Loss Sensitivity and Voltage Deviation Index Based Intelligent Technique for Optimal Placement and Operation of Distributed Generators

Dhruvkumar V. Bhatt, Yagnesh H. Bhatt, V. Pakka
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引用次数: 3

Abstract

Distribution system is the crucial part of the power system which needs to be monitored for quality since it is the last stage in delivering electricity to consumers. The main aim of suppliers is therefore to maintain excellent quality of supply with minimal support at the network level. This includes dealing with issues around voltage regulation and minimization of real power losses on the network which are reflected in a uniform voltage profile through various load points on the feeders. However, with increase in decentralization, Distributed Generation (DG) becomes the focal point of distribution networks and can be used to achieve the above mentioned objectives. DGs are used in this paper to minimize the losses along with an improvement in the voltage profile. The location of these DG units on the network is addressed as an optimization problem using the loss sensitivity index and voltage deviation index. The size of power injected by DG units is obtained with using an intelligent approach that combines Genetic Algorithm (GA) with neural networks. Different cases of DG in terms of real and reactive power injected are considered resulting in an improvement in voltage profile. The loss sensitivity and voltage deviation indices show the best result for the location of DG needed to minimize the power loss along with improvement in voltage regulation. This approach is tested on a 13-bus distribution network with different types of loads placed throughout the feeder.
基于损耗灵敏度和电压偏差指标的分布式发电机组优化配置与运行智能技术
配电系统是电力系统的重要组成部分,是向用户输送电力的最后一个环节,需要对其进行质量监控。因此,供应商的主要目标是在网络层面上以最小的支持保持卓越的供应质量。这包括处理电压调节和最大限度地减少网络上的实际功率损耗的问题,这些损耗通过馈线上的各个负载点反映在均匀的电压分布中。然而,随着去中心化程度的提高,分布式发电(DG)成为配电网络的焦点,可以用来实现上述目标。在本文中使用了dg,以尽量减少损耗,同时改善电压分布。利用损耗灵敏度指数和电压偏差指数对分布式发电机组在电网中的位置进行了优化。采用遗传算法和神经网络相结合的智能方法,确定了发电机组的注入功率大小。考虑了实际和无功功率注入DG的不同情况,从而改善了电压分布。损耗灵敏度和电压偏差指标表明,随着电压调节的改善,DG的位置需要最小化功率损耗。该方法在一个13总线配电网上进行了测试,该配电网在馈线上放置了不同类型的负载。
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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