2024 : 11 : 21
Azad Yazdani

Azad Yazdani

Academic rank: Professor
ORCID:
Education: PhD.
ScopusId: 7004218797
HIndex:
Faculty: Faculty of Engineering
Address:
Phone: +98-87-33668457

Research

Title
Merging data and experts’ knowledge-based weights for ranking GMPEs
Type
JournalPaper
Keywords
Experts, data-driven, Bayes factors, ground motion prediction equations, ranking, weighting
Year
2021
Journal EARTHQUAKE SPECTRA
DOI
Researchers Azad Yazdani ، Mohammad Sadegh Shahidzadeh ، Tsuyoshi Takada

Abstract

In this paper, Bayes Factors (BFs) are used for selecting and weighting the ground motion prediction equations (GMPEs). BFs are defined as the posterior probability of a model being the best model describing data. The Bayesian framework allows for merging information gathered from available seismic data and the experts’ opinion thus allowing for a bridge between data-driven and non-data-driven methods. A multi-dimensional likelihood function is used to account for earthquake-to-earthquake and record-to-record variability. A study is performed to identify the effects of model uncertainty and dataset variations on Bayesian weights by using simulated data. It was found that for a given median prediction, by increasing standard deviation the relative weights increase until it reaches a maximum and then start to decrease. The standard deviation corresponding to the maximum weights corresponds to the scatter of data used for calculating the weights. The method was applied to a local region with nine preselected local and regional GMPEs. The ranking, selection and weighting is performed using a local dataset and the results are compared with four available ranking methods. While various methods may yield similar or different ranking results, the proposed method is the only one that provides scientific means of selecting appropriate models from a set of initially selected GMPEs.