Energy Consumption Prediction of Electric Vehicles Based on Digital Twin Technology

Digital twinning technology originated in the field of aerospace. The real-time and bidirectional feature of data interaction guarantees its advantages of high accuracy, real-time performance and scalability. In this paper the digital twin technology was introduced to electric vehicle energy consumption research. First, an energy consumption model of an electric vehicle of BAIC BJEV was established, then the model was optimized and verified through the energy consumption data of the drum test. Based on the data of the vehicle real-time monitoring platform, a digital twin model was built, and it was trained and updated by daily new data. Eventually it can be used to predict and verify the data of vehicle. In this way the prediction of energy consumption of vehicles can be achieved.

[1]  Xu Ma,et al.  Probabilistic Analysis of Electric Vehicle Energy Consumption Using MPC Speed Control and Nonlinear Battery Model , 2021, 2021 IEEE Green Technologies Conference (GreenTech).

[2]  Mallik Tatipamula,et al.  Digital Twin for 5G and Beyond , 2021, IEEE Communications Magazine.

[3]  N. Kockmann,et al.  The Digital Twin – Your Ingenious Companion for Process Engineering and Smart Production , 2021, Chemical Engineering & Technology.

[4]  Bogdan Ovidiu Varga,et al.  Energy management of electric and hybrid vehicles dependent on powertrain configuration , 2012 .

[5]  Abbas Fotouhi,et al.  Electric vehicle energy consumption modelling and estimation—A case study , 2020, International Journal of Energy Research.

[6]  Guanfa Li An Energy Consumption Model of Electric Vehicle based on Neural Network , 2021 .

[7]  S. Kaleg,et al.  The influence of the regenerative braking on the overall energy consumption of a converted electric vehicle , 2020, SN Applied Sciences.

[8]  Roberto Álvarez Fernández,et al.  A probabilistic approach for determining the influence of urban traffic management policies on energy consumption and greenhouse gas emissions from a battery electric vehicle , 2019, Journal of Cleaner Production.

[9]  Yazan Al-Wreikat,et al.  Driving behaviour and trip condition effects on the energy consumption of an electric vehicle under real-world driving , 2021 .

[10]  Tariq Muneer,et al.  Energy consumption and modelling of the climate control system in the electric vehicle , 2018, Energy Exploration & Exploitation.

[11]  Dietmar P. F. Möller,et al.  Intelligent Manufacturing with Digital Twin , 2021, 2021 IEEE International Conference on Electro Information Technology (EIT).

[12]  Xiaoxiang Na,et al.  Effect of a traffic speed based cruise control on an electric vehicleʼ s performance and an energy consumption model of an electric vehicle , 2020, IEEE/CAA Journal of Automatica Sinica.