Evaluating the accuracy of predicted bridge condition using machine learning: the role of condition history

IF 2.6 3区 工程技术 Q2 ENGINEERING, CIVIL Structure and Infrastructure Engineering Pub Date : 2023-11-05 DOI:10.1080/15732479.2023.2274878
Parham Paydavosi, Mohammad Saied Dehghani, Sue McNeil
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Abstract

AbstractEffective maintenance decisions for bridges depend on accurate performance prediction. Machine learning (ML) models use historical bridge performance data to learn and predict performance. However, in many agencies, the condition history of bridges is limited and does not go beyond a few years. The question, therefore, is, to what extent does condition history help us make better predictions? To address this question, a ML model was developed that analysed more than 600,000 bridge decks with 27 years of condition history. Two data selection methods were designed: non-overlapping and overlapping data. The non-overlapping data are typically used to train the model. The overlapping data introduced in this study uses the data more efficiently for model training recognising that strings of historical data convey more information. Longer term predictions were found to be positively impacted by every additional year of condition history. Short-term condition prediction (one or two years) does not need significant historical data. It was also found that overlapping data, compared to non-overlapping data, produced larger training samples and had higher prediction accuracy in the majority of experiments, but at the cost of higher running time due to a larger sample size.Keywords: Artificial intelligencebig datainfrastructure asset managementmachine learningbridge structure deteriorationbridge conditionneural networkperformance prediction Disclosure statementNo potential conflict of interest was reported by the author(s).
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使用机器学习评估预测桥梁状态的准确性:状态历史的作用
摘要有效的桥梁维护决策依赖于准确的性能预测。机器学习(ML)模型使用历史桥梁性能数据来学习和预测性能。然而,在许多机构中,桥梁的状态历史是有限的,不超过几年。因此,问题是,条件历史在多大程度上帮助我们做出更好的预测?为了解决这个问题,开发了一个ML模型,分析了超过60万层具有27年状态历史的桥面。设计了两种数据选择方法:非重叠和重叠数据。非重叠数据通常用于训练模型。本研究中引入的重叠数据更有效地使用数据进行模型训练,识别历史数据字符串传递更多信息。研究发现,每增加一年的病情历史,长期预测就会受到积极影响。短期情况预测(一到两年)不需要重要的历史数据。研究还发现,与非重叠数据相比,重叠数据在大多数实验中产生的训练样本更大,预测精度更高,但由于样本量更大,运行时间也更长。关键词:人工智能大数据基础设施资产管理机器学习桥梁结构恶化桥梁状况神经网络性能预测披露声明作者未报告潜在利益冲突。
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来源期刊
Structure and Infrastructure Engineering
Structure and Infrastructure Engineering 工程技术-工程:机械
CiteScore
9.50
自引率
8.10%
发文量
131
审稿时长
5.3 months
期刊介绍: Structure and Infrastructure Engineering - Maintenance, Management, Life-Cycle Design and Performance is an international Journal dedicated to recent advances in maintenance, management and life-cycle performance of a wide range of infrastructures, such as: buildings, bridges, dams, railways, underground constructions, offshore platforms, pipelines, naval vessels, ocean structures, nuclear power plants, airplanes and other types of structures including aerospace and automotive structures. The Journal presents research and developments on the most advanced technologies for analyzing, predicting and optimizing infrastructure performance. The main gaps to be filled are those between researchers and practitioners in maintenance, management and life-cycle performance of infrastructure systems, and those between professionals working on different types of infrastructures. To this end, the journal will provide a forum for a broad blend of scientific, technical and practical papers. The journal is endorsed by the International Association for Life-Cycle Civil Engineering ( IALCCE) and the International Association for Bridge Maintenance and Safety ( IABMAS).
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