Application of improved PSO algorithm to optimal reactive power dispatch and implementation to the 110 kV Southern Vietnam power system

D. Le, V. N. Dieu, Ngo Quoc Hung
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Abstract

This paper presents an application of improved particle sawrm optimization (IPSO) algorithm for solving the optimal reactive power dispatch (ORPD) problem in power systems and a case study for a practical 110kV power system of Shoutern Vietnam. The IPSO is an improvement of PSO with an integration of pseudo- gradient to enhance the search ability of PSO for application to large-scale systems. The proposed IPSO has been tested on the IEEE 30 bus system and the obtained results have indicated that the proposed method is enffective for the ORPD problem via result comparations with other methods. From the obtained results, the IPSO method has been also implemented to the ORPD problem for the 110 kV Southern Vietnam power system and the the obtained result is verified by the PSS/E program. The obtained results have indicated that the IPSO method is very effective for solving the large-scale practical systems.
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改进粒子群算法在越南南部110千伏电力系统无功优化调度中的应用
本文介绍了改进粒子sawwrm优化(IPSO)算法在电力系统无功优化调度中的应用,并以越南南部110kV电力系统为例进行了分析。粒子群算法是对粒子群算法的改进,为了提高粒子群算法在大规模系统中的搜索能力,引入了伪梯度算法。在ieee30总线系统上对所提出的IPSO进行了测试,通过与其他方法的结果比较,表明所提出的方法对ORPD问题是有效的。根据所得结果,将IPSO方法应用于越南南部110 kV电力系统的ORPD问题,并通过PSS/E程序对所得结果进行了验证。所得结果表明,IPSO方法对于求解大型实际系统是非常有效的。
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