GridCast Karnataka Forecasting layer for KREDL / KSPDCL
Checking API

Theme 10 ยท AI for renewable generation forecasting

Karnataka renewable forecast console.

Day-ahead and intra-day forecasts with calibrated uncertainty, driver attribution, and flexible aggregation. Built for masked or synthetic data, with no hosted LLM dependency.

Next 24 hours

Pavagada Solar Park forecast

Median 90% interval Capacity
No forecast selected Choose an asset to populate the chart.
Expected energy 0 MWh 90% PI pending
Peak output 0 MW Pending
Capacity factor 0% 24 hour average
Interval width 0% Mean 90% width

Explainability

Operational drivers

13:00 IST

Driver narrative pending.

Scenario update

Weather what-if

Adjusted median 0 MW No movement

Aggregation

Karnataka cluster view

0 MW

Evaluation

Baselines beaten in masked replay

0% coverage

The sandbox replay adds deterministic forecast-issue perturbations so repeated synthetic data cannot make persistence artificially perfect. Replace the replay target with real SCADA to score production accuracy.

Architecture

Layer beside existing systems

1Weather + masked SCADANWP, satellite, plant meter history
2Global learnerAsset, geography, season and physics features
3Quantile calibration50% and 90% intervals by horizon
4Operator outputsForecast, drivers, reserve-aware ranges