4.7 Article

Conditional probability modeling of intensity measures for offshore mainshock-aftershock sequences

Journal

SOIL DYNAMICS AND EARTHQUAKE ENGINEERING
Volume 161, Issue -, Pages -

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.soildyn.2022.107408

Keywords

Offshore mainshock-aftershock; Intensity measures; TKDE; Bivariate copula; Conditional distribution

Funding

  1. Overseas Expertise Introduction Project for Discipline Innovation [B13002]
  2. National Natural Science Foundation of China [51378050]
  3. Beijing Municipal Natural Science Foundation [8192035]
  4. Science and Technology Research and Development Program of China Railway [P2019G002]

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This paper presents a framework to forecast offshore aftershock intensity measures (IMs) based on offshore mainshock IMs. The proposed bivariate model accurately characterizes the statistical characteristics and dependent structures for offshore mainshock-aftershock IMs, and can be used to estimate the range and probability of occurrence for offshore aftershock IMs.
Offshore structures are typically subjected to offshore mainshock (MS)-aftershock (AS) sequences. The realistic statistical modeling of intensity measures (IMs) for offshore MS-AS sequences is crucial for the seismic risk assessment and optimal design of offshore structures. This paper develops a framework to forecast the AS IMs given the offshore MS IMs. In particular, using the IMs of offshore MS-AS seismic motions selected from the Japan's K-NET seismograph network, the standard kernel density estimation (KDE) and transformation KDE (TKDE) (i.e., logarithmic TKDE (log-TKDE) and square root TKDE (sqrt-TKDE)) are employed to estimate the marginal cumulative distributions (MCDs) of IMs. Several bivariate copulas are used to model the joint proba-bility distributions (JPDs). Furthermore, the copula-based conditional distribution is used to calculate the con-ditional probability for the AS IMs under the conditions of the MS IMs. The results demonstrate the ability of the proposed bivariate model to realistically characterize the statistical characteristic and dependent structures for MS-AS IMs. Finally, given the offshore MS IMs, the copula-based conditional probability can be used to accu-rately estimate the range and probability of occurrence for offshore AS IMs.

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