First-order sequential convex programming using approximate diagonal QP subproblems

被引:1
|
作者
L. F. P. Etman
Albert A. Groenwold
J. E. Rooda
机构
[1] Eindhoven University of Technology,Department of Mechanical Engineering
[2] University of Stellenbosch,Department of Mechanical Engineering
关键词
Diagonal quadratic approximation; Sequential approximate optimization (SAO); Sequential quadratic programming (SQP); Sequential convex programming (SCP); Reciprocal intervening variables; Trust region method;
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摘要
Optimization algorithms based on convex separable approximations for optimal structural design often use reciprocal-like approximations in a dual setting; CONLIN and the method of moving asymptotes (MMA) are well-known examples of such sequential convex programming (SCP) algorithms. We have previously demonstrated that replacement of these nonlinear (reciprocal) approximations by their own second order Taylor series expansion provides a powerful new algorithmic option within the SCP class of algorithms. This note shows that the quadratic treatment of the original nonlinear approximations also enables the restatement of the SCP as a series of Lagrange-Newton QP subproblems. This results in a diagonal trust-region SQP type of algorithm, in which the second order diagonal terms are estimated from the nonlinear (reciprocal) intervening variables, rather than from historic information using an exact or a quasi-Newton Hessian approach. The QP formulation seems particularly attractive for problems with far more constraints than variables (when pure dual methods are at a disadvantage), or when both the number of design variables and the number of (active) constraints is very large.
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页码:479 / 488
页数:9
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