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On-line Transmission Line Fault Classification using Long Short-Term Memory

机译:使用长短期记忆的在线传输线故障分类

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In order to perform on-line transmission line fault diagnosis, this paper proposes a classification algorithm, which combines the long short-term memory (LSTM) network with a calibration training filter. The LSTM network adopted in this research is a multilayer recurrent neural network. As a deep learning algorithm, LSTM is extremely suitable to complex time-series classification problems, such as speech recognition and natural language processing. As the number of units in LSTM is much larger than conventional artificial neural networks (ANNs), the training progress is time consuming, and not able to be performed by on-line diagnosis devices. However, the parameters of the transmission line are always varying with time, which requires frequently calibration training on the network. In order to accelerate the calibration training of LSTM, a filter enhanced calibration is proposed. The filter selects samples having the same pattern as the signal under diagnosis, and further reduces the training complexity. The experimental study compares the proposed filter calibrated LSTM (FC-LSTM) against other neural networks and machine learning algorithms on a on-line test model. The numerical comparison not only shows FC-LSTM has a better classification accuracy and a very short time delay.
机译:为了进行在线传输线故障诊断,本文提出了一种分类算法,该算法将长短期记忆(LSTM)网络与校准训练滤波器结合在一起。本研究采用的LSTM网络是多层递归神经网络。作为一种深度学习算法,LSTM非常适合于复杂的时间序列分类问题,例如语音识别和自然语言处理。由于LSTM中的单元数比传统的人工神经网络(ANN)大得多,因此培训进度非常耗时,无法通过在线诊断设备执行。但是,传输线的参数始终随时间变化,这需要在网络上进行频繁的校准培训。为了加速LSTM的校准训练,提出了一种滤波器增强的校准方法。滤波器选择与被诊断信号具有相同模式的样本,并进一步降低训练复杂度。实验研究在在线测试模型上将提出的经过过滤器校准的LSTM(FC-LSTM)与其他神经网络和机器学习算法进行了比较。数值比较不仅表明FC-LSTM具有更好的分类精度和非常短的时间延迟。

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