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A Novel Approach for Enhancing Battery Reliability in Market Using Machine Learning-Based RUL Prediction

In: Leveraging Emerging Technologies and Analytics for Empowering Humanity, Vol. 1

Author

Listed:
  • Ch. Rajendra Babu

    (Lakireddy Balireddy College of Engineering (Autonomous) Permanently Affiliated to JNTUK)

  • Thalla Swapna

    (Lakireddy Bali Reddy College of Engineering)

  • Ramisetty Siva Naga Lakshmi

    (Lakireddy Bali Reddy College of Engineering)

  • Avanigadda Durga Sankar

    (Lakireddy Bali Reddy College of Engineering)

  • Bezawada Naga Venkata Reddy

    (Lakireddy Bali Reddy College of Engineering)

Abstract

Batteries are fundamental to modern life because they run critical systems and gadgets in various industries, such as emergency response, logistics, and healthcare. Rechargeable battery packs are in greater demand, especially for energy storage and electric cars, emphasizing their significance in the worldwide energy transition. Dong (Wang et al., Microelectronics Reliability, ScienceDirect 78:212–219, 2017) Predicting the battery’s Remaining Useful Life (RUL) is the essential for the maintenance planning and resource management optimization. This work uses cutting-edge Machine Learning (ML) techniques to create a predictive model to calculate RUL based on past battery data. The techniques used included linear regression, complicated algorithms like XGBoost and AdaBoost, and ensemble approaches like Random Forest and Gradient Boosting. With an astounding 99.98% accuracy rate, the XGBoost model proved useful for predicting battery RUL. Important parameters were found to include voltage and discharge. Important criteria that greatly impact battery longevity include discharge and voltage. By reliably predicting the RUL of batteries for fresh, unknown data, the final trained model promotes sustainable battery usage across various applications, improves operational efficiency, and allows for well-informed decision-making.

Suggested Citation

  • Ch. Rajendra Babu & Thalla Swapna & Ramisetty Siva Naga Lakshmi & Avanigadda Durga Sankar & Bezawada Naga Venkata Reddy, 2025. "A Novel Approach for Enhancing Battery Reliability in Market Using Machine Learning-Based RUL Prediction," Springer Proceedings in Business and Economics, in: D P Goyal & Suprateek Sarker & Somnath Mukhopadhyay & Basav Roychoudhury & Parijat Upadhyay & Pradee (ed.), Leveraging Emerging Technologies and Analytics for Empowering Humanity, Vol. 1, chapter 12, pages 229-244, Springer.
  • Handle: RePEc:spr:prbchp:978-981-96-2548-2_12
    DOI: 10.1007/978-981-96-2548-2_12
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