1 / 33

Vertically Integrated Seismic Analysis

Vertically Integrated Seismic Analysis. Outline. Seismic event monitoring as probabilistic inference Vertically integrated probability models … Connect events to sensor data and everything in between Associate events and detections optimally Automatically take nondetections into account

Télécharger la présentation

Vertically Integrated Seismic Analysis

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Vertically Integrated Seismic Analysis

  2. Outline • Seismic event monitoring as probabilistic inference • Vertically integrated probability models … • Connect events to sensor data and everything in between • Associate events and detections optimally • Automatically take nondetections into account • May improve low-amplitude detection and noise rejection • Inference using MCMC (poster) • Empirical estimation of model components • Preliminary experimental results

  3. Bayesian model-based learning • Generative approach • P(world) describes prior over what is (source), also over model parameters, structure • P(signal | world) describes sensor model (channel) • Given new signal, compute P(world | signal) ~ P(signal | world) P(world) • Learning • Adapt model parameters or structure to improve fit • Operates continuously as data are acquired and analyzed • Substantial recent advances in modeling capabilities, general-purpose inference algorithms

  4. Generative model for IDC arrival data • Events occur in time and space with magnitude • Natural spatial distribution a mixture of Fisher-Binghams • Man-made spatial distribution uniform • Time distribution Poisson with given spatial intensity • Magnitude distribution Gutenberg-Richter • Aftershock distribution (not yet implemented) • Travel time according to IASPEI91 model+corrections • Detection depends on magnitude, distance, station* • Detected azimuth, slowness w/ empirical residuals • False detections with station-dependent distribution

  5. Generative structure Station 1 picks Station 2 picks Seismic event Seismic event Travel times Travel times Detected at Station 1? Detected at Station 2? Station 1 noise Station 2 noise

  6. Inference • MCMC (Markov chain Monte Carlo) (see poster S31B-1713 for details) • Efficient sampling of hypothetical worlds (events, travel times, detections, noise, etc.) • Converges to true posterior given evidence • Key point: computing posterior probabilities takes the algorithm off the table; to get better answers, either • Improve the model, or • Add more sensors

  7. Vertical integration: Detection • Basic idea: analyzing each signal separately throws away information. • Multiple weak signals are mutually reinforcing via a higher-level hypothesis • Multiple missing signals indicate that other “detections” may be coincidental noise • Simple example: K sensors record either • Independent noise drawn from N[0,1] • Common signal drawn from N[0,1-] + independent N[0,] noise • Separate detectors fail completely! • Joint detection succeeds w.p. 1 as   0 or K   • Travel time accuracy affects detection capability!

  8. STA/LTA Threshold

  9. Outline • Seismic event monitoring as probabilistic inference • Vertically integrated probability models … • Connect events to sensor data and everything in between • Associate events and detections optimally • Automatically take nondetections into account • May improve low-amplitude detection and noise rejection • Inference using MCMC (poster) • Empirical estimation of model components • Preliminary experimental results

  10. Generative structure Station 1 picks Station 2 picks Seismic event Seismic event Travel times Travel times Detected at Station 1? Detected at Station 2? Station 1 noise Station 2 noise

  11. Generative structure Station 1 picks Station 2 picks Seismic event Seismic event Travel times Travel times Detected at Station 1? Detected at Station 2? Station 1 noise Station 2 noise

  12. Generative structure Station 1 picks Station 2 picks Seismic event Seismic event Travel times Travel times Detected at Station 1? Detected at Station 2? Station 1 noise Station 2 noise

  13. Overall Pick Error

  14. WRA Pick Error

  15. Overall IASPEI Error

  16. WRA - IASPEI Error

  17. Generative structure Station 1 picks Station 2 picks Seismic event Seismic event Travel times Travel times Detected at Station 1? Detected at Station 2? Station 1 noise Station 2 noise

  18. Overall Azimuth Error

  19. WRA - Azimuth Error

  20. Generative structure Station 1 picks Station 2 picks Seismic event Seismic event Travel times Travel times Detected at Station 1? Detected at Station 2? Station 1 noise Station 2 noise

  21. Analyzing Performance • Min-cost max-cardinality matching where edges exist between prediction and ground truth events within 50 seconds and 5 degrees. • Precision – percentage of predictions that match. • Recall – percentage of ground truths that match. • F1 – harmonic mean of precision and recall. • Error – average distance between matching events. (Cost of matching / size of matching)

  22. Evaluation vs LEB (human experts)

  23. INFERENCE EXAMPLE

  24. Summary • Vertically integrated probability models • Connect events, transmission, detection, association • Information flows in all directions, reinforcing or rejecting local hypotheses to form a global solution • Better travel time model => better signal detection • Nondetections automatically play a role • Local sensor models calibrated continuously with no need for ground truth • May give more reliable detection and localization of lower-magnitude events

  25. Ongoing Work • More sophisticated MCMC design • Add more phases and phase relabeling • Extend model all the way down to waveforms • Evaluation using data from high-density networks (Japan Meteorological Agency, some regions within ISC data)

More Related