Abstract

Damage assessment is a key element in structural health monitoring of various industrial applications to understand well and predict the response of the material. The big uncertainty in carbon fiber composite materials response is because of variability in the initiation and propagation of damage. Developing advanced tools to design with composite materials, methods for characterizing several damage modes during operation are required. While there is a significant amount of work on the analysis of acoustic emission (AE) from different composite materials and many loading cases, this research focuses on applying an unsupervised clustering method for separating AE data into several groups with distinct evolution. In this paper, we develop an adaptive sampling and unsupervised bivariate data clustering techniques to characterize the several damage initiations of a composite structure in different lay-ups. An adaptive sampling technique pre-processes the AE features and eliminates redundant AE data samples. The reduction of unnecessary AE data depends on the requirements of the proposed bivariate data clustering technique. The bivariate data clustering technique groups the AE data (dependent variable) with respect to the mechanical data (independent variable) to assess the damage of the composite structure. Tensile experiments on carbon fiber reinforced composite laminates (CFRP) in different orientations are carried out to collect mechanical and AE data and demonstrate the damage modes. Based on the mechanical stress-strain data, the results show the dominant damage regions in different lay-ups of specimens and the definition of the different states of damage. In addition, the states of the damage are observed using Scanning Electron Microscope (SEM) analysis. Based on the AE data, the results show that the strong linear correlation between AE and mechanical energy, and the classification of various modes of damage in all lay-ups of specimens forming clusters of AE energy with respect to the mechanical energy. Furthermore, the validation of the cluster-based characterization and improvement of the sensitivity of the damage modes classification are observed by the combined knowledge of AE and mechanical energy and time-frequency spectrum analysis.

Highlights

  • Potential applications of carbon fiber composite materials have been explored because of the material’s properties, which include high stiffness and shape stability, as well as being lightweight, non-conductive, and economic

  • Our findings and analysis confirm the fact that data clustering is very useful for detecting early-stage damage and failure modes of CFRP specimens

  • The proposed bivariate data clustering contributes to a better understanding of the structural behavior of CFRP specimens with high sensitivity in damage monitoring, making it more useful for non-destructive structure health monitoring applications

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Summary

Introduction

Potential applications of carbon fiber composite materials have been explored because of the material’s properties, which include high stiffness and shape stability, as well as being lightweight, non-conductive, and economic. The AE technique in structural health monitoring is able to provide sufficient features to identify and predict composite failure modes, including matrix cracking, debonding, fiber fracture, and delamination. We classify the initiation and progress of the modes of damage and failure in the tested specimens using mechanical stressstrain data. The mechanical testing was performed using a tensile test following the ASTM D3039/D, a standard testing method to generate damage modes of composite material. Both types of specimens were fixed between the jaws of the machine to undergo testing. The AE sensor was installed onto the specimen to monitor the damage of the composite material continuously during the tensile tests. 3 for i 0, 1, 2, 3, , Xi−1 do 4 Compute Histogram based on the limits of each bin interval

Discretize the data of Xi into different bins bk based on the given intervals
Results and discussion
Gradually decreasing
Concluding remarks
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