Issued quarterly (4 issues per year)

ISSN (Online): 2588-123X
ISSN (Print):
Researchgate Linkedin EmailFacebook Twitter
  • Home
  • Editorial Board
  • Guidelines
  • Policies
  • Submissions
  • Search
  • Archives
  • Announcements
  • Statistics

About TDTU

Ton Duc Thang University (TDTU) is a public university with the main campus located in vibrant Ho Chi Minh City, Vietnam’s economic and educational hub. Founded in 1997, TDTU has developed into one of the largest and fastest growing universities in Vietnam with more than 22,000 students, enrolled in undergraduate and graduate programs ranging from science, engineering to business management, law, and humanities. To foster the country’s human resources and best serve the nation in the knowledge based economy of the 21st century, TDTU is combining vocational training with high-level research. The establishment of JAEC is one of TDTU’s efforts in this direction. More

Publication Information


Publisher
Ton Duc Thang University
Honorary Editor-in-Chief
Tran Trong Dao
Executive Editor
Nguyen Trung Thang
Chairman of the Editorial Board
 
Vice Chairman of the Editorial Board
Ivan Zelinka
Managing Editor
Nguyen-Thanh Nhon
Editorial Board
Fazel Mohammadi
Do Duc Ton
Partha Kayal
Vo Ngoc Dieu
Huynh Van Van
Dinh Hoang Bach
Timon Rabczuk
Hari Mohan Srivastava
Seung-Bok Choi
Carlo Cattani
Phan Thien Nhan
Nguyen Minh Tho
Adel M. Alimi
Petr Musílek
Jaroslav Pokorný
Juan Velasquez
Michal Wozniak
Hana Řezanková
Hendrik Richter
Mohammed Chadli
Nikolay V Kuznetsov
Shobhit K. Patel
Miroslav Vozňák
Roman Senkerik
Juan Carlos Burguillo Rial
Akhil Garg
Nguyen Pham Trung Hieu
Mahdi Shariati
Aleš Zamuda
Ngo Son Tung
User

Guide for Authors

  • View 'Guide for Authors' online

Submit Your Paper

In order to submit your paper, please login and navigate to the author page.

If you do not have an account, please consider registering one.

Track Your Paper

Track accepted paper
Once your article has been accepted you will receive an email from Author Services. This email contains a link to check the status of your articles.

Click here to track your accepted papers
Journal Content

Browse
  • By Issue
  • By Author
  • By Title

Abstracting/Indexing 

  • Home
  • Vol 10, No 2 (2026)
  • Bui

Hybrid Continuous Wavelet Transform and GoogLeNet Framework for Accurate Classification of Power Quality Disturbances

Duy Anh Bui, Bon Nhan Nguyen, Partha Kayal

Abstract


Accurate classification of power quality disturbances (PQDs) is critical for maintaining grid stability amidst the increasing integration of renewable energy sources. However, traditional feature extraction methods and standard Convolutional Neural Networks (CNNs) struggle with non-stationary signals due to fixed-size convolutional kernels that cannot simultaneously capture features at multiple temporal and spectral scales. To address this limitation, this paper proposes a hybrid framework integrating Continuous Wavelet Transform (CWT) with the GoogLeNet (Inception v1) architecture. The method converts one-dimensional voltage waveforms into two-dimensional time-frequency scalograms, which are then processed by GoogLeNet's Inception modules—featuring parallel 1 × 1, 3 × 3, and 5 × 5 convolutional pathways—to extract multi-scale features simultaneously. Extensive experimental validation on a balanced dataset of 2,100 simulated samples across seven disturbance types demonstrates robust performance, achieving a mean classification accuracy of 90.95% ± 1.60% over 10 independent trials, with best-case performance at 93.29%. Notably, frequency-domain disturbances (Harmonics and Oscillatory Transients) attain perfect classification (100%, σ = 0%) across all trials. These results demonstrate that the proposed CWT–GoogLeNet framework effectively addresses the multi-scale feature extraction challenge, demonstrating reliable statistical performance for automated power quality monitoring in modern smart grid applications.


Keywords


power quality, disturbance classification, Wavelet transform, convolutional neural network (CNN).

Full Text:

PDF

Time cited: 0

Download citation



DOI: http://dx.doi.org/10.55579/jaec.2026102.539

Refbacks

  • There are currently no refbacks.


Copyright (c) 2026 Journal of Advanced Engineering and Computation

Creative Commons License
This work is licensed under a Creative Commons Attribution 4.0 International License.


Owner: Ton Duc Thang University. All rights reserved.
License No: 507/GP-BTTTT, issued: 18th November 2016
Contact address: 19, Nguyen Huu Tho Street, Tan Hung Ward, Ho Chi Minh City
Tel: +84-28 3775 5037  Fax: +84-28 3775 5055
Creative Commons License
This work is licensed under a Creative Commons Attribution 4.0 International License.