ReneWind is an end-to-end machine learning system designed to predict wind turbine failures and support predictive maintenance in renewable energy systems. I developed the pipeline using Python and modern machine learning techniques.
First, I processed historical turbine sensor data and engineered predictive features that capture operational patterns and equipment behavior. These features help identify early indicators of potential mechanical issues.
Next, I trained classification models to detect abnormal turbine conditions and predict possible failures before they occur.
In addition, I evaluated model performance using industry-standard metrics and optimized the pipeline to improve predictive reliability.
Overall, the ReneWind system demonstrates how machine learning can transform operational sensor data into actionable insights for predictive maintenance. The project highlights my ability to design and implement AI solutions for real-world industrial and energy applications.