考虑不同预测模型的电池储能微电网随机能量管理

Younes Zahraoui, T. Korõtko, A. Rosin, Roya Ahmadiahangar
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摘要

由于近年来诸如电池储能系统(BESS)等分布式储能系统(ESS)的创新部署,该技术可以作为一种分布式能源在满足新一代电力系统的系统需求方面发挥重要作用。bess被认为是微电网中很有前途的技术,可以减少对化石燃料的依赖,减轻微电网中可再生能源的间歇性,运营商可以根据需求、供应和价格的变化实时调整电力采购和存储决策,以增加利润。优化方法已被提出作为增加用户从微电网参与中获利的一种方法。然而,可再生能源具有高度的不确定性,无法有效预测,影响了基于微网的BESS的运行。因此,本研究提出了一种基于随机能量管理模型的微电网能量规划布局设计。提出的管理算法旨在考虑并网模式下的需求响应方案,寻找包括光伏系统和BESS在内的微电网的日前最优运行。随机模型运行一个并网的基于pv - bess的微电网资产,将电力注入主电网并存储剩余能量,以实现利润最大化。此外,为了建立随机能量管理模型,使用机器学习和深度学习模型来生成合适和准确的光伏系统场景。最后,基于时变电价的系统仿真,采用单负荷曲线的日前曲线进行。
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Stochastic Energy Management for Battery Storage System-Based Microgrid Considering Different Forecasting Models
As a result of the recent innovations in the deployment of distributed Energy Storage Systems (ESS) such as Battery Energy Storage Systems (BESS), this technology can play an important role as a distributed energy resource in supplying the system demand for the new generation of power systems. BESSs are considered promising technology in the microgrid to reduce reliance on fossil fuels and mitigate the intermittency from renewable energy sources in a microgrid in which operators adjust electricity procurement and storage decisions in dynamic response to changes in demand, supply, and pricing in real-time to increase the profit. Optimization approaches have been proposed as a way to increase the user’s profits from microgrid participation. However, renewable energy resources are highly uncertain and cannot be effectively predicted which affects the operation of the microgrid-based BESS. Therefore, this study presents a layout design of energy planning for microgrids using the stochastic energy management model. The proposed management algorithm aims to find a day-ahead optimal operation of the microgrid including the photovoltaic (PV) system, and BESS considering demand response programs in the grid-connected mode. The stochastic model operates a grid-tied PV-BESS-based microgrid asset to inject the power into the main grid and store the surplus energy to maximize the profit. Besides, to create the stochastic energy management model, machine learning and deep learning models are used to generate proper and accurate scenarios for the PV system. Finally, a systematic simulation based on time-varying electricity prices was carried out using a day-ahead profile of a single load profile.
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