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Usage of joint rating functions for seismic phase association and event location. Asming V.E., Prokudina A.V., Nakhshina L.P. Kola Regional Seismological Centre Russia. MAIN IDEA. When a seismic phase is detected a set of azimuth-dependent rating functions for the phase can be computed :
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Usage of joint rating functions for seismic phase association and event location Asming V.E., Prokudina A.V., Nakhshina L.P. Kola Regional Seismological Centre Russia
MAIN IDEA • When a seismic phase is detected a set of azimuth-dependent rating functions for the phase can be computed : • a) Polarization functions • PP(α) – estimation of hypothesis that the phase is P coming from α; • PS(α) – estimation of hypothesis that the phase is S coming from α; • b) Beamforming (sum of shifted array channels) • B(α,V) – estimation of hypothesis that the phase is coming from α with velocity V • The functions are usually used to determine phase types. • We propose to use combinations of the function for several phases simultaneously to check hypothesis that the phases are of the same seismic event • The approach can be useful for single stations (3C and arrays) as well as for sparse networks
Joint analysis of couples of phases detected at the same station The idea: Detect some phases (say, using STA/LTA) For each couple of phases check a hypothesis that the 1st one is P and the 2nd one is S from the same event. If the estimation is greater than a threshold then locate the event by the backazimuth and S-P time difference Implementation: Joint polarization analysis Joint beamforming Usage some penalties and Bayesian belief networks to take into account recording (envelope) shapes
Joint polarization analysis S P Red line : R(α) is normalized horizontal motion Blue line : Cz(α) is correlation between horizontal and vertical motion Joint estimation for backazimuth α Estimations of phase kinds : PP()=(1 + R())(1+CZ())/4 PS()=(1 + R(+90))(1-CZ(+90))/2 Estimation of the hypothesis that phase A is P and B is S from the same event: where Penalty is some functional dependent on the phases
Joint beamforming for an array Checking the hypothesis that the 1st phase is P and the 2nd one is S from the same event by an array sensors. S P ΔTs = ΔTp·(Vp/Vs) upper layer ΔTp The idea is to make beamforming simultaneously for P and S fragments and use related time delays for P and S.
Joint beamforming for an array The estimation of the hypothesis that the 1st phase (A) is P and the second one (B) is S from the same event coming from the backazimuth α with apparent P velocity Vp is: Where (tA1,tA2) is time interval for P candidate, (tB1,tB2) is for S candidate; Zi(t) : samples of i-th sensor Δti(α,V,Vupper) is time difference between arrivals of a wave coming from backazimuth α with velocity V to the array centre and to i-th sensor. It depends also on upper layer velocity Vupper if we take into account sensors elevations R=Vp upper/Vs upper : P and S velocities ratio under the array If the array includes a 3-component sensor we can multiply JB(α,Vp) by the polarization estimation PPASB(α). The final estimation is Rating(α,Vp)=PPASB(α)·JB(α,Vp)
For the algorithm it is important to know Vp and Vp/Vsunder an array We have selected several events, picked manually P and S phases and computed their compatibility estimations for different variants of Vp upper and (Vp/Vs) upper: Events from North-West. Maximum is not realistic! Vp/Vs~1 ! SPI array, Spitsbergen Storfjorden events. Maximum at Vp=5.5 km/sec and Vp/Vs=1.8 SPI array, Spitsbergen
Joint analysis of couples can screen out non-realistic candidates to be phases Dist to the centre P ampl Phase before P S ampl Centre of envelope P candidate S candidate • Penalties dependent on envelope shape and position of phases inside envelope can be implemented to screen out non-realistic couples. • In this case the following penalties are used to decrease the rating: • Due to presence of a phase before the P candidate; • Due to large time difference between the envelope centre and the S candidate; • Due to huge amplitude ratio of the P and S candidates; • Such penalties and/or rating functions can be combined in a more strict manner using probabilistic approach based on Bayesian belief networks.
An example of Bayesian belief network analyzing couples of phases Linear polarization of 1st phase Yes/No V apparent 1st phase>VpMin Yes/No Is compatible phase before the 1st ? Yes/No Is the 1st phase P-wave ? Yes/No 1st and 2nd phases are compatible by polarization Yes/No 1st and 2nd phases are compatible by joint beamforming Yes/No Is this P-wave of event beginning ? Yes/No Phases are connected in envelope Yes/No The couple is P/S of the same event Yes/No Final decision
Usage of the joint beamforming algorithm for Storfjorden seismicity monitoring (UDL program) Storfjorden is a seismically active zone at distances 100-150 km from SPI array • STA-LTA detector for generalized envelopes; • P and S association in time interval 9-15 sec (to avoid false associations for different events in the same area); GBF UDL Manual analysis has shown that at least 95% of the events are true. Linear slope of the frequency-magnitude curve for M>-0.2 leads us to conclusion that we detect the most part of the events with M>-0.2. SPI data had been processed since 2008
Near real-time Storfjorden monitoring http://www.krsc.ru/storfjorden (since 12.01.2011)
Joint beamforming by a couple of arrays (idea) Location of Zapolyarny explosion by two arrays : AP0 (Apatity) and ARC (Norway). When P onsets are picked the line can be drawn on which the event occurred (P-P). Distances to APA and ARC are about the same (205-210 km) so we can expect apparent velocities at the arrays to be the same.
Example of joint beamforming by couple of phases : S(AP0) and S(ARC) for Zapolyarny explosion X axis : length (L) along S-S line Y axis : apparent velocity (km/sec) (the same for both arrays) Red points : uncertainty area (B>0.99 Bmax) Maximizing function : Where l is length along S-S line, V is apparent velocity, α is backazimuth to an array dependent on l. B is amplitude of an array beam (sum of time-shifted channels) In more complicated cases V apparent can be calculated using travel-time model.
Perspectives of joint data processing • The European Arctic is area with a very sparse seismic network. But huge amount of seismic events with complicated shapes of wave forms occur here. Every known algorithm of detection and location makes a lot of false alarms. It is difficult to obtain a realistic picture of local seismicity. • We suppose to make a new data processing system based on the following principles: • A collection of algorithms where each one estimates probability of some fact (for example, that a part of recording contains an onset, that an onset is P wave, that a part of envelope corresponds to a seismic event etc.). The algorithms could be very different (ordinary STA/LTA, envelope-based, neural networks etc.) but operate with standard data types; • A system that calls the algorithms according to absence or presence of some data types (3C data, array data, envelopes etc.) • A Bayesian belief network that makes a final decision about processed data sets based on results of work of the algorithms (does a data set contain a seismic event or not, are onsets found, what are the waves etc.)