Distribution Transformer Parameters Detection Based on Low-Frequency Noise, Machine Learning Methods, and Evolutionary Algorithm

The paper proposes a method of automatic detection of parameters of a distribution transformer (model, type, and power) from a distance, based on its low-frequency noise spectra. The spectra are registered by sensors and processed by a method based on evolutionary algorithms and machine learning. Th...

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Main Authors: Daniel Jancarczyk, Marcin Bernaś, Tomasz Boczar
Format: Article
Language:English
Published: MDPI AG 2020-08-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/20/15/4332
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spelling doaj-0d5ef90113c04d1b9fe42e951bf392502020-11-25T03:18:42ZengMDPI AGSensors1424-82202020-08-01204332433210.3390/s20154332Distribution Transformer Parameters Detection Based on Low-Frequency Noise, Machine Learning Methods, and Evolutionary AlgorithmDaniel Jancarczyk0Marcin Bernaś1Tomasz Boczar2Department of Computer Science and Automatics, University of Bielsko-Biala, 43-309 Bielsko-Biala, PolandDepartment of Computer Science and Automatics, University of Bielsko-Biala, 43-309 Bielsko-Biala, PolandInstitute of Electric Power Engineering and Renewable Energy, Opole University of Technology, 45-758 Opole, PolandThe paper proposes a method of automatic detection of parameters of a distribution transformer (model, type, and power) from a distance, based on its low-frequency noise spectra. The spectra are registered by sensors and processed by a method based on evolutionary algorithms and machine learning. The method, as input data, uses the frequency spectra of sound pressure levels generated during operation by transformers in the real environment. The model also uses the background characteristic to take under consideration the changing working conditions of the transformers. The method searches for frequency intervals and its resolution using both a classic genetic algorithm and particle swarm optimization. The interval selection was verified using five state-of-the-art machine learning algorithms. The research was conducted on 16 different distribution transformers. As a result, a method was proposed that allows the detection of a specific transformer model, its type, and its power with an accuracy greater than 84%, 99%, and 87%, respectively. The proposed optimization process using the genetic algorithm increased the accuracy by up to 5%, at the same time reducing the input data set significantly (from 80% up to 98%). The machine learning algorithms were selected, which were proven efficient for this task.https://www.mdpi.com/1424-8220/20/15/4332low-frequency sensorpower transformermachine learninglow-frequency noisegenetic algorithm
collection DOAJ
language English
format Article
sources DOAJ
author Daniel Jancarczyk
Marcin Bernaś
Tomasz Boczar
spellingShingle Daniel Jancarczyk
Marcin Bernaś
Tomasz Boczar
Distribution Transformer Parameters Detection Based on Low-Frequency Noise, Machine Learning Methods, and Evolutionary Algorithm
Sensors
low-frequency sensor
power transformer
machine learning
low-frequency noise
genetic algorithm
author_facet Daniel Jancarczyk
Marcin Bernaś
Tomasz Boczar
author_sort Daniel Jancarczyk
title Distribution Transformer Parameters Detection Based on Low-Frequency Noise, Machine Learning Methods, and Evolutionary Algorithm
title_short Distribution Transformer Parameters Detection Based on Low-Frequency Noise, Machine Learning Methods, and Evolutionary Algorithm
title_full Distribution Transformer Parameters Detection Based on Low-Frequency Noise, Machine Learning Methods, and Evolutionary Algorithm
title_fullStr Distribution Transformer Parameters Detection Based on Low-Frequency Noise, Machine Learning Methods, and Evolutionary Algorithm
title_full_unstemmed Distribution Transformer Parameters Detection Based on Low-Frequency Noise, Machine Learning Methods, and Evolutionary Algorithm
title_sort distribution transformer parameters detection based on low-frequency noise, machine learning methods, and evolutionary algorithm
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2020-08-01
description The paper proposes a method of automatic detection of parameters of a distribution transformer (model, type, and power) from a distance, based on its low-frequency noise spectra. The spectra are registered by sensors and processed by a method based on evolutionary algorithms and machine learning. The method, as input data, uses the frequency spectra of sound pressure levels generated during operation by transformers in the real environment. The model also uses the background characteristic to take under consideration the changing working conditions of the transformers. The method searches for frequency intervals and its resolution using both a classic genetic algorithm and particle swarm optimization. The interval selection was verified using five state-of-the-art machine learning algorithms. The research was conducted on 16 different distribution transformers. As a result, a method was proposed that allows the detection of a specific transformer model, its type, and its power with an accuracy greater than 84%, 99%, and 87%, respectively. The proposed optimization process using the genetic algorithm increased the accuracy by up to 5%, at the same time reducing the input data set significantly (from 80% up to 98%). The machine learning algorithms were selected, which were proven efficient for this task.
topic low-frequency sensor
power transformer
machine learning
low-frequency noise
genetic algorithm
url https://www.mdpi.com/1424-8220/20/15/4332
work_keys_str_mv AT danieljancarczyk distributiontransformerparametersdetectionbasedonlowfrequencynoisemachinelearningmethodsandevolutionaryalgorithm
AT marcinbernas distributiontransformerparametersdetectionbasedonlowfrequencynoisemachinelearningmethodsandevolutionaryalgorithm
AT tomaszboczar distributiontransformerparametersdetectionbasedonlowfrequencynoisemachinelearningmethodsandevolutionaryalgorithm
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