Počet záznamů: 1  

Single Layer Recurrent Neural Network for detection of swarm-like earthquakes in W-Bohemia/Vogtland - the method

  1. 1.
    SYSNO ASEP0462100
    Druh ASEPJ - Článek v odborném periodiku
    Zařazení RIVJ - Článek v odborném periodiku
    Poddruh JČlánek ve WOS
    NázevSingle Layer Recurrent Neural Network for detection of swarm-like earthquakes in W-Bohemia/Vogtland - the method
    Tvůrce(i) Doubravová, Jana (GFU-E) ORCID, RID
    Wiszniowski, J. (PL)
    Horálek, Josef (GFU-E) ORCID, RID
    Zdroj.dok.Computers and Geosciences. - : Elsevier - ISSN 0098-3004
    Roč. 93, August (2016), s. 138-149
    Poč.str.12 s.
    Forma vydáníTištěná - P
    Jazyk dok.eng - angličtina
    Země vyd.GB - Velká Británie
    Klíč. slovaevent detection ; artificial neural network ; West Bohemia/Vogtland
    Vědní obor RIVDC - Seismologie, vulkanologie a struktura Země
    CEPGAP210/12/2336 GA ČR - Grantová agentura ČR
    LM2010008 GA MŠMT - Ministerstvo školství, mládeže a tělovýchovy
    Institucionální podporaGFU-E - RVO:67985530
    UT WOS000379561600015
    EID SCOPUS84971672812
    DOI10.1016/j.cageo.2016.05.011
    AnotaceIn this paper, we present a new method of local event detection of swarm-like earthquakes based on neural networks. The proposed algorithm uses unique neural network architecture. It combines features used in other neural network concepts such as the Real Time Recurrent Network and Nonlinear Auto regressive Neural Network to achieve good performance of detection. We use the recurrence combined with various delays applied to recurrent inputs so the network remembers history of many samples. This method has been tested on data from a local seismic network in West Bohemia with promising results. We found that phases not picked in training data diminish the detection capability of the neural network and proper preparation of training data is therefore fundamental. To train the network we define a parameter called the learning importance weight of events and show that it affects the number of acceptable solutions achieved by many trials of the Back Propagation Through Time algorithm. We also compare the individual training of stations with training all of them simultaneously, and we conclude that results of joint training are better for some stations than training only one station.
    PracovištěGeofyzikální ústav
    KontaktHana Krejzlíková, kniha@ig.cas.cz, Tel.: 267 103 028
    Rok sběru2017
Počet záznamů: 1  

  Tyto stránky využívají soubory cookies, které usnadňují jejich prohlížení. Další informace o tom jak používáme cookies.