不同负荷模式下分布式发电对径向配电网的影响

Halime Hizarci, B. Turkay
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引用次数: 8

摘要

随着电力需求的迅速增加,分布式发电已成为研究的热点。分布式发电的最优规模和最优选址是满足日益增长的电力需求的重要优化问题。在本研究中,考虑了恒功率、恒电流、恒阻抗、住宅、商业、工业和混合负载模型等不同的静态负荷模型,采用粒子群算法对分布式发电的最优布局和规模进行优化,使配电网的功率损耗最小。结果表明,该方法改善了配电网的电压分布,减少了配电网配电网电压限值超标的母线数量。在不违反母线电压和线路电流限制的情况下,进一步改善了电力系统的工作点,提高了电网的负荷能力。以12.66 kV 33母线径向配电网为例进行了分析。负荷的数学模型被认为是电压相关的指数负荷模型,负荷模型的有功和无功指数的实用值被用来表示它们对实际功率损耗和电压稳定问题的影响。计算了文献中与电压稳定性和功率损耗相关的指标,以确定研究的性能。粒子群优化方法不仅参数要求少,而且易于在大型电力系统中实现,具有较好的优越性。
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Impact of distributed generation on radial distribution network with various load models
Distributed generation has become a popular research are with rapid increase on power demand. Optimal size and location of distributed generation are an important optimization problem to satisfy growing power demand. In this study, particle swarm optimization has been used for optimal placement and sizing of distributed generation to minimize power loss in distribution network considering different static load models such as constant power, constant current, constant impedance, residential, commercial, industrial and mixed load models. Results have shown that using this method, voltage profile of the distribution network has been improved and numbers of buses violating voltage limits have been reduced after distributed generation placement. Further power system operating point has been improved and loadability of network increased without violating bus voltage and line current limits. Analysis has been demonstrated on a 12.66 kV 33-bus radial distribution network. Mathematical models of the loads have been considered as voltage dependent exponential load model and practical values of the active and reactive power exponents for load models have been used to represent their influence on real power loss and voltage stability issues. Indices related with voltage stability and power loss presented in literature have been calculated to determine performance of the study. Besides less parameter requirement of particle swarm optimization method, it is easy to implement on large power systems and these characteristics make the method preferable.
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