Initial condition based real time classification of power quality disturbance using deep convolution neural network with bidirectional long short‐term memory

Author:

Kandasamy Prabaakaran1,Kumar Chandrasekaran2ORCID,Lakshmanan Muthuramalingam3,Jaisiva Selvaraj4,Stonier Albert Alexander5,Peter Geno6ORCID,Ganji Vivekananda7ORCID

Affiliation:

1. Department of Electrical and Electronics Engineering Easwari Engineering College Chennai India

2. Department of Electrical and Electronics Engineering Karpagam College of Engineering Coimbatore Tamil Nadu India

3. Department of Electrical and Electronics Engineering M. Kumarasamy College of Engineering Karur India

4. Department of Electrical and Electronics Engineering Sri Krishna College of Technology Coimbatore Tamil Nadu India

5. School of Electrical Engineering Vellore Institute of Technology Vellore Tamil Nadu India

6. CRISD, School of Engineering and Technology University of Technology Sarawak Sibu Malaysia

7. Department of Electrical and Computer Engineering Debre Tabor University Debre Tabor Amhara Ethiopia

Abstract

AbstractThe accurate classification of power quality disturbances (PQDs) is crucial for advancing real‐time monitoring and classification systems within the modern power grid. The proposed system must ensure dependable, safeguarded, and stable operating conditions amidst diverse power quality issues. This paper presents an approach to classifying power quality disturbances using a deep learning model that synergizes deep convolutional neural networks (DCNN) and Bidirectional Long Short‐Term Memory (BiLSTM). This amalgamation effectively extracts and classifies disturbance signals in real time, grounded on noise levels. The initial feature extraction from the signal is accomplished through a time‐frequency matrix. Subsequently, secondary extraction employs the BiLSTM layer to intricately and significantly classify disturbances in the power signal. This aids in transforming high‐dimensional matrices into a reduced set for enhanced performance. The detailed classification is facilitated by the softmax layer. The simulation results support the power quality evaluations under varied constraints and underscore the substantial classification of power quality disturbances through the DCNN‐BiLSTM algorithm, in comparison to alternative classification algorithms in terms of computational speed and accuracy.

Publisher

Institution of Engineering and Technology (IET)

Subject

Electrical and Electronic Engineering,Energy Engineering and Power Technology,Control and Systems Engineering

Reference76 articles.

1. Power system disturbance patterns

2. Signal Processing of Power Quality Disturbances

3. Characterizing and monitoring voltage transients as problem to sensitive loads

4. Pereira F.C. Souto O. De Oliveira J. Vilaca A. Ribeiro P.:An analysis of costs related to the loss of power quality. In:8th International Conference on Harmonics and Quality of Power Proceedings.Athens Greece pp.777–782(1998)

5. Identification of power quality events: selection of optimum base wavelet and machine learning algorithm

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