Features based on instantaneous frequency for seismic signals clustering

Seismic signals discrimination is a multidimensional problem since recorded events may vary in terms of type, location, energy, etc. Recently, two discrimination features based on instantaneous frequency (IF) were proposed by the Authors. The first of these features is determined by distribution of...

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Main Authors: Jakub Sokolowski, Jakub Obuchowski, Maciej Madziarz, Agnieszka Wylomanska, Radosław Zimroz
Format: Article
Language:English
Published: JVE International 2016-05-01
Series:Journal of Vibroengineering
Subjects:
Online Access:https://www.jvejournals.com/article/16823
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spelling doaj-81401f5e1b1f4c2d8ad4354cc521ffdb2020-11-24T23:12:03ZengJVE InternationalJournal of Vibroengineering1392-87162538-84602016-05-011831654166710.21595/jve.2016.1682316823Features based on instantaneous frequency for seismic signals clusteringJakub Sokolowski0Jakub Obuchowski1Maciej Madziarz2Agnieszka Wylomanska3Radosław Zimroz4KGHM CUPRUM Ltd., CBR, Sikorskiego 2-8, 53-659 Wrocław, PolandKGHM CUPRUM Ltd., CBR, Sikorskiego 2-8, 53-659 Wrocław, PolandKGHM CUPRUM Ltd., CBR, Sikorskiego 2-8, 53-659 Wrocław, PolandFaculty of Pure and Applied Mathematics, Hugo Steinhaus Center, Wroclaw University of Technology, Wybrzeze Wyspianskiego, 50-370 Wroclaw, PolandKGHM CUPRUM Ltd., CBR, Sikorskiego 2-8, 53-659 Wrocław, PolandSeismic signals discrimination is a multidimensional problem since recorded events may vary in terms of type, location, energy, etc. Recently, two discrimination features based on instantaneous frequency (IF) were proposed by the Authors. The first of these features is determined by distribution of the signals’ first Intrinsic Mode Function’s (IMF) IF. The second one is a particular simplification of the previous one as it gives information about the most frequently occurring instantaneous frequency in the considered first IMF. In order to exhibit features’ potential in distinguishing of seismic vibration signals, one has to use clustering algorithms. The features were already subjected to k-means algorithm. In this paper we show results of agglomerative hierarchical clustering (AHCA) and compare it with outcomes of k-means. In order to test optimal number of clusters, method based on average silhouette was accomplished. The results are illustrated by analysis of real seismic vibration signals from an underground copper ore mine.https://www.jvejournals.com/article/16823seismic signals discriminationinstantaneous frequencyseismic signals clusteringrobustness analysis
collection DOAJ
language English
format Article
sources DOAJ
author Jakub Sokolowski
Jakub Obuchowski
Maciej Madziarz
Agnieszka Wylomanska
Radosław Zimroz
spellingShingle Jakub Sokolowski
Jakub Obuchowski
Maciej Madziarz
Agnieszka Wylomanska
Radosław Zimroz
Features based on instantaneous frequency for seismic signals clustering
Journal of Vibroengineering
seismic signals discrimination
instantaneous frequency
seismic signals clustering
robustness analysis
author_facet Jakub Sokolowski
Jakub Obuchowski
Maciej Madziarz
Agnieszka Wylomanska
Radosław Zimroz
author_sort Jakub Sokolowski
title Features based on instantaneous frequency for seismic signals clustering
title_short Features based on instantaneous frequency for seismic signals clustering
title_full Features based on instantaneous frequency for seismic signals clustering
title_fullStr Features based on instantaneous frequency for seismic signals clustering
title_full_unstemmed Features based on instantaneous frequency for seismic signals clustering
title_sort features based on instantaneous frequency for seismic signals clustering
publisher JVE International
series Journal of Vibroengineering
issn 1392-8716
2538-8460
publishDate 2016-05-01
description Seismic signals discrimination is a multidimensional problem since recorded events may vary in terms of type, location, energy, etc. Recently, two discrimination features based on instantaneous frequency (IF) were proposed by the Authors. The first of these features is determined by distribution of the signals’ first Intrinsic Mode Function’s (IMF) IF. The second one is a particular simplification of the previous one as it gives information about the most frequently occurring instantaneous frequency in the considered first IMF. In order to exhibit features’ potential in distinguishing of seismic vibration signals, one has to use clustering algorithms. The features were already subjected to k-means algorithm. In this paper we show results of agglomerative hierarchical clustering (AHCA) and compare it with outcomes of k-means. In order to test optimal number of clusters, method based on average silhouette was accomplished. The results are illustrated by analysis of real seismic vibration signals from an underground copper ore mine.
topic seismic signals discrimination
instantaneous frequency
seismic signals clustering
robustness analysis
url https://www.jvejournals.com/article/16823
work_keys_str_mv AT jakubsokolowski featuresbasedoninstantaneousfrequencyforseismicsignalsclustering
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AT maciejmadziarz featuresbasedoninstantaneousfrequencyforseismicsignalsclustering
AT agnieszkawylomanska featuresbasedoninstantaneousfrequencyforseismicsignalsclustering
AT radosławzimroz featuresbasedoninstantaneousfrequencyforseismicsignalsclustering
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