Bayesian inference in non-Markovian state-space models with applications to battery fractional order systems
Battery impedance spectroscopy models are given by fractional order (FO) differential equations. In the discrete-time domain, they give rise to state-space models where the latent process is not Markovian. Parameter estimation for these models is therefore challenging, especially for non-commensurat...
Main Authors: | Jacob, P, Alavi, S, Mahdi, A, Payne, S, Howey, D |
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Format: | Journal article |
Published: |
Institute of Electrical and Electronics Engineers
2017
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