Global attention-based LSTM for noisy power quality disturbance classification

Q4 Engineering
Dar Hung Chiam, King Hann Lim, Kah Haw Law
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引用次数: 1

Abstract

An increased dependency of digital control systems in the modern electrical network demand for a better quality of power signal. The occurrence of power quality disturbances (PQDs) in the network reduces the lifespan of power semiconductors and solid states switching devices. Global attention-based long short-term memory (LSTM) network is proposed to perform automatic time-series PQD detection and classification. Attention-based LSTM helps improve the noise immunity to extract salient features from noisy signal for PQD classification. The aim of this article is to analyse the performance of proposed attention-based LSTM under different noise conditions. Addictive white Gaussian noise is added to synthetic PQDs in different signal-to-noise ratio. These random generated noises are used to train and test the performance of proposed method, as well compared towards generic LSTM model. This work also shows the sensitivity of proposed method towards unknown noises that is not seen by the model during training phase.
基于全局注意力的LSTM噪声电能质量扰动分类
现代电网对数字控制系统的依赖性日益增强,对电力信号的质量提出了更高的要求。网络中电能质量扰动(PQDs)的出现降低了功率半导体和固态开关器件的使用寿命。提出了基于全局注意的长短期记忆(LSTM)网络对时间序列PQD进行自动检测和分类。基于注意力的LSTM有助于提高噪声抗扰性,从噪声信号中提取显著特征进行PQD分类。本文的目的是分析所提出的基于注意的LSTM在不同噪声条件下的性能。在不同信噪比的合成pqd中加入成瘾性高斯白噪声。这些随机产生的噪声用于训练和测试所提方法的性能,并与一般LSTM模型进行比较。这项工作还显示了所提出的方法对模型在训练阶段未看到的未知噪声的敏感性。
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来源期刊
International Journal of Systems, Control and Communications
International Journal of Systems, Control and Communications Engineering-Control and Systems Engineering
CiteScore
1.50
自引率
0.00%
发文量
26
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