Development of Machine Learning Methods in Hybrid Energy Storage Systems in Electric Vehicles

Author:

Chen Tzu-Chia1,Ibrahim Alazzawi Fouad Jameel2,Grimaldo Guerrero John William3,Chetthamrongchai Paitoon4,Dorofeev Aleksei5,Ismael Aras masood6,Al Ayub Ahmed Alim7ORCID,Akhmadeev Ravil8,Latipah Asslia Johar9,Esmail Abu Al-Rejal Hussein Mohammed10ORCID

Affiliation:

1. Department of Industrial Engineering and Management, Ming Chi University of Technology, New Taipei City 24301, Taiwan

2. Department of Computer Engineering, Al-Rafidain University College, Baghdad, Iraq

3. Department of Energy, Universidad de la Costa, Barranquilla, Colombia

4. Faculty of Business Administration, Kasetsart University, Thailand

5. I.M. Sechenov First Moscow State Medical University (Sechenov University), Department of Propaedeutics of Dental Diseases, Moscow, Russia

6. Sulaimani Polytechnic University, Technical College of Informatics, Information Technology Department, Sulaymaniyah, Iraq

7. School of Accounting, Jiujiang University, 551 Qianjindonglu, Jiujiang, Jiangxi, China

8. British Doctor of Philosophy Degree (PhD) Standard, Associate Professor, Plekhanov Russian University of Economics (PRUE), Stremyanny Lane 36, 117997 Moscow, Russia

9. Department of Informatics, Faculty of Science and Technology, Universitas Muhammadiyah Kalimantan Timur, Samarinda 75124, Indonesia

10. Hodeidah University, Al Hudaydah, Yemen

Abstract

The hybrid energy storage systems are a practical tool to solve the issues in single energy storage systems in terms of specific power supply and high specific energy. These systems are especially applicable in electric and hybrid vehicles. Applying a dynamic and coherent strategy plays a key role in managing a hybrid energy storage system. The data obtained while driving and information collected from energy storage systems can be used to analyze the performance of the provided energy management method. Most existing energy management models follow predetermined rules that are unsuitable for vehicles moving in different modes and conditions. Therefore, it is so advantageous to provide an energy management system that can learn from the environment and the driving cycle and send the needed data to a control system for optimal management. In this research, the machine learning method and its application in increasing the efficiency of a hybrid energy storage management system are applied. In this regard, the energy management system is designed based on machine learning methods so that the system can learn to take the necessary actions in different situations directly and without the use of predicted select and run the predefined rules. The advantage of this method is accurate and effective control with high efficiency through direct interaction with the environment around the system. The numerical results show that the proposed machine learning method can achieve the least mean square error in all strategies.

Publisher

Hindawi Limited

Subject

General Engineering,General Mathematics

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