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SOC and SOH Joint Estimation of the Power Batteries Based on Fuzzy Unscented Kalman Filtering Algorithm
by
Zeng, Miaomiao
, Zhang, Peng
, Shi, Ying
, Xie, Changjun
, Yang, Yang
in
Accuracy
/ Aging
/ Algorithms
/ Automation
/ Cell cycle
/ Electric vehicles
/ Energy
/ Experiments
/ fuzzy unscented Kalman filtering algorithm
/ improved second-order RC equivalent circuit
/ International conferences
/ joint estimation
/ Lithium
/ Methods
/ Neural networks
/ Parameter identification
/ power batteries
/ Wavelet transforms
2019
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SOC and SOH Joint Estimation of the Power Batteries Based on Fuzzy Unscented Kalman Filtering Algorithm
by
Zeng, Miaomiao
, Zhang, Peng
, Shi, Ying
, Xie, Changjun
, Yang, Yang
in
Accuracy
/ Aging
/ Algorithms
/ Automation
/ Cell cycle
/ Electric vehicles
/ Energy
/ Experiments
/ fuzzy unscented Kalman filtering algorithm
/ improved second-order RC equivalent circuit
/ International conferences
/ joint estimation
/ Lithium
/ Methods
/ Neural networks
/ Parameter identification
/ power batteries
/ Wavelet transforms
2019
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SOC and SOH Joint Estimation of the Power Batteries Based on Fuzzy Unscented Kalman Filtering Algorithm
by
Zeng, Miaomiao
, Zhang, Peng
, Shi, Ying
, Xie, Changjun
, Yang, Yang
in
Accuracy
/ Aging
/ Algorithms
/ Automation
/ Cell cycle
/ Electric vehicles
/ Energy
/ Experiments
/ fuzzy unscented Kalman filtering algorithm
/ improved second-order RC equivalent circuit
/ International conferences
/ joint estimation
/ Lithium
/ Methods
/ Neural networks
/ Parameter identification
/ power batteries
/ Wavelet transforms
2019
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SOC and SOH Joint Estimation of the Power Batteries Based on Fuzzy Unscented Kalman Filtering Algorithm
Journal Article
SOC and SOH Joint Estimation of the Power Batteries Based on Fuzzy Unscented Kalman Filtering Algorithm
2019
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Overview
In order to improve the convergence time and stabilization accuracy of the real-time state estimation of the power batteries for electric vehicles, a fuzzy unscented Kalman filtering algorithm (F-UKF) of a new type is proposed in this paper, with an improved second-order resistor-capacitor (RC) equivalent circuit model established and an online parameter identification used by Bayes. Ohmic resistance is treated as a battery state of health (SOH) characteristic parameter, F-UKF algorithms are used for the joint estimation of battery state of charge (SOC) and SOH. The experimental data obtained from the ITS5300-based battery test platform are adopted for the simulation verification under discharge conditions with constant-current pulses and urban dynamometer driving schedule (UDDS) conditions in the MATLAB environment. The experimental results show that the F-UKF algorithm is insensitive to the initial value of the SOC under discharge conditions with constant-current pulses, and the SOC and SOH estimation accuracy under UDDS conditions reaches 1.76% and 1.61%, respectively, with the corresponding convergence time of 120 and 140 s, which proves the superiority of the joint estimation algorithm.
Publisher
MDPI AG
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