Electricity Consumption Forecasting for Out-of-distribution Time-of-Use Tariffs
Jyoti Narwariya, Chetan Verma, Pankaj Malhotra, Lovekesh Vig, Easwara, Subramanian, Sanjay Bhat

TL;DR
This paper addresses the challenge of forecasting electricity consumption for out-of-distribution tariff profiles by designing neural network architectures that are robust to biased historical data and policy-driven allocation strategies.
Contribution
It introduces neural network models with attention and permutation equivariance to improve forecasting accuracy under biased and out-of-distribution tariff scenarios.
Findings
Models effectively handle biased historical data.
Attention mechanisms improve tariff profile representation.
Permutation equivariant networks enhance out-of-distribution forecasting.
Abstract
In electricity markets, retailers or brokers want to maximize profits by allocating tariff profiles to end consumers. One of the objectives of such demand response management is to incentivize the consumers to adjust their consumption so that the overall electricity procurement in the wholesale markets is minimized, e.g. it is desirable that consumers consume less during peak hours when cost of procurement for brokers from wholesale markets are high. We consider a greedy solution to maximize the overall profit for brokers by optimal tariff profile allocation. This in-turn requires forecasting electricity consumption for each user for all tariff profiles. This forecasting problem is challenging compared to standard forecasting problems due to following reasons: i. the number of possible combinations of hourly tariffs is high and retailers may not have considered all combinations in the…
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Taxonomy
TopicsEnergy Load and Power Forecasting · Traffic Prediction and Management Techniques · Energy Efficiency and Management
