Subspace-stabilized sequential quadratic programming

被引:0
|
作者
A. F. Izmailov
E. I. Uskov
机构
[1] Lomonosov Moscow State University,OR Department, VMK Faculty
[2] MSU,Department of Mathematic, Physics and Computer Sciences
[3] RUDN University,undefined
[4] Derzhavin Tambov State University,undefined
[5] TSU,undefined
关键词
Sequential quadratic programming; Degenerate solution; Noncritical Lagrange multiplier; Dual stabilization; Superlinear convergence; Global convergence;
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学科分类号
摘要
The stabilized sequential quadratic programming (SQP) method has nice local convergence properties: it possesses local superlinear convergence under very mild assumptions not including any constraint qualifications. However, any attempts to globalize convergence of this method indispensably face some principal difficulties concerned with intrinsic deficiencies of the steps produced by it when relatively far from solutions; specifically, it has a tendency to produce long sequences of short steps before entering the region where its superlinear convergence shows up. In this paper, we propose a modification of the stabilized SQP method, possessing better “semi-local” behavior, and hence, more suitable for the development of practical realizations. The key features of the new method are identification of the so-called degeneracy subspace and dual stabilization along this subspace only; thus the name “subspace-stabilized SQP”. We consider two versions of this method, their local convergence properties, as well as a practical procedure for approximation of the degeneracy subspace. Even though we do not consider here any specific algorithms with theoretically justified global convergence properties, subspace-stabilized SQP can be a relevant substitute for the stabilized SQP in such algorithms using the latter at the “local phase”. Some numerical results demonstrate that stabilization along the degeneracy subspace is indeed crucially important for success of dual stabilization methods.
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页码:129 / 154
页数:25
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