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Battery state-of-health sensitive energy management of hybrid electric vehicles: Lifetime prediction and ageing experimental validation

机译:混合动力电动汽车的电池状态健康敏感能量管理:终身预测和老化实验验证

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摘要

Achieving a satisfactory high-voltage battery lifetime while preserving fuel economy is a key challenge in the design of hybrid electric vehicles (HEVs). While several battery state-of-health (SOH) sensitive control approaches for HEVs have been presented in the literature, these approaches have not typically been experimentally validated. This paper thus aims at illustrating an optimal, multi-objective battery SOH sensitive off-line HEV control approach, which is based on dynamic programming (DP) and is experimentally validated in terms of prediction capability of the battery lifetime. An experimental campaign is conducted which ages cells with current profiles for three different predicted lifetime cases. The predictive accuracy of the battery ageing model is subsequently improved by including the effect of temperature and updating the empirical ageing characterization curve. The improved ageing model is then used to assess HEV performance in terms of fuel economy and battery lifetime for various high-voltage battery pack sizes and control goals. Results suggest that, thanks to the proposed multi-objective battery SOH sensitive control approach, the battery pack may be downsized by 35% with no impact on battery lifetime and a fuel consumption increase of just 1.1%. Engineers and designers could thus potentially adopt the proposed control approach to design HEVs which take tradeoffs between fuel economy and battery lifetime into consideration. Considerable reductions in battery pack cost, weight and production related CO2 emissions could be achieved in this way.
机译:在保持燃料经济性的同时实现令人满意的高压电池寿命是混合动力电动汽车(HEV)设计中的关键挑战。虽然在文献中呈现了几种电池的健康状态(SOH)的HEV敏感的控制方法,但这些方法通常没有经过实验验证。因此,本文旨在说明基于动态编程(DP)的最佳多目标电池SOH敏感的离线HEV控制方法,并且在电池寿命的预测能力方面进行实验验证。进行了一个实验活动,对三种不同预测的寿命案件的电流曲线年龄在细胞中等。随后通过包括温度和更新经验老化表征曲线的影响,随后改善了电池老化模型的预测精度。然后,改进的老化模型用于评估燃油经济性和电池寿命的HEV性能,用于各种高压电池组尺寸和控制目标。结果表明,由于提出的多目标电池SOH敏感控制方法,电池组可能缩小35%,对电池寿命没有影响,燃料消耗增加仅1.1%。因此,工程师和设计师可能采用拟议的控制方法来设计HEV,以考虑燃油经济性和电池寿命之间的权衡。通过这种方式可以实现电池组成,重量和生产相关二氧化碳排放的相当大的降低。

著录项

  • 来源
    《Applied Energy》 |2021年第1期|116440.1-116440.13|共13页
  • 作者单位

    Politecn Torino Dept Mech & Aeropsace Engn DIMEAS I-10129 Turin Italy|Politecn Torino Ctr Automot Res & Sustainable Mobil CARS I-10129 Turin Italy|McMaster Univ McMaster Automot Resource Ctr MARC Hamilton ON L8P 0A6 Canada;

    McMaster Univ McMaster Automot Resource Ctr MARC Hamilton ON L8P 0A6 Canada;

    McMaster Univ McMaster Automot Resource Ctr MARC Hamilton ON L8P 0A6 Canada;

    McMaster Univ McMaster Automot Resource Ctr MARC Hamilton ON L8P 0A6 Canada;

    Politecn Torino Dept Mech & Aeropsace Engn DIMEAS I-10129 Turin Italy|Politecn Torino Ctr Automot Res & Sustainable Mobil CARS I-10129 Turin Italy;

    McMaster Univ McMaster Automot Resource Ctr MARC Hamilton ON L8P 0A6 Canada;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Battery ageing; Battery state-of-health; Energy management; Hybrid electric vehicle (HEV); Optimal control;

    机译:电池老化;电池状态健康;能源管理;混合动力电动车(HEV);最优控制;
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