Battery aging mode identification across NMC compositions and designs using machine learning

Joule - Tập 6 - Trang 2776-2793 - 2022
Bor-Rong Chen1, Cody M. Walker2, Sangwook Kim1, M. Ross Kunz3, Tanvir R. Tanim1, Eric J. Dufek1
1Energy Storage & Electric Transportation Department, Energy and Environmental Science and Technology, Idaho National Laboratory, Idaho Falls, ID 83415, USA
2Instrumentation, Controls, & Data Science Department, Nuclear Science & Technology, Idaho National Laboratory, Idaho Falls, ID 83415, USA
3Digital Twin Analytics, Energy and Environmental Science and Technology, Idaho National Laboratory, Idaho Falls, ID 83415, USA

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