Convolutional neural network and long-short term memory based for identification and classification of power system events

Purnomo, Mauridhi Hery and Mahindara, Vincentius Raki and Wijanarko, Rahmat Fabrianto and Gumelar, Agustinus Bimo and Wijayanto, Feri and Nurdiansyah, Yanuar Convolutional neural network and long-short term memory based for identification and classification of power system events. Proceedings of the Pakistan Academy of Sciences: Part A, 58 (S). pp. 37-48. ISSN 25184245

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Abstract

In this present era, power system delivery has to be reliable and sustainable. The growth of demands increasing the complexity of the power system operations. An interrupted power supply must not occur for any reason. Hence, the improvement of the controller and protection devices is mandatory. One of the unnecessary interruptions in the power system is a false trip due to the incorrect setting of the protection devices. Therefore, a method to classify the symptom of the power system based on the voltage, current, and frequency measurements is required. However, since there are a ton of maneuver options and fault types, the number of data becomes complex, enormous, and irregular. This is where deep learning takes place. This paper proposed the use of Convolutional Neural Networks (CNN) combined with Long-Short Term Memory (LSTM) to recognize the categorize the type of events in a medium voltage power distribution network. As CNN's models are great at decreasing frequency variation, LSTM is great for temporal modeling, we take benefit of CNN's and LSTM's complementarity in this study by integrating it into a unified architecture. The simulation results indicate that CNN and LSTM can recognize the symptoms in power system operation with accuracy up to 79 % with a total epoch 350.

Item Type: Article
Uncontrolled Keywords: Artificial Intelligence-based Model, Deep Learning Algorithm, Electrical Protection System, Energy Efficiency, Sustainable Power System
Subjects: Bidang Keilmuan > Data Science
Bidang Keilmuan > Electrical Engineering
Jurnal
Bidang Keilmuan > Neural Network
Bidang Keilmuan > Power Systems
Bidang Keilmuan > Teknik Elektro
Divisions: Fakultas Ketenagalistrikan dan Energi Terbarukan > S1 Teknik Elektro
Depositing User: Yudha Formanto
Date Deposited: 05 Feb 2026 08:14
Last Modified: 05 Feb 2026 08:14
URI: https://repository.itpln.ac.id/id/eprint/4944

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