Reliable state of health condition monitoring of Li-ion batteries based on incremental support vector regression with parameters optimization

State of health condition monitoring of Li-ion batteries is an important issue for safe and reliably operation of battery-powered products. Consequently, it remains a challenging subject for indust...

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