Article, 2024

A novel multi-factor fuzzy membership function - adaptive extended Kalman filter algorithm for the state of charge and energy joint estimation of electric-vehicle lithium-ion batteries

Journal of Energy Storage, ISSN 2352-152X, 2352-1538, Volume 86, Page 111222, 10.1016/j.est.2024.111222

Contributors

Liu, Donglei 0000-0002-5370-4760 [1] Wang, Shunli 0000-0003-0485-8082 (Corresponding author) [1] [2] Fan, Yongcun [1] Fernandez, Carlos 0000-0001-6588-9590 [3] Blaabjerg, Frede 0000-0001-8311-7412 [4]

Affiliations

  1. [1] Southwest University of Science and Technology
  2. [NORA names: China; Asia, East];
  3. [2] Inner Mongolia University of Technology
  4. [NORA names: China; Asia, East];
  5. [3] Robert Gordon University
  6. [NORA names: United Kingdom; Europe, Non-EU; OECD];
  7. [4] Aalborg University
  8. [NORA names: AAU Aalborg University; University; Denmark; Europe, EU; Nordic; OECD]

Abstract

In view of the unmeasurable state parameters of electric-vehicle lithium-ion batteries, this paper investigates a novel multi-factor fuzzy membership function - adaptive extended Kalman filter (MFMF-AEKF) algorithm for the online joint estimation of the state of charge and energy. Strong nonlinear characteristics of model parameters are characterized by considering multiple processing factors of electrochemical and diffusion effects for lithium-ion batteries and constructing an optimized multifactor coupling model. In the proposed MFMF-AEKF method, multi-space-scale factors are introduced to realize the numerical analysis of the multi-factor coupled model parameters and state estimation under dynamic working conditions of electric-vehicle lithium-ion batteries. The proposed MFMF-AEKF algorithm estimates the state of charge (SOC) with the overall best mean absolute error (MAE), mean absolute percentage error (MAPE), root mean square error (RMSE), and maximum error (ME) values of 1.822 %, 4.322 %, 1.947 %, and 2.954 %, respectively, under challenging working conditions. And The MAE, MAPE, RMSE, and ME values for the state of energy (SOE) are 0.617 %, 1.711 %, 0.695 %, and 1.011 %, respectively. Both state estimation results are better than the traditional method. The proposed MFMF-AEKF algorithm has higher estimation accuracy which provides a feasible estimation algorithm for the joint SOC and SOE of lithium-ion batteries.

Keywords

Kalman, Kalman filter, Kalman filter algorithm, MAE, MAPE, ME values, accuracy, algorithm, analysis, battery, charge, conditions, coupling model, coupling model parameters, diffusion, diffusion effects, dynamic working conditions, effect, energy, error, estimation, estimation accuracy, estimation algorithm, estimation results, factors, filter, filtering algorithm, function, fuzzy membership functions, joint estimation, joint state-of-charge, lithium-ion, lithium-ion batteries, maximum error, membership functions, method, model, model parameters, multiple process factors, numerical analysis, online joint estimation, parameters, process factors, results, root, root mean square error, square error, state, state estimation, state estimation results, state of charge, state of energy, state parameters, strong nonlinear characteristics, traditional methods, values, work, working conditions

Funders

  • National Natural Science Foundation of China

Data Provider: Digital Science