A Data Set of Signals from an Antenna for Detection of Partial Discharges in Overhead Insulated Power Line
Status PubMed-not-MEDLINE Jazyk angličtina Země Velká Británie, Anglie Médium electronic
Typ dokumentu dataset, časopisecké články
Grantová podpora
TN02000025
Technologická Agentura České Republiky (Technological Agency of the Czech Republic)
TN02000025
Technologická Agentura České Republiky (Technological Agency of the Czech Republic)
TN02000025
Technologická Agentura České Republiky (Technological Agency of the Czech Republic)
PubMed
37604884
PubMed Central
PMC10442383
DOI
10.1038/s41597-023-02451-1
PII: 10.1038/s41597-023-02451-1
Knihovny.cz E-zdroje
- Publikační typ
- časopisecké články MeSH
- dataset MeSH
We introduce a data set obtained via a contactless antenna method for detecting partial discharges in XLPE-covered conductors used in medium-voltage overhead power transmission lines. The data set consists of almost three years' worth of data, collected every hour from 9 measuring stations in Czechia and Slovakia. Each sample in the data set represents a single signal gathered for 20 ms. The contactless method is deployed on the same stations as the galvanic contact method, which is used by power distributors and can provide ground truth. Also manually curated data by human expert are present. Successful detection of partial discharges can prevent electricity shutdowns and forest fires resulting from insulation failure due to vegetation contact. The data set is particularly relevant for covered conductors used in mountainous regions where establishing a safe zone is challenging. The contactless method offers advantages such as cheaper and easier installation. The data set has the potential to develop machine learning models to detect partial discharges and facilitate safer and cheaper use of covered conductors.
Department of Computer Science VSB Technical University of Ostrava Ostrava Czech Republic
ENET centre CEET VSB Technical University of Ostrava Ostrava Czech Republic
Zobrazit více v PubMed
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