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Journal ArticleDOI

A novel hybrid deep learning approach including combination of 1D power signals and 2D signal images for power quality disturbance classification

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TLDR
The proposed hybrid convolutional neural network method is a novel approach that covers the steps of an expert examining a signal and its classification performance is relatively high compared to other methods, the computational complexity is almost the same.
Abstract
As a result of the widespread use of power electronic equipment and the increase in consumption, the importance of effective energy policies and the smart grid begins to increase. Nonlinear loads and other loads in electric power systems are considered as the main reason for power quality disturbance. Distortions in signal quality and shape due to power quality disturbance cause a decrease in total efficiency. The proposed hybrid convolutional neural network method consists of a 1D convolutional neural network structure and a 2D convolutional neural network structure. The features acquired by these two convolutional neural network architectures are classified using the fully connected layer, which is traditionally used as the classifier of convolutional neural network architectures. Power signals are processed using a 1D convolutional neural network in their original form. Then these signals are converted into images and processed using a 2D convolutional neural network. Then, feature vectors generated by 1D and 2D convolutional neural networks are combined. Finally, this combined vector is classified by a fully connected layer. The proposed method is well suited to the nature of signal processing. It is a novel approach that covers the steps of an expert examining a signal. The proposed framework is compared with other state-of-the-art power quality disturbance classification methods in the literature. While the proposed method's classification performance is relatively high compared to other methods, the computational complexity is almost the same.

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Citations
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Deep learning for power quality

TL;DR: In this article , the authors present the main barriers, research gaps, gains and suggestions for applying deep learning to power quality, including lack of novelty, low transparency of deep learning methods and lack of benchmark databases.
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An adaptive deep learning framework to classify unknown composite power quality event using known single power quality events

TL;DR: The proposed framework produces higher performance than other state-of-the-art methods in the literature and is able to classify composite PQD signals that it has not encountered before.
Journal ArticleDOI

Machine Learning Methods for Diagnosis of Eye-Related Diseases: A Systematic Review Study Based on Ophthalmic Imaging Modalities

TL;DR: It is suggested that a rigorous MDL model is still required compared to traditional machine-learning to effectively diagnose eye-related diseases in several modalities and the influence of benchmarks (GPU, and CPU) on MDL algorithms is measured.
Journal ArticleDOI

A Hybrid Signal Processing Technique for Recognition of Complex Power Quality Disturbances

TL;DR: In this paper , the authors proposed an algorithm based on the Stockwell transform (ST) and Hilbert transform (HT) to classify complex power quality disturbances (CPQDs) in real-time on a practical distribution network in Rajasthan State, India.
References
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Journal ArticleDOI

Emerging Power Quality Challenges Due to Integration of Renewable Energy Sources

TL;DR: In this paper, an extensive literature review is conducted on emerging power quality challenges due to renewable energy integration, which are caused by non-controllable variability of renewable energy resources.
Journal ArticleDOI

Detection and Classification of Power Quality Disturbances Using S-Transform and Probabilistic Neural Network

TL;DR: The simulation results reveal that the combination of S-Transform and PNN can effectively detect and classify different PQ events and it is found that the classification performance of PNN is better than both FFML and LVQ.
Journal ArticleDOI

A critical review of detection and classification of power quality events

TL;DR: A comprehensive review of signal processing and intelligent techniques for automatic classification of the power quality (PQ) events and an effect of noise on detection and classification of disturbances is presented in this paper.
Journal ArticleDOI

Multiresolution S-transform-based fuzzy recognition system for power quality events

TL;DR: A fuzzy logic-based pattern recognition system is found to be very simple and classification accuracy is more than 98% in most cases of power quality disturbances.
Book ChapterDOI

Introduction to the hilbert–huang transform and its related mathematical problems

TL;DR: This chapter is an introduction to the basic method of the Hilbert-Huang transform, followed by brief descriptions of the recent developments relating to the normalized Hilbert transform, a confidence limit for the Hilbert spectrum, and a statistical significance test for the intrinsic mode function (IMF).
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