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Strategic bidding by predicting locational marginal price with aggregated supply curve.

Authors :
Mi, Hanning
Chen, Sijie
Li, Qingxin
Shi, Ming
Hou, Shuoming
Zheng, Linfeng
Xu, Chengke
Yan, Zheng
Li, Canbing
Source :
Energy. Sep2024, Vol. 304, pN.PAG-N.PAG. 1p.
Publication Year :
2024

Abstract

Price-makers in the generation sector can utilize offer data published by independent system operators (ISOs) for strategic bidding. Many research uses system-wide offer information for strategic bidding because individual offers are usually published with masked identifications. However, these methods are not applicable in markets with transmission congestion because the nodal information is not used. A research gap remains in using system-wide offer information and accessible nodal information for strategic bidding in markets with congestion. System-wide aggregated supply curves can be formed just with anonymous offers, and locational marginal price (LMP) is accessible nodal data containing the congestion information. This paper proposes a framework for price-makers to bid strategically by predicting LMPs with aggregated supply curves. A feature extraction method is proposed to make aggregated supply curves applicable for LMP prediction, and the maximal information coefficient is developed for feature selection. A convolutional neural network is combined with a long short-term memory network to model the impact of aggregated supply curves on LMPs. In this framework, price-makers can investigate the impact of their strategies on aggregated supply curves, predict LMPs with aggregated supply curves, and make the optimal bidding strategies. Numerical results based on the PJM-5 bus system and real data from the Midcontinent Independent System Operator validate the effectiveness of the proposed framework. • We propose a method to use aggregated supply curves for LMP prediction. • We design a CNN-LSTM for price-makers to bid strategically by LMP prediction. • Experiments based on the PJM 5-bus system and MISO validate the proposed framework. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
03605442
Volume :
304
Database :
Academic Search Index
Journal :
Energy
Publication Type :
Academic Journal
Accession number :
178335917
Full Text :
https://doi.org/10.1016/j.energy.2024.132109