Structural Damage Identification Using Piezoelectric Impedance Measurement with Sparse Inverse Analysis
Pei Cao, Qi Shuai, Jiong Tang

TL;DR
This paper presents a novel multi-objective optimization framework using a sparse inverse analysis approach with a Dividing RECTangles algorithm for accurate damage detection in structures via piezoelectric impedance measurements.
Contribution
It introduces a deterministic, sparse inverse analysis method with a multi-objective optimization framework for damage identification, emphasizing solution repeatability and efficiency.
Findings
Effective damage localization with limited measurement data
High-quality damage severity estimation demonstrated
Method outperforms traditional inverse analysis techniques
Abstract
The impedance/admittance measurements of a piezoelectric transducer bonded to or embedded in a host structure can be used as damage indicator. When a credible model of the healthy structure, such as the finite element model, is available, using the impedance/admittance change information as input, it is possible to identify both the location and severity of damage. The inverse analysis, however, may be under-determined as the number of unknowns in high-frequency analysis is usually large while available input information is limited. The fundamental challenge thus is how to find a small set of solutions that cover the true damage scenario. In this research we cast the damage identification problem into a multi-objective optimization framework to tackle this challenge. With damage locations and severities as unknown variables, one of the objective functions is the difference between…
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