Multi-Objective Trust-Region Filter Method for Nonlinear Constraints using Inexact Gradients
Optimization and Control
2023-04-20 v2
Abstract
In this article, we build on previous work to present an optimization algorithm for nonlinearly constrained multi-objective optimization problems. The algorithm combines a surrogate-assisted derivative-free trust-region approach with the filter method known from single-objective optimization. Instead of the true objective and constraint functions, so-called fully linear models are employed, and we show how to deal with the gradient inexactness in the composite step setting, adapted from single-objective optimization as well. Under standard assumptions, we prove convergence of a subset of iterates to a quasi-stationary point and if constraint qualifications hold, then the limit point is also a KKT-point of the multi-objective problem.
Cite
@article{arxiv.2208.12094,
title = {Multi-Objective Trust-Region Filter Method for Nonlinear Constraints using Inexact Gradients},
author = {Manuel Berkemeier and Sebastian Peitz},
journal= {arXiv preprint arXiv:2208.12094},
year = {2023}
}