A gradient descent akin method for inequality constrained optimization
Abstract
We propose a first-order method for solving inequality constrained optimization problems. The method is derived from our previous work [12], a modified search direction method (MSDM) that applies the singular-value decomposition of normalized gradients. In this work, we simplify its computational framework to a "gradient descent akin" method, i.e., the search direction is computed using a linear combination of the negative and normalized objective and constraint gradient. The main focus of this work is to provide a mathematical aspect to the method. We analyze the global behavior and convergence of the method using a dynamical systems approach. We then prove that the resulting trajectories find local solutions by asymptotically converging to the central path(s) for the logarithmic barrier interior-point method under the so-called relative convex condition. Numerical examples are reported, which include both common test examples and applications in shape optimization.
Keywords
Cite
@article{arxiv.1902.04040,
title = {A gradient descent akin method for inequality constrained optimization},
author = {Long Chen and Wenyi Chen and Kai-Uwe Bletzinger},
journal= {arXiv preprint arXiv:1902.04040},
year = {2020}
}
Comments
39 pages, 9 figures