Optimization Placement of SVC and TCSC in Power Transmission Network 150 kV SUMBAGUT using Artificial Bee Colony Algorithm

Y. Siregar, Popy Naomi Agustina, Z. Pane
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引用次数: 3

Abstract

Voltage profile and minimizing power losses are the most challenging part of the power system. Flexible AC transmission system (FACTS) devices support sustaining and advancing voltage profiles and minimizing power losses. But, choosing the suitable FACTS device and its optimal placement in the network is a matter of concern. This paper presents an Artificial Bee Colony (ABC) Algorithm to find the optimal location and sizing parameters of the FACTS device in the transmission network. The FACTS device implemented in this paper is SVC, TCSC, and combination SVC-TCSC. SVC, TCSC, and combination SVC-TCSC are compared to determine the system's optimal placement for improving voltage profile and minimizing power losses. The transmission network 150 kV SUMBAGUT is used for this purpose. The Artificial Bee Colony (ABC) Algorithm shows that the optimal location for SVC is in bus 61 (TELE), which can improve voltage profile 6.14% and minimize power losses 5.89 MW. The optimal location for TCSC is in line 45 (TBING-KTNJG) can improve voltage profile 6.09% and minimize power losses 28.51 MW. Combination of SVC-TCSC can improve voltage profile 6.19% and minimize power losses 33.26 MW
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基于人工蜂群算法的150kv SUMBAGUT输电网SVC和TCSC优化配置
电压分布和最小化功率损耗是电力系统中最具挑战性的部分。灵活的交流传输系统(FACTS)设备支持维持和推进电压分布,并最大限度地减少功率损耗。但是,选择合适的FACTS设备及其在网络中的最佳位置是一个值得关注的问题。本文提出了一种人工蜂群算法,用于求解输电网络中FACTS设备的最优位置和尺寸参数。本文实现的FACTS器件有SVC、TCSC和组合SVC-TCSC。对SVC、TCSC和组合SVC-TCSC进行了比较,以确定系统的最佳位置,以改善电压分布并最大限度地减少功率损耗。150千伏SUMBAGUT输电网用于此目的。人工蜂群(ABC)算法表明,SVC的最优位置为61总线(TELE),可使电压分布改善6.14%,功率损耗最小5.89 MW。TCSC的最佳位置为45线(ting - ktnjg),可改善电压分布6.09%,最大功率损耗28.51 MW。SVC-TCSC组合可使电压分布改善6.19%,使功率损耗减小33.26 MW
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