APMLMar 16, 2017

Gaussian process regression for forecasting battery state of health

arXiv:1703.05687v2606 citations
Originality Synthesis-oriented
AI Analysis

This work addresses battery health forecasting for system reliability and cost reduction, but it is incremental as it applies an existing method to a new domain.

The paper tackles the problem of predicting battery capacity and remaining useful life by proposing Gaussian process regression, demonstrating its predictive capability for both short-term and long-term forecasting on lithium-ion cell datasets.

Accurately predicting the future capacity and remaining useful life of batteries is necessary to ensure reliable system operation and to minimise maintenance costs. The complex nature of battery degradation has meant that mechanistic modelling of capacity fade has thus far remained intractable; however, with the advent of cloud-connected devices, data from cells in various applications is becoming increasingly available, and the feasibility of data-driven methods for battery prognostics is increasing. Here we propose Gaussian process (GP) regression for forecasting battery state of health, and highlight various advantages of GPs over other data-driven and mechanistic approaches. GPs are a type of Bayesian non-parametric method, and hence can model complex systems whilst handling uncertainty in a principled manner. Prior information can be exploited by GPs in a variety of ways: explicit mean functions can be used if the functional form of the underlying degradation model is available, and multiple-output GPs can effectively exploit correlations between data from different cells. We demonstrate the predictive capability of GPs for short-term and long-term (remaining useful life) forecasting on a selection of capacity vs. cycle datasets from lithium-ion cells.

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