Deep Learning Enhanced Predictive Maintenance Framework Using Industrial Internet of Things Sensors for Smart Manufacturing Systems
Published 2025-11-14
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Keywords
- artificial intelligence,
- deep learning,
- industrial internet of things,
- predictive maintenance,
- smart manufacturing
How to Cite
Copyright (c) 2025 International Journal of Industrial Engineering and Management

This work is licensed under a Creative Commons Attribution 4.0 International License.
Abstract
Manufacturing systems generate massive sensor data, yet transforming this information into actionable maintenance insights remains challenging due to traditional threshold-based approaches suffering from high false positive rates and insufficient advance warning. This study developed and validated a hybrid deep learning framework combining convolutional neural networks for spatial feature extraction with long short-term memory networks for temporal pattern recognition in smart manufacturing environments. The methodology involved collecting 18 months of operational data from 127 industrial machines across three Saudi Arabian facilities, encompassing 1.2 million sensor readings and 3,452 maintenance events from vibration, temperature, current, pressure, and acoustic sensors. The hybrid CNN-LSTM framework achieved 94.3% accuracy in predicting equipment failures 48 hours in advance with a 2.1% false positive rate, demonstrating statistically significant superiority over Random Forest (15.4 percentage point improvement), Support Vector Machines (15.1 percentage points), and threshold-based monitoring (25.9 percentage points). Significance was assessed on paired predictions using McNemar’s test (two-sided, alpha = 0.05) with Bonferroni correction across model comparisons; improvements were significant (p < 0.001). Cross-facility validation confirmed robust generalization capabilities.
Article history: Received (August 1, 2025); Revised (October 2, 2025); Accepted (October 13, 2025); Published online (November 14, 2025)
