Artificial Neural Networks for Seismic Data Interpretation

This is the second Semiannual Technical Summary of the MIT Lincoln Laboratory Artificial Neural Networks for Seismic Data Interpretation project. The effort during this period has concentrated upon phase labeling and event recognition networks for use in the DARPA/NMRO Intelligent Monitoring System...

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Main Authors: Lacoss, Richard T., Cunningham, Robert K., Curtis, Susan R., Seibert, Michael C.
Other Authors: MASSACHUSETTS INST OF TECH LEXINGTON LINCOLN LAB
Format: Text
Language:English
Published: 1991
Subjects:
Online Access:http://www.dtic.mil/docs/citations/ADA245006
http://oai.dtic.mil/oai/oai?&verb=getRecord&metadataPrefix=html&identifier=ADA245006
id ftdtic:ADA245006
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spelling ftdtic:ADA245006 2023-05-15T17:05:00+02:00 Artificial Neural Networks for Seismic Data Interpretation Lacoss, Richard T. Cunningham, Robert K. Curtis, Susan R. Seibert, Michael C. MASSACHUSETTS INST OF TECH LEXINGTON LINCOLN LAB 1991-06-30 text/html http://www.dtic.mil/docs/citations/ADA245006 http://oai.dtic.mil/oai/oai?&verb=getRecord&metadataPrefix=html&identifier=ADA245006 en eng http://www.dtic.mil/docs/citations/ADA245006 Approved for public release; distribution is unlimited. Document partially illegible. DTIC AND NTIS Information Science Seismology Computer Systems *DATA BASES *NEURAL NETS *SEISMIC DATA NETWORKS WAVEFORMS SIGNALS CLASSIFICATION RECOGNITION EXPERT SYSTEMS EARTHQUAKES SURVEILLANCE PERCEPTION MONITORING USSR PENINSULAS DATA PROCESSING PARAMETRIC ANALYSIS LABELS IMS(INTELLIGENT MONITORING SYSTEM) PE61101E Text 1991 ftdtic 2016-02-22T15:28:31Z This is the second Semiannual Technical Summary of the MIT Lincoln Laboratory Artificial Neural Networks for Seismic Data Interpretation project. The effort during this period has concentrated upon phase labeling and event recognition networks for use in the DARPA/NMRO Intelligent Monitoring System (IMS) for seismic surveillance. Perception networks were developed with standard IMS parameters as inputs, improving upon the phase labeling performance of the expert IMS. These networks were developed and tested using data sets containing 5,000 to 10,000 arrivals. An initial version of the expert system achieved a 79% success rate compared with 86% for the neural network. A more recent and improved version of the expert system achieved rates of 87% compared with 90% for an updated neural network. Phase labeling experiments with sonograms and three-component autoregressive modeling for signal representation did not lead to further improvement. Two event labeling experiments were carried out using three-component autoregressive signal models with Radial Basis Function classification networks and involved on the order of 200 events. Success rates were 96.6% for an earthquake/nonearthquake classification experiment and 91% for a Kola Peninsula event recognition experiment. These results, using only autoregressive waveform representations, are encouraging but very preliminary. Text kola peninsula Defense Technical Information Center: DTIC Technical Reports database Kola Peninsula
institution Open Polar
collection Defense Technical Information Center: DTIC Technical Reports database
op_collection_id ftdtic
language English
topic Information Science
Seismology
Computer Systems
*DATA BASES
*NEURAL NETS
*SEISMIC DATA
NETWORKS
WAVEFORMS
SIGNALS
CLASSIFICATION
RECOGNITION
EXPERT SYSTEMS
EARTHQUAKES
SURVEILLANCE
PERCEPTION
MONITORING
USSR
PENINSULAS
DATA PROCESSING
PARAMETRIC ANALYSIS
LABELS
IMS(INTELLIGENT MONITORING SYSTEM)
PE61101E
spellingShingle Information Science
Seismology
Computer Systems
*DATA BASES
*NEURAL NETS
*SEISMIC DATA
NETWORKS
WAVEFORMS
SIGNALS
CLASSIFICATION
RECOGNITION
EXPERT SYSTEMS
EARTHQUAKES
SURVEILLANCE
PERCEPTION
MONITORING
USSR
PENINSULAS
DATA PROCESSING
PARAMETRIC ANALYSIS
LABELS
IMS(INTELLIGENT MONITORING SYSTEM)
PE61101E
Lacoss, Richard T.
Cunningham, Robert K.
Curtis, Susan R.
Seibert, Michael C.
Artificial Neural Networks for Seismic Data Interpretation
topic_facet Information Science
Seismology
Computer Systems
*DATA BASES
*NEURAL NETS
*SEISMIC DATA
NETWORKS
WAVEFORMS
SIGNALS
CLASSIFICATION
RECOGNITION
EXPERT SYSTEMS
EARTHQUAKES
SURVEILLANCE
PERCEPTION
MONITORING
USSR
PENINSULAS
DATA PROCESSING
PARAMETRIC ANALYSIS
LABELS
IMS(INTELLIGENT MONITORING SYSTEM)
PE61101E
description This is the second Semiannual Technical Summary of the MIT Lincoln Laboratory Artificial Neural Networks for Seismic Data Interpretation project. The effort during this period has concentrated upon phase labeling and event recognition networks for use in the DARPA/NMRO Intelligent Monitoring System (IMS) for seismic surveillance. Perception networks were developed with standard IMS parameters as inputs, improving upon the phase labeling performance of the expert IMS. These networks were developed and tested using data sets containing 5,000 to 10,000 arrivals. An initial version of the expert system achieved a 79% success rate compared with 86% for the neural network. A more recent and improved version of the expert system achieved rates of 87% compared with 90% for an updated neural network. Phase labeling experiments with sonograms and three-component autoregressive modeling for signal representation did not lead to further improvement. Two event labeling experiments were carried out using three-component autoregressive signal models with Radial Basis Function classification networks and involved on the order of 200 events. Success rates were 96.6% for an earthquake/nonearthquake classification experiment and 91% for a Kola Peninsula event recognition experiment. These results, using only autoregressive waveform representations, are encouraging but very preliminary.
author2 MASSACHUSETTS INST OF TECH LEXINGTON LINCOLN LAB
format Text
author Lacoss, Richard T.
Cunningham, Robert K.
Curtis, Susan R.
Seibert, Michael C.
author_facet Lacoss, Richard T.
Cunningham, Robert K.
Curtis, Susan R.
Seibert, Michael C.
author_sort Lacoss, Richard T.
title Artificial Neural Networks for Seismic Data Interpretation
title_short Artificial Neural Networks for Seismic Data Interpretation
title_full Artificial Neural Networks for Seismic Data Interpretation
title_fullStr Artificial Neural Networks for Seismic Data Interpretation
title_full_unstemmed Artificial Neural Networks for Seismic Data Interpretation
title_sort artificial neural networks for seismic data interpretation
publishDate 1991
url http://www.dtic.mil/docs/citations/ADA245006
http://oai.dtic.mil/oai/oai?&verb=getRecord&metadataPrefix=html&identifier=ADA245006
geographic Kola Peninsula
geographic_facet Kola Peninsula
genre kola peninsula
genre_facet kola peninsula
op_source DTIC AND NTIS
op_relation http://www.dtic.mil/docs/citations/ADA245006
op_rights Approved for public release; distribution is unlimited. Document partially illegible.
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