Improved cooperative competitive particle swarm optimization and nonlinear coefficient temperature decreasing simulated annealing-back propagation methods for state of health estimation of energy storage batteries
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DOI: 10.1016/j.energy.2024.130594
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Keywords
Energy storage lithium-ion battery; Nonlinear coefficient temperature decreasing simulated annealing; Cooperative competitive particle swarm optimization; State of health; Health indicators;All these keywords.
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