Neural Network Models for High-Precision Predictive Maintenance
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Published 2026-01-07
Predictive Maintenance, Neural Networks, Deep Learning, Industrial IoT, LSTM, Sensor Data Analytics, Fault Prediction, High-Precision Modeling Issue
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ArticlesHow to Cite
[1]V. Ragavan, N. Rohit, and S. Nazar Mohammed, “Neural Network Models for High-Precision Predictive Maintenance”, ijmiet, vol. 1, no. 1, pp. 39–51, Jan. 2026, Accessed: Mar. 02, 2026. [Online]. Available: https://worldcometresearchgroup.com/index.php/ijmiet/article/view/79Abstract
Predictive maintenance (PdM) has emerged as one of the key strategies in the contemporary industrial set-ups, with the ambition of improving the reliability of the machineries, minimizing downtimes, and optimizing the cost operational patterns. The conventional methods of maintenance such as preventive and corrective methods are usually reactive and ineffective leading to unnecessary costs, and breakdown of the system without any prior issues. This study reports on the use of highly-developed neural network (NN) models to reach the desired high-precision predictive maintenance by accurately predicting equipment failures and anomalies. We explore various types of neural networks, such as feedforward neural network (FNNs), recurrent neural networks (RNNs), and convolutional neural network (CNNs), to capture more complicated industrial data. It is proposed that the sensor data processing, feature extraction, and model training will be linked in a framework enabling the prediction of the failure events with a high degree of accuracy. Large-scale evaluations are performed on publicly available predictive maintenance data and the performance is measured in terms of accuracy, precision, recall, F1-score and mean absolute error (MAE). It has been found that deep learning models, especially LSTM-based RNNs, are more effective at revealing temporal correlations in time-series sensor data, thereby providing data with a better predictive aspect. This research gives a complete methodology of implementing neural network-based predictive maintenance systems such as the architecture, preprocessing of data techniques, hyperparameter optimization, and the evaluation of the model. The results support the fact that neural network models have a tremendous potential to revolutionize the predictive maintenance practice, which can be applied in practice by industrial practitioners and scholars. The suggested solution will help to reduce downtimes, make equipment operational longer, and decrease operations costs in industries significantly.
References
[1] A Survey of Predictive Maintenance: Systems, Purposes and Approaches — Zhu, Ran, Zhou & Wen (2019) arXiv+1
[2] A systematic literature review of machine learning methods applied to predictive maintenance — Carvalho et al. (2019) ScienceDirect
[3] Predictive maintenance in the Industry 4.0: A systematic literature review — (2020) ScienceDirect
[4] Artificial Intelligence Techniques for Industrial Predictive Maintenance: A Systematic Review of Recent Advances — (IIETA) IIETA
[5] Condition Monitoring using Machine Learning: A Review of Theory, Applications, and Recent Advances — (2023) ScienceDirect
[6] Low Power Vibration Based Predictive Maintenance for Industry 4.0 using Neural Networks: A Survey — Vasilache et al. (2024) arXiv
[7] Revolutionizing System Reliability: The Role of AI in Predictive Maintenance Strategies — Bidollahkhani & Kunkel (2024) arXiv
[8] AI based predictive maintenance of solar photovoltaics systems: a comprehensive review — Gaikwad (2025) SpringerLink
[9] Predictive Maintenance: Approaches — A Systematic Literature Review — (MDPI article on statistical based and ML-based models) MDPI
[10] Predictive Maintenance using Machine Learning: A Systematic Review — (general ML based PdM review) Jes Publication+1
[11] Comparative Analysis of Machine Learning Algorithms for Predictive Maintenance — (review comparing algorithms like SVM, RF, etc.) Jes Publication+1
[12] Short Horizon Predictive Maintenance of Industrial Pumps Using Time Series Features and Machine Learning — Alghtus et al. (2025) arXiv
[13] Deep Learning for Predictive Maintenance: Revolutionizing Industrial Equipment Monitoring — Parker (2023) scienceacadpress.com
[14] Artificial Intelligence in Predictive Maintenance: A Systematic Literature Review on Review Papers — Islam, Begum & Ahmed (2024) Ouci
[15] A Survey of Predictive Maintenance Methods: An Analysis of Prognostics via Classification and Regression — Moonlight compiled review (2025)
[16] Kaur, M., Bonkra, A., Verma, R., Khanna, N., Maken, P., & Sunkara, S. K. (2025). Comparative study of traditional and hybrid models in short-term financial forecasting using machine learning. In Innovations in Computing (pp. 13-18). CRC Press.
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How to Cite
[1]V. Ragavan, N. Rohit, and S. Nazar Mohammed, “Neural Network Models for High-Precision Predictive Maintenance”, ijmiet, vol. 1, no. 1, pp. 39–51, Jan. 2026, Accessed: Mar. 02, 2026. [Online]. Available: https://worldcometresearchgroup.com/index.php/ijmiet/article/view/79
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