Estimating the Unobservable Components of Electricity Demand Response with Inverse Optimization
Adrian Esteban-Perez, Derek Bunn, Yashar Ghiassi-Farrokhfal

TL;DR
This paper introduces an inverse optimization approach to estimate unobservable components of electricity demand, such as behind-the-meter activities, which are crucial for accurate demand response modeling amid increasing active consumers.
Contribution
It proposes a novel data-driven inverse optimization method to decompose net demand into unobservable components without needing device-level data.
Findings
Effective estimation of hidden demand components demonstrated.
Improved demand response understanding in complex consumer scenarios.
Method outperforms traditional models in accuracy and interpretability.
Abstract
Understanding and predicting the electricity demand responses to prices are critical activities for system operators, retailers, and regulators. While conventional machine learning and time series analyses have been adequate for the routine demand patterns that have adapted only slowly over many years, the emergence of active consumers with flexible assets such as solar-plus-storage systems, and electric vehicles, introduces new challenges. These active consumers exhibit more complex consumption patterns, the drivers of which are often unobservable to the retailers and system operators. In practice, system operators and retailers can only monitor the net demand (metered at grid connection points), which reflects the overall energy consumption or production exchanged with the grid. As a result, all "behind-the-meter" activities-such as the use of flexibility-remain hidden from these…
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Taxonomy
TopicsAdvanced Data Processing Techniques · Diverse Industrial Engineering Technologies · Innovation Diffusion and Forecasting
