基于动态贝叶斯信念网络的道路遇险参数时序预测

Babitha Philip, Hamad AlJassmi
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引用次数: 0

摘要

为了主动制定有效的养护计划,道路管理机构应该能够预测主要的道路病害参数,如裂缝、车辙、偏转和国际粗糙度指数(IRI)。尽管如此,这些参数在整个路面生命周期中的行为具有很高的不确定性,这是由于各种相互关联的因素随着时间的推移而波动造成的。本研究旨在提出利用动态贝叶斯信念网络建立时间序列预测模型,对道路遇险参数进行概率预测。设计/方法/方法虽然贝叶斯信念网络(BBN)具有捕获与领域中变量相关的不确定性的优点,但由于其马尔可夫和不变的转移概率特性,动态BBN尤其被认为是预测一段时间内道路状况的理想选择。利用2013年至2019年期间从阿拉伯联合酋长国32个主要路段收集的路面数据,开发了四个动态BBN模型来表示车辙、偏转、开裂和IRI。这些模型基于影响路面劣化的几个因素,将其分为三类:交通因素、环境因素和道路特定因素。结果所建立的4种性能预测模型总体精度和信度均在80%以上。独创性/价值建议的方法提供了灵活性,以说明各种情况下的道路状况,这有利于路面维修人员获得预期未来道路状况的现实表示,从而可以优先考虑和优化维修工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Time-series forecasting of road distress parameters using dynamic Bayesian belief networks
Purpose To proactively draw efficient maintenance plans, road agencies should be able to forecast main road distress parameters, such as cracking, rutting, deflection and International Roughness Index (IRI). Nonetheless, the behavior of those parameters throughout pavement life cycles is associated with high uncertainty, resulting from various interrelated factors that fluctuate over time. This study aims to propose the use of dynamic Bayesian belief networks for the development of time-series prediction models to probabilistically forecast road distress parameters. Design/methodology/approach While Bayesian belief network (BBN) has the merit of capturing uncertainty associated with variables in a domain, dynamic BBNs, in particular, are deemed ideal for forecasting road distress over time due to its Markovian and invariant transition probability properties. Four dynamic BBN models are developed to represent rutting, deflection, cracking and IRI, using pavement data collected from 32 major road sections in the United Arab Emirates between 2013 and 2019. Those models are based on several factors affecting pavement deterioration, which are classified into three categories traffic factors, environmental factors and road-specific factors. Findings The four developed performance prediction models achieved an overall precision and reliability rate of over 80%. Originality/value The proposed approach provides flexibility to illustrate road conditions under various scenarios, which is beneficial for pavement maintainers in obtaining a realistic representation of expected future road conditions, where maintenance efforts could be prioritized and optimized.
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