Optimal day-ahead offering strategy for large producers based on market price response learning

04/25/2022
by   António Alcántara, et al.
0

In day-ahead electricity markets based on uniform marginal pricing, small variations in the offering and bidding curves may substantially modify the resulting market outcomes. In this work, we deal with the problem of finding the optimal offering curve for a risk-averse profit-maximizing generating company (GENCO) in a data-driven context. In particular, a large GENCO's market share may imply that her offering strategy can alter the marginal price formation, which can be used to increase profit. We tackle this problem from a novel perspective. First, we propose a optimization-based methodology to summarize each GENCO's step-wise supply curves into a subset of representative price-energy blocks. Then, the relationship between the market price and the resulting energy block offering prices is modeled through a Bayesian linear regression approach, which also allows us to generate stochastic scenarios for the sensibility of the market towards the GENCO strategy, represented by the regression coefficient probabilistic distributions. Finally, this predictive model is embedded in the stochastic optimization model by employing a constraint learning approach. Results show how allowing the GENCO to deviate from her true marginal costs renders significant changes in her profits and the market marginal price. Furthermore, these results have also been tested in an out-of-sample validation setting, showing how this optimal offering strategy is also effective in a real-world market contest.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/19/2021

A Data-Driven Convergence Bidding Strategy Based on Reverse Engineering of Market Participants' Performance: A Case of California ISO

Convergence bidding, a.k.a., virtual bidding, has been widely adopted in...
research
10/12/2022

A General Stochastic Optimization Framework for Convergence Bidding

Convergence (virtual) bidding is an important part of two-settlement ele...
research
10/04/2021

Optimal pricing for electricity retailers based on data-driven consumers' price-response

In the present work we tackle the problem of finding the optimal price t...
research
03/23/2022

Favorit: farmers volatility risk treatment

This paper seeks to develop a strategy based on analytics, for an indivi...
research
04/06/2021

Machine Learning-Driven Virtual Bidding with Electricity Market Efficiency Analysis

This paper develops a machine learning-driven portfolio optimization fra...
research
12/06/2018

Using published bid/ask curves to error dress spot electricity price forecasts

Accurate forecasts of electricity spot prices are essential to the daily...
research
03/21/2021

A deep learning approach to data-driven model-free pricing and to martingale optimal transport

We introduce a novel and highly tractable supervised learning approach b...

Please sign up or login with your details

Forgot password? Click here to reset