Comparing seven methods for state-of-health time series prediction for the lithium-ion battery packs of forklifts
Matti Huotari,
Shashank Arora,
Avleen Malhi
et al.
Abstract:A key aspect for the forklifts is the state-of-health (SoH) assessment to ensure the safety and the reliability of uninterrupted power source. Forecasting the battery SoH well is imperative to enable preventive maintenance and hence to reduce the costs. This paper demonstrates the capabilities of gradient boosting regression for predicting the SoH timeseries under circumstances when there is little prior information available about the batteries. We compared the gradient boosting method with light gradient boo… Show more
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