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Main Authors: Pecha, Marek, Skotnica, Michael, Rušajová, Jana, Rieznikov, Bohdan, Wandrol, Vít, Rösnerová, Markéta, Knejzlík, Jaromír
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2509.22574
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author Pecha, Marek
Skotnica, Michael
Rušajová, Jana
Rieznikov, Bohdan
Wandrol, Vít
Rösnerová, Markéta
Knejzlík, Jaromír
author_facet Pecha, Marek
Skotnica, Michael
Rušajová, Jana
Rieznikov, Bohdan
Wandrol, Vít
Rösnerová, Markéta
Knejzlík, Jaromír
contents The northeastern region of the Czech Republic is among the most seismically active areas in the country. The most frequent seismic events are mining-induced since there used to be strong mining activity in the past. However, natural tectonic events may also occur. In addition, seismic stations often record explosions in quarries in the region. Despite the cessation of mining activities, mine-induced seismic events still occur. Therefore, a rapid differentiation between tectonic and anthropogenic events is still important. The region is currently monitored by the OKC seismic station in Ostrava-Krásné Pole built in 1983 which is a part of the Czech Regional Seismic Network. The station has been providing digital continuous waveform data at 100 Hz since 2007. In the years 1992--2002, the region was co-monitored by the Seismic Polygon Frenštát (SPF) which consisted of five seismic stations using a triggered STA/LTA system. In this study, we apply and compare machine learning methods to the SPF dataset, which contains labeled records of tectonic and mining-induced events. For binary classification, a Long Short-Term Memory recurrent neural network and XGBoost achieved an F1-score of 0.94 -- 0.95, demonstrating the potential of modern machine learning techniques for rapid event characterization.
format Preprint
id arxiv_https___arxiv_org_abs_2509_22574
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Machine learning approaches to seismic event classification in the Ostrava region
Pecha, Marek
Skotnica, Michael
Rušajová, Jana
Rieznikov, Bohdan
Wandrol, Vít
Rösnerová, Markéta
Knejzlík, Jaromír
Machine Learning
The northeastern region of the Czech Republic is among the most seismically active areas in the country. The most frequent seismic events are mining-induced since there used to be strong mining activity in the past. However, natural tectonic events may also occur. In addition, seismic stations often record explosions in quarries in the region. Despite the cessation of mining activities, mine-induced seismic events still occur. Therefore, a rapid differentiation between tectonic and anthropogenic events is still important. The region is currently monitored by the OKC seismic station in Ostrava-Krásné Pole built in 1983 which is a part of the Czech Regional Seismic Network. The station has been providing digital continuous waveform data at 100 Hz since 2007. In the years 1992--2002, the region was co-monitored by the Seismic Polygon Frenštát (SPF) which consisted of five seismic stations using a triggered STA/LTA system. In this study, we apply and compare machine learning methods to the SPF dataset, which contains labeled records of tectonic and mining-induced events. For binary classification, a Long Short-Term Memory recurrent neural network and XGBoost achieved an F1-score of 0.94 -- 0.95, demonstrating the potential of modern machine learning techniques for rapid event characterization.
title Machine learning approaches to seismic event classification in the Ostrava region
topic Machine Learning
url https://arxiv.org/abs/2509.22574