Sound-Based Non-Destructive Evaluation to Detect Damage in Lithium-Ion Batteries
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Date
2024
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Publisher
Ohio University
Abstract
In recent years, lithium-ion batteries (LIBs) have played an essential role in nowadays
energy storage system, especially electric vehicles (EVs) and portable electronics because
of its high energy density and long cycle life [1, 2]. However, one of the biggest
challenges is how to guarantee their dependability and trustworthiness. In the present
investigation, Acoustic Emission (AE) and Ultrasound Testing (UT) techniques are
systematically employed to verify probable critical defects in the LIBs. Where AE
technology is able to record the stress waves produced by the growth of the defects, UT
uses high-frequency sound waves to penetrate the batteries and provide an indication of
the internal voids. The performances of these approaches were systematically tested on
as-received, pre-damaged and cold-soaked batteries. Different AE and UT activity
patterns were shown in the results under various environmental conditions that influenced
battery performance. Combining Acoustic Emission (AE) and Ultrasound Testing (UT)
with clustering and outlier analysis machine learning algorithms improved defect
detection effectiveness. Such research highlights that AE and UT can be robust noninvasive
techniques for on-line health monitoring of LIBs that should aid in maintaining
the longevity and operability of LIBs.
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Keywords
Acoustic Emission (AE) Ultrasonic Testing (UT) Non-Destructive Evaluation (NDE) Lithium-Ion Batteries (LIBs) Battery Health Monitoring Defect Detection Mechanical Degradation Cold Temperature Effects Machine Learning Energy Storage Systems Battery Safety Second-Life Batteries Electrode Cracking Signal Analysis Structural Integrity
Citation
IEEE