电器与能效管理技术 ›› 2026, Vol. 0 ›› Issue (4): 17-31.doi: 10.16628/j.cnki.2095-8188.2026.04.003

• 研究与分析 • 上一篇    下一篇

融合深度学习-模型预测控制算法的电网储能系统自适应能量管理策略研究

王瑞   

  1. 江苏科能电力工程咨询有限公司, 江苏 南京 211100
  • 收稿日期:2025-11-11 出版日期:2026-04-30 发布日期:2026-05-18
  • 作者简介:王 瑞(1989—),男,工程师,主要从事电力调度自动化方向设计与研究工作。

Research on Adaptive Energy Management Strategy of Grid Energy Storage System Integrated with Deep Learning-Model Predictive Control

WANG Rui   

  1. Jiangsu Keneng Electric Power Engineering Consulting Co., Ltd., Nanjing 211100, China
  • Received:2025-11-11 Online:2026-04-30 Published:2026-05-18

摘要:

针对可再生能源与智能电网发展中储能系统面临的能量调节效率低、响应速度慢、鲁棒性差等问题,提出了一种融合深度学习(DL)和模型预测控制(MPC)算法的能量管理策略。首先,建立考虑温度变化与老化效应的精确数学模型,基于Kolmogorov定理确定最优网络结构,并采用层次分析法科学设置权重系数。然后,利用模型预测控制算法实现参数的动态自适应调整。最后,与11种主流方法进行全面对比实验,并在8种典型扰动下进行鲁棒性测试,结果表明,所提方法的能量调整效率达到99.6%,响应时间仅28 ms,显著优于传统策略,且在多种复杂扰动条件下表现出优异的稳定性和抗干扰能力。

关键词: 电网储能系统, 深度学习算法, 能源管理策略, 模型预测控制算法, 鲁棒性

Abstract:

To address the issues of low energy regulation efficiency, slow response speed, and poor robustness faced by energy storage systems in the development of renewable energy and smart grids, an energy management strategy that integrates deep learning(DL) and model predictive control(MPC) algorithm is proposed. Firstly, an accurate mathematical model that considers temperature changes and aging effects is established. The optimal network structure is determined based on Kolmogorov’s theorem, and the weight coefficients are scientifically set using the analytic hierarchy process. Then, the dynamic adaptive adjustment of parameters is achieved by using the model predictive control algorithm. Finally, through comprehensive comparative experiments with 11 mainstream methods and robustness tests under 8 typical disturbances, the results show that the energy regulation efficiency of the proposed method reaches 99.6%, and the response time is only 28 ms, which is significantly superior to traditional strategy. It demonstrates excellent stability and anti-interference ability under various complex disturbance conditions.

Key words: grid energy storage system, deep learning algorithm, energy management strategy, model predictive control algorithm, robustness

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