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International Journal of Creative and Open Research in Engineering and Management

A Peer-Reviewed, Open-Access International Journal Supporting Multidisciplinary Research, Digital Publishing Standards, DOI Registration, and Academic Indexing.
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ISSN: 3108-1754 (Online)
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License: CC BY 4.0
Peer Review: Double Blind
Volume 01, Issue 03

Published on: December 2025

COMPARATIVE ANALYSIS OF MACHINE LEARNING MODELS FOR PREDICTIVE MAINTENANCE IN SMART MANUFACTURING

Pankaj A. Joshi Vikram S. Patil Rohan M. Deshmukh

Dr. Suresh K. Malhotra

Department of Computer Science and Engineering
Apex Institute of Engineering & Technology

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Plagiarism Passed Peer Reviewed Open Access

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Abstract

In modern manufacturing environments, the integration of digital technologies has shifted the paradigm from reactive to proactive maintenance strategies. Predictive maintenance (PdM), powered by machine learning (ML) models, uses historical and real-time data to forecast equipment failures before they occur, thus optimizing maintenance schedules, reducing downtime, and minimizing operational costs. This research article provides a detailed examination and comparative evaluation of various machine learning models applied in predictive maintenance within smart manufacturing. It explores their performance, advantages, limitations, data requirements, and suitability for different types of industrial assets. We discuss systematic implementation roadmaps, data preprocessing techniques, model evaluation metrics, integration with industrial Internet of Things (IIoT), and challenges faced during deployment. The study also suggests how hybrid and ensemble approaches can further enhance prediction accuracy. Based on simulated and real-world case studies, we compare traditional ML methods such as Logistic Regression (LR), Support Vector Machines (SVM), and Random Forests (RF) with advanced deep learning architectures like Convolutional Neural Networks (CNN), Recurrent Neural Networks (RNN), Long Short-Term Memory (LSTM), and Autoencoders. Our experimental results indicate that deep learning models outperform classical algorithms in capturing temporal dependencies and nonlinear patterns in time-series sensor data, albeit at the expense of higher computational costs. We provide recommendations for model selection based on application requirements and data availability, along with future research directions in adaptive predictive maintenance frameworks.


To ensure effective deployment, it is crucial to address data quality issues such as noise, missing values, and class imbalance through robust preprocessing techniques. Additionally, aligning model complexity with available computational resources and real-time processing requirements is essential for practical implementation. Future work should focus on developing adaptive models that can learn continuously from streaming data to maintain prediction accuracy over time

How to Cite this Paper

Joshi, P. A., Patil, V. S. & Deshmukh, R. M. (2025). Comparative Analysis of Machine Learning Models for Predictive Maintenance in Smart Manufacturing. International Journal of Creative and Open Research in Engineering and Management, <i>01</i>(03), 1-9. https://doi.org/10.55041/ijcope.v1i3.001

Joshi, Pankaj, et al.. "Comparative Analysis of Machine Learning Models for Predictive Maintenance in Smart Manufacturing." International Journal of Creative and Open Research in Engineering and Management, vol. 01, no. 03, 2025, pp. 1-9. doi:https://doi.org/10.55041/ijcope.v1i3.001.

Joshi, Pankaj,Vikram Patil, and Rohan Deshmukh. "Comparative Analysis of Machine Learning Models for Predictive Maintenance in Smart Manufacturing." International Journal of Creative and Open Research in Engineering and Management 01, no. 03 (2025): 1-9. https://doi.org/https://doi.org/10.55041/ijcope.v1i3.001.

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References

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  • All submissions are screened under plagiarism detection.
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  • Peer Review Type: Double-Blind Peer Review
  • Published on: Dec 19 2025
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