绿色零售商:支持可持续能源系统投资决策的双层随机方法

IF 3.7 4区 管理学 Q2 OPERATIONS RESEARCH & MANAGEMENT SCIENCE Operations Research Perspectives Pub Date : 2024-03-12 DOI:10.1016/j.orp.2024.100300
Patrizia Beraldi
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引用次数: 0

摘要

本文提出了一种双层方法,以支持零售商做出投资可再生能源系统的决策,从而提供清洁电力。所提出的模型抓住了问题的战略本质,并将已安装技术的容量大小决策与有关向参考最终用户(代表一类住宅消费用户)提供电价的定价决策相结合。零售商和最终用户之间的互动采用斯塔克尔伯格博弈框架建模,前者扮演领导者,后者扮演追随者。追随者对电价的反应会影响零售商的利润,而利润的计算方法是售电收入与总投资、运营和管理成本之间的差额。为了考虑批发电价、可再生资源可用性和电力需求的不确定性,上层问题被表述为一个两阶段随机编程模型。第一阶段的决策涉及所安装技术的规模和电价,第二阶段的决策涉及所设计系统的运行和管理。该模型还纳入了一项安全措施,以控制在一定比例的最坏情况下可实现的平均利润,从而为不可预见的变化提供应急措施。在较低层次上,追随者通过确定从零售商或潜在竞争者处购买能源的采购计划,对所提供的电价做出反应,最终目的是使电费账单的预期值最小化。我们设计了一种利用特定问题结构的定制方法来解决所提出的问题,并在实际案例研究中进行了广泛测试。数值结果表明了所提方法的效率,并验证了明确处理不确定性的重要性以及纳入安全措施的重要性。
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Green retailer: A stochastic bi-level approach to support investment decisions in sustainable energy systems

This paper presents a bi-level approach to support retailers in making investment decisions in renewable-based systems to provide clean electricity. The proposed model captures the strategic nature of the problem and combines capacity sizing decisions for installed technologies with pricing decisions regarding the electricity tariffs to offer to a reference end-user, representative of a class of residential prosumers. The interaction between retailer and end-user is modeled using the Stackelberg game framework, with the former acting as a leader and the latter as follower. The reaction of the follower to the electricity tariff affects the retailer’s profit, which is calculated as the difference between the revenue generated from selling electricity and the total investment, operation and management costs. To account for uncertainty in wholesale electricity prices, renewable resource availability and electricity request, the upper-level problem is formulated as a two-stage stochastic programming model. First-stage decisions refer to the sizing of installed technologies and electricity tariffs, whereas second-stage decisions refer to the operation and management of the designed system. The model also incorporates a safety measure to control the average profit that can be achieved in a given percentage of worst-case situations, thus providing a contingency against unforeseen changes. At the lower level, the follower reacts to the offered tariffs by defining the procurement plan in terms of energy to purchase from the retailer or potential competitors, with the final aim of minimizing the expected value of the electricity bill. A tailored approach that exploits the specific problem structure is designed to solve the proposed formulation and extensively tested on a realistic case study. The numerical results demonstrate the efficiency of the proposed approach and validate the significance of explicitly dealing with the uncertainty and the importance of incorporating a safety measure.

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来源期刊
Operations Research Perspectives
Operations Research Perspectives Mathematics-Statistics and Probability
CiteScore
6.40
自引率
0.00%
发文量
36
审稿时长
27 days
期刊最新文献
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