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Journal of Scientific and Engineering Research


This comprehensive research endeavors to explore the integration of machine learning algorithms as a transformative solution for predictive maintenance in Heating, Ventilation, and Air Conditioning (HVAC) systems. The escalating demand for efficiency and sustainability in building practices has necessitated innovative approaches, and this study focuses on the proactive utilization of machine learning in HVAC system management. The investigation delves into the latest advancements in machine learning, offering a nuanced examination of its applications within HVAC systems. By predicting maintenance needs, these algorithms play a pivotal role in ensuring system reliability, optimizing energy efficiency, and contributing to substantial cost savings. The research not only scrutinizes the technical aspects of machine learning integration but also emphasizes its practical implications for HVAC systems. Real-world applications and case studies will be explored to illustrate the efficacy of machine learning algorithms in pre-emptive maintenance. The potential benefits identified in this study extend beyond immediate problem mitigation. Proactive maintenance, enabled by machine learning, promises to revolutionize the HVAC landscape by minimizing downtime, enhancing overall system performance, and significantly reducing operational costs. As the findings unfold, it becomes evident that the incorporation of machine learning algorithms in HVAC systems represents a crucial step towards the future of sustainable and resilient building management. The insights gleaned from this research are poised to guide industry professionals, researchers, and policymakers in embracing innovative strategies for predictive maintenance and, consequently, steering HVAC systems towards unparalleled efficiency and reliability.




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