Health Monitoring of Flexible Structures Via Surface-mounted Microsensors: Network Optimization and Damage Detection

S. Mariani, S. E. Azam
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引用次数: 1

Abstract

Flexible and composite structures often develop hidden damages, e.g. cracks or delamination between laminae or phases. Such events could be sensed through embedded structural health monitoring (SHM) systems, but past experimental studies in the literature proved that embedding sensors for SHM purposes may decrease the reliability of the structure, as the sensor acts as an inclusion. In former studies, the authors proposed to adopt a surface-mounted SHM approach based on inertial MEMS (micro electro-mechanical systems) sensors, which has two advantages: it is low cost and also it avoids the afore-mentioned detrimental effects on the endurance limit state of the structure. However, the low accuracy of the MEMS sensors and the type of response that they can measure may hinder an effective monitoring of the structural state; this can be overcome through redundancy and an efficient sensor placement. In this article, an automated approach is discussed for obtaining the optimal topology of a sparse MEMS sensor network. In this regard, the scenarios are assumed unknown in terms of extent and location of stiffness degradation due to damage. The optimal sensor locations are obtained via maximization of the global sensitivity of the measurements to damage. The method can be also implemented in a multi-scale framework, to efficiently handle (micro) sensors, (meso) damaged regions and (macro) structural components of (by far) different sizes. Data related to composite specimens and panels are discussed, with the aim of assessing the identifiability of damage through self-adapting theoretical/numerical (digital) twins of the monitored structures.
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基于表面微传感器的柔性结构健康监测:网络优化和损伤检测
柔性和复合结构经常出现隐性损伤,例如层或相之间的裂纹或分层。这些事件可以通过嵌入式结构健康监测(SHM)系统来感知,但过去文献中的实验研究证明,为SHM目的嵌入传感器可能会降低结构的可靠性,因为传感器充当了包含物。在以往的研究中,作者提出采用基于惯性MEMS(微机电系统)传感器的表面贴装SHM方法,该方法具有两大优点:一是成本低,二是避免了上述对结构耐久性极限状态的不利影响。然而,MEMS传感器的低精度和它们可以测量的响应类型可能会阻碍对结构状态的有效监测;这可以通过冗余和有效的传感器放置来克服。本文讨论了稀疏MEMS传感器网络最优拓扑的自动获取方法。在这方面,假设的情况是未知的程度和位置的刚度退化,由于损伤。通过最大化测量值对损伤的全局灵敏度来获得传感器的最佳位置。该方法还可以在多尺度框架中实现,以有效地处理(微观)传感器,(中观)损伤区域和(宏观)不同尺寸的结构部件。讨论了与复合材料试件和面板相关的数据,目的是通过监测结构的自适应理论/数值(数字)双胞胎来评估损伤的可识别性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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