Optimal Placement and Sizing of Static Var Compensators in Radial Distribution Networks Using Artificial Intelligence Techniques

Hussein Jafrouni, M. Almaktar, F. Mohamed, A. Elbreki, Zakariya Rajab
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Abstract

Energy conservation and efficiency are necessary actions in electrical power system. Therefore, the wasted energy that is dissipated in the transmission network needs to be minimized. The power loss can be reduced by using many techniques, including the use of reactive compensators. In this paper, intelligent algorithms are examined to find the best site and size of reactive compensators so as to improve the performance, power quality and economics of radial electrical networks. A Matlab program has been developed to find the status of a radial distribution network in terms of power flow, losses, and bus voltages. Two artificial intelligence (AI) algorithms namely genetic algorithm (GA) and particle swarm optimization (PSO) have been developed to cater for the optimal position and amount of reactive power compensation. The programmed approaches were tested in reference network of IEEE 15-bus system and then implemented on the Syrian network, specifically Al-Mayadeen distribution network comprising 64-bus. Transient Electrolyzer Program (ETAP) was used to simulate the different power systems. The study showed that the GA is superior and outperforms PSO in reducing total power loss hence the cost and also improving voltage profile. Overall, the two examined techniques can be used in any radial electrical network.
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基于人工智能技术的径向配电网中静态无功补偿器的优化配置与大小
节能增效是电力系统的必要举措。因此,需要尽量减少传输网络中浪费的能量。通过使用包括无功补偿器在内的许多技术可以降低功率损耗。本文研究了智能算法来确定无功补偿器的最佳位置和大小,以提高径向电网的性能、电能质量和经济性。开发了一个Matlab程序,用于查找径向配电网在潮流、损耗和母线电压方面的状态。遗传算法(GA)和粒子群算法(PSO)这两种人工智能算法是为了满足无功补偿的最优位置和最优量而开发的。在ieee15总线系统的参考网络中对编程方法进行了测试,然后在叙利亚网络,特别是由64总线组成的Al-Mayadeen配电网上实现。利用暂态电解槽程序(ETAP)对不同的电力系统进行了仿真。研究表明,遗传算法在降低总功耗、降低成本和改善电压分布方面优于粒子群算法。总的来说,这两种技术可以用于任何径向电网。
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