Critical review of state of health estimation methods of Li-ion batteries for real applications
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I. Villarreal | Maitane Berecibar | Noshin Omar | J. Van Mierlo | P. Van den Bossche | Maitane Berecibar | I. Gandiaga | M. Berecibar | N. Omar | I. Villarreal | P. V. D. Bossche | J. Mierlo | I. Gandiaga | P. Bossche
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