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Open AccessJournal ArticleDOI

State of Charge Estimation Using the Extended Kalman Filter for Battery Management Systems Based on the ARX Battery Model

Shifei Yuan, +2 more
- 17 JanĀ 2013Ā -Ā 
- Vol. 6, Iss: 1, pp 444-470
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TLDR
In this paper, an auto regressive exogenous (ARX) model is proposed to simulate the battery nonlinear dynamics and an extended Kalman filter is used to estimate the state of charge (SOC).
Abstract:Ā 
State of charge (SOC) is a critical factor to guarantee that a battery system is operating in a safe and reliable manner. Many uncertainties and noises, such as fluctuating current, sensor measurement accuracy and bias, temperature effects, calibration errors or even sensor failure, etc. pose a challenge to the accurate estimation of SOC in real applications. This paper adds two contributions to the existing literature. First, the auto regressive exogenous (ARX) model is proposed here to simulate the battery nonlinear dynamics. Due to its discrete form and ease of implemention, this straightforward approach could be more suitable for real applications. Second, its order selection principle and parameter identification method is illustrated in detail in this paper. The hybrid pulse power characterization (HPPC) cycles are implemented on the 60AH LiFePO4 battery module for the model identification and validation. Based on the proposed ARX model, SOC estimation is pursued using the extended Kalman filter. Evaluation of the adaptability of the battery models and robustness of the SOC estimation algorithm are also verified. The results indicate that the SOC estimation method using the Kalman filter based on the ARX model shows great performance. It increases the model output voltage accuracy, thereby having the potential to be used in real applications, such as EVs and HEVs.

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Journal ArticleDOI

Critical review of the methods for monitoring of lithium-ion batteries in electric and hybrid vehicles

TL;DR: In this paper, the methods for monitoring the battery state of charge, capacity, impedance parameters, available power, state of health, and remaining useful life are reviewed with the focus on elaboration of their strengths and weaknesses for the use in on-line BMS applications.
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Online cell SOC estimation of Li-ion battery packs using a dual time-scale Kalman filtering for EV applications

TL;DR: In this paper, the authors proposed a method to determine individual cell State of Charge (SOC) of a series-connected battery pack using an equivalent circuit based "averaged cell" model.
Journal ArticleDOI

Investigating the error sources of the online state of charge estimation methods for lithium-ion batteries in electric vehicles

TL;DR: A novel perspective focusing on the error analysis of the SOC estimation methods is proposed and the error flow charts are proposed to analyze the error sources from the signal measurement to the models and algorithms for the widely used online SOC estimation Methods in new energy vehicles.
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On-line adaptive battery impedance parameter and state estimation considering physical principles in reduced order equivalent circuit battery models: Part 1. Requirements, critical review of methods and modeling

TL;DR: In this paper, a weighted recursive least quadratic squares (LRQS) parameter estimator is proposed to determine the battery impedance and diffusion parameters for accurate state estimation, which is proven on different battery chemistries with different aging conditions.
Journal ArticleDOI

Adaptive unscented Kalman filter based state of energy and power capability estimation approach for lithium-ion battery

TL;DR: In this article, the adaptive unscented Kalman filter (AUKF) is employed to develop a novel model-based joint state estimator for battery state of energy and power capability.
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