Inexact Restoration method for nonlinear optimization without derivatives

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摘要

A derivative-free optimization method is proposed for solving a general nonlinear programming problem. It is assumed that the derivatives of the objective function and the constraints are not available. The new method is based on the Inexact Restoration scheme, where each iteration is decomposed in two phases. In the first one, the violation of the feasibility is reduced. In the second one, the objective function is minimized onto a linearization of the nonlinear constraints. At both phases, polynomial interpolation models are used in order to approximate the objective function and the constraints. At the first phase a derivative-free solver for box constrained optimization can be used. For the second phase, we propose a new method ad-hoc based on trust-region strategy that uses the projection of the simplex gradient on the tangent space. Under suitable assumptions, the algorithm is well defined and convergence results are proved. A numerical implementation is described and numerical experiments are presented to validate the theoretical results.

论文关键词:65K05,90C30,90C56,Inexact Restoration,Derivative-free optimization,Trust-region methods,Polynomial interpolation

论文评审过程:Received 29 April 2014, Revised 23 March 2015, Available online 7 May 2015, Version of Record 19 May 2015.

论文官网地址:https://doi.org/10.1016/j.cam.2015.04.047