Development of an alternative PSO‐based algorithm for simulation of endurance time excitation functions

This paper presents a particle swarm optimizer for production of endurance time excitation functions (ETEFs). These excitations are intensifying acceleration time histories that are used as input motions in endurance time (ET) method. The accuracy of the ET methods heavily depends on the accuracy of...

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Main Authors: Mohammadreza Mashayekhi, Mojtaba Harati, Homayoon E. Estekanchi
Format: Article
Language:English
Published: Wiley 2019-10-01
Series:Engineering Reports
Subjects:
Online Access:https://doi.org/10.1002/eng2.12048
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spelling doaj-e70f2d06a7bc4ec481f9ea0f7f2bb7ea2020-11-25T02:48:03ZengWileyEngineering Reports2577-81962019-10-0113n/an/a10.1002/eng2.12048Development of an alternative PSO‐based algorithm for simulation of endurance time excitation functionsMohammadreza Mashayekhi0Mojtaba Harati1Homayoon E. Estekanchi2Department of Civil Engineering Sharif University of Technology Tehran IranDepartment of Civil Engineering University of Science and Culture Rasht IranDepartment of Civil Engineering Sharif University of Technology Tehran IranThis paper presents a particle swarm optimizer for production of endurance time excitation functions (ETEFs). These excitations are intensifying acceleration time histories that are used as input motions in endurance time (ET) method. The accuracy of the ET methods heavily depends on the accuracy of ET excitations. Unconstrained nonlinear optimization is employed to simulate these excitations. Particle swarm optimization (PSO) method as an evolutionary algorithm is examined in this paper to achieve a more accurate ETEF, where optimal parameters of the PSO are first determined using a parametric study on the involved variables. The proposed method is verified and compared with the trust‐region‐reflective method as a classical optimization method and imperialist competitive algorithm as a recently developed evolutionary method. Results show that the proposed method leads to more accurate ET excitations.https://doi.org/10.1002/eng2.12048classical optimization methodsdiscrete wavelet transformdynamic analysisendurance time methodimperialist competitive algorithmparticle swarm optimization
collection DOAJ
language English
format Article
sources DOAJ
author Mohammadreza Mashayekhi
Mojtaba Harati
Homayoon E. Estekanchi
spellingShingle Mohammadreza Mashayekhi
Mojtaba Harati
Homayoon E. Estekanchi
Development of an alternative PSO‐based algorithm for simulation of endurance time excitation functions
Engineering Reports
classical optimization methods
discrete wavelet transform
dynamic analysis
endurance time method
imperialist competitive algorithm
particle swarm optimization
author_facet Mohammadreza Mashayekhi
Mojtaba Harati
Homayoon E. Estekanchi
author_sort Mohammadreza Mashayekhi
title Development of an alternative PSO‐based algorithm for simulation of endurance time excitation functions
title_short Development of an alternative PSO‐based algorithm for simulation of endurance time excitation functions
title_full Development of an alternative PSO‐based algorithm for simulation of endurance time excitation functions
title_fullStr Development of an alternative PSO‐based algorithm for simulation of endurance time excitation functions
title_full_unstemmed Development of an alternative PSO‐based algorithm for simulation of endurance time excitation functions
title_sort development of an alternative pso‐based algorithm for simulation of endurance time excitation functions
publisher Wiley
series Engineering Reports
issn 2577-8196
publishDate 2019-10-01
description This paper presents a particle swarm optimizer for production of endurance time excitation functions (ETEFs). These excitations are intensifying acceleration time histories that are used as input motions in endurance time (ET) method. The accuracy of the ET methods heavily depends on the accuracy of ET excitations. Unconstrained nonlinear optimization is employed to simulate these excitations. Particle swarm optimization (PSO) method as an evolutionary algorithm is examined in this paper to achieve a more accurate ETEF, where optimal parameters of the PSO are first determined using a parametric study on the involved variables. The proposed method is verified and compared with the trust‐region‐reflective method as a classical optimization method and imperialist competitive algorithm as a recently developed evolutionary method. Results show that the proposed method leads to more accurate ET excitations.
topic classical optimization methods
discrete wavelet transform
dynamic analysis
endurance time method
imperialist competitive algorithm
particle swarm optimization
url https://doi.org/10.1002/eng2.12048
work_keys_str_mv AT mohammadrezamashayekhi developmentofanalternativepsobasedalgorithmforsimulationofendurancetimeexcitationfunctions
AT mojtabaharati developmentofanalternativepsobasedalgorithmforsimulationofendurancetimeexcitationfunctions
AT homayooneestekanchi developmentofanalternativepsobasedalgorithmforsimulationofendurancetimeexcitationfunctions
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