神经网络在外部电力系统稳态当量辨识中的应用

A. Larsson, A. Germond, B. Zhang
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引用次数: 14

摘要

本文提出了一种基于人工神经网络的外部电力系统稳态当量辨识方法。其基本思想是训练一个人工神经网络来学习外部电力系统的行为。经过训练后,人工神经网络可以附着在学习系统的边界总线上,取代外部电源系统,再现学习系统的行为。文中提出的等效模型表达了互联线路中的潮流与边界母线的相位和电压之间的关系。因此,构建等价物不需要外部系统信息。该模型具有双向功能,即使用功率流作为输入,相量电压作为输出,或使用相量电压作为输入,功率流作为输出。该方法在IEEE-30母线系统和中国江西省294个母线的电力系统上进行了实施和评价。结果表明,经过适当的训练,人工神经网络可以准确、鲁棒地作为电力系统的模型。与经典方法相反,人工神经网络的非线性特性使其能够准确地模拟外部系统在主要运行条件变化(如支路和发电机停机)后的功能。
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Application of Neural Networks to the Identification of Steady State Equivalents of External Power Systems
This paper suggests an approach based on artificial neural networks to identify steady state equivalents of external power systems. The underlying idea is to train an artificial neural network ANN to learn the behaviour of an external power system. After training, the ANN can be attached to the study system at its boundary buses, replacing the external power system and reproducing its behaviour. The equivalent model proposed in the article expresses the relationship between the power flows in the interconnection lines and the phase and voltage of the boundary buses. Thus, no external system information is required for constructing the equivalent. The model is functional in both directions, i.e using power flows as inputs and phasor voltages as outputs or using phasor voltages as inputs and power flows as outputs. The method was implemented and evaluated on the IEEE-30 bus system and on the Chinese Jiangxi province power system containing 294 buses. The results show that, given appropriate training, the ANN can serve as a model for a power system in an accurate and robust manner. Contrary to the classical methods, the non-linear character of the ANN enables it to accurately model the functioning of the external system also after major operating condition changes such as branch and generator outages.
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