Price-Aware Deep Learning for Electricity Markets
- URL: http://arxiv.org/abs/2308.01436v2
- Date: Mon, 13 Nov 2023 16:24:24 GMT
- Title: Price-Aware Deep Learning for Electricity Markets
- Authors: Vladimir Dvorkin and Ferdinando Fioretto
- Abstract summary: We propose to embed electricity market-clearing optimization as a deep learning layer.
Differentiating through this layer allows for balancing between prediction and pricing errors.
We showcase the price-aware deep learning in the nexus of wind power forecasting and short-term electricity market clearing.
- Score: 58.3214356145985
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: While deep learning gradually penetrates operational planning, its inherent
prediction errors may significantly affect electricity prices. This letter
examines how prediction errors propagate into electricity prices, revealing
notable pricing errors and their spatial disparity in congested power systems.
To improve fairness, we propose to embed electricity market-clearing
optimization as a deep learning layer. Differentiating through this layer
allows for balancing between prediction and pricing errors, as oppose to
minimizing prediction errors alone. This layer implicitly optimizes fairness
and controls the spatial distribution of price errors across the system. We
showcase the price-aware deep learning in the nexus of wind power forecasting
and short-term electricity market clearing.
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