Optimizing Renewable Power Generation Forecasting for Energy Company

Introduction: Powering Precision in Wind Energy Forecasting

A leading Indian wind energy generator with a total installed capacity of 5 GW faced growing operational and financial pressures due to inaccurate forecasting of power generation. Their reliance on conventional Qualified Coordinating Agencies (QCAs) led to consistent over-forecasting, impacting grid stability and incurring substantial deviation penalties. Recognizing the critical importance of forecast accuracy in wind energy operations, the client partnered with JBS to implement an AI/ML-powered forecasting system tailored to reduce penalties, improve scheduling efficiency, and unlock profitable trading opportunities.

Technician Scheduling Issues

Problem Statement: Over-Forecasting and Grid Code Violations

📈 Over-Predicted Output:
QCA forecasts frequently exceeded actual generation, destabilizing power schedules.
💸 Escalating Deviation Penalties:
Inaccurate forecasting led to non-compliance with grid norms (e.g., DSM), translating into high financial penalties.
🔄 Lack of Multi-Horizon Forecasting:
The QCA approach lacked precision across intraday, day-ahead, and long-term horizons.
📉 Missed Trading Opportunities:
Inflated forecasts disrupted the ability to participate profitably in energy markets.
Impact Section

Impact: Financial Drain and Inefficient Grid Operations

Technician Utilization
17% of annual costs attributed to forecasting errors and penalties.
Customer Satisfaction
Escalating Deviation Penalties: Inaccurate forecasting led to non-compliance with grid norms (e.g., DSM), translating into high financial penalties.
Operational Bottlenecks
Lack of Multi-Horizon Forecasting: The QCA approach lacked precision across intraday, day-ahead, and long-term horizons.
Operational Bottlenecks
Missed Trading Opportunities: Inflated forecasts disrupted the ability to participate profitably in energy markets.
Solution Section

Solution: AI-Driven, Compliance-Focused Forecasting Suite

JBS delivered a custom forecasting engine with core features including:

Haversine Distance
AI/ML Forecasting Models
Tailored statistical and machine learning algorithms built specifically for wind energy dynamics. Continuously trained using real-time SCADA and historical generation data.
Google Maps API
Multi-Horizon Forecasting Framework
Separate forecast streams for intraday, day-ahead, and long-range scheduling. Enhanced flexibility for trading, dispatch, and compliance planning.
AI Recommendation Engine
NWP + SCADA Fusion
Integrated Numerical Weather Prediction (NWP) models with on-ground SCADA data for precision tuning.
AI Recommendation Engine
Compliance-Ready Outputs
Designed to align with CERC DSM regulations, reducing deviation and penalty exposure.
Business Benefits Section

Business Benefits: Measurable Gains from Smarter Forecasting

The implementation of the new forecasting solution yielded significant and quantifiable business benefits, directly impacting the client's financial performance:

Tech Dormancy Reduction
17% Reduction in Penalties
Accurate, bias-corrected predictions lowered non-compliance fines.
Customer Satisfaction
15% Forecast Error Reduction:
Improved reliability and grid performance.
Technician Utilization
20% Operational Efficiency Boost:
Reduced manual scheduling and improved data automation.
Technician Utilization
Profit Optimization:
Strategic trading enabled by reliable day-ahead forecast signals.
Technology Stack

Technology Stack

BI Tools
Azure
Data Services
Python
UI/UX
SQL
BI Tools
Scikit-learn
UI/UX
Power BI
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