Light-Weighted Deep Learning Model to Detect Fault in IoT-Based Industrial Equipment.

Journal: Computational intelligence and neuroscience
Published Date:

Abstract

Industry 4.0, with the widespread use of IoT, is a significant opportunity to improve the reliability of industrial equipment through problem detection. It is difficult to utilize a unified model to depict the working condition of devices in real-world industrial scenarios because of the complex and dynamic relationship between devices. The scope of this research is that it can detect equipment defects and deploys them in a natural production environment. The proposed research is describing an online detection method for system failures based on long short-term memory neural networks. In recent years, deep learning technology has taken over as the primary method for detecting faults. A neural network with a long short-term memory is used to develop an online defect detection model. Feature extraction from sensor data is done using the curve alignment method. Based on long-term memory neural networks, the fault detection model is built (LSTM). In the end, sliding window technology is used to identify and fix the problem: the model's online detection and update. The method's efficacy is demonstrated by experiments based on real data from power plant sensors.

Authors

  • Mukesh Soni
    Department of CSE, University Centre for Research & Development Chandigarh University, Mohali, Punjab, 140413, India.
  • Ihtiram Raza Khan
    Computer Science Department, Jamia Hamdard, Hamdard University, Delhi, India.
  • Sameer Basir
    Department of Computer System Engineering, University of Engineering and Technology, Peshawar, Pakistan.
  • Raman Chadha
    Computer Science & Engineering, Chandigarh University, Gharuan, Punjab, India.
  • Arnold C Alguno
    Department of Physics, Mindanao State University-Iligan Institute of Technology, Iligan City 9200, Philippines.
  • Tapas Bhowmik
    Canadian University of Bangladesh, Dhaka, Bangladesh.