023 Jul 17.
A correct understanding of the pavement performance change law forms the premise of the scientific formulation of maintenance decisions. This paper aims to develop a predictive model taking into account the costs of different types of maintenance works that reflects the continuous true usage performance of the pavement. The model proposed in this study was trained on a dataset containing five-year maintenance work data on urban roads in Beijing with pavement performance indicators for the corresponding years. The same roads were matched and combined to obtain a set of sequences of pavement performance changes with the features of the current year; with the recurrent-neural-network-based long short-term memory (LSTM) network and gate recurrent unit (GRU) network, the prediction accuracy of highway pavement performance on the test set was significantly increased. The prediction result indicates that the generalization ability of the improved recurrent neural network model is satisfactory, with the achieving 0.936, and of the two models the GRU model is more efficient, with an accuracy that reaches almost the same level as LSTM but with the training convergence time reduced to 25 s. This study demonstrates that data generated by the work of maintenance units can be used effectively in the prediction of pavement performance. This article is part of the theme issue 'Artificial intelligence in failure analysis of transportation infrastructure and materials'.
正确认识路面使用性能的变化规律是科学制定养护决策的前提。本文旨在建立一种考虑不同养护类型成本的预测模型,该模型反映了路面的持续真实使用性能。本研究提出的模型是基于包含北京市城市道路五年养护工作数据的数据集进行训练的,这些数据包含了相应年份的路面使用性能指标。对相同的道路进行匹配和组合,得到了一组具有当年特征的路面使用性能变化序列;采用基于递归神经网络的长短时记忆(LSTM)网络和门控循环单元(GRU)网络,显著提高了公路路面性能的测试集的预测精度。预测结果表明,改进后的循环神经网络模型的泛化能力令人满意,其准确率达到 0.936,而在两个模型中,GRU 模型效率更高,准确率几乎与 LSTM 相同,但训练收敛时间缩短到 25s。本研究表明,养护单位的工作所产生的数据可以有效地用于路面性能的预测。本文是“交通运输基础设施和材料的失效分析中的人工智能”主题的一部分。