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Nonlinear programming algorithms using trust regions and augmented Lagrangians with nonmonotone penalty parameters

机译:使用信任区域和具有非单调惩罚参数的增广拉格朗日方程的非线性规划算法

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摘要

A model algorithm based on the successive quadratic programming method for solving the general nonlinear programming problem is presented. The objective function and the constraints of the problem are only required to be differentiable and their gradients to satisfy a Lipschitz condition. The strategy for obtaining global convergence is based on the trust region approach. The merit function is a type of augmented Lagrangian. A new updating scheme is introduced for the penalty parameter, by means of which monotone increase is not necessary. Global convergence results are proved and numerical experiments are presented. [References: 30]
机译:提出了一种基于连续二次规划法的模型算法,用于求解一般的非线性规划问题。仅要求目标函数和问题的约束是可微的,并且它们的梯度可以满足Lipschitz条件。获得全球趋同的策略基于信任区域方法。优值函数是增强拉格朗日函数的一种。针对惩罚参数引入了新的更新方案,通过该更新方案不需要单调增加。证明了全局收敛性,并给出了数值实验。 [参考:30]

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