Abstract

A considerable amount of research has focused on monitoring structural damage using Structural Health Monitoring (SHM) technologies, which has had recent advances. However, it is important to note the challenges and unresolved problems that disqualify currently developed monitoring systems. One of the frontline SHM technologies, the Electromechanical Impedance (EMI) technique, has shown its potential to overcome remaining problems and challenges. Unfortunately, the recently developed neural network algorithms have not shown significant improvements in the accuracy of rate and the required processing time. In order to fill this gap in advanced neural networks used with EMI techniques, this paper proposes an enhanced and reliable strategy for improving the structural damage detection via: (1) Savitzky–Golay (SG) filter, using both first and second derivatives; (2) Probabilistic Neural Network (PNN); and, (3) Simplified Fuzzy ARTMAP Network (SFAN). Those three methods were employed to analyze the EMI data experimentally obtained from an aluminum plate containing three attached PZT (Lead Zirconate Titanate) patches. In this present study, the damage scenarios were simulated by attaching a small metallic nut at three different positions in the aluminum plate. We found that the proposed method achieves a hit rate of more than 83%, which is significantly higher than current state-of-the-art approaches. Furthermore, this approach results in an improvement of 93% when considering the best case scenario.

Highlights

  • Structural integrity monitoring using Non-Destructive Evaluation (NDE) methods have become more popular in recent years as they can be applied to a wider range of applications

  • More details of the methods based on Probabilistic Neural Network (PNN) and Fuzzy ARTMAP Network (FAN) being applied to identify structural damage in Structural Health Monitoring (SHM) systems can be found in references [10,11,12,29,30,31] and references [32,33], respectively

  • Ali et al [34] highlighted that the application of the Simplified Fuzzy ARTMAP Network (SFAN) in large-scale systems or online-based methods has significantly enhanced the accuracy of predictions and reduced processing times

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Summary

Introduction

Structural integrity monitoring using Non-Destructive Evaluation (NDE) methods have become more popular in recent years as they can be applied to a wider range of applications. To monitoring the conditions of infrastructure, NDE methods have been created, which are based on different techniques, such as: acoustic emission, Eddy current, radiography, thermography, shearography, Lamb waves, and electromechanical impedance [2]. Civil, and aerospace engineering structures are subjected to severe environmental conditions and different types of loads. Over the years, these structures suffer from degradation and can be damaged without prior warning. A strict preventive maintenance process can prevent major damage and ensure the smooth operation of the infrastructure.

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