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A norm-relaxed method of feasible directions for finely discretized problems from semi-infinite programming

机译:来自半无限规划的精细离散问题的可行方向的范式松弛方法

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In this paper, a class of finely discretized Semi-Infinite Programming (SIP) problems is discussed. Combining the idea of the norm-relaxed Method of Feasible Directions (MFD) and the technique of updating discretization index set, we present a new algorithm for solving the Discretized Semi-Infinite (DSI) problems from SIP. At each iteration, the iteration point is feasible for the discretized problem and an improved search direction is computed by solving only one direction finding subproblem, i.e., a quadratic program, and some appropriate constraints are chosen to reduce the computational cost. A high-order correction direction can be obtained by solving another quadratic programming subproblem with only equality constraints. Under weak conditions such as Mangasarian-Fromovitz Constraint Qualification (MFCQ), the proposed algorithm possesses weak global convergence. Moreover, the superlinear convergence is obtained under Linearly Independent Constraint Qualification (LICQ) and other assumptions. In the end, some elementary numerical experiments are reported. (c) 2007 Elsevier B.V. All rights reserved.
机译:本文讨论了一类精细离散的半无限规划(SIP)问题。结合规范的可行方向宽松方法(MFD)的思想和更新离散化索引集的技术,我们提出了一种新的算法,用于解决SIP离散半无限(DSI)问题。在每次迭代中,迭代点对于离散化问题是可行的,并且仅通过解决一个测向子问题即二次程序来计算改善的搜索方向,并且选择一些适当的约束以降低计算成本。通过求解仅具有等式约束的另一个二次编程子问题,可以获得高阶校正方向。在诸如Mangasarian-Fromovitz约束资格(MFCQ)这样的弱条件下,该算法具有较弱的全局收敛性。此外,超线性收敛是在线性独立约束资格(LICQ)和其他假设下获得的。最后,报告了一些基本的数值实验。 (c)2007 Elsevier B.V.保留所有权利。

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