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Pattern recognition of structural behaviors based on learning algorithms and symbolic data concepts

机译:基于学习算法和符号数据概念的结构行为模式识别

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摘要

Learning algorithms have extensively been applied to classification and pattern recognition problems in the past years. Some papers have addressed special attention to applications regarding damage assessment, especially how these algorithms could be used to classify different structural conditions. Nevertheless, few works present techniques in which vibration signatures can be directly used to provide insights about possible modification processes. This paper proposes a novel approach in which the concept of Symbolic Data Analysis (SDA) is introduced to manipulate not only vibration data (signals) but also modal properties (natural frequencies and mode shapes). These quantities (transformed into symbolic data) are combined to three well-known classification techniques: Bayesian Decision Trees, Neural Networks and Support Vector Machines. The objective is to explore the efficiency of this combined methodology. For this purpose, several numerical simulations are first performed for evaluating the probabilities of true detection (or true classification) in the presence of different damage conditions. Several noise levels are also applied to the data to attest the sensibility of each technique. Second, a set of experimental tests performed on a railway bridge in France is used to emphasize advantages and drawbacks of the proposed approach. Results show that the analysis combining the cited learning algorithms with the symbolic data concepts is efficient enough to classify and discriminate structural modifications with a high probability of true detection, either considering vibration data or modal parameters. Copyright © 2010 John Wiley & Sons, Ltd.
机译:近年来,学习算法已广泛应用于分类和模式识别问题。一些论文特别关注了有关损伤评估的应用,尤其是如何使用这些算法对不同的结构条件进行分类。然而,很少有作品提出可以直接使用振动信号来提供有关可能的修改过程的见解的技术。本文提出了一种新颖的方法,其中引入了符号数据分析(SDA)概念,不仅可以处理振动数据(信号),还可以处理模态属性(固有频率和模式形状)。这些数量(转换为符号数据)被组合为三种众所周知的分类技术:贝叶斯决策树,神经网络和支持向量机。目的是探索这种组合方法的效率。为此,首先执行几个数值模拟,以评估在不同损坏条件下的真实检测(或真实分类)的可能性。几种噪声水平也被应用于数据以证明每种技术的敏感性。其次,在法国的铁路桥梁上进行的一组实验测试被用来强调所提出方法的优缺点。结果表明,将所引用的学习算法与符号数据概念相结合的分析足以有效地分类和区分具有真实检测可能性的结构修改,无论是考虑振动数据还是模态参数。版权所有©2010 John Wiley&Sons,Ltd.

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