Distributed Cooperative Energy Management in Smart Microgrids with Solar Energy Prediction

An Chen, Wenzhan Song, Fangyu Li, J. Mohammadpour
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引用次数: 4

Abstract

Smart Microgrid (SMG), integrated with renewable energy, energy storage system and advanced bidirectional communication network, has been envisioned to improve efficiency and reliability of power delivery. However, the stochastic nature of renewable energy and privacy concerns due to intensive bidirectional data exchange make the traditional energy management system (EMS) perform poorly. In order to improve operational efficiency and customers’ satisfaction, we propose a distributed cooperative energy management system (DCEMS). We adopt recurrent neural network with long short-term memory to predict the solar energy generation with high accuracy. We then solve the underlying economic dispatch problem with distributed scalable Alternating Direction Method of Multipliers (ADMM) algorithm to avoid single point of failure problem and preserve customers’ privacy. In the first stage, each SMG optimizes its operation decision vector in a centralized manner based on one-day ahead solar energy generation prediction. In the second stage, all SMGs share their energy exchange information with directly connected neighboring SMGs to cooperatively optimize the global operation cost. The proposed DCEMS is deployed in our distributed SMGs emulation platform and its performance is compared with other approaches. The results show that the proposed DCEMS outperforms heuristic rule-based EMS by more than 30%. It can also protect customers’ privacy and avoid single point of failure without degrading performance too much compared to centralized EMS.
基于太阳能预测的智能微电网分布式协同能源管理
智能微电网(SMG)集成了可再生能源、储能系统和先进的双向通信网络,旨在提高电力输送的效率和可靠性。然而,由于可再生能源的随机性和密集的双向数据交换带来的隐私问题,使得传统的能源管理系统(EMS)性能不佳。为了提高运营效率和客户满意度,我们提出了一种分布式协同能源管理系统(DCEMS)。采用具有长短期记忆的递归神经网络对太阳能发电进行高精度预测。采用分布式可扩展的交替方向乘法器(ADMM)算法解决了潜在的经济调度问题,避免了单点故障问题,保护了用户的隐私。第一阶段,各SMG基于一天前太阳能发电预测,集中优化运行决策向量。在第二阶段,所有smg与直接相连的相邻smg共享能量交换信息,协同优化全局运行成本。在我们的分布式SMGs仿真平台上部署了该方法,并与其他方法进行了性能比较。结果表明,所提出的DCEMS比启发式规则的EMS高出30%以上。与集中式EMS相比,它还可以保护客户的隐私,避免单点故障,而不会大大降低性能。
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