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Non-monotone trust region methods for nonlinear equality constrained optimization without a penalty function

机译:无罚函数的非线性等式约束优化的非单调信赖域方法

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摘要

We propose and analyze a class of penalty-function-free nonmonotone trust-region methods for nonlinear equality constrained optimization problems. The algorithmic framework yields global convergence without using a merit function and allows nonmonotonicity independently for both, the constraint violation and the value of the Lagrangian function. Similar to the Byrd–Omojokun class of algorithms, each step is composed of a quasi-normal and a tangential step. Both steps are required to satisfy a decrease condition for their respective trust-region subproblems. The proposed mechanism for accepting steps combines nonmonotone decrease conditions on the constraint violation and/or the Lagrangian function, which leads to a flexibility and acceptance behavior comparable to filter-based methods. We establish the global convergence of the method. Furthermore, transition to quadratic local convergence is proved. Numerical tests are presented that confirm the robustness and efficiency of the approach.
机译:针对非线性等式约束优化问题,我们提出并分析了一类无罚函数的非单调信赖域方法。该算法框架在不使用价值函数的情况下产生全局收敛,并且对于约束违例和拉格朗日函数的值都独立地允许非单调性。与Byrd–Omojokun类算法相似,每个步骤都由准法线和切线步骤组成。这两个步骤都需要满足其各自信任区域子问题的递减条件。所提出的接受步骤的机制在约束违反和/或拉格朗日函数上结合了非单调递减条件,这导致了与基于过滤器的方法相当的灵活性和接受行为。我们建立方法的全局收敛性。此外,证明了向二次局部收敛的过渡。数值试验证实了该方法的鲁棒性和有效性。

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