Title of article :
A SELF-SCALING IMPLICIT SQP METHOD FOR LARGE SCALE STRUCTURAL OPTIMIZATION
Author/Authors :
M.-W. HUANG، نويسنده , , J. S. ARORA، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 1996
Abstract :
The basic idea of an implicit sequential quadratic programming (ISQP) method for constrained problems is
to use the approximate Hessian of the Lagrangian without explicitly calculating and storing it. This
overcomes one of the major drawbacks of the traditional SQP method where a large matrix needs to be
calculated and stored. This concept of an implicit method is explained and an algorithm based on it is
presented. The proposed method extends a similar algorithm for unconstrained problems where a two-loop
recursion formula is used for the inverse Hessian matrix. The present paper develops a similar algorithm for
not only the constrained problem but also the direct Hessian updates. Several scaling procedures for the
Hessian are also presented and evaluated. The basic method and some of its variations are evaluated using
a set of mathematical programming test problems, and a set of structural design test problems-small to
larger scale. The ISQP method performs much better than a method that does not use any approximate
Hessian matrix. Its performance is better than the full SQP method for larger scale problems. The test results
also show that an appropriate scaling of the Hessian can improve both efficiency and reliability substantially.
Keywords :
Structural design , Algorithm evaluation , Sequential quadratic programming , Numerical algorithms , self-scaling , Test problems , Structures , Large scale , optimization
Journal title :
International Journal for Numerical Methods in Engineering
Journal title :
International Journal for Numerical Methods in Engineering