A multi-timescale estimator for battery state of charge and capacity dual estimation based on an online identified model

Zhongbao Wei*, Jiyun Zhao, Dongxu Ji, King Jet Tseng*

*Corresponding author for this work

    Research output: Journal Publications and ReviewsRGC 21 - Publication in refereed journalpeer-review

    312 Citations (Scopus)

    Abstract

    Reliable online estimation of state of charge (SOC) and capacity is critically important for the battery management system (BMS). This paper presents a multi-timescale method for dual estimation of SOC and capacity with an online identified battery model. The model parameter estimator and the dual estimator are fully decoupled and executed with different timescales to improve the model accuracy and stability. Specifically, the model parameters are online adapted with the vector-type recursive least squares (VRLS) to address the different variation rates of them. Based on the online adapted battery model, the Kalman filter (KF)-based SOC estimator and RLS-based capacity estimator are formulated and integrated in the form of dual estimation. Experimental results suggest that the proposed method estimates the model parameters, SOC, and capacity in real time with fast convergence and high accuracy. Experiments on both lithium-ion battery and vanadium redox flow battery (VRB) verify the generality of the proposed method on multiple battery chemistries. The proposed method is also compared with other existing methods on the computational cost to reveal its superiority for practical application.
    Original languageEnglish
    Pages (from-to)1264-1274
    JournalApplied Energy
    Volume204
    Online published17 Feb 2017
    DOIs
    Publication statusPublished - 15 Oct 2017

    Research Keywords

    • Battery model
    • Capacity
    • Model parameters identification
    • Multi-timescale
    • State of charge
    • State of health

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