Intelligent Operation and Maintenance and Prediction Model Optimization for Improving Wind Power Generation Efficiency
Abstract
This study explores the effectiveness of predictive maintenance models and the optimization of intelligent Operation and Maintenance (O&M) systems in improving wind power generation efficiency. Through qualitative research, structured interviews were conducted with five wind farm engineers and maintenance managers, each with extensive experience in turbine operations. Using thematic analysis, the study revealed that while predictive maintenance models effectively reduce downtime by identifying major faults, they often struggle with detecting smaller, gradual failures. Key challenges identified include false positives, sensor malfunctions, and difficulties in integrating new models with older turbine systems. Advanced technologies such as digital twins, SCADA systems, and condition monitoring have significantly enhanced turbine maintenance practices. However, these technologies still require improvements, particularly in AI refinement and real-time data integration. The findings emphasize the need for continuous development to fully optimize wind turbine performance and support the broader adoption of renewable energy.
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🚀 This paper presents a qualitative analysis of predictive maintenance models and intelligent O&M system optimization for wind power. Based on insights from experienced wind farm engineers, it explores real-world challenges—such as false positives, sensor faults, and integration issues with legacy turbines—and highlights the potential of technologies like digital twins and SCADA. The study contributes valuable recommendations for enhancing wind turbine efficiency and supports the advancement of clean energy infrastructure.
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