Some General Implications of Results Because hazard estimates at a point are often dominated by one or a few faults, an important metric is the participation.

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Presentation transcript:

Some General Implications of Results Because hazard estimates at a point are often dominated by one or a few faults, an important metric is the participation MFD for each fault (we aggregate results from our ~2,000 subsections back onto the ~315 parent sections to keep things manageable). Fault-section MFD plots over all Char logic-tree branches are available here: sample-x5_run0/parent_sect_mfds/ sample- x5_run0/parent_sect_mfds/cumulative_nucleation_mfd_comparisons.csv Some examples…

Mean & +/- StdevOfMean +/- Stdev Min & Max Cumulative Mean Participation MFD for 100 simulated annealing runs for the same branch and same equation set weights

Mean & +/- StdevOfMean +/- Stdev Min & Max Cumulative Mean

Mean, Min, and Max from all logic-tree branches UCERF3 Mean UCERF3 Mean Cumulative UCERF2

Mean from all logic- tree branches Participation vs Nucleation

Mean, Min, and Max from all logic-tree branches UCERF3 Mean UCERF3 Mean Cumulative UCERF2

Mean, Min, and Max from all logic-tree branches UCERF3 Mean UCERF3 Mean Cumulative UCERF2

Other Aggregate Metrics (ERF based) Not Yet Computed (1,440 takes time)

Hazard Map Comparisons NSHMP Fortran code OpenSHA code NSHMP 2008 (UCERF2)

Building-Code Implications via Risk Targeted Ground Motions (RTGM) Figure 30. Comparison of probabilistic risk- targeted ground motions for 0.2-sec spectral acceleration at three California cities. In each plot the dark blue bins represent the summed weights of different RTGM values across the 480 UCERF2 time-dependent, logic-tree branches. The green Line represents the average UCERF2 value, the orange line represents the official values from the US Seismic Design Maps, ( ) and the four lines labeled “U3 …” represent UCERF3 Characteristic reference branches for all four deformation models. The RTGM values were computed using the weighted combination of the three Next Generation Attenuation relationships (NGAs) that were used in the 2008 NSHMP. Mean UCERF2 values are generally lower than the US Design Map RTGM because the former does not consider additional epistemic uncertainty on ground motion that was included in the 2008 NSHMP.

Statewide Portfolio Loss Analyses (Porter et al., in press in SRL) OpenSHA

UCERF2 EAL tornado diagram

UCERF3 Char Branch UCERF2 EAL tornado diagram This capability will allow us to potentially trim non-important branches, plus accommodate those that remain.

What about aftershocks? NSHMP has removed aftershocks using the Gardner-Knopoff declustering algorithm (Gardner and Knopoff, 1974). For our RELM region, 56% of M>5 events are main shocks and 44% are aftershocks according to this definition ( Felzer, Appendix I ) GR b-value is 0.8 for declustered catalog (compared to 1.0). We can apply this “filter” to UCERF3 ERFs

Now Some Hazard Implications – Peter Powers