应用人工神经网络缓解电压不稳定问题

A. Sallam, A.M. Khafaga
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引用次数: 8

摘要

本文认为人工神经网络(ANN)是一种重要的技术,可以从两方面来控制电压不稳定问题。第一种是通过减载控制电压崩溃。这样就可以计算出最小和最佳减载比。二是计算电力系统中控制电源所需的无功功率。这种强大的技术的优势在于它能够建模和解决许多类型的问题。人工神经网络就是针对这两种方式设计的。提出了一种基于误差反向传播学习的多层前馈神经网络。该网络应用于不同负荷水平下的受压电力系统。本文报道了一个测试系统的仿真结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial neural network application to alleviate voltage instability problem
This paper argues that the artificial neural network (ANN) is an important technique and can be applied to control voltage instability problems in two ways. The first is to control voltage collapse by using load shedding. In this way the minimum and optimal ratio of load shedding can be calculated. The second is to calculate the reactive power required to control sources in the electric power system. The strengths of this powerful technique lie in its ability for modeling and solving many types of problems. The ANN is designed for those two mentioned ways. A multi-layer feed forward ANN trained with error backpropagation learning is proposed. This network is applied to a stressed power system at different load levels. Simulation results on a test system are reported in this paper.
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