Smart Monitoring and Controlling of the Battery and Motor

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This is an unedited manuscript accepted for publication and provided as an Article in Press for early access at the author’s request. The article will undergo copyediting, typesetting, and galley proof review before final publication. Please be aware that errors may be identified during production that could affect the content. All legal disclaimers of the journal apply.

Year : 2026 | Volume : 04 | 01 | Page :
    By

    Amutha Priya N,

  • Sidhanth P,

  • Vinoth Kumar R,

  • Prathickson P,

  1. Associate Professor & Head, Department of EEE, Rohini College of Engineering and Technology, Palkulam, Kerala, India
  2. Student, Department of EEE, Rohini College of Engineering and Technology, Palkulam, Kerala, India
  3. Student, Department of EEE, Rohini College of Engineering and Technology, Palkulam, Kerala, India
  4. Student, Department of EEE, Rohini College of Engineering and Technology, Palkulam, Kerala, India

Abstract

The demand for effective battery and motor monitoring and management to guarantee dependability, safety, and peak performance has increased due to the quick development of electric vehicles and smart industrial systems. The smart monitoring and control methods used in battery management systems and motor control systems are thoroughly reviewed in this paper. In addition to speed, torque, efficiency, and fault situations in motors, it emphasizes important characteristics like temperature, voltage, current, state of charge, and state of health in batteries. The importance of data- driven methods such as machine learning and artificial intelligence for improving fault detection, predictive maintenance, and system optimization is examined. Also examined is the integration of cloud-based platforms with Internet of Things (IoT) frameworks to enable remote monitoring, data storage, and smart decision-making. Additionally, crucial challenges like system reliability, cybersecurity issues, and scalability problems are examined to offer a thorough viewpoint on implementation. Future research directions centred on intelligent, autonomous, and energy-efficient systems are discussed. The main aim of this analysis is to help developments in sustainable and intelligent energy systems by offering a comprehensive grasp of existing technology and new trends in smart battery and motor monitoring and control. Real-world applicability and performance enhancements in various industrial settings for future implementations and research progress are underscored through practical case studies and experimental validations, guaranteeing global improvements in efficiency, reliability, safety, and cost-effectiveness.

Keywords: Electric Vehicle, Battery management system, Motor, State of Charge, Temperature, Smart monitoring.

How to cite this article:
Amutha Priya N, Sidhanth P, Vinoth Kumar R, Prathickson P. Smart Monitoring and Controlling of the Battery and Motor. International Journal of Electrical Machine Analysis and Design. 2026; 04(01):-.
How to cite this URL:
Amutha Priya N, Sidhanth P, Vinoth Kumar R, Prathickson P. Smart Monitoring and Controlling of the Battery and Motor. International Journal of Electrical Machine Analysis and Design. 2026; 04(01):-. Available from: https://journals.stmjournals.com/ijemad/article=2026/view=240437


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Ahead of Print Subscription Review Article
Volume 04
01
Received 31/03/2026
Accepted 31/03/2026
Published 22/04/2026
Publication Time 22 Days


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