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Optimal bidding in a Day-Ahead energy market for Micro Grid under uncertainty in renewable energy production

机译:在可再生能源生产存在不确定性的情况下,微电网在日前能源市场中的最优竞标

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The power grid consists of various electrical components and of multiple levels: transmission HV (High Voltage), distribution in MV (Medium Voltage) and distribution in LV (Low Voltage). In this framework, the MGs (Micro Grids) are classified as a distribution grid, usually in LV, able to provide services both in autonomous (island mode) and in grid connected mode. MGs are composed by traditional and renewable energy power plants, storages and loads and, due to their limited capacity, generally the main applications are on residential level (e.g., campus, hospitals, hotels, sport centers, commercial location). Different components, design and rules are defined by the manager of MG: in this work, there is a prosumer which aggregates the capacity of different components and buys or sells, for each hour, power from/to the grid with upper level voltage. In this paper, a decision making model to formulate the optimal bidding in the Day-Ahead energy market and to evaluate the risk management for a LV grid-connected residential MG, taking into account the uncertainty of renewable power production, i.e., PV (photovoltaic), is proposed. Several investigators have analyzed the role played by MGs into the deregulated electricity market, their contribution to energy price reduction and to the reliability system increase, as well as their impact on the best strategy devising to minimize operating costs. Although in literature it is possible to find similar decision support models, the use of uncertainty evaluation to make decisionsand to participate in a deregulated energymarket is atthe presentan important open research issue. The uncertainty can be expressed in many different ways, either qualitative or quantitative, and it is possible to generate a reasonable measure of uncertainty by various methods. In this work an original approach based on AnEn (Analog Ensemble) method to estimate the uncertainty linked to the energy provided by PV plant own to the MG is presented. The AnEn is able to estimate the pdf (probability density function) of forecasts solutions by sampling the uncertainty in the analysis and running a number of forecast from perturbed analysis. The analogs generated become the input of our optimization model. Based on a genetic algorithm, the economic model is applied to a heterogeneous residential MG with traditional different power plants and RES (Renewable Energy Sources), i.e., PV, evaluating different prosumer risk tolerances (adverse, neutral and incline). Developed methodology can aid the decision maker to understand the potential impact of a wrong decision throughout information included in a forecast concerning renewable power production. The effectiveness of the proposed methodology is assessed through the analysis of a case study consisting of a grid connected residential MG. The obtained results show different optimal bids depending on the risk adversity with respect to the uncertainty of PV power production, and how PV energy production can be integrated with optimal results in a MG if the prosumer's strategy takes into account the uncertainty linked to the energy output. (C) 2016 Elsevier Ltd. All rights reserved.
机译:电网由各种电气组件组成,并且具有多个级别:传输HV(高压),以MV(中压)分配和以LV(低电压)分配。在此框架中,MG(微电网)通常在LV中被归类为配电网,能够以自主(孤岛模式)和并网模式提供服务。 MG由传统和可再生能源发电厂,存储和负载组成,由于容量有限,通常主要应用在住宅级别(例如,校园,医院,酒店,运动中心,商业场所)。 MG的经理定义了不同的组件,设计和规则:在这项工作中,有一个生产者,它汇总不同组件的容量,并每小时用较高的电压买卖来往电网的电能。在本文中,考虑到可再生能源发电的不确定性,即PV(光伏),制定了一个决策模型,用于制定日前能源市场中的最优竞标并评估LV并网住宅MG的风险管理。 ),建议。几名调查人员分析了MG在放松管制的电力市场中所扮演的角色,它们对降低能源价格和提高可靠性系统的贡献,以及它们对制定最佳策略以最小化运营成本的影响。尽管在文献中可以找到类似的决策支持模型,但是使用不确定性评估来制定决策并参与放松管制的能源市场是当前重要的开放研究问题。不确定性可以用许多不同的方式来表示,无论是定性的还是定量的,并且有可能通过各种方法生成合理的不确定性度量。在这项工作中,提出了一种基于AnEn(模拟合奏)方法的原始方法,用于估算与MG自身的光伏电站提供的能量有关的不确定性。 AnEn能够通过对分析中的不确定性进行采样并从扰动分析中运行许多预测来估计预测解决方案的pdf(概率密度函数)。生成的类似物成为我们优化模型的输入。基于遗传算法,将经济模型应用于具有传统不同电厂和RES(可再生能源)即PV的异构住宅MG,以评估不同的生产者风险容忍度(不利,中性和倾斜)。完善的方法可以帮助决策者通过有关可再生能源发电的预测中的所有信息来了解错误决策的潜在影响。通过对案例分析的评估评估了所提出方法的有效性,该案例研究由并网的住宅MG组成。获得的结果显示出不同的最佳出价,具体取决于光伏发电不确定性的风险逆境,以及如果生产者的策略考虑了与能源输出相关的不确定性,如何将光伏能源生产与最优结果整合到MG中。 (C)2016 Elsevier Ltd.保留所有权利。

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