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PROBABILISTIC DESIGN OF SMART SENSING FUNCTIONS FOR STRUCTURAL HEALTH MONITORING AND PROGNOSIS

机译:结构健康监测与预测智能检测功能的概率设计

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摘要

Significant technological advances in sensing and communication promote the use of large sensor networks to monitor structural systems, identify damages, and quantify damage levels. Prognostics and health management (PHM) technique has been developed and applied for a variety of safety-critical engineering structures, given the critical needs of the structure health state awareness. The PHM performance highly relies on real-time sensory signals which convey the structural health relevant information. Designing an optimal structural sensor network (SN) with high detectability is thus of great importance to the PHM performance. This paper proposes a generic SN design framework using a detectability measure while accounting for uncertainties in material properties and geometric tolerances. Detectability is defined to quantify the performance of a given SN. Then, detectability analysis will be developed based on structural simulations and health state classification. Finally, the generic SN design framework can be formulated as a mixed integer nonlinear programming (MINLP) using the detectability measure and genetic algorithms (GAs) will be employed to solve the SN design optimization problem. A power transformer study will be used to demonstrate the feasibility of the proposed generic SN design methodology.
机译:传感和通信方面的重大技术进步促进了大型传感器网络的使用,以监视结构系统,识别损坏并量化损坏级别。考虑到结构健康状态意识的关键需求,已经开发了预测和健康管理(PHM)技术并将其应用于各种对安全至关重要的工程结构。 PHM的性能高度依赖于实时感官信号,这些信号传达了与结构健康相关的信息。因此,设计具有高可检测性的最佳结构传感器网络(SN)对PHM性能至关重要。本文提出了一种通用的SN设计框架,该框架使用可检测性度量标准,同时考虑了材料特性和几何公差的不确定性。定义可检测性以量化给定SN的性能。然后,将基于结构模拟和健康状态分类来开发可检测性分析。最后,可以使用可检测性度量将通用SN设计框架表述为混合整数非线性规划(MINLP),并将采用遗传算法(GA)解决SN设计优化问题。电力变压器研究将用于证明所提出的通用SN设计方法的可行性。

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