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Enhancement of voltage stability and power losses for distribution system with distributed generation using genetic algorithm

机译:遗传算法提高分布式发电系统的电压稳定性和功率损耗

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摘要

Distributed generation (DG) is in rising attention in power systems as a solution to environmental and economic challenges caused by conventional power plants. The optimal location and capacity of DGs in power systems is very important for obtaining their maximum potential benefits. A lot of research studies have been carried out to propose different methods in terms of optimal placement and capacity for the distribution generator units to minimize and improve costs and efforts. In this project, genetic algorithm (GA) optimization method along with Newton Raphson (NR) load flow calculation method are used to obtain the optimum size and optimum location of the DGs in the standard IEEE 34-bus radial distribution network. The developed GA-NR algorithm is based on minimizing the power losses and maximizing the voltage profile in the primary radial distribution network. The developed algorithm is applied to determine the optimal sizes and locations for four different cases where each case includes a specific number of DGs. Results indicated that, case 3 where three DG units were installed is the optimal solution to enhance both of the voltage stability and the power losses for the IEEE 34-bus radial distribution system. Furthermore, if the three DGs are located at their suggested optimal locations and have the suggested optimal sizes which are proposed by GA, the total power losses in the IEEE 34-bus radial distribution network will be reduced by nearly 55% and 65% for active and reactive power respectively. Besides, the voltage profile will be improved by nearly 26% if the same condition was applied. Finally, the results have been verified and demonstrated their robustness through comparing with other optimization methods, such as CPF and NLP optimization methods, and by observing the buses voltage profiles and the power losses when relocating the DGs randomly. The comparison results proved that GA placement and sizing is superior to CPF placement and NLP placement and sizing when both of voltage stability and power losses are considered.
机译:分布式发电(DG)在电力系统中正受到越来越多的关注,以解决传统电厂所造成的环境和经济挑战。 DG在电力系统中的最佳位置和容量对于获得最大的潜在利益非常重要。已经进行了许多研究,以针对配电发电机组的最佳布置和容量提出不同的方法,以最小化和改善成本和工作量。在该项目中,遗传算法(GA)优化方法与牛顿拉夫森(NR)潮流计算方法一起用于获得标准IEEE 34总线径向配电网中DG的最佳尺寸和最佳位置。所开发的GA-NR算法基于最小化功率损耗并最大化一次径向配电网中的电压曲线。所开发的算法用于确定四种不同情况的最佳大小和位置,其中每种情况都包含特定数量的DG。结果表明,案例3中安装了三个DG单元是提高IEEE 34总线径向配电系统的电压稳定性和功率损耗的最佳解决方案。此外,如果三个DG位于GA所建议的最佳位置并具有GA所建议的最佳尺寸,那么在有源34总线径向配电网中,有源电网的总功率损耗将减少近55%和65%。和无功功率。此外,如果采用相同的条件,电压曲线将提高近26%。最后,通过与其他优化方法(例如CPF和NLP优化方法)进行比较,并观察总线电压曲线和随机重新布置DG时的功率损耗,验证了结果并证明了它们的鲁棒性。比较结果证明,在同时考虑电压稳定性和功率损耗的情况下,GA放置和尺寸调整优于CPF放置和NLP放置和尺寸调整。

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  • 作者

    Omar Khalaf Omar Tahseen;

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  • 年度 2015
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  • 原文格式 PDF
  • 正文语种 en
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