基于评估机器学习算法的桥梁基础设施智能状态预测模型

IF 3.5 Q3 GREEN & SUSTAINABLE SCIENCE & TECHNOLOGY Smart and Sustainable Built Environment Pub Date : 2024-07-03 DOI:10.1108/sasbe-02-2024-0059
Saleh Abu Dabous, Ahmad Alzghoul, F. Ibrahim
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引用次数: 0

摘要

目的预测模型是交通机构根据现有数据预测桥面状况的重要工具,而人工智能在这方面至关重要。本研究旨在通过评估各种分类和回归算法,提出一种桥面状况预测模型。使用八种不同的特征选择技术及其平均值和频率来确定影响桥面状况评级的关键特征。然后,根据所选特征,采用四种回归算法和四种分类算法预测状况评级,并根据平均绝对误差(MAE)对其性能进行评估和比较。由于平均绝对误差最小(0.369),推荐使用具有 11 个特征的随机森林分类器作为首选的状况预测模型。所确定的主要特征包括上部结构状况、年龄、结构评估、下部结构状况、库存评级、最大跨度长度、桥面面积、日均交通量、运营评级、桥面宽度和跨度数量。此外,它还使用了涵盖整个地区的综合数据集,从而扩大了模型的适用性和代表性。
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Intelligent condition prediction model for bridge infrastructure based on evaluating machine learning algorithms
PurposePrediction models are essential tools for transportation agencies to forecast the condition of bridge decks based on available data, and artificial intelligence is paramount for this purpose. This study aims at proposing a bridge deck condition prediction model by assessing various classification and regression algorithms.Design/methodology/approachThe 2019 National Bridge Inventory database is considered for model development. Eight different feature selection techniques, along with their mean and frequency, are used to identify the critical features influencing deck condition ratings. Thereafter, four regression and four classification algorithms are applied to predict condition ratings based on the selected features, and their performances are evaluated and compared with respect to the mean absolute error (MAE).FindingsClassification algorithms outperform regression algorithms in predicting deck condition ratings. Due to its minimal MAE (0.369), the random forest classifier with eleven features is recommended as the preferred condition prediction model. The identified dominant features are superstructure condition, age, structural evaluation, substructure condition, inventory rating, maximum span length, deck area, average daily traffic, operating rating, deck width, and the number of spans.Practical implicationsThe proposed bridge deck condition prediction model offers a valuable tool for transportation agencies to plan maintenance and resource allocation efficiently, ultimately improving bridge safety and serviceability.Originality/valueThis study provides a detailed framework for applying machine learning in bridge condition prediction that applies to any bridge inventory database. Moreover, it uses a comprehensive dataset encompassing an entire region, broadening the model’s applicability and representation.
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来源期刊
Smart and Sustainable Built Environment
Smart and Sustainable Built Environment GREEN & SUSTAINABLE SCIENCE & TECHNOLOGY-
CiteScore
9.20
自引率
8.30%
发文量
53
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