ASSESSMENT CRITERIA FOR OPTIMAL SENSOR PLACEMENT FOR A STRUCTURAL HEALTH MONITORING SYSTEM

Tingna Wang, D. Wagg, K. Worden, R. Barthorpe
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Abstract

Machine learning algorithms have been extensively used to implement structural health monitoring (SHM) systems to detect the occurrence of damage within a structure. To obtain the most effective data for SHM decision making, it is desirable to perform sensor placement optimisation (SPO), with a particular focus on damage identification. However, comparatively little attention has been paid to systematic assessment criteria appropriate to the design of a sensor system for SHM. This paper focusses on studying the evaluation criteria at different stages of a sensor-system design process, ranging from the measurement of linear associations to the detailed evaluation of the overall probability of correct classification. The effects of the investigated criteria are demonstrated using a physics-based model with uncertain parameters related to material proprieties. Predictions of the dynamic response of the structure in different states of interest are used to derive features.
结构健康监测系统中传感器最优放置的评估准则
机器学习算法已被广泛用于实施结构健康监测(SHM)系统,以检测结构内部损伤的发生。为了获得最有效的SHM决策数据,需要执行传感器放置优化(SPO),特别关注损伤识别。然而,相对而言,很少有人关注适合于SHM传感器系统设计的系统评估标准。本文重点研究了传感器系统设计过程中不同阶段的评估标准,从线性关联的测量到正确分类的总体概率的详细评估。研究标准的影响是用一个基于物理的模型来证明的,该模型具有与材料特性相关的不确定参数。结构在不同感兴趣的状态下的动力响应的预测用于导出特征。
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