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Extreme Learning Machine Approach for On-Line Voltage Stability Assessment

机译:用于在线电压稳定性评估的极端学习机方法

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In recent years, voltage instability has become a major threat tor the operation of many power systems. This paper proposes a scheme for on-line assessment of voltage stability of a power system for multiple contingencies using an Extreme Learning Machine (ELM) technique. Extreme learning machines are single-hidden layer feed- forward neural networks, where the training is restricted to the output weights in order to achieve fast learning with good performance. ELMs are competing with Neural Networks as tools for solving pattern recognition and regression problem. A single ELM model is developed for credible contingencies for accurate and fast estimation of the voltage stability level at different loading conditions. Loading margin is taken as the indicator of voltage instability. Precontingency voltage magnitudes and phase angles at the load buses are taken as the input variables. The training data are obtained by running Continuation Power Flow (CPF) routine. The effectiveness of the method has been demonstrated through voltage stability assessment in IEEE 30-bus system. To verify the effectiveness of the proposed ELM method, its performance is compared with the Multi Layer Perceptron Neural Network (MLPNN). Simulation results show that the ELM gives faster and more accurate results for on-line voltage stability assessment compared with the MLPNN.
机译:近年来,电压不稳定已成为许多电力系统的运行的主要威胁。本文提出了一种使用极端学习机(ELM)技术的多次次齿轮电力系统电压稳定性的在线评估方案。极端学习机器是单隐藏的层前进神经网络,其中培训仅限于输出权重,以便以良好的性能实现快速学习。 ELMS正在与神经网络竞争作为解决模式识别和回归问题的工具。开发了单个榆树模型,用于可靠的突发事件,用于准确和快速估计不同负载条件下的电压稳定水平。加载边距被视为电压不稳定的指示。称为总线上的预注入电压幅度和相位角作为输入变量。通过运行延续电力流(CPF)例程来获得训练数据。通过IEEE 30-Bus系统中的电压稳定性评估证明了该方法的有效性。为了验证所提出的ELM方法的有效性,将其性能与多层Perceptron神经网络(MLPNN)进行比较。仿真结果表明,与MLPNN相比,ELM为在线电压稳定性评估提供更快,更准确的结果。

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