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Autori principali: Chen, Kaixuan, Luo, Wei, Liu, Shunyu, Wei, Yaoquan, Zhou, Yihe, Qing, Yunpeng, Zhang, Quan, Song, Jie, Song, Mingli
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2401.02771
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author Chen, Kaixuan
Luo, Wei
Liu, Shunyu
Wei, Yaoquan
Zhou, Yihe
Qing, Yunpeng
Zhang, Quan
Song, Jie
Song, Mingli
author_facet Chen, Kaixuan
Luo, Wei
Liu, Shunyu
Wei, Yaoquan
Zhou, Yihe
Qing, Yunpeng
Zhang, Quan
Song, Jie
Song, Mingli
contents In this paper, we present a novel transformer architecture tailored for learning robust power system state representations, which strives to optimize power dispatch for the power flow adjustment across different transmission sections. Specifically, our proposed approach, named Powerformer, develops a dedicated section-adaptive attention mechanism, separating itself from the self-attention used in conventional transformers. This mechanism effectively integrates power system states with transmission section information, which facilitates the development of robust state representations. Furthermore, by considering the graph topology of power system and the electrical attributes of bus nodes, we introduce two customized strategies to further enhance the expressiveness: graph neural network propagation and multi-factor attention mechanism. Extensive evaluations are conducted on three power system scenarios, including the IEEE 118-bus system, a realistic 300-bus system in China, and a large-scale European system with 9241 buses, where Powerformer demonstrates its superior performance over several baseline methods.
format Preprint
id arxiv_https___arxiv_org_abs_2401_02771
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Powerformer: A Section-adaptive Transformer for Power Flow Adjustment
Chen, Kaixuan
Luo, Wei
Liu, Shunyu
Wei, Yaoquan
Zhou, Yihe
Qing, Yunpeng
Zhang, Quan
Song, Jie
Song, Mingli
Machine Learning
Systems and Control
In this paper, we present a novel transformer architecture tailored for learning robust power system state representations, which strives to optimize power dispatch for the power flow adjustment across different transmission sections. Specifically, our proposed approach, named Powerformer, develops a dedicated section-adaptive attention mechanism, separating itself from the self-attention used in conventional transformers. This mechanism effectively integrates power system states with transmission section information, which facilitates the development of robust state representations. Furthermore, by considering the graph topology of power system and the electrical attributes of bus nodes, we introduce two customized strategies to further enhance the expressiveness: graph neural network propagation and multi-factor attention mechanism. Extensive evaluations are conducted on three power system scenarios, including the IEEE 118-bus system, a realistic 300-bus system in China, and a large-scale European system with 9241 buses, where Powerformer demonstrates its superior performance over several baseline methods.
title Powerformer: A Section-adaptive Transformer for Power Flow Adjustment
topic Machine Learning
Systems and Control
url https://arxiv.org/abs/2401.02771