Statistical modeling of ground motion relations for seismic hazard analysis
Mathias Raschke

TL;DR
This paper proposes a novel statistical approach for ground motion relations in seismic hazard analysis, emphasizing the importance of area-equivalence and correct distribution assumptions to improve hazard estimates.
Contribution
It introduces a new area-equivalence principle, critiques traditional distribution assumptions, and offers an event-specific GMR estimation method for more accurate seismic hazard analysis.
Findings
Residual variance of PGA is significantly reduced.
Event-specific GMRs outperform previous models.
Distribution assumptions impact hazard estimates.
Abstract
We introduce a new approach for ground motion relations (GMR) in the probabilistic seismic hazard analysis (PSHA), being influenced by the extreme value theory of mathematical statistics. Therein, we understand a GMR as a random function. We derive mathematically the principle of area-equivalence; wherein two alternative GMRs have an equivalent influence on the hazard if these GMRs have equivalent area functions. This includes local biases. An interpretation of the difference between these GMRs (an actual and a modeled one) as a random component leads to a general overestimation of residual variance and hazard. Beside this, we discuss important aspects of classical approaches and discover discrepancies with the state of the art of stochastics and statistics (model selection and significance, test of distribution assumptions, extreme value statistics). We criticize especially the…
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