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基于深度强化学习的梯级水蓄风光互补系统优化调度策略研究

刘建行 刘方

广东电力2024,Vol.37Issue(5):10-22,13.
广东电力2024,Vol.37Issue(5):10-22,13.DOI:10.3969/j.issn.1007-290X.2024.05.002

基于深度强化学习的梯级水蓄风光互补系统优化调度策略研究

Research on Optimized Dispatching Strategy of Cascade Hydropower-pumping-storage-wind-photovoltaic Multi-energy Complementary System Based on Deep Reinforcement Learning

刘建行 1刘方1

作者信息

  • 1. 上海电力大学 电气工程学院,上海 200090
  • 折叠

摘要

Abstract

It is an important technical means to address large-scale flexible resource demands reshaping the pumped storage function of conventional hydropower stations,gradually shifting their role from a power supplier to a power supplier+battery regulator.In this regard,this paper takes the cascade hydropower-pumping-storage-wind-photovoltaic multi-energy complementary system(CHPMCS)as the research object and establishes a short-term optimal operation model with the objective of maximizing the benefits of system power generation in view of the flexible conversion of power generation-pumping and storage bidirectional operating conditions and the characteristics of complementary consumption.Secondly,considering the continuous and adjustable output of the CHPMCS,the paper proposes to transform the optimized dispatching problem into a Markov decision process,thereby transforming the multi constraint optimization problem into an unconstrained deep reinforcement learning problem.Then,to address the shortcomings of low training efficiency and susceptibility to local optima in the deep deterministic policy gradient(DDPG)algorithm,it uses an improved DDPG algorithm to solve the optimized dispatching decision process.Finally,it verifies the effectiveness of the proposed model and algorithm through numerical examples.The results show that the CHPMCS can effectively enhance its flexibility and regulatory ability through the reshaping of hydropower functions,improve the consumption capacity of new energy and the utilization rate of water resources,and improve the power generation efficiency of the system through low storage and high generation.

关键词

梯级水蓄风光互补系统/优化调度/新能源消纳/深度强化学习/改进深度确定性策略梯度算法

Key words

cascade hydropower-pumping-storage-wind-photovoltaic multi-energy complementary system/optimized dispatching/new energy consumption/deep reinforcement learning/improved deep deterministic policy gradient(DDPG)

分类

信息技术与安全科学

引用本文复制引用

刘建行,刘方..基于深度强化学习的梯级水蓄风光互补系统优化调度策略研究[J].广东电力,2024,37(5):10-22,13.

基金项目

上海市2021年度青年科技英才"扬帆计划"项目(21YF1414600) (21YF1414600)

广东电力

OA北大核心CSTPCD

1007-290X

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