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Exact penalty function algorithm with simple updating of the penalty parameter
Authors:J F A De O Pantoja  D Q Mayne
Institution:(1) Department of Mathematics, Federal University of Maranhão, São Luis, Maranhão, Brazil;(2) Electrical Engineering Department, Imperial College, University of London, London, England
Abstract:A new globally convergent algorithm for minimizing an objective function subject to equality and inequality constraints is presented. The algorithm determines a search direction by solving a quadratic programming subproblem, which always has an optimal solution, and uses an exact penalty function to compute the steplength along this direction through an Armijo-type scheme. The special structure of the quadratic subproblem is exploited to construct a new and simple method for updating the penalty parameter. This method may increase or reduce the value of the penalty parameter depending on some easily performed tests. A new method for updating the Hessian of the Lagrangian is presented, and a Q-superlinear rate of convergence is established.This work was supported in part by the British Council and the Conselho Nacional de Desenvolvimento Cientifico & Tecnologico/CNPq, Rio de Janeiro, Brazil.The authors are very grateful to Mr. Lam Yeung for his invaluable assistance in computing the results and to a reviewer for constructive advice.
Keywords:Constrained minimization  exact penalty functions  sequential quadratic programming algorithms  superlinear convergence
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