Machine learning approach for predicting bridge components’ condition ratings

IF 2.2 Q2 CONSTRUCTION & BUILDING TECHNOLOGY Frontiers in Built Environment Pub Date : 2023-10-09 DOI:10.3389/fbuil.2023.1254269
Md. Manik Mia, Sabarethinam Kameshwar
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Abstract

Information on bridge condition rating is critical to make decisions regarding rehabilitation or replacement of bridges. Currently, bridge components’ condition ratings are evaluated manually using inspection reports. Markov chain and Petri net models are most commonly used for predicting future values of bridge parameters, however, applicability of these models for a regional or statewide portfolio of bridges may be limited. The existing data based models have low prediction accuracy. Hence, a data and machine learning based approach is presented herein for predicting the future condition values of major components—deck, superstructure and substructure—in a portfolio of bridges with an objective to develop a more accurate approach. National Bridge Inventory (NBI) was used to get information on current and past bridge components’ condition from year 1992–2019 along with other parameters such as ownership, maintenance responsibility and age. After selecting important parameters, this data was used to train three RUSBoost based random forest models for predicting future values of deck, superstructure, and substructure conditions, respectively. The prediction accuracy of the developed models were found above 93%, thereby addressing the limitation of poor prediction accuracy of the existing studies. Additionally, the uncertainties associated with the random forest based predictions were quantified at the regional level and for individual bridges. On-system concrete pre-cast slab units and steel I-beam bridges in Louisiana were selected to demonstrate the proposed approach and predict bridge components condition ratings for years 2020 and 2021.
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预测桥梁构件状态等级的机器学习方法
有关桥梁状况等级的信息对作出有关修复或更换桥梁的决定至关重要。目前,桥梁部件的状态等级是通过检查报告手工评估的。马尔可夫链和Petri网模型最常用于预测桥梁参数的未来值,然而,这些模型对区域或全州桥梁组合的适用性可能受到限制。现有的基于数据的模型预测精度较低。因此,本文提出了一种基于数据和机器学习的方法,用于预测桥梁组合中主要部件(甲板、上部结构和下部结构)的未来状态值,目的是开发更准确的方法。国家桥梁清单(NBI)用于获取1992年至2019年期间当前和过去桥梁部件状况的信息,以及所有权、维护责任和年龄等其他参数。在选择重要参数后,这些数据被用于训练三个基于RUSBoost的随机森林模型,分别用于预测甲板、上部结构和下部结构条件的未来值。所建立的模型预测精度均在93%以上,解决了现有研究预测精度较差的局限性。此外,在区域水平和单个桥梁上量化了与随机森林预测相关的不确定性。选择路易斯安那州的系统混凝土预制板单元和钢工字梁桥来演示所提出的方法,并预测2020年和2021年的桥梁组件状态等级。
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来源期刊
Frontiers in Built Environment
Frontiers in Built Environment Social Sciences-Urban Studies
CiteScore
4.80
自引率
6.70%
发文量
266
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