Comparing seven methods for state-of-health time series prediction for
the lithium-ion battery packs of forklifts
- URL: http://arxiv.org/abs/2107.05489v1
- Date: Tue, 6 Jul 2021 10:52:56 GMT
- Title: Comparing seven methods for state-of-health time series prediction for
the lithium-ion battery packs of forklifts
- Authors: Matti Huotari, Shashank Arora, Avleen Malhi, Kary Fr\"amling
- Abstract summary: This paper demonstrates the capabilities of gradient boosting regression for predicting the state-of-health timeseries.
We are in possession of a unique data set of 45 lithium-ion battery packs with large variation in the data.
- Score: 1.1470070927586016
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- 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
boosting, extra trees, extreme gradient boosting, random forests, long
short-term memory networks and with combined convolutional neural network and
long short-term memory networks methods. We used multiple predictors and lagged
target signal decomposition results as additional predictors and compared the
yielded prediction results with different sets of predictors for each method.
For this work, we are in possession of a unique data set of 45 lithium-ion
battery packs with large variation in the data. The best model that we derived
was validated by a novel walk-forward algorithm that also calculates point-wise
confidence intervals for the predictions; we yielded reasonable predictions and
confidence intervals for the predictions. Furthermore, we verified this model
against five other lithium-ion battery packs; the best model generalised to
greater extent to this set of battery packs. The results about the final model
suggest that we were able to enhance the results in respect to previously
developed models. Moreover, we further validated the model for extracting cycle
counts presented in our previous work with data from new forklifts; their
battery packs completed around 3000 cycles in a 10-year service period, which
corresponds to the cycle life for commercial Nickel-Cobalt-Manganese (NMC)
cells.
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