Abstract
Predictive maintenance is a critical aspect of ensuring the reliability and availability of medical equipment in healthcare facilities. Machine learning (ML) algorithms have emerged as powerful tools for predicting maintenance needs, enabling proactive maintenance strategies that reduce downtime and improve operational efficiency. This paper explores the application of ML approaches for predictive maintenance in medical equipment, highlighting the benefits and challenges associated with implementation. We discuss various ML techniques, such as supervised learning, unsupervised learning, and reinforcement learning, and their application to maintenance prediction. Additionally, we examine the importance of data quality, feature selection, and model interpretability in developing effective predictive maintenance systems. Through case studies and real-world examples, we demonstrate the potential impact of ML-driven predictive maintenance on healthcare delivery and patient outcomes.
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