Optimal Sitting and Sizing of Distributed Generators using Pareto-Based Multi-Objective Particle Swarm Optimization for Improving Power System Operation

Saifulnizam Abd Khalid, Meenuja Arumugam Arumugam, H. Shareef
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Abstract

Utilization of distributed generation (DG) in the distribution network has become trending ever since it has been introduced with proven benefits. DG plays a significant role in improving the quality and quantity as well as the efficiency of the power transmission and distribution system. By allowing smaller generating units to operate in parallel with the main grid, a continuous reliable power supply with lower power loss and higher power output can be achieved. However, improper placement and inappropriate sizing of DG leads to a moderate level performance in terms of power loss and voltage profile. Limited studies have been conducted on mitigating these problems in order to maximize the benefits from DG’s application. To solve this problem, a research is proposed which mainly aims in determining the location and size of DG as well as improving the voltage profile and efficiency of the distribution system significantly. A metaheuristic algorithm called Multi-Objective Particle Swarm Optimization (MOPSO) method is used to simultaneously determine the optimal size and location of DG. To assist the proposed method, Pareto analysis is incorporated to handle conflicting objectives. This method is then tested on the IEEE 14-bus and 33-bus distribution systems under two different conditions which is before and after optimization. The percentage of power loss reduction is calculated and the voltage profile is drawn to compare the output of both conditions. Evaluations from the tests have proven that by using the Pareto-Based MOPSO method, the most optimal size and location of DG in producing an improved voltage profile with lower power loss is identified.
基于pareto的多目标粒子群优化分布式发电机组布局与规模优化,改善电力系统运行
分布式发电在配电网中的应用已成为一种趋势,并已被证明具有良好的效益。DG在提高输配电系统的质量、数量和效率方面发挥着重要作用。通过允许较小的发电机组与主电网并联运行,可以实现低功率损耗和高功率输出的连续可靠的电力供应。然而,DG的不当放置和不适当的尺寸导致功率损耗和电压分布方面的中等水平性能。为了最大限度地从DG的应用中获益,已经进行了有限的研究来减轻这些问题。为了解决这一问题,本文提出了一项研究,其主要目的是确定DG的位置和规模,并显著改善配电系统的电压分布和效率。采用多目标粒子群优化(MOPSO)的元启发式算法,同时确定DG的最优尺寸和位置。为了帮助提出的方法,帕累托分析被纳入处理冲突的目标。然后在IEEE 14总线和33总线配电系统上进行了优化前后两种不同条件下的测试。计算了功率损耗降低的百分比,并绘制了电压分布图来比较两种情况下的输出。测试结果表明,使用基于pareto的MOPSO方法,可以确定DG的最佳尺寸和位置,从而产生更低功率损耗的改进电压分布。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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