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Application of Long short-term Memory Neural Networks in Dynamic State Estimation of Generators Subjected to Ageing in Complex Power Systems

机译:长短期记忆神经网络在复杂电力系统老化发电机动态状态估计中的应用

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In this paper, Long short-term memory(LSTM) neural networks based techniques for estimating dynamic states of generators in highly complex power systems is presented. It is proven that time-series prediction techniques can be used for dynamic state estimation. The most benefit that proposed method offers, is its independency from the mathematical model of the generators. The results proves superiority of the proposed technique over particle filter and unscented Kalman filter when parameters of the generators alter. The proposed scheme sustain its accuracy and precision even in the presence of unobservable variances in generator parameters. Parameter alterations in generators usually happen due to ageing of the equipment and environment impacts, and so on.
机译:本文提出了一种基于长短期记忆(LSTM)神经网络的技术,用于估计高度复杂电力系统中发电机的动态状态。事实证明,时间序列预测技术可用于动态状态估计。所提出的方法提供的最大好处是,它独立于发电机的数学模型。结果证明,当发生器的参数发生变化时,所提出的技术优于粒子滤波器和无味卡尔曼滤波器。所提出的方案即使在发电机参数存在不可观察的变化的情况下也能维持其准确性和精确性。发电机中的参数更改通常是由于设备老化和环境影响等导致的。

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