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Homotopy methods for zero finding from a learning/control Liapunov function viewpoint

机译:从学习/控制Liapunov函数的零点找到零发现的同型方法

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This paper revisits a class of recently proposed so-called invariant manifold methods for zero finding, showing that this class of homotopy methods can be designed in a natural manner from the control Liapunov function (CLF) approach proposed earlier by the authors. Moreover, the CLF approach clarifies the interplay between the homotopy parameter, which can be interpreted as a learning parameter and the choice of descent direction, which is the control vector and guides the choice of both. From this viewpoint, maintaining manifold invariance is equivalent to ensuring that the CLF satisfies a certain ordinary differential equation, involving the learning parameter, that allows an estimate of rate of convergence. In order to illustrate this approach, algorithms recently proposed using the invariant manifold approach, are rederived, via CLFs, in a unified manner.
机译:本文重新审视了一类最近提出的所谓的不变性歧管方法进行零发现,表明这类同型方法可以从作者提前提出的控制Liapunov函数(CLF)方法以自然的方式设计。此外,CLF方法阐明了同型参数之间的相互作用,其可以被解释为学习参数和下降方向的选择,这是控制矢量和指南的选择。从这种观点来看,保持歧管不变性等同于确保CLF满足某个常规方程,涉及学习参数,这允许估计收敛速率。为了说明这种方法,最近使用不变的歧管方法提出的算法通过CLF以统一的方式重新生化。

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