LGAIMay 24, 2024

Towards a Probabilistic Fusion Approach for Robust Battery Prognostics

arXiv:2405.15292v13 citationsh-index: 17PHM Society European Conference
Originality Incremental advance
AI Analysis

This work addresses the need for reliable battery prognostics to support autonomous systems in transport and energy sectors, representing an incremental improvement in method.

The paper tackles the problem of predicting battery state-of-health by introducing a Bayesian ensemble learning approach that accurately forecasts capacity fade and quantifies uncertainty, demonstrating improved accuracy and robustness over single Bayesian neural networks and classical stacking methods on a NASA battery aging dataset.

Batteries are a key enabling technology for the decarbonization of transport and energy sectors. The safe and reliable operation of batteries is crucial for battery-powered systems. In this direction, the development of accurate and robust battery state-of-health prognostics models can unlock the potential of autonomous systems for complex, remote and reliable operations. The combination of Neural Networks, Bayesian modelling concepts and ensemble learning strategies, form a valuable prognostics framework to combine uncertainty in a robust and accurate manner. Accordingly, this paper introduces a Bayesian ensemble learning approach to predict the capacity depletion of lithium-ion batteries. The approach accurately predicts the capacity fade and quantifies the uncertainty associated with battery design and degradation processes. The proposed Bayesian ensemble methodology employs a stacking technique, integrating multiple Bayesian neural networks (BNNs) as base learners, which have been trained on data diversity. The proposed method has been validated using a battery aging dataset collected by the NASA Ames Prognostics Center of Excellence. Obtained results demonstrate the improved accuracy and robustness of the proposed probabilistic fusion approach with respect to (i) a single BNN model and (ii) a classical stacking strategy based on different BNNs.

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