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Maintenance is a critical aspect of modern industrial operations, as it ensures the reliability and longevity of equipment while minimising unplanned downtime. Traditional, schedule-based maintenance approaches are often inefficient and costly and fail to harness the full potential of data-driven insights. In response, cloud-based predictive maintenance systems have emerged as a transformative solution, leveraging the power of the cloud, data analytics, and machine learning to enable proactive maintenance strategies. This research paper explores the architecture, advantages, challenges, and potential applications of cloud-based predictive maintenance systems. We delve into the underlying technology, the role of the cloud in data storage and processing, and the use of machine learning algorithms for predictive analytics. We discuss how real-time monitoring and analysis of sensor data can help anticipate equipment failures, reduce operational costs, and increase overall efficiency.
Saini et al. (Thu,) studied this question.