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Data-driven methodology to detect and classify structural changes under temperature variations

机译:数据驱动的方法来检测和分类温度变化下的结构变化

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This paper presents a methodology for the detection and classification of structural changes under different temperature scenarios using a statistical data-driven modelling approach by means of a distributed piezoelectric active sensor network at different actuation phases. An initial baseline pattern for each actuation phase for the healthy structure is built by applying multiway principal component analysis (MPCA) to wavelet approximation coefficients calculated using the discrete wavelet transform (DWT) from ultrasonic signals which are collected during several experiments. In addition, experiments are performed with the structure in different states (simulated damages), pre-processed and projected into the different baseline patterns for each actuator. Some of these projections and squared prediction errors (SPE) are used as input feature vectors to a self-organizing map (SOM), which is trained and validated in order to build a final pattern with the aim of providing an insight into the classified states. The methodology is tested using ultrasonic signals collected from an aluminium plate and a stiffened composite panel. Results show that all the simulated states are successfully classified no matter what the kind of damage or the temperature is in both structures.
机译:本文介绍了一种统计数据驱动的建模方法,通过分布式压电有源传感器网络在不同的驱动阶段,在不同温度情况下对结构变化进行检测和分类的方法。通过将多路主成分分析(MPCA)应用于使用离散小波变换(DWT)从超声波信号收集的小波逼近系数,可以建立健康结构每个致动阶段的初始基线模式。此外,还对处于不同状态(模拟损坏)的结构进行了实验,并对每个执行器进行了预处理并投影到不同的基线模式中。其中一些投影和平方预测误差(SPE)用作自组织图(SOM)的输入特征向量,该图经过训练和验证以构建最终模式,以提供对分类状态的洞察力。使用从铝板和坚固的复合板收集的超声信号测试该方法。结果表明,无论两种结构的损坏类型或温度如何,所有模拟状态都可以成功分类。

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