2019
DOI: 10.1109/tte.2019.2956350
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Hierarchical Bayesian Model for Probabilistic Analysis of Electric Vehicle Battery Degradation

Abstract: This paper proposes a hierarchical Bayesian model for probabilistic estimation of the electric vehicle battery capacity fade. Since the battery aging factors such as temperature, current, and state of charge are not fixed, and they change in different times, locations and by the different users, deterministic models with constant parameters cannot accurately evaluate the battery capacity fade. Therefore, a probabilistic presentation of the capacity fade including uncertainties of the measurements/ observations… Show more

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Cited by 13 publications
(4 citation statements)
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“…The priority weights of each element of each level on the previous level are then obtained by solving the judgment matrix eigenvectors. Finally, the final weights of the indicators at each level to the integrated target are determined by weighted summation (Jafari et al, 2019). According to the comparison of the influence degree of each index, the comparison matrix A is obtained as follows:…”
Section: Frontiers In Energy Researchmentioning
confidence: 99%
“…The priority weights of each element of each level on the previous level are then obtained by solving the judgment matrix eigenvectors. Finally, the final weights of the indicators at each level to the integrated target are determined by weighted summation (Jafari et al, 2019). According to the comparison of the influence degree of each index, the comparison matrix A is obtained as follows:…”
Section: Frontiers In Energy Researchmentioning
confidence: 99%
“…In recent years, also thanks to the increase in computing power, multilevel models have attracted great interest and have been applied in many different fields of science and technology [25]. In the energy field, they have found application in the calibration of building energy models [26,27], the forecasting of electricity demand [28][29][30], estimation of overhead lines failure rate [31], estimation of photovoltaic potential [32], and the analysis of the degradation of electric vehicle batteries [33]. In the M&V setting, Booth et al [34] used a hierarchical framework to generate energy intensity estimates for various dwelling types.…”
Section: Multilevel Modelsmentioning
confidence: 99%
“…(2SA) In this section, we give a novel category strategy for different commonly used algorithms including GA, particle swarm [25], tabu search [16], [26] and artificial neural network (ANN) [18], [19], [23], [24], Bayesian network [27], support vector machine (SVM) [20] etc. Based on this strategy, the relations (x-to-o) between inputs (x 1 , x 2 ...) and outputs (o 1 , o 2 ...) in algorithm categories can be simply described and compared.…”
Section: Search Algorithm and Surrogate Algorithmmentioning
confidence: 99%