Problem Statement: Inaccurate Power Output Prediction
A leading Energy client faced significant challenges in accurately forecasting the power output of their combustion gas turbines. The existing process relied on traditional, physics-based models that were complex, time-consuming, and highly sensitive to fluctuating ambient conditions (temperature, humidity, pressure). This led to:
Suboptimal Load Distribution
Difficulty in planning and distributing power efficiently.
Increased Fuel Costs
Inefficient operation due to inaccurate predictions.
Reactive Maintenance
Lack of data-driven insights for proactive maintenance scheduling.
Limited Scalability
Inability to easily adapt forecasting models to different turbine types or operational contexts.
High-fidelity predictions facilitated more economic grid operations and dispatch strategies, contributing to an estimated 3-7% increase in revenue generation from optimized power sales.
Scalability
The model's adaptability allows for easy deployment across different turbine types and operational contexts, offering long-term cost savings and efficiency gains.