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首页> 外文期刊>IEE proceedings. Part C >Monitoring and assessment of voltage stability margins using artificial neural networks with a reduced input set
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Monitoring and assessment of voltage stability margins using artificial neural networks with a reduced input set

机译:使用减少输入集的人工神经网络监控和评估电压稳定裕度

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摘要

A new methodology is proposed for the online monitoring and assessment of voltage stability margins, using artificial neural networks with a reduced input data set from the power system. Within the framework of this methodology, first the system model is reduced using self-organised artificial neural networks and an extended AESOPS algorithm. Then supervised learning of multilayered artificial neural networks is carried out on the basis of this reduced model. Finally, based on the trained network and the reduced set of system variables, monitoring is carried out along with the assessment of voltage stability margins. This methodology is tested comparatively with a methodology for monitoring and assessing voltage stability using a complete input data set. The tests were carried out on a real power system with 92 buses. The results obtained indicate the justifiability of using a reduced system because of the increased efficiency and accuracy of calculation, both in the learning stage and in the recall stage of the artificial neural network.
机译:提出了一种新的方法,该方法使用具有减少的电力系统输入数据集的人工神经网络来在线监视和评估电压稳定裕度。在这种方法的框架内,首先使用自组织的人工神经网络和扩展的AESOPS算法来简化系统模型。然后在这种简化模型的基础上进行了多层人工神经网络的监督学习。最后,基于受过训练的网络和减少的系统变量集,进行监视以及评估电压稳定裕度。通过使用完整的输入数据集监视和评估电压稳定性的方法,对该方法进行了比较测试。测试是在具有92条总线的真实电源系统上进行的。获得的结果表明,在人工神经网络的学习阶段和召回阶段,由于计算效率和准确性的提高,使用简化系统的合理性。

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