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Deep reinforcement learning based research on low‐carbon scheduling with distribution network schedulable resources.

Authors :
Chen, Shi
Liu, Yihong
Guo, Zhengwei
Luo, Huan
Zhou, Yi
Qiu, Yiwei
Zhou, Buxiang
Zang, Tianlei
Source :
IET Generation, Transmission & Distribution (Wiley-Blackwell). May2023, Vol. 17 Issue 10, p2289-2300. 12p.
Publication Year :
2023

Abstract

Reducing carbon emissions is a crucial way to achieve the goal of green and sustainable development. To accomplish this goal, electric vehicles (EVs) are considered system‐schedulable energy storage devices, suppressing the negative impact of the randomness and fluctuation of renewable energy on the system's operation. In this paper, a coordination control strategy aimed at minimising the carbon emissions of a distribution network between EVs, energy storage devices, and static var compensators (SVCs) is proposed. A model‐free deep reinforcement learning (DRL)‐based approach is developed to learn the optimal control strategy with the constraint of avoiding system overload caused by random EV access. The twin‐delayed deep deterministic policy gradient (TD3) framework is applied to design the learning method. After the model learning is completed, the neural network can quickly generate a real‐time low‐carbon scheduling strategy according to the system operating situation. Finally, simulation on the IEEE 33‐bus system verifies the effectiveness and robustness of this method. On the premise of meeting the charging demand of electric vehicles, this method can optimise the system operation by controlling the charge‐discharge process of EVs, effectively absorbing the renewable energy in the system and reducing the carbon emissions of the system operation. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
17518687
Volume :
17
Issue :
10
Database :
Academic Search Index
Journal :
IET Generation, Transmission & Distribution (Wiley-Blackwell)
Publication Type :
Academic Journal
Accession number :
163822190
Full Text :
https://doi.org/10.1049/gtd2.12806