4.7 Article

Online joint estimator of key states for battery based on a new equivalent circuit model

Journal

JOURNAL OF ENERGY STORAGE
Volume 52, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.est.2022.104780

Keywords

Lithium-ion battery; Equivalent circuit model; Joint estimation; Square root unscented Kalman filter

Categories

Funding

  1. National Key R&D Program of China [2021YFB2501800]
  2. Tianjin Research Innovation Project for Postgraduate Students [2021YJSS065]
  3. National Natural Science Foundation of China [61802280, 61806143, 61772365, 41772123]
  4. Tianjin Natural Science Foundation [18JCQNJC77-200]

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In this paper, a joint estimation method for the key states of batteries based on AR-ECM is proposed. The method can accurately estimate the state of health, state of charge, and state of power of batteries. By analyzing the characteristics of model parameters, a differentiated parameter identification strategy is proposed. Experimental results show that the method has high estimation accuracy and robustness.
Accurate estimation of the key states of batteries is essential for safe and reliable battery operation. In this paper, a joint estimation method for state of health (SOH), state of charge (SOC) and state of power (SOP) of batteries based on the autoregressive equivalent circuit model (AR-ECM) is proposed. Firstly, considering the coupling relationship existing between these key states of the battery, the state space-coupling model based on AR-ECM is proposed. Then, by analyzing the different characteristics of the model parameters, a differentiated model parameter identification strategy is proposed. Finally, based on the accurate estimation of the model parameters, the square root unscented Kalman filter (SR-UKF) is used to realize the online estimation of SOH and SOC. The SOP estimation under multiple constraints is realized based on the updated state, voltage, and current. Experimental results in noise free and Gaussian white noise environments show that the multi-state joint estimation algorithm has high estimation accuracy and robustness.

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