info:eu-repo/semantics/article
A second-order convergence augmented Lagrangian method using non-quadratic penalty functions
Fecha
2019-06Registro en:
Sanchez, María Daniela; Schuverdt, María Laura; A second-order convergence augmented Lagrangian method using non-quadratic penalty functions; Springer; Opsearch; 56; 2; 6-2019; 390-408
0030-3887
CONICET Digital
CONICET
Autor
Sanchez, María Daniela
Schuverdt, María Laura
Resumen
The purpose of the present paper is to study the global convergence of a practical Augmented Lagrangian model algorithm that considers non-quadratic Penalty–Lagrangian functions. We analyze the convergence of the model algorithm to points that satisfy the Karush–Kuhn–Tucker conditions and also the weak second-order necessary optimality condition. The generation scheme of the Penalty–Lagrangian functions includes the exponential penalty function and the logarithmic-barrier without using convex information.