Node-Level Financial Optimization in Demand Forecasting Through Dynamic Cost Asymmetry and Feedback Mechanism
Alessandro Casadei
Clemens Grupp
Sreyoshi Bhaduri
Lu Guo
Wilson Fung
Rohit Malshe
Raj Ratan
Ankush Pole
Arkajit Rakshit
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Main:12 Pages
5 Figures
Bibliography:1 Pages
2 Tables
Abstract
This work introduces a methodology to adjust forecasts based on node-specific cost function asymmetry. The proposed model generates savings by dynamically incorporating the cost asymmetry into the forecasting error probability distribution to favor the least expensive scenario. Savings are calculated and a self-regulation mechanism modulates the adjustments magnitude based on the observed savings, enabling the model to adapt to station-specific conditions and unmodeled factors such as calibration errors or shifting macroeconomic dynamics. Finally, empirical results demonstrate the model's ability to achieve \$5.1M annual savings.
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