电能质量事件检测与分类的智能方法

M. Shafiullah, Md Juel Rana, Md. Ershadul Haque, Asif Islam, Syed Masiur Rahman, M. Shafiul Alam, Amjad Ali
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引用次数: 2

摘要

本文提出了一种结合机器学习和先进信号处理技术的电能质量事件智能检测与分类方法。选择一种高效的信号处理工具——斯托克韦尔变换对记录信号进行特征提取。然后将提取的特征提取到流行的机器学习工具之一,即人工神经网络(ANN),以开发所提出的智能PQ事件检测和分类方法。本文通过系统的试错法选择隐藏层神经元数、训练算法、激活函数等超参数。为了提高方法的性能,采用灰狼优化技术对人工神经网络的权值和偏差进行优化。仿真结果证实了所开发的智能方法在区分PQ事件和非PQ事件方面的有效性。此外,以合理的精度分离不同的PQ事件,如凹陷、膨胀、中断、波动、尖峰、缺口、谐波等。本研究还探讨了所提出的基于信号处理的机器学习方法在测量噪声存在下的有效性。
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An Intelligent Approach for Power Quality Events Detection and Classification
This paper proposes an intelligent approach to detect and classify the power quality (PQ) events with the combination of machine learning and advanced signal processing techniques. It selects Stockwell transform, one of the efficient signal processing tools for feature extraction from the recorded signals. The extracted features are then fetched to one of the popular machine-learning tools, namely the artificial neural network (ANN), to develop the proposed intelligent PQ events detection and classification approach. This paper selects the hyper-parameters, e.g., number of hidden layer neurons, training algorithm, and activation functions through a systematic trial and error approach. To enhance the proposed approach performance, the weights and biases of the ANN are optimized using the grey wolf optimization (GWO) technique. Simulation results confirm the efficacy of the developed intelligent methodology in distinguishing PQ events from non-PQ events. Moreover, separates different PQ events, e.g., sag, swell, interruption, fluctuation, spike, notch, harmonics, from each other with reasonable accuracy. This research also investigates the efficacy of the proposed signal processing-based machine learning approach in the presence of measurement noises.
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