Improved Fault Classification and Localization in Power Transmission Networks Using VAE-Generated Synthetic Data and Machine Learning Algorithms

被引:13
作者
Khan, Muhammad Amir [1 ]
Asad, Bilal [1 ,2 ]
Vaimann, Toomas [2 ]
Kallaste, Ants [2 ]
Pomarnacki, Raimondas [3 ]
Hyunh, Van Khang [4 ]
机构
[1] Islamia Univ Bahawalpur, Dept Elect Power Engn, Bahawalpur 63100, Pakistan
[2] Tallinn Univ Technol, Dept Elect Power Engn & Mechatron, EE-19086 Tallinn, Estonia
[3] Vilnius Gediminas Tech Univ, Dept Elect Syst, LT-10105 Vilnius, Lithuania
[4] Univ Agder, Dept Engn Sci, N-4879 Grimstad, Norway
关键词
electrical power systems; support vector machines; random forest; machine learning; wavelet transform; transmission lines fault; electrical power quality; short circuit; classification of faults; localization of faults; decision trees; ensemble learning; k-nearest neighbors; FEATURE-EXTRACTION; PROTECTION SCHEME; LOCATION; DIAGNOSIS;
D O I
10.3390/machines11100963
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
The reliable operation of power transmission networks depends on the timely detection and localization of faults. Fault classification and localization in electricity transmission networks can be challenging because of the complicated and dynamic nature of the system. In recent years, a variety of machine learning (ML) and deep learning algorithms (DL) have found applications in the enhancement of fault identification and classification within power transmission networks. Yet, the efficacy of these ML architectures is profoundly dependent upon the abundance and quality of the training data. This intellectual explanation introduces an innovative strategy for the classification and pinpointing of faults within power transmission networks. This is achieved through the utilization of variational autoencoders (VAEs) to generate synthetic data, which in turn is harnessed in conjunction with ML algorithms. This approach encompasses the augmentation of the available dataset by infusing it with synthetically generated instances, contributing to a more robust and proficient fault recognition and categorization system. Specifically, we train the VAE on a set of real-world power transmission data and generate synthetic fault data that capture the statistical properties of real-world data. To overcome the difficulty of fault diagnosis methodology in three-phase high voltage transmission networks, a categorical boosting (Cat-Boost) algorithm is proposed in this work. The other standard machine learning algorithms recommended for this study, including Support Vector Machine (SVM), Decision Trees (DT), Random Forest (RF), and K-Nearest Neighbors (KNN), utilizing the customized version of forward feature selection (FFS), were trained using synthetic data generated by a VAE. The results indicate exceptional performance, surpassing current state-of-the-art techniques, in the tasks of fault classification and localization. Notably, our approach achieves a remarkable 99% accuracy in fault classification and an extremely low mean absolute error (MAE) of 0.2 in fault localization. These outcomes represent a notable advancement compared to the most effective existing baseline methods.
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页数:22
相关论文
共 44 条
[1]   Examining the Size of the Latent Space of Convolutional Variational Autoencoders Trained With Spectral Topographic Maps of EEG Frequency Bands [J].
Ahmed, Taufique ;
Longo, Luca .
IEEE ACCESS, 2022, 10 :107575-107586
[2]   Fault Detection and Classification in Transmission Lines Connected to Inverter-Based Generators Using Machine Learning [J].
Al Kharusi, Khalfan ;
El Haffar, Abdelsalam ;
Mesbah, Mostefa .
ENERGIES, 2022, 15 (15)
[3]   ICA feature extraction for the location and classification of faults in high-voltage transmission lines [J].
Almeida, A. R. ;
Almeida, O. M. ;
Junior, B. F. S. ;
Barreto, L. H. S. C. ;
Barros, A. K. .
ELECTRIC POWER SYSTEMS RESEARCH, 2017, 148 :254-263
[4]   Assessment of groundwater potential modeling using support vector machine optimization based on Bayesian multi-objective hyperparameter algorithm [J].
Anh, Duong Tran ;
Pandey, Manish ;
Mishra, Varun Narayan ;
Singh, Kiran Kumari ;
Ahmadi, Kourosh ;
Janizadeh, Saeid ;
Tran, Thanh Thai ;
Linh, Nguyen Thi Thuy ;
Dang, Nguyen Mai .
APPLIED SOFT COMPUTING, 2023, 132
[5]   Random Forest Based Fault Classification Technique for Active Power System Networks [J].
Chakraborty, Debosmita ;
Sur, Ujjal ;
Banerjee, Pradipta Kumar .
2019 5TH IEEE INTERNATIONAL WIE CONFERENCE ON ELECTRICAL AND COMPUTER ENGINEERING (WIECON-ECE 2019), 2019,
[6]   Fault detection, classification and location for transmission lines and distribution systems: a review on the methods [J].
Chen, Kunjin ;
Huang, Caowei ;
He, Jinliang .
HIGH VOLTAGE, 2016, 1 (01) :25-33
[7]   Combined Fault Location and Classification for Power Transmission Lines Fault Diagnosis With Integrated Feature Extraction [J].
Chen, Yann Qi ;
Fink, Olga ;
Sansavini, Giovanni .
IEEE TRANSACTIONS ON INDUSTRIAL ELECTRONICS, 2018, 65 (01) :561-569
[8]   The advantages of the Matthews correlation coefficient (MCC) over F1 score and accuracy in binary classification evaluation [J].
Chicco, Davide ;
Jurman, Giuseppe .
BMC GENOMICS, 2020, 21 (01)
[9]   Fault Location after Fault Classification in Transmission Line Using Voltage Amplitudes and Support Vector Machine [J].
Chunguo Fei ;
Junjie Qin .
Russian Electrical Engineering, 2021, 92 (2) :112-121
[10]  
Daniya T., 2020, Adv. Math., V9, P8237, DOI [DOI 10.37418/AMSJ.9.10.53, 10.37418/amsj.9.10.53]