Armand, Paul; Benoist, Joël; Omheni, Riadh; Pateloup, Vincent Study of a primal-dual algorithm for equality constrained minimization. (English) Zbl 1304.49050 Comput. Optim. Appl. 59, No. 3, 405-433 (2014). Summary: The paper proposes a primal-dual algorithm for solving an equality constrained minimization problem. The algorithm is a Newton-like method applied to a sequence of perturbed optimality systems that follow naturally from the quadratic penalty approach. This work is first motivated by the fact that a primal-dual formulation of the quadratic penalty provides a better framework than the standard primal form. This is highlighted by strong convergence properties proved under standard assumptions. In particular, it is shown that the usual requirement of solving the penalty problem with a precision of the same size as the perturbation parameter, can be replaced by a much less stringent criterion, while guaranteeing the superlinear convergence property. A second motivation is that the method provides an appropriate regularization for degenerate problems with a rank deficient Jacobian of constraints. Numerical experiments clearly bear this out. Another important feature of our algorithm is that the penalty parameter is allowed to vary during the inner iterations, while it is usually kept constant. This alleviates the numerical problem due to ill-conditioning of the quadratic penalty, leading to an improvement of the numerical performance. Cited in 10 Documents MSC: 49M15 Newton-type methods 49M37 Numerical methods based on nonlinear programming 65K05 Numerical mathematical programming methods 90C06 Large-scale problems in mathematical programming 90C30 Nonlinear programming 90C51 Interior-point methods Keywords:Newton-like method; nonlinear programming; constrained optimization; primal-dual method; quadratic penalty method Software:KNITRO; CUTEr; COPS; Ipopt; AMPL; LOQO; MA57; SifDec PDFBibTeX XMLCite \textit{P. 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