We present a geometric multi-level optimization approach that smoothly incorporates box constraints. Given a box constrained optimization problem, we consider a hierarchy of models with varying discretization levels. Finer models are accurate but expensive to compute, while coarser models are less accurate but cheaper to compute. When working at the fine level, multi-level optimisation computes the search direction based on a coarser model which speeds up updates at the fine level. Moreover, exploiting geometry induced by the hierarchy the feasibility of the updates is preserved. In particular, our approach extends classical components of multigrid methods like restriction and prolongation to the Riemannian structure of our constraints.
翻译:我们提出了一个几何多级优化方法,该方法可以顺利地纳入框框限制。鉴于箱框限制优化问题,我们考虑不同分化水平的模型等级。精细模型准确,但计算费用昂贵,粗粗模型不那么准确,计算费用更低。在精细水平工作时,多级优化计算基于精密模型的搜索方向,该模型加快了精细水平的更新。此外,利用等级所引出的几何方法,更新的可行性得以保留。特别是,我们的方法扩大了多种电网方法的典型组成部分,如限制和延长我们制约的里伊曼尼结构。