TY - JOUR
T1 - An efficient sampling method for regression-based polynomial chaos expansion
AU - Zein, Samih
AU - Colson, Benoît
AU - Glineur, François
PY - 2013/4
Y1 - 2013/4
N2 - The polynomial chaos expansion (PCE) is an efficient numerical method for performing a reliability analysis. It relates the output of a nonlinear system with the uncertainty in its input parameters using a multidimensional polynomial approximation (the so-called PCE). Numerically, such an approximation can be obtained by using a regression method with a suitable design of experiments. The cost of this approximation depends on the size of the design of experiments. If the design of experiments is large and the system is modeled with a computationally expensive FEA (Finite Element Analysis) model, the PCE approximation becomes unfeasible. The aim of this work is to propose an algorithm that generates efficiently a design of experiments of a size defined by the user, in order to make the PCE approximation computationally feasible. It is an optimization algorithm that seeks to find the best design of experiments in the D-optimal sense for the PCE. This algorithm is a coupling between genetic algorithms and the Fedorov exchange algorithm. The efficiency of our approachin terms of accuracy and computational time reduction is compared with other existing methods in the case of analytical functions and finite element based functions.
AB - The polynomial chaos expansion (PCE) is an efficient numerical method for performing a reliability analysis. It relates the output of a nonlinear system with the uncertainty in its input parameters using a multidimensional polynomial approximation (the so-called PCE). Numerically, such an approximation can be obtained by using a regression method with a suitable design of experiments. The cost of this approximation depends on the size of the design of experiments. If the design of experiments is large and the system is modeled with a computationally expensive FEA (Finite Element Analysis) model, the PCE approximation becomes unfeasible. The aim of this work is to propose an algorithm that generates efficiently a design of experiments of a size defined by the user, in order to make the PCE approximation computationally feasible. It is an optimization algorithm that seeks to find the best design of experiments in the D-optimal sense for the PCE. This algorithm is a coupling between genetic algorithms and the Fedorov exchange algorithm. The efficiency of our approachin terms of accuracy and computational time reduction is compared with other existing methods in the case of analytical functions and finite element based functions.
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U2 - 10.4208/cicp.020911.200412a
DO - 10.4208/cicp.020911.200412a
M3 - Article
AN - SCOPUS:84869790030
SN - 1815-2406
VL - 13
SP - 1173
EP - 1188
JO - Communications in Computational Physics
JF - Communications in Computational Physics
IS - 4
ER -