Research on the energy-saving strategy of path planning for electric vehicles considering traffic information

Guanghai Zhu, Jianbin Lin*, Qingwu Liu, Hongwen He

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

11 Citations (Scopus)

Abstract

Battery-powered electric vehicles (EVs) have a limited on-board energy storage and present the problem of driving mileage anxiety. Moreover, battery energy storage density cannot be effectively improved in a short time, which is a technical bottleneck of EVs. By considering the impact of traffic information on energy consumption forecasting, an energy-saving path planning method for EVs that takes traffic information into account is proposed. The modeling process of the EV model and the construction process of the traffic simulation model are expounded. In addition, the long-term, short-term memory neural network (LSTM) model is selected to predict the energy consumption of EVs, and the sequence to sequence technology is used in the model to integrate the driving condition data of EVs with traffic information. In order to apply the predicted energy consumption to travel guidance, a road planning method with the optimal coupling of energy consumption and distance is proposed. The experimental results show that the energy-based economic path uses 9.9% lower energy consumption and 40.2% shorter travel time than the distance-based path, and a 1.5% lower energy consumption and 18.6% longer travel time than the time-based path.

Original languageEnglish
Article number3601
JournalEnergies
Volume12
Issue number19
DOIs
Publication statusPublished - 20 Sept 2019

Keywords

  • Battery electric vehicle
  • Deep learning
  • Energy consumption prediction
  • Energy-saving strategy
  • Path planning

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