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Inverse Analysis of Deep Excavation Using Differential Evolution Algorithm
Author(s)
Date Issued
2015-02-10
Date Available
2021-11-08T15:08:58Z
Abstract
This paper presents the applications of the differential evolution (DE) algorithm in back analysis of soil parameters for deep excavation problems. A computer code, named Python‐based DE, is developed and incorporated into the commercial finite element software ABAQUS, with a parallel computing technique to run an FE analysis for all trail vectors of one generation in DE in multiple cores of a cluster, which dramatically reduces the computational time. A synthetic case and a well‐instrumented real case, that is, the Taipei National Enterprise Center (TNEC) project, are used to demonstrate the capability of the proposed back‐analysis procedure. Results show that multiple soil parameters are well identified by back analysis using a DE optimization algorithm for highly nonlinear problems. For the synthetic excavation case, the back‐analyzed parameters are basically identical to the input parameters that are used to generate synthetic response of wall deflection. For the TNEC case with a total of nine parameters to be back analyzed, the relative errors of wall deflection for the last three stages are 2.2, 1.1, and 1.0%, respectively. Robustness of the back‐estimated parameters is further illustrated by a forward prediction. The wall deflection in the subsequent stages can be satisfactorily predicted using the back‐analyzed soil parameters at early stages.
Other Sponsorship
Natural Science Foundation of China
Science and Technology Commission of Shanghai Municipality
Type of Material
Journal Article
Publisher
Wiley
Journal
International Journal for Numerical and Analytical Methods in Geomechanics
Volume
39
Issue
2
Start Page
115
End Page
134
Copyright (Published Version)
2014 Wiley
Language
English
Status of Item
Peer reviewed
ISSN
0363-9061
This item is made available under a Creative Commons License
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Name
Zhao et al. Inverse.pdf
Size
1.06 MB
Format
Adobe PDF
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