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Stochastic Power Generation Unit Commitment in Electricity Markets: A Novel Formulation and a Comparison of Solution Methods

机译:电力市场中随机发电机组的承诺:一种新的公式表示和解决方法的比较

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摘要

We propose a stochastic unit commitment model for a power generation company that takes part in an electricity spot market. The relevant feature of this model is its detailed representation of the spot market during a whole week, including seven day-ahead market sessions and the corresponding adjustment market sessions. The adjustment market sessions can be seen as an hour-ahead market mechanism. This representation takes into account the influence that the company's decisions exert on the market-clearing price by means of a residual demand curve for each market session. We introduce uncertainty in the form of several possible spot market outcomes for each day, which leads to a weekly scenario tree. The model also represents in detail the operation of the company's generation units. The model leads to large-scale mixed linear-integer problems that are hard to solve with commercial optimizers. This suggests the use of alternative solution methods. We test four solution approaches with a realistic numerical example in the context of the Spanish electricity spot market. The first is a direct solution with a commercial optimizer, which illustrates the mentioned limitations. The second is a standard Lagrangean relaxation algorithm. The third and fourth methods are two original variants of Benders decomposition for multistage stochastic integer programs. The first Benders decomposition algorithm builds approximations for the recourse function relaxing the integrality constraints of the subproblems. The second variant strengthens these cuts by performing one iteration of the Lagrangean of each subproblem. We analyze the advantages of these four methods and compare the results. [PUBLICATION ABSTRACT]
机译:我们为参与电力现货市场的发电公司提出了随机单位承诺模型。该模型的相关功能是其整个星期现货市场的详细表示,包括七个提前一天的市场会议和相应的调整市场会议。调整市场会议可以看作是一个小时前的市场机制。该表示法考虑了公司决策通过每个市场时段的剩余需求曲线对市场结算价格产生的影响。我们以每天可能出现的几种现货市场结果的形式介绍不确定性,从而得出每周的情景树。该模型还详细表示了公司发电部门的运营。该模型导致大规模混合线性整数问题,而这些问题很难用商业优化器解决。这建议使用替代解决方法。我们在西班牙电力现货市场的背景下,以一个实际的数值示例测试了四种解决方案方法。第一种是使用商业优化器的直接解决方案,它说明了上述限制。第二个是标准的拉格朗日松弛算法。第三和第四种方法是用于多阶段随机整数程序的Benders分解的两个原始变体。第一个Benders分解算法建立了求索函数的近似值,从而放松了子问题的完整性约束。第二个变体通过对每个子问题的Lagrangean进行一次迭代来加强这些削减。我们分析了这四种方法的优势,并比较了结果。 [出版物摘要]

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  • 来源
    《Operations Research》 |2009年第1期|p.32-49|共18页
  • 作者单位

    Santiago CerisolaInstituto de Investigación Tecnológica (IIT), Escuela Técnica Superior de Ingeniería ICAI, Universidad Pontificia Comillas,28015 Madrid, Spain, santiago.cerisola@iit.upcomillas.esÁlvaro Baíllo, José M. Fernández-LópezBanco Santander, Ciudad Grupo Santander, Boadilla del Monte, 28660 Madrid, Spain{abaillo@gruposantander.com, josemariafernandezl@gruposantander.com}Andrés RamosInstituto de Investigación Tecnológica (IIT), Escuela Técnica Superior de Ingeniería, ICAI, Universidad Pontificia Comillas,28015 Madrid, Spain, andres.ramos@iit.upcomillas.esRalf GollmerDepartment of Mathematics, University Duisburg-Essen, D-47048 Duisburg, Germany, gollmer@math.uni-duisburg.deÁlvaro Baíllo ("Stochastic Power Generation Unit Commitment in Electricity Markets: A Novel Formulation and a Comparison of Solution Methods") is a quantitative analyst at Banco Santander. His research interests include the development of models for the pricing of financial derivatives on commodities.Santiago Cerisola ("Stochastic Power Generation Unit Commitment in Electricity Markets: A Novel Formulation and a Comparison of Solution Methods") is a research fellow at Instituto de Investigación Tecnológica, Universidad Pontificia Comillas, Madrid, Spain. His research interests include stochastic programming, decomposition algorithms, and their application to energy markets.José M. Fernández-López ("Stochastic Power Generation Unit Commitment in Electricity Markets: A Novel Formulation and a Comparison of Solution Methods") is a research analyst at Banco Santander. His current research focuses on modelling the evolution of interest rates.Ralf Gollmer ("Stochastic Power Generation Unit Commitment in Electricity Markets: A Novel Formulation and a Comparison of Solution Methods") is assistant professor at the Department of Mathematics of University Duisburg- Essen. His main interests comprise stochastic programming with integer recourse and its applications, especially in power systems planning, multiobjective programming, and software development.Andrés Ramos ("Stochastic Power Generation Unit Commitment in Electricity Markets: A Novel Formulation and a Comparison of Solution Methods") is head of the Industrial Organization Department of Universidad Pontificia Comillas, Madrid, Spain. His research interests include operations, planning and economy of electric energy systems, application of operations research to electric energy systems, and software development.;

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  • 入库时间 2022-08-17 23:33:15

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