Investigating the Effect of Grid Load Data on Optimal DG Placement and Capacity Determination

Saeed Khademi, R. Z. Davarani, R. Fadaeinedjad, G. Moschopoulos
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Abstract

Grid load data is an important factor in the placement and capacity of distributed generation (DG) in grid studies. Distribution networks are the largest part of electric networks and thus have the highest share of losses due to their low voltage and wide extent. Using power generation units near load centers can reduce grid losses considerably. For this purpose, the placement and capacity of DG units must be determined in order to maximize their potential. Usually, DG placement and capacity determination is done based on annual peak load data. This study shows that network load data such as peak load, average load, and hourly load strongly affect DG placement and capacity determination, and, therefore, will affect the annual network loss and the net present cost of DG installation during its useful life. In this study, different scenarios based on the type and number of network load input data, are considered and DG placement and capacity determination is performed for the IEEE 33 bus network. In order to do load flow studies, the Matpower program in the MATLAB environment is used and a genetic algorithm is used for optimization.
研究电网负荷数据对最佳DG布局和容量确定的影响
在电网研究中,电网负荷数据是影响分布式发电系统布局和容量的重要因素。配电网是电网中最大的一部分,由于其电压低、范围广,因此损耗份额最高。在负荷中心附近使用发电机组可以大大减少电网损失。为此,必须确定DG单位的位置和容量,以便最大限度地发挥其潜力。通常,根据年度峰值负荷数据来确定DG的位置和容量。本研究表明,峰值负荷、平均负荷和小时负荷等网络负荷数据对DG的放置和容量的确定有很大影响,因此会影响DG在使用寿命期间的年网损和安装净现值成本。在本研究中,根据网络负载输入数据的类型和数量,考虑了不同的场景,并对IEEE 33总线网络进行了DG的放置和容量确定。为了进行潮流研究,使用了MATLAB环境下的Matpower程序,并采用遗传算法进行优化。
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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