Battery Cell Charging Behavior Analysis Using Constant Current and Constant Voltage Methods

Authors

  • Anna Cyntia Andalas University
  • Muhammad Imran Hamid Andalas University
  • Ayu Elsa Afriyanti Andalas University

DOI:

https://doi.org/10.33387/protk.v12i2.8787

Keywords:

Battery charging, Constant Current/Constant Voltage, Efficiency, Overcharging, Lithium-Ion batteries, Operational safety

Abstract

This study presents a detailed simulation of lithium-ion battery charging using the Constant Current/Constant Voltage (CC/CV) method. MATLAB is used in conjunction with certain mathematical algorithms, such as numerical integration and curve fitting, to simulate the charging process, utilizing parameters including a constant current of 1C and a voltage threshold of 4.2V. The simulation analyzes the charging efficiency, usable capacity, and internal impedance variation under various current levels and voltage thresholds. The CC/CV method is compared with findings from other studies that also used the CC/CV charging technique, highlighting similarities and differences in the results. This analysis reveals that while CC/CV is effective in balancing charging speed and safety, minimizing the risk of overcharging, some studies note challenges related to temperature variations and their impact on battery performance. While CC/CV offers optimal management for lithium-ion battery charging, future research can focus on investigating the long-term effects of CC/CV on battery life under various environmental conditions, considering the findings and methodologies of similar studies.

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Published

2025-05-05

How to Cite

Cyntia, A., Hamid, M. I., & Afriyanti, A. E. (2025). Battery Cell Charging Behavior Analysis Using Constant Current and Constant Voltage Methods. Protek : Jurnal Ilmiah Teknik Elektro, 12(2), 83–88. https://doi.org/10.33387/protk.v12i2.8787

Issue

Section

Electrical, Power and Energy

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