2024 : 5 : 9
Seyed Mehdi Mousavi

Seyed Mehdi Mousavi

Academic rank: Assistant Professor
ORCID:
Education: PhD.
ScopusId: 36806793700
Faculty: Engineering
Address: Arak University
Phone:

Research

Title
Handbook of Genetic Programming Applications
Type
Book
Keywords
Ground Motion Prediction Equations
Year
2015
Researchers Seyed Mehdi Mousavi ، Alireza Azarbakht bankadeh ، Sahar Sadat Rahpayma

Abstract

An adequate prediction of the expected ground motion intensities plays a fundamental role in practical assessment of seismic hazard analysis. Ground Motion Prediction Equations (GMPE) are known as the most potent elements that conspicuously affect the Seismic Hazard Analysis (SHA). Recently, beside two common traditional methodologies, i.e. empirical and physical relationships, the application of Genetic Programming, as an optimization technique based on the Evolutionary Algorithms (EA), has taken on vast new dimensions. During recent decades, the complexity of obtaining an appropriate predictive model leads to different studies that aim to achieve Genetic Programming-based GMPEs. In this chapter, the concepts, methodologies and results of different studies regarding driving new ground motion relationships based on Genetic Pro-gramming are discussed.