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Home / Archives / Volume-6 / Issue-2 / Article-10

Volume - 6 | Issue - 2 | june 2024

Smart EV Charging Station Monitoring and User Feedback System
VijayaKumar R.  , Kowsikan D., Ponvel A., Shyam R., Naveen Kumar G.
Pages: 196-211
Cite this article
R., VijayaKumar, Kowsikan D., Ponvel A., Shyam R., and Naveen Kumar G.. "Smart EV Charging Station Monitoring and User Feedback System." Journal of Electronics and Informatics 6, no. 2 (2024): 196-211
Published
01 July, 2024
Abstract

The efficiency and reliability of electric vehicle (EV) charging stations are pivotal for user satisfaction and broader EV adoption. This research introduces a system that monitors essential parameters of EV charging stations, such as temperature, voltage, and current, using advanced sensors and the ESP32 microcontroller. The collected data is transmitted through the Bylnk platform, for real-time monitoring and analysis. To enhance the user experience, a mobile application has been developed, allowing users to review these critical details and receive notifications. The app provides a detailed overview of each charging station's performance, helping users identify the best stations based on historical data and user reviews. By offering insights into the operational status and efficiency of charging stations, the system aids users in making informed decisions about where to charge their vehicles. This integration of real-time monitoring with user-friendly mobile access improves user convenience and optimizes the EV charging infrastructure management.

Keywords

ESP 32 Voltage Sensor Current Sensor Temperature Sensor Bylnk

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