Paper Key : IRJ************659
Author: Sridhar Jampani, Viharika Bhimanapati, Aditya Mehra, Om Goel, Prof. Dr. Arpit Jain, Er. Aman Shrivastav
Date Published: 15 Apr 2022
Abstract
Predictive maintenance, powered by IoT and SAP data integration, offers a transformative solution for modern enterprises by proactively identifying potential equipment failures before they occur. This approach leverages the Internet of Things (IoT) to collect real-time data from connected devices, sensors, and machinery. Through advanced analytics and machine learning models, the data is processed to predict failure patterns, optimize maintenance schedules, and reduce unplanned downtime. SAP plays a crucial role by providing a robust framework for data management and analytics integration, ensuring seamless processing of operational data. The combination of IoT with SAP systems enables enterprises to centralize maintenance activities and make data-driven decisions. Predictive algorithms can analyze a wide range of metrics, such as temperature fluctuations, vibration patterns, and operational hours, helping businesses shift from reactive to proactive maintenance models. This integration improves operational efficiency by ensuring equipment reliability, reducing maintenance costs, and extending asset lifespan.