从桥梁荷载响应中确定卡车类型的机器学习方法

IF 3.6 Q1 ENGINEERING, CIVIL
Yueren Wang, I. Flood
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引用次数: 0

摘要

本文关注的是各种机器学习方法的发展和比较,这些方法可以根据桥梁结构内部的动态响应来确定过桥卡车的类型,即所谓的运动中称重问题。运动称重是一个丰富的工程问题,对当前的机器学习技术提出了许多挑战,因此被提出作为指导和评估该人工智能领域应用进展的基准。首先回顾了使用机器学习和启发式搜索技术确定卡车类型和装载属性的现有方法。迄今为止最有前途的方法是人工神经网络,然后在考虑两种建模技术的一系列配置的综合研究中将其与支持向量机进行比较。采用局部散点平滑模式,为每种模型类型选择最优设计参数集。三种主要的模型格式被考虑:(i)一个单一的模型结构与一个对所有的卡车类型分类策略;(ii)一组子模型,每个子模型专用于一种卡车类型,采用“一对全”的分类策略;(iii)一组子模型,每个子模型都致力于在一对一的分类策略中对卡车进行选择。总的来说,使用一系列子模型的格式在卡车分类中表现最好,支持向量机比人工神经网络稍微有优势。文章最后提出了一些建议,以便将这项工作扩展到更广泛的问题范围。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning approaches to determining truck type from bridge loading response
The paper is concerned with the development and comparison of alternative machine learning methods of determining the type of truck crossing a bridge from the dynamic response it induces within the bridge structure, the so-called weigh-in-motion problem. Weigh-in-motion is a rich engineering problem presenting many challenges for current machine learning technologies, and for this reason is proposed as a benchmark for guiding and assessing advances in the application of this field of artificial intelligence. A review is first provided of existing methods of determining truck types and loading attributes using both machine learning and heuristic search techniques. The most promising approach to date, that of artificial neural networks, is then compared to support vector machines in a comprehensive study considering a range of configurations of both modeling techniques. A local scatter point smoothing schema is adopted as a means of selecting an optimal set of design parameters for each model type. Three main model formats are considered: (i) a monolithic model structure with a one-versus-all truck type classification strategy; (ii) an array of sub-models each dedicated to one truck type with a one-versus-all classification strategy; and (iii) an array of sub-models each dedicated to selecting between pairs of trucks in a one-versus-one classification strategy. Overall, the formats that used an array of sub-models performed best at truck classification, with the support vector machines having a slight edge over the artificial neural networks. The paper concludes with some suggestions for extending the work to a broader scope of problems.
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来源期刊
CiteScore
6.90
自引率
8.60%
发文量
44
审稿时长
26 weeks
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