Special Issue on Cognitive Digital Twins for Predictive Maintenance: Uncertainty and Risk Analysis

ASCE-ASME Journal of Risk and Uncertainty in Engineering Systems, Part B: Mechanical Engineering
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The rapid evolution of mechanical systems and increasing industrial complexity have driven the need for advanced predictive maintenance strategies. Cognitive Digital Twins (CDTs), integrating AI, real-time data analytics, and cognitive computing, have emerged as a transformative solution. Unlike traditional digital twins, CDTs can learn, reason, and adapt, enabling more accurate and dynamic predictive maintenance. However, their reliability is challenged by modeling uncertainties, sensor noise, environmental variability, and unforeseen operational conditions.

These challenges highlight the need for robust uncertainty quantification and risk analysis frameworks tailored to CDTs. This special issue focuses on the intersection of cognitive digital twins, predictive maintenance, and risk analysis, exploring how CDTs can enhance decision-making under uncertainty, improve system reliability, and optimize maintenance strategies. It emphasizes uncertainty quantification, risk modeling, and cognitive capabilities, addressing critical gaps in the field.


Topic Areas

THE SCOPE OF THIS ISSUE INCLUDES BUT IS NOT LIMITED TO:
  • Cognitive Digital Twins: Fundamentals and Frameworks
  • Uncertainty Quantification in Cognitive Digital Twins
  • Risk Analysis and Decision-Making in CDTs
  • AI-Driven Predictive Maintenance
  • Physics-Guided Machine Learning in CDTs
  • Stochastic Modeling for Degradation and Failure Prediction
  • Industrial Applications of Digital Twins
  • Cyber-Physical Security in CDTs
  • Explainable AI and Human-Centric CDTs
  • Data-driven approaches for predictive maintenance under uncertainty

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