Predictive equivalent consumption minimization strategy based on driving pattern personalized reconstruction

Yang Zhang, Qingxin Li, Chengqing Wen, Mingming Liu, Xinhua Yang, Hongming Xu, Ji Li*

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

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Abstract

Range-extended electric vehicles combine the benefits of electric propulsion with the convenience and range flexibility of conventional internal combustion engine vehicles. In the energy management system, an equivalent consumption minimization strategy (ECMS) ensures balanced utilization of various energy sources to meet driving demand in real time, thereby enhancing energy efficiency. This paper proposes a driving pattern personalized reconstruction (DPPR) method to maximizes the accuracy of velocity prediction and to serve a predictive ECMS (P-ECMS) with high adaptability to uncertain scenarios. In this context, open-source driving cycles are segmented, and features of each driving pattern are extracted for cluster analysis. Utilizing the results from clustering, new driving cycles are reconstructed for the purpose of training adaptive neuro-fuzzy inference system (ANFIS) models. Personalized velocity prediction is achieved through bias fusion in the multi-ANFIS model, adapting to various driving conditions. The performance of the proposed P-ECMS is validated across various driving conditions and compared with conventional ECMS (C-ECMS), adaptive ECMS (A-ECMS), dynamic programming (DP), and fuzzy logic (FL) strategy. The results indicate that using the proposed P-ECMS is strongly robust in terms of battery pack SoC stabilization under various driving conditions, whose SoC difference achieves 97.02% of using the DP strategy. Compared to using other strategies, using P-ECMS achieves better SoC's stability and lower fuel consumption than using the FL strategy (11.1%), using A-ECMS (1.7%), and using C-ECMS (26.6%).
Original languageEnglish
Article number123424
JournalApplied Energy
Volume367
Early online date13 May 2024
DOIs
Publication statusPublished - 1 Aug 2024

Bibliographical note

Acknowledgement
The authors would like to thank Birmingham CASE Automotive Research and Education Centre. Authors also would like to thank AVL List GmbH (AVL) for providing access to its Advanced simulation technologies and software technical support within the frame of the University Partnership Program. This study is partly funded by Science Foundation Ireland 21/FFP-P/10266 and 12/RC/2289_P2 at Insight the SFI Research Centre for Data Analytics at Dublin City University.

Keywords

  • Driving pattern reconstruction
  • Equivalent consumption minimization strategy (ECMS)
  • Energy management system
  • Range-extended electric vehicles
  • Velocity personalized prediction

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