
By combining SCADA, CMMS, ERP, GIS, BIM, meteorological, market and historical data, organizations can improve forecasting, detect anomalies, simulate scenarios and make better decisions before issues become costly
Identifies anomalies in production, availability, curtailment, losses and operational behaviour before they become recurring underperformance issues
Supports maintenance, construction follow-up and operational planning by prioritizing interventions based on impact, risk and business value
Anticipates bottlenecks, failures, delays and critical events by combining historical patterns, real-time data and predictive models
Industrializes analytical capabilities across technologies, geographies and business units, enabling consistent decisions at asset and portfolio level
How NTT DATA helps
Prioritizes high-impact use cases across development, engineering, construction and operations, linking each initiative to measurable business value

Connects SCADA, CMMS, ERP, GIS, BIM, IoT, meteorological and market data to create a reliable foundation for analytics and AI

Designs and implements models for production forecasting, asset underperformance, failure prediction, curtailment analysis, construction delays and operational risks

Analyzes real process execution to identify bottlenecks, rework, cycle-time deviations and automation opportunities

Defines data governance, model monitoring, adoption frameworks and scalable platforms to move from pilots to operational use


NTT DATA helps renewable energy organizations turn operational and process data into actionable intelligence, improving visibility, anticipation and performance across engineering, construction and operations. The result is a more proactive operating model, where teams can detect deviations earlier, prioritize actions better and scale analytics across the portfolio
Better short-, medium- and long-term forecasts to support operations, market decisions and resource planning
Identification of bottlenecks, rework and manual activities through process mining and advanced analytics
Earlier identification of anomalies, failures and recurring underperformance patterns
Prioritization of interventions based on risk, asset criticality, expected impact and cost efficiency
Anticipate deviations, optimize decisions and scale AI across your portfolio