Vibration source classification and propagation distance estimation system based on spectrogram and KELM
Earth surface vibration signals source classification and propagation distance estimation attract increasing attention in recent years due to the wide applications in many areas. In this study, the authors develop a hybrid classification and propagation distance estimation algorithm for general eart...
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doaj-e0295762955c430398b021e51327e88c2021-04-02T05:30:29ZengWileyCognitive Computation and Systems2517-75672019-01-0110.1049/ccs.2018.0010CCS.2018.0010Vibration source classification and propagation distance estimation system based on spectrogram and KELMZhiyong Chen0Jiuwen Cao1Dongyun Lin2Dongyun Lin3Jianzhong Wang4Xuegang Huang5Institute of Information and Control, Hangzhou Dianzi UniversityInstitute of Information and Control, Hangzhou Dianzi UniversitySchool of Electrical and Electronic Engineering, Nanyang Technological UniversitySchool of Electrical and Electronic Engineering, Nanyang Technological UniversityInstitute of Information and Control, Hangzhou Dianzi UniversityHypervelocity Aerodynamics Institute, China Aerodynamics Research and Development CenterEarth surface vibration signals source classification and propagation distance estimation attract increasing attention in recent years due to the wide applications in many areas. In this study, the authors develop a hybrid classification and propagation distance estimation algorithm for general earth surface vibration sources. The spectrogram (SPEC) feature characterising the energy distribution of vibrations is first developed for signal representation in this study. The kernel-based extreme learning machine (KELM) algorithm is then adopted for the vibration source classification and propagation distance estimation. Comparing with the conventional approaches, the proposed KELM + SPEC algorithm is not only effective in characterising the time- and frequency-domain features of vibrations, but also superior in accuracy and efficiency. To test the effectiveness of the proposed KELM + SPEC algorithm, experiments on real collected vibration signals are presented, where simulations on both periodic and aperiodic vibrations are carried out in the study. Comparisons to various existing vibration signal extraction and classification algorithms are provided to show the advantages of the proposed KELM + SPEC algorithm.https://digital-library.theiet.org/content/journals/10.1049/ccs.2018.0010signal representationvibrationslearning (artificial intelligence)feature extractionsignal classificationpropagation distance estimation algorithmgeneral earth surface vibration sourceskernel-based extreme learning machine algorithmvibration source classificationkelm + spec algorithmperiodic vibrationsaperiodic vibrationspropagation distance estimation systemhybrid classificationsignal representation |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Zhiyong Chen Jiuwen Cao Dongyun Lin Dongyun Lin Jianzhong Wang Xuegang Huang |
spellingShingle |
Zhiyong Chen Jiuwen Cao Dongyun Lin Dongyun Lin Jianzhong Wang Xuegang Huang Vibration source classification and propagation distance estimation system based on spectrogram and KELM Cognitive Computation and Systems signal representation vibrations learning (artificial intelligence) feature extraction signal classification propagation distance estimation algorithm general earth surface vibration sources kernel-based extreme learning machine algorithm vibration source classification kelm + spec algorithm periodic vibrations aperiodic vibrations propagation distance estimation system hybrid classification signal representation |
author_facet |
Zhiyong Chen Jiuwen Cao Dongyun Lin Dongyun Lin Jianzhong Wang Xuegang Huang |
author_sort |
Zhiyong Chen |
title |
Vibration source classification and propagation distance estimation system based on spectrogram and KELM |
title_short |
Vibration source classification and propagation distance estimation system based on spectrogram and KELM |
title_full |
Vibration source classification and propagation distance estimation system based on spectrogram and KELM |
title_fullStr |
Vibration source classification and propagation distance estimation system based on spectrogram and KELM |
title_full_unstemmed |
Vibration source classification and propagation distance estimation system based on spectrogram and KELM |
title_sort |
vibration source classification and propagation distance estimation system based on spectrogram and kelm |
publisher |
Wiley |
series |
Cognitive Computation and Systems |
issn |
2517-7567 |
publishDate |
2019-01-01 |
description |
Earth surface vibration signals source classification and propagation distance estimation attract increasing attention in recent years due to the wide applications in many areas. In this study, the authors develop a hybrid classification and propagation distance estimation algorithm for general earth surface vibration sources. The spectrogram (SPEC) feature characterising the energy distribution of vibrations is first developed for signal representation in this study. The kernel-based extreme learning machine (KELM) algorithm is then adopted for the vibration source classification and propagation distance estimation. Comparing with the conventional approaches, the proposed KELM + SPEC algorithm is not only effective in characterising the time- and frequency-domain features of vibrations, but also superior in accuracy and efficiency. To test the effectiveness of the proposed KELM + SPEC algorithm, experiments on real collected vibration signals are presented, where simulations on both periodic and aperiodic vibrations are carried out in the study. Comparisons to various existing vibration signal extraction and classification algorithms are provided to show the advantages of the proposed KELM + SPEC algorithm. |
topic |
signal representation vibrations learning (artificial intelligence) feature extraction signal classification propagation distance estimation algorithm general earth surface vibration sources kernel-based extreme learning machine algorithm vibration source classification kelm + spec algorithm periodic vibrations aperiodic vibrations propagation distance estimation system hybrid classification signal representation |
url |
https://digital-library.theiet.org/content/journals/10.1049/ccs.2018.0010 |
work_keys_str_mv |
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