journal article Aug 01, 2025

Adaptive diagnosis and prognosis for Lithium-ion batteries via Lebesgue time model with multiple hidden state variables

Applied Energy Vol. 392 pp. 125986 · Elsevier BV
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References
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Published
Aug 01, 2025
Vol/Issue
392
Pages
125986
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Funding
National Natural Science Foundation of China Award: 52075349
China Postdoctoral Science Foundation Award: 2022M722247
Natural Science Foundation of Sichuan Province Award: 2022NSFSC1942
Cite This Article
Heng Zhang, Wei Chen, Qiang Miao (2025). Adaptive diagnosis and prognosis for Lithium-ion batteries via Lebesgue time model with multiple hidden state variables. Applied Energy, 392, 125986. https://doi.org/10.1016/j.apenergy.2025.125986