A Globally Convergent Method of Constrained Minimization by Solving Subproblems of the Conic Model

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Abstract

A new method for nonlinearly constrained optimization problems is proposed. The method consists of two steps. In the first step, we get a search direction by the linearly constrained subproblems based on conic functions. In the second step, we use a differentiable penalty function, and regard it as the metric function of the problem. From this, a new approximate solution is obtained. The global convergence of the given method is also proved.

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A Globally Convergent Method of Constrained Minimization by Solving Subproblems of the Conic Model. (1989). Journal of Computational Mathematics, 7(3), 234-243. https://www.global-sci.com/index.php/JCM/article/view/10952