Integrated Transmission and Distribution Optimal Power Flow Simulation Using Linear Decision Approach

Olalekan Ogundairo, S. Kamalasadan, Biju K
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Abstract

The existing solutions to the simulations of a transmission network(TN) and distribution network(DN) involve solving each of the networks separately, however with grid modernization DN are becoming active and depending on the penetration level can have a significant effect on TN as a result of reverse power flow from DN interconnected devices. In this paper, an optimal power flow framework was used to solve transmission and distribution systems together using an integrated optimization engine (IOE) with a linear decision rule (LDR) to enable the integrated system to adjust itself when fast changes are occurring in the network due to distributed generation. This enables the architecture to operate optimally and beneficially which improves economic operation and minimizes voltage rise. Our proposed methodology was implemented on an integrated T&D network using the IEEE 9 bus & 13 bus interconnection.
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基于线性决策方法的综合输配电最优潮流仿真
现有的输电网络(TN)和配电网络(DN)的模拟解决方案涉及分别求解每个网络,但是随着电网现代化,DN变得活跃,并且由于DN互连设备的反向潮流,不同的渗透水平会对TN产生重大影响。本文采用最优潮流框架,利用集成优化引擎(IOE)和线性决策规则(LDR)共同求解输配电系统,使集成系统能够在分布式发电引起的网络快速变化时进行自我调整。这使结构能够以最佳和有益的方式运行,从而提高经济运行并最大限度地减少电压上升。我们提出的方法是在使用IEEE 9总线和13总线互连的集成T&D网络上实现的。
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