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ANN-BASED SYNCHRONOUS GENERATOR EXCITATION FOR TRANSIENT STABILITY ENHANCEMENT AND VOLTAGE REGULATION

机译:基于神经网络的同步发电机励磁,用于暂态稳定增强和电压调节

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摘要

Control of the synchronous generator, also referred to as an alternator, has always remained very significant in power system operation and con/rot. Alternator output is proportional to load angle, but as the parameter is moved up, the power system security approaches the extreme limit. Hence, generators are operated well below their steady stale stability limit for the secure operation of a power system. This raises demand for efficient and fast controllers. Artificial intelligence, specifically artificial neural network (ANN), is emerging very rapidly and has become an efficient tool for operation and control oj power systems. ANN requires considerable time to lume weights, but it is fast and accurate once tuned properly. Previously, ANNs have been trained with high-dimensional input space or have been trained online. Hence, either one requires considerable lime to yield the control signal or is a bit risky technique to apply in interconnected power systems. In this study, a multilayer perceptron (MLP) ANN is proposed to control generator excitation trained with low-dimensional input space. Moreover, MLP has been trained, offline to avert the risk potential of online training. The results illustrate preeminence of the proposed neuroconlroller-based excitation system over the conventional controllers-based excitation system.
机译:同步发电机(也称为交流发电机)的控制在电力系统运行和控制/旋转方面一直非常重要。交流发电机的输出与负载角成正比,但是随着该参数的上移,电力系统的安全性将达到极限。因此,发电机的运行远低于其稳定的陈旧稳定极限,以确保电力系统的安全运行。这提出了对高效,快速控制器的需求。人工智能,特别是人工神经网络(ANN)迅速兴起,并已成为操作和控制电力系统的有效工具。 ANN需要大量时间来吸引重量,但是一旦正确调整,它就会快速而准确。以前,人工神经网络已经使用高维输入空间进行了训练,或者已经进行了在线训练。因此,要么需要大量的石灰来产生控制信号,要么要在互连的电源系统中应用是有点冒险的技术。在这项研究中,提出了一种多层感知器(MLP)人工神经网络来控制以低维输入空间训练的发电机励磁。此外,MLP已接受离线培训,以避免在线培训的潜在风险。结果说明了所提出的基于神经控制器的激励系统优于传统的基于控制器的激励系统。

著录项

  • 来源
    《Applied Artificial Intelligence》 |2013年第4期|20-35|共16页
  • 作者单位

    School of Electrical & Electronics Engineering, Engineering Campus, Universiti SainsMalaysia, Penang, Malaysia;

    School of Electrical & Electronics Engineering, Engineering Campus, Universiti SainsMalaysia, Penang, Malaysia;

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  • 正文语种 eng
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  • 入库时间 2022-08-18 02:03:55

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