Research Article

A comparative analysis of machine and deep learning models for predictive maintenance and fault estimation of tools in industrial machinery within small-scale settings

Volume: 67 Number: 2 December 24, 2025

A comparative analysis of machine and deep learning models for predictive maintenance and fault estimation of tools in industrial machinery within small-scale settings

Abstract

This study presents a comparative evaluation of machine learning (ML) and deep learning (DL) models for predictive maintenance (PdM) in small-scale industrial systems. A low-cost Arduino-based testbed equipped with vibration, temperature, and rotational speed sensors was developed to emulate real-world conditions. The primary focus of the study is the detailed implementation and analysis of a Recurrent Neural Network with Long Short-Term Memory (RNN-LSTM). For benchmarking, two baseline models—Linear Regression and K-Nearest Neighbors (KNN)—were also implemented. According to the evaluation results, RNN-LSTM achieved the highest performance, with 95.31% accuracy, 0.047 MSE, 0.217 RMSE, 0.047 MAE, and 23.4% SMAPE. In comparison, Linear Regression and KNN yielded lower accuracies (92.30% and 93.27%) and higher error values (e.g., SMAPE of 58.7% and 41.2%). These findings confirm the superiority of RNN-LSTM in modeling temporal dependencies, while baseline models demonstrated limited generalization. Overall, the study shows that advanced DL models can be deployed on resource-constrained embedded systems, supporting the wider adoption of Industry 4.0 practices in small and medium-sized enterprises.

Keywords

References

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Details

Primary Language

English

Subjects

Modelling and Simulation, Electronic Sensors

Journal Section

Research Article

Publication Date

December 24, 2025

Submission Date

June 28, 2025

Acceptance Date

October 23, 2025

Published in Issue

Year 2025 Volume: 67 Number: 2

APA
Öztürk, Y. (2025). A comparative analysis of machine and deep learning models for predictive maintenance and fault estimation of tools in industrial machinery within small-scale settings. Communications Faculty of Sciences University of Ankara Series A2-A3 Physical Sciences and Engineering, 67(2), 193-215. https://doi.org/10.33769/aupse.1729175
AMA
1.Öztürk Y. A comparative analysis of machine and deep learning models for predictive maintenance and fault estimation of tools in industrial machinery within small-scale settings. Commun.Fac.Sci.Univ.Ank.Series A2-A3: Phys.Sci. and Eng. 2025;67(2):193-215. doi:10.33769/aupse.1729175
Chicago
Öztürk, Yusuf. 2025. “A Comparative Analysis of Machine and Deep Learning Models for Predictive Maintenance and Fault Estimation of Tools in Industrial Machinery Within Small-Scale Settings”. Communications Faculty of Sciences University of Ankara Series A2-A3 Physical Sciences and Engineering 67 (2): 193-215. https://doi.org/10.33769/aupse.1729175.
EndNote
Öztürk Y (December 1, 2025) A comparative analysis of machine and deep learning models for predictive maintenance and fault estimation of tools in industrial machinery within small-scale settings. Communications Faculty of Sciences University of Ankara Series A2-A3 Physical Sciences and Engineering 67 2 193–215.
IEEE
[1]Y. Öztürk, “A comparative analysis of machine and deep learning models for predictive maintenance and fault estimation of tools in industrial machinery within small-scale settings”, Commun.Fac.Sci.Univ.Ank.Series A2-A3: Phys.Sci. and Eng., vol. 67, no. 2, pp. 193–215, Dec. 2025, doi: 10.33769/aupse.1729175.
ISNAD
Öztürk, Yusuf. “A Comparative Analysis of Machine and Deep Learning Models for Predictive Maintenance and Fault Estimation of Tools in Industrial Machinery Within Small-Scale Settings”. Communications Faculty of Sciences University of Ankara Series A2-A3 Physical Sciences and Engineering 67/2 (December 1, 2025): 193-215. https://doi.org/10.33769/aupse.1729175.
JAMA
1.Öztürk Y. A comparative analysis of machine and deep learning models for predictive maintenance and fault estimation of tools in industrial machinery within small-scale settings. Commun.Fac.Sci.Univ.Ank.Series A2-A3: Phys.Sci. and Eng. 2025;67:193–215.
MLA
Öztürk, Yusuf. “A Comparative Analysis of Machine and Deep Learning Models for Predictive Maintenance and Fault Estimation of Tools in Industrial Machinery Within Small-Scale Settings”. Communications Faculty of Sciences University of Ankara Series A2-A3 Physical Sciences and Engineering, vol. 67, no. 2, Dec. 2025, pp. 193-15, doi:10.33769/aupse.1729175.
Vancouver
1.Yusuf Öztürk. A comparative analysis of machine and deep learning models for predictive maintenance and fault estimation of tools in industrial machinery within small-scale settings. Commun.Fac.Sci.Univ.Ank.Series A2-A3: Phys.Sci. and Eng. 2025 Dec. 1;67(2):193-215. doi:10.33769/aupse.1729175

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