Abstract
Predictive maintenance and load forecasting play crucial roles in optimizing operations and enhancing reliability in various industries. This summary provides an overview of these concepts, highlighting their significance and benefits. Predictive maintenance focuses on anticipating equipment failures by utilizing data analytics tools such as machine learning and condition monitoring. By proactively scheduling maintenance tasks, unplanned downtime and maintenance costs are reduced. Load forecasting, on the contrary, predicts future energy usage patterns, aiding utilities in resource allocation, capacity planning, and ensuring a steady power supply. Historical data, weather patterns, and customer behavior are analyzed to estimate energy demand at different time intervals. Integrating predictive maintenance with load forecasting offers synergistic advantages, especially in organizations where equipment health and energy consumption are interconnected. By combining data from both domains, proactive maintenance decisions can be made, considering projected changes in energy use. This integrated approach streamlines maintenance efforts, reduces failures during peak demand periods, and maximizes system availability. This chapter covers case studies and research achievements in predictive maintenance and load forecasting, emphasizing the challenges, possibilities, and future trends. Advanced data analytics techniques, internet of things (IoT) devices, and real-time data streams are identified as enablers for further advancements in these areas. The implementation of these techniques is crucial for establishing efficient, reliable, and sustainable operations in the energy sector.
Original language | English |
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Title of host publication | Intelligent Techniques for Predictive Data Analytics |
Publisher | Wiley-Blackwell |
Pages | 203-229 |
Number of pages | 27 |
ISBN (Electronic) | 9781394227990 |
ISBN (Print) | 9781394227969 |
DOIs | |
Publication status | Published - 1 Jan 2024 |
Externally published | Yes |
Keywords
- demand response (DR)
- energy
- load forecasting (LF)
- predictive maintenance (PdM)