Open Journal of Optimization

Volume 6, Issue 2 (June 2017)

ISSN Print: 2325-7105   ISSN Online: 2325-7091

Google-based Impact Factor: 0.33  Citations  

A New Augmented Lagrangian Objective Penalty Function for Constrained Optimization Problems

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DOI: 10.4236/ojop.2017.62004    1,958 Downloads   4,151 Views  Citations
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ABSTRACT

In this paper, a new augmented Lagrangian penalty function for constrained optimization problems is studied. The dual properties of the augmented Lagrangian objective penalty function for constrained optimization problems are proved. Under some conditions, the saddle point of the augmented Lagrangian objective penalty function satisfies the first-order Karush-Kuhn-Tucker (KKT) condition. Especially, when the KKT condition holds for convex programming its saddle point exists. Based on the augmented Lagrangian objective penalty function, an algorithm is developed for finding a global solution to an inequality constrained optimization problem and its global convergence is also proved under some conditions.

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Zheng, Y. and Meng, Z. (2017) A New Augmented Lagrangian Objective Penalty Function for Constrained Optimization Problems. Open Journal of Optimization, 6, 39-46. doi: 10.4236/ojop.2017.62004.

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