International Journal of Engineering, Science and Information Technology
Vol 5, No 2 (2025)

Predictive Data Analytics for Fault Diagnosis and Energy Optimization in Industrial IoT Environments

Fallah, Dina (Unknown)
Abdul-Kareem, Bushra Jabbar (Unknown)
Murad, Nada Mohammed (Unknown)
Mahdi, Ammar Falih (Unknown)
Janan, Ola (Unknown)
Maidin, Siti Sarah (Unknown)



Article Info

Publish Date
10 May 2025

Abstract

The fusion of predictive maintenance with energy optimization represents a critical advance for intelligent Industrial Internet of Things (IIoT) systems. In response to the growing industrial demand for highly reliable and efficient operations, this study introduces and validates a unified framework that couples fault diagnosis via deep learning with energy management via reinforcement learning. We utilize a Convolutional Neural Network-Long Short-Term Memory (CNN-LSTM) architecture for multivariate fault detection, which demonstrates superior classification accuracy and robustness against data incompleteness. Simultaneously, a Deep Q-Network (DQN) performs dynamic energy scheduling based on predicted system health, achieving substantial energy reductions without compromising task deadlines. Extensive experimental results from real-world industrial datasets and simulations confirm the integrated framework's superiority over conventional approaches in both diagnostic precision and energy efficiency. Key performance indicators, including inference speed and cross-validation, affirm its suitability for real-time industrial applications. This work demonstrates that integrating predictive analytics into intelligent control paradigms is crucial for improving the reliability and sustainability of modern IIoT systems and offers a replicable blueprint for developing next-generation smart manufacturing solutions.

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