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Probabilistic approach for optimal allocation of wind-based distributed generation in distribution systems

机译:配电系统中基于风的分布式发电最优分配的概率方法

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Recent development in small renewable/clean generation technologies such as wind turbines, photovoltaic, fuel cells, microturbines and so on has drawn distribution utilities¿ attention to possible changes in the distribution system infrastructure and policy by deploying distributed generation (DG) in distribution systems. In this study, a methodology has been proposed for optimally allocating wind-based DG units in the distribution system so as to minimise annual energy loss. The methodology is based on generating a probabilistic generation¿load model that combines all possible operating conditions of the windbased DG units and load levels with their probabilities, hence accommodating this model in a deterministic planning problem. The planning problem is formulated as mixed integer non-linear programming (MINLP), with an objective function for the system¿s annual energy losses minimise. The constraints include voltage limits at different buses (slack and load buses) of the system, feeder capacity, discrete size of the DG units, maximum investment on each bus, and maximum penetration limit of DG units. This proposed technique is applied to a typical rural distribution system and compared to the traditional planning technique (constant output power of DG units and constant peak load profile).
机译:小型可再生/清洁发电技术(例如风力涡轮机,光伏发电,燃料电池,微型涡轮等)的最新发展吸引了配电公司–通过在配电中部署分布式发电(DG)来关注配电系统基础设施和政策的可能变化系统。在这项研究中,提出了一种用于在配电系统中最佳分配基于风的DG机组的方法,以最大程度地减少年度能源损失。该方法基于生成概率生成的负荷模型,该模型结合了基于风的DG单元的所有可能的运行状况以及负荷水平及其概率,因此将该模型容纳在确定性规划问题中。规划问题被表述为混合整数非线性规划(MINLP),其目标函数使系统的年度能量损失最小。约束条件包括系统的不同母线(松弛母线和负载母线)上的电压限制,馈线容量,DG装置的离散尺寸,每条母线的最大投资以及DG装置的最大穿透极限。这项提议的技术应用于典型的农村配电系统,并与传统的规划技术(DG机组的恒定输出功率和恒定的峰值负荷曲线)进行了比较。

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