Adaptive Distributed Deep Learning Framework for Real-Time Predictive Maintenance in Industrial IoT Environments

Authors

  • Krishan Kumar Yadav Sanskriti University, Mathura, India Author
  • Dalia Younis Sanskriti University, Mathura, India Author

DOI:

https://doi.org/10.64758/fjwqwf58

Keywords:

Big Data, Deep Learning, Distributed Computing, Predictive Maintenance, Industrial IoT, Adaptive Learning, Real-Time Analytics, Fault Detection, Anomaly Detection, Edge Computing

Abstract

This paper presents an adaptive distributed deep learning framework designed for real-time predictive maintenance within Industrial Internet of Things (IIoT) environments. The framework addresses the challenges of processing massive, high-velocity data streams generated by industrial sensors. We propose a novel architecture that combines edge computing with cloud-based deep learning, enabling real-time anomaly detection and predictive failure analysis. The framework incorporates an adaptive learning mechanism that dynamically adjusts model parameters based on the evolving characteristics of the data stream, ensuring sustained accuracy and robustness. We evaluate the performance of the proposed framework using a real-world industrial dataset and demonstrate its superiority over existing methods in terms of prediction accuracy, latency, and resource utilization.

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Published

2025-04-25