Yiju Ma, Daniel Gebbran, Archie C. Chapman, G. Verbič
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We develop a novel game-theoretic framework that computes the annual payoffs to customers for different PV investment sizes, given the installations of other customers. This calculation is based on an optimal AC power flow model that includes inverter connection standards that link customers' annual payoffs via their effects on AC network voltages and consequent PV curtailment responses. We show that the interaction of PV investments produces a concave potential game with continuous action sets, which has a pure Nash equilibrium that can be found using an adaptive learning process. Then, to evaluate the efficiency of the investments under the game model, we compute an centrally-coordinated PV investment profile, found by solving an optimal PV sizing problem that maximizes social welfare across all customers. Comparing the value of investment patterns for the game and the centrally-coordinated optimization shows: (i) the inefficiency of the Nash equilibrium is 1.4, which indicates the efficiency loss resulting from uncoordinated PV investments, and (ii) the inequity of a skewed distribution of benefits, penalising customers closer to the distribution transformer and benefiting those towards the end of the feeder. This model provides a quantitative tool for evaluating policies and regulations that improved coordination and allocation of PV hosting capacity (and that of other energy distributed energy resources) between customers on LV feeders.","PeriodicalId":442966,"journal":{"name":"Proceedings of the Eleventh ACM International Conference on Future Energy Systems","volume":"10 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2020-06-12","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"3","resultStr":"{\"title\":\"A Photovoltaic System Investment Game for Assessing Network Hosting Capacity Allocations\",\"authors\":\"Yiju Ma, Daniel Gebbran, Archie C. Chapman, G. Verbič\",\"doi\":\"10.1145/3396851.3397736\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"The rapid rise of PV installations in low-voltage (LV) distribution networks means that they are likely to exceed network hosting capacity. 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引用次数: 3
摘要
低压配电网络中光伏装置的迅速增加意味着它们很可能会超过网络的承载能力。因此,配电网服务提供商(DNSP)已开始强制执行连接规范,如逆变器电压/电压控制和/或光伏有功功率削减,以缓解由此产生的网络问题。这种方法可以管理网络状态,但可能会导致现有光伏系统效率低下,因为它被更频繁地削减。本文研究了自然非协调屋顶光伏投资过程对整体经济效率和客户个人福利的影响,当客户独立投资光伏系统以实现个人福利最大化时,就会出现这种情况。我们开发了一个新颖的博弈论框架,在其他客户安装光伏系统的情况下,计算不同光伏投资规模的客户的年收益。该计算基于最优交流电流模型,其中包括逆变器连接标准,该标准通过对交流电网电压的影响以及随之而来的光伏发电缩减响应,将客户的年收益联系起来。我们的研究表明,光伏投资的相互作用产生了一个具有连续行动集的凹势博弈,该博弈具有纯纳什均衡,可通过自适应学习过程找到。然后,为了评估博弈模型下的投资效率,我们计算了一个集中协调的光伏投资概况,该概况是通过求解一个最优光伏规模问题找到的,它能使所有客户的社会福利最大化。比较博弈和集中协调优化的投资模式价值,可以看出(i) 纳什均衡的低效率为 1.4,这表明了不协调的光伏投资所造成的效率损失,以及 (ii) 利益分配不公平,离配电变压器较近的客户会受到惩罚,而馈线末端的客户则会受益。该模型为评估政策和法规提供了量化工具,这些政策和法规改善了光伏发电托管容量(以及其他分布式能源资源的托管容量)在低压馈线客户之间的协调和分配。
A Photovoltaic System Investment Game for Assessing Network Hosting Capacity Allocations
The rapid rise of PV installations in low-voltage (LV) distribution networks means that they are likely to exceed network hosting capacity. For this reason, distribution network service providers (DNSP) have begun to mandate connection codes, such as inverter Volt/Var control and/or PV active power curtailment, to mitigate the resulting network problems. This approach manages the network state, but may cause an existing PV system to become inefficient as it is curtailed more often. This paper investigates the effects on overall economic efficiency and individual customer welfare of natural uncoordinated rooftop PV investment processes that arise when customers invest in PV systems independently to maximize their individual welfare. We develop a novel game-theoretic framework that computes the annual payoffs to customers for different PV investment sizes, given the installations of other customers. This calculation is based on an optimal AC power flow model that includes inverter connection standards that link customers' annual payoffs via their effects on AC network voltages and consequent PV curtailment responses. We show that the interaction of PV investments produces a concave potential game with continuous action sets, which has a pure Nash equilibrium that can be found using an adaptive learning process. Then, to evaluate the efficiency of the investments under the game model, we compute an centrally-coordinated PV investment profile, found by solving an optimal PV sizing problem that maximizes social welfare across all customers. Comparing the value of investment patterns for the game and the centrally-coordinated optimization shows: (i) the inefficiency of the Nash equilibrium is 1.4, which indicates the efficiency loss resulting from uncoordinated PV investments, and (ii) the inequity of a skewed distribution of benefits, penalising customers closer to the distribution transformer and benefiting those towards the end of the feeder. This model provides a quantitative tool for evaluating policies and regulations that improved coordination and allocation of PV hosting capacity (and that of other energy distributed energy resources) between customers on LV feeders.