Revolutionizing System Reliability: The Role of AI in Predictive Maintenance Strategies
Michael Bidollahkhani, Julian M. Kunkel

TL;DR
This paper surveys how AI, especially machine learning and neural networks, is transforming predictive maintenance in complex distributed systems, improving failure prediction, reducing downtime, and extending system lifespan.
Contribution
It provides a comprehensive review of AI-driven predictive maintenance strategies, highlighting recent advancements, methodologies, and challenges in the context of the computing continuum.
Findings
AI improves prediction accuracy for system failures.
AI-based methods optimize maintenance schedules.
Implementation challenges and future research directions identified.
Abstract
The landscape of maintenance in distributed systems is rapidly evolving with the integration of Artificial Intelligence (AI). Also, as the complexity of computing continuum systems intensifies, the role of AI in predictive maintenance (Pd.M.) becomes increasingly pivotal. This paper presents a comprehensive survey of the current state of Pd.M. in the computing continuum, with a focus on the combination of scalable AI technologies. Recognizing the limitations of traditional maintenance practices in the face of increasingly complex and heterogenous computing continuum systems, the study explores how AI, especially machine learning and neural networks, is being used to enhance Pd.M. strategies. The survey encompasses a thorough review of existing literature, highlighting key advancements, methodologies, and case studies in the field. It critically examines the role of AI in improving…
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Taxonomy
TopicsFault Detection and Control Systems
MethodsFocus
