Sl1QP Based Algorithm with Trust Region Technique for Solving Nonlinear Second-Order Cone Programming Problems

Takayuki Okuno, Kohei Yasuda, S. Hayashi
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引用次数: 3

Abstract

In this paper, we propose an algorithm based on Fletcher’s Sl1QP method and the trust region technique for solving Nonlinear Second-Order Cone Programming (NSOCP) problems. The Sl1QP method was originally developed for nonlinear optimization problems with inequality constraints. It converts a constrained optimization problem into an unconstrained problem by using the l1 exact penalty function, and then finds an optimum by solving approximate quadratic programming subproblems successively. In order to apply the Sl1QP method to the NSOCP problem, we introduce an exact penalty function with respect to second-order cone constraints and reformulate the NSOCP problem as an unconstrained optimization problem. However, since each subproblem generated by the Sl1QP method is not differentiable, we reformulate it as a second-order cone programming problem whose objective function is quadratic and constraint functions are affine. We analyze the convergence property of the proposed algorithm, and show that the generated sequence converge to a stationary point of the NSOCP problem under mild assumptions. We also confirm the efficiency of the algorithm by means of numerical experiments.
基于信赖域的Sl1QP算法求解非线性二阶锥规划问题
本文提出了一种基于Fletcher的Sl1QP方法和信赖域技术的非线性二阶锥规划(NSOCP)算法。Sl1QP方法最初是针对不等式约束下的非线性优化问题而发展起来的。利用l1精确惩罚函数将约束优化问题转化为无约束优化问题,然后通过逐次求解近似二次规划子问题求出最优解。为了将Sl1QP方法应用于NSOCP问题,我们引入了一个关于二阶锥约束的精确惩罚函数,并将NSOCP问题重新表述为一个无约束优化问题。然而,由于Sl1QP方法生成的每个子问题都是不可微的,我们将其重新表述为目标函数是二次的、约束函数是仿射的二阶锥规划问题。我们分析了该算法的收敛性,并证明在温和的假设条件下,所生成的序列收敛于NSOCP问题的一个平稳点。通过数值实验验证了算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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