Design and Implementation of IoT Based Wireless Battery Management System for Electric Vehicles

Authors

  • Ganesh V. Lohar Research Scholar, Electrical and Electronics Engineering Department Sandip University, Nashik, India 422213
  • M. Suresh Kumar Professor, Sandip University, Nashik, India 422213

Keywords:

Battery Management System (BMS), Electric Vehicles, State-of-Charge (SOC), Internet of Things (IoT)

Abstract

The Battery Management System is essential for managing and monitoring battery performance, ensuring optimal performance and extending battery life. A potential way to get around these restrictions and improve the precision and dependability of SOC estimation is through the integration of wireless technologies and IoT in BMS. The use of a Wireless Battery Management System (WBMS) for the efficient management of battery cells in Electric Vehicles (EVs) is discussed in this paper. IoT devices with voltage sensors are deployed on the battery cells as part of the experimental setup. As part of the experimental setup, IoT devices with voltage sensors are installed on the battery cells. These sensors continuously monitor the voltage levels and wirelessly transmit the data to a central monitoring station. The outcomes show that the suggested wireless BMS system is efficient and accurate at calculating SOC from voltage measurements. According to the experimental findings, the cell temperature is higher during a 1C discharge rate compared to a 0.5C discharge rate.

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Published

16.08.2023

How to Cite

V. Lohar, G. ., & Kumar, M. S. . (2023). Design and Implementation of IoT Based Wireless Battery Management System for Electric Vehicles. International Journal of Intelligent Systems and Applications in Engineering, 11(10s), 360–369. Retrieved from https://ijisae.org/index.php/IJISAE/article/view/3291

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Research Article