2015
DOI: 10.1016/j.jpowsour.2014.11.135
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Electrochemical state and internal variables estimation using a reduced-order physics-based model of a lithium-ion cell and an extended Kalman filter

Abstract: This paper addresses the problem of estimating the present value of electrochemical internal variables in a lithium-ion cell in real time, using readily available measurements of cell voltage, current, and temperature. The variables that can be estimated include any desired set of reaction flux and solid and electrolyte potentials and concentrations at any set of one-dimensional spatial locations, in addition to more standard quantities such as state of charge. The method uses an extended Kalman filter along w… Show more

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Cited by 87 publications
(45 citation statements)
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“…State estimation designs have also emerged for other electrochemical models that incorporate electrolyte dynamics. Examples include spectral methods with output error injection [25], residue grouping with Kalman filtering [26], semi-separable structures with an EKF [27], discretetime realization algorithms with an EKF [28], and composite electrodes with nonlinear filters [29].…”
Section: B Relevant Literaturementioning
confidence: 99%
See 1 more Smart Citation
“…State estimation designs have also emerged for other electrochemical models that incorporate electrolyte dynamics. Examples include spectral methods with output error injection [25], residue grouping with Kalman filtering [26], semi-separable structures with an EKF [27], discretetime realization algorithms with an EKF [28], and composite electrodes with nonlinear filters [29].…”
Section: B Relevant Literaturementioning
confidence: 99%
“…(28) Next we derive each term on the right hand side of (28). Overpotentialη ± (t) is found by solving the Butler-Volmer equation (6) …”
Section: B Spme Model Derivationmentioning
confidence: 99%
“…Accumulated error of AH counting algorithm increases with time passing by; extended Kalman filter algorithm is implemented to eliminate accumulation error of AH counting algorithm. In order to keep computational complexity low, the extended Kalman filter algorithm operates for one battery cell after another and circles to the first battery cell after the last battery cell [10,11]. The correction process can be represented as follows.…”
Section: Algorithm Of the Proposed Strategy To Estimate Soc Of Multipmentioning
confidence: 99%
“…A number of electrochemical model parameters (for each of the fault conditions) were identified using a gradient free particle swarm optimization algorithm [17] on a reduced order model of lithium ion battery. An EKF based estimation method has been considered in [18], where internal electrochemical variables were estimated by using the reduced order model of a Li-Ion battery derived from a 1D physics based model.…”
Section: Introductionmentioning
confidence: 99%