Identifying Defects in Li-Ion Cells Using Ultrasound Acoustic Measurements

Author:

Robinson James B.ORCID,Owen Rhodri E.ORCID,Kok Matt D. R.ORCID,Maier Maximilian,Majasan JudeORCID,Braglia Michele,Stocker Richard,Amietszajew TazdinORCID,Roberts Alexander J.ORCID,Bhagat Rohit,Billsson Duncan,Olson Jarred Z.ORCID,Park Juyeon,Hinds Gareth,Ahlberg Tidblad Annika,Brett Dan J. L.ORCID,Shearing Paul R.ORCID

Abstract

Identification of the state-of-health (SoH) of Li-ion cells is a vital tool to protect operating battery packs against accelerated degradation and failure. This is becoming increasingly important as the energy and power densities demanded by batteries and the economic costs of packs increase. Here, ultrasonic time-of-flight analysis is performed to demonstrate the technique as a tool for the identification of a range of defects and SoH in Li-ion cells. Analysis of large, purpose-built defects across multiple length scales is performed in pouch cells. The technique is then demonstrated to detect a microscale defect in a commercial cell, which is validated by examining the acoustic transmission signal through the cell. The location and scale of the defects are confirmed using X-ray computed tomography, which also provides information pertaining to the layered structure of the cells. The demonstration of this technique as a methodology for obtaining direct, non-destructive, depth-resolved measurements of the condition of electrode layers highlights the potential application of acoustic methods in real-time diagnostics for SoH monitoring and manufacturing processes.

Funder

Engineering and Physical Sciences Research Council

Royal Academy of Engineering

Science and Technology Facilities Council

European Automobile Manufacturers Association

Innovate UK

Publisher

The Electrochemical Society

Subject

Materials Chemistry,Electrochemistry,Surfaces, Coatings and Films,Condensed Matter Physics,Renewable Energy, Sustainability and the Environment,Electronic, Optical and Magnetic Materials

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