4.6 Article

Temperature-Dependence in Battery Management Systems for Electric Vehicles: Challenges, Criteria, and Solutions

期刊

IEEE ACCESS
卷 7, 期 -, 页码 142203-142213

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2019.2943558

关键词

Batteries; Adaptation models; Temperature dependence; Temperature distribution; Computational modeling; Thermal management; Integrated circuit modeling; Adaptive filters; battery management systems; equivalent circuits; machine learning; state estimation

资金

  1. National Natural Science Foundation of China [61950410621, 61531008, 11702045]
  2. Palitelig termisk styringssystem for BEV-batteripakker: intelligent og modulaer losning [293808]
  3. Praktisk og effektiv oppfolging av KOLS-pasienter i kommunene [285575]
  4. Lab-on-Fiber: En bio-optisk sensor for deteksjon av ultralav bakteriekonsentrasjon i drikkevannsforsyningsnett'', from Regionalt Forskningsfond Oslofjordfondet [296654]
  5. Disruptiv sensorteknologi for a styrke vannkvalitetsstyring i kommunene'', from Regionalt Forskningsfond Hovedstaden [299429]
  6. Chongqing Research Program of Basic Research and Frontier Technology [cstc2016jcyjA0292, cstc2017jcyjA1842, cstc2017jcyjX0191]
  7. Chongqing Technology Innovation Leadership Talent Support Program'' [CSTCCXLTRC201702]
  8. Chongqing Education Commission [KJZD-K201800802]

向作者/读者索取更多资源

Owing to a global effort towards reducing carbon emissions, electric vehicles (EVs) have emerged to replace the petroleum-fueled vehicles. However, the battery is a bottleneck restricting EVs from being utilized in the same way as petroleum-fueled vehicles. Lithium-ion batteries (LiBs) are commonly used in EVs, but have an optimal temperature range, and operation outside this range causes accelerated aging in the form of capacity fading and power fading, especially in cold climates. We propose that both state parameter estimation and thermal management are interconnected problems and should be addressed together: Battery health and performance depends on temperature, while temperature depends on operational conditions, battery health, structural design and thermal management. Temperature dependent decay accounting for heat generation in cells, temperature variation between cells and heat transfer with surroundings, can allow more accurate state parameter estimation and guide thermal management strategies. This review investigates how the dynamics of temperature dependence and heat generation are addressed in the literature related to estimation of battery state parameters. Approaches involving temperature were divided into three categories: 1) maintain constant ambient temperature and omit battery temperature, 2) verify at different ambient temperatures, and 3) use available data for cell and/or ambient temperature. A valid solution to the problem in real applications, must satisfy three criteria: a) suitable for online applications, b) scalable to battery packs, and c) applicable to dynamic battery cycling occurring during normal use. The most promising methods include coupled thermal and electric models with adaptive filtering, and recurrent neural network methods.

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