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Machine-Learning-Driven Advanced Characterization of Battery Electrodes

Donal P. Finegan, Isaac Squires, Amir Dahari, Steve Kench, Katherine Jungjohann, Samuel J. Cooper

2022ACS Energy Letters69 citationsDOIOpen Access PDF

Abstract

Materials characterization is fundamental to our understanding of lithium ion battery electrodes and their performance limitations. Advances in laboratory-based characterization techniques have yielded powerful insights into the structure–function relationship of electrodes, yet there is still far to go. Further improvements rely, in part, on gaining a deeper understanding of complex physical heterogeneities in the materials. However, practical limitations in characterization techniques inhibit our ability to combine data directly. For example, some characterization techniques are destructive, thus preventing additional analyses on the same region. Fortunately, artificial intelligence (AI) has shown great potential for achieving representative, 3D, multi-modal datasets by leveraging data collected from a range of techniques. In this Perspective, we give an overview of recent advances in lab-based characterization techniques for Li-ion electrodes. We then discuss how AI methods can combine and enhance these techniques, leading to substantial acceleration in our understanding of electrodes.

Topics & Concepts

Characterization (materials science)Computer scienceBattery (electricity)NanotechnologyArtificial intelligenceMaterials sciencePhysicsQuantum mechanicsPower (physics)Advanced Battery Technologies ResearchAdvancements in Battery MaterialsElectron and X-Ray Spectroscopy Techniques
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