Battery health prediction under generalized conditions using a Gaussian process transition model
Accurately predicting the future health of batteries is necessary to ensure reliable operation, minimise maintenance costs, and calculate the value of energy storage investments. The complex nature of degradation renders data-driven approaches a promising alternative to mechanistic modelling. This s...
Main Authors: | Richardson, R, Osborne, M, Howey, D |
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Format: | Working paper |
Published: |
2018
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