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Chance constrained simultaneous optimization of substations, feeders, renewable and non-renewable distributed generations in distribution network

机译:机会限制配电网中的变电站,馈线,可再生和不可再生分布式发电的同时优化

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The penetration of distributed generators (DGs) is continually increasing in the power sector due to its ability in enhancing technical specifications as well as providing a promising future for power generation in electric networks. The aforementioned objectives will be realized if DG units are allocated optimally and coordinately simultaneous with distribution network expansion planning. On the other hand, given the stochastic nature of renewable generation and severe fluctuations of load consumption and electricity price, the DGs planning problem should be accomplished under uncertainties. To address these issues, this paper proposes a novel joint chance constrained programming (JCCP) method to fulfill an acceptable level of constraint feasibility for optimal simultaneous expansion planning of HV/MV substations and multiple-DG units along with robust MV feeder routing problem. Our design objective is to determine the optimal site and size of sub-transmission substations and various DG units associated with optimally construction of network by implementing the feeder routing problem with aim to minimize the investment costs, energy not supplied (ENS) cost and energy purchasing cost from upstream network. The diverse objectives are mathematically formulated as an MINLP model and converted into a single objective function through weighted sum method and subsequently has been minimized by adaptive genetic algorithm. Furthermore, the Taguchi method is utilized in order to furnish an efficient algorithm that can find a satisfactory solution. Finally, the effectiveness of the proposed method is investigated by applying it on the 54-bus distribution network and the obtained results are duly drawn and discussed. (C) 2018 Elsevier B.V. All rights reserved.
机译:由于分布式发电机(DGs)具有增强技术规范的能力以及为电网发电的发展提供了广阔的前景,因此其在电力领域的渗透正在不断提高。如果将DG单元与配电网络扩展计划同时进行优化和协调分配,则将实现上述目标。另一方面,鉴于可再生能源发电的随机性以及负荷消耗和电价的剧烈波动,分布式发电的规划问题应在不确定的情况下完成。为解决这些问题,本文提出了一种新颖的联合机会约束规划(JCCP)方法,以实现可接受的水平的约束可行性,以实现HV / MV变电站和多DG机组的最佳同时扩展规划以及鲁棒的MV馈线路由问题。我们的设计目标是通过实现馈线路由问题来确定与输电变电站和各种DG单元有关的最优站点和大小,以实现网络的优化建设,以最小化投资成本,未供应能源(ENS)成本和能源购买上游网络的成本。数学上将各种目标公式化为MINLP模型,并通过加权和方法将其转换为单个目标函数,随后通过自适应遗传算法将其最小化。此外,使用Taguchi方法来提供可以找到令人满意的解决方案的有效算法。最后,将该方法应用于54总线配电网络,研究了该方法的有效性,并对得出的结果进行了适当的讨论。 (C)2018 Elsevier B.V.保留所有权利。

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