LiteCast: A Lightweight Forecaster for Carbon Optimizations
Mathew Joseph, Tanush Savadi, Abel Souza

TL;DR
LiteCast is a lightweight, fast, and adaptive forecasting method that effectively estimates regional carbon intensity with minimal data, outperforming complex models in achieving significant carbon savings.
Contribution
We introduce LiteCast, a novel lightweight forecasting approach that maintains high accuracy with minimal data and computational resources, enabling scalable carbon-aware energy management.
Findings
LiteCast achieves 97% of maximum possible savings.
It outperforms state-of-the-art forecasters by 20%.
It requires only a few days of historical data.
Abstract
Over recent decades, electricity demand has experienced sustained growth through widespread electrification of transportation and the accelerated expansion of Artificial Intelligence (AI). Grids have managed the resulting surges by scaling generation capacity, incorporating additional resources such as solar and wind, and implementing demand-response mechanisms. Altogether, these policies influence a region's carbon intensity by affecting its energy mix. To mitigate the environmental impacts of consumption, carbon-aware optimizations often rely on long-horizon, high-accuracy forecasts of the grid's carbon intensity that typically use compute intensive models with extensive historical energy mix data. In addition to limiting scalability, accuracy improvements do not necessarily translate into proportional increases in savings. Highlighting the need for more efficient forecasting…
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Taxonomy
TopicsEnergy Load and Power Forecasting · Integrated Energy Systems Optimization · Forecasting Techniques and Applications
