Improved singular filtering-Gaussian process regression-long short-term memory model for whole-life-cycle remaining capacity estimation of lithium-ion batteries adaptive to fast aging and multi-current variations
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DOI: 10.1016/j.energy.2023.128677
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Keywords
Lithium-ion battery; Singular filtering-Gaussian process regression-long short-term memory network; Whole-life-cycle remaining capacity estimation; Fast-fading aging; Collaborative carrier transport;All these keywords.
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