open access publication

Article, 2023

The development of machine learning-based remaining useful life prediction for lithium-ion batteries

Journal of Energy Chemistry, ISSN 2095-4956, Volume 82, Pages 103-121, 10.1016/j.jechem.2023.03.026

Contributors

Li, Xingjun [1] Yu, Dan (Corresponding author) [1] Byg, Vilsen Søren [1] Ioan, Store Daniel (Corresponding author) [1]

Affiliations

  1. [1] Aalborg University
  2. [NORA names: AAU Aalborg University; University; Denmark; Europe, EU; Nordic; OECD]

Abstract

Lithium-ion batteries are the most widely used energy storage devices, for which the accurate prediction of the remaining useful life (RUL) is crucial to their reliable operation and accident prevention. This work thoroughly investigates the developmental trend of RUL prediction with machine learning (ML) algorithms based on the objective screening and statistics of related papers over the past decade to analyze the research core and find future improvement directions. The possibility of extending lithium-ion battery lifetime using RUL prediction results is also explored in this paper. The ten most used ML algorithms for RUL prediction are first identified in 380 relevant papers. Then the general flow of RUL prediction and an in-depth introduction to the four most used signal pre-processing techniques in RUL prediction are presented. The research core of common ML algorithms is given first time in a uniform format in chronological order. The algorithms are also compared from aspects of accuracy and characteristics comprehensively, and the novel and general improvement directions or opportunities including improvement in early prediction, local regeneration modeling, physical information fusion, generalized transfer learning, and hardware implementation are further outlooked. Finally, the methods of battery lifetime extension are summarized, and the feasibility of using RUL as an indicator for extending battery lifetime is outlooked. Battery lifetime can be extended by optimizing the charging profile serval times according to the accurate RUL prediction results online in the future. This paper aims to give inspiration to the future improvement of ML algorithms in battery RUL prediction and lifetime extension strategy.

Keywords

ML algorithms, RUL, RUL prediction, RUL prediction results, accident prevention, accidents, accuracy, accurate RUL prediction, accurate prediction, algorithm, battery, battery RUL prediction, battery lifetime, battery lifetime extension, characteristics, charge, chronological order, core, development, developmental trends, devices, direction, early prediction, energy, energy storage devices, extension, extension strategy, feasibility, formation, fusion, future, general flow, hardware, hardware implementation, implementation, improvement, improvement direction, indicators, information fusion, inspiration, introduction, learning, learning-based, life, life prediction, lifetime, lifetime extension, lifetime extension strategy, lithium-ion, lithium-ion batteries, lithium-ion battery lifetime, machine, machine learning, machine learning-based, method, model, operation, opportunities, order, paper, pre-processing techniques, prediction, prediction results, prevention, regeneration model, relevant papers, research, research core, results, screening, serval times, signal, signal pre-processing techniques, statistically, storage devices, strategies, technique, time, transfer learning, trends, uniform format

Funders

  • China Scholarship Council

Data Provider: Digital Science