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On learning the input-output behaviour of nonlinear fading memory systems from finite data

机译:从有限数据中学习非线性衰落存储系统的输入输出行为

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This paper deals with system identification for the class of nonlinear fading memory systems from input-output noisy data. It is distinct from traditional formulations in two respects: (1) We are motivated by the class of systems where no finite parameterization can cover the class arbitrarily closely. Since finite data can only resolve finitely many parameters and so residual dynamics becomes an important issue in identification; (2) Our objective is to characterize the behaviour uniformly over the class of all bounded inputs. The primary focus of the paper is to establish a framework for learning the behaviour for the class of nonlinear fading memory systems uniformly over all inputs. The main idea is to separate the components of identification into estimation of a parametric part followed by a coarse description of the residual dynamics and the objective is to estimate a model that gives the tightest description. The principle difficulty arises on account of our need to characterize the behaviour uniformly over the set of all bounded inputs,a requirement motivated from control applications. Although, this goal is unachievable, it is possible to still characterize the 'essential' input-output behaviour over the class of dithered inputs. We show that this notion is directly applicable for robust control situations. Moreover, system identification with finite input-output data also becomes tractable, Tradeoff between dithering, size of uncertainty and sample-complexity is also developed. Copyright (C) 2000 John Wiley & Sons, Ltd. [References: 31]
机译:本文从输入输出噪声数据出发,针对一类非线性衰落存储系统进行系统识别。它在两个方面与传统的提法不同:(1)我们受到系统类别的激励,其中有限的参数化无法任意覆盖该类别。由于有限的数据只能解析有限的许多参数,因此残留动力学成为识别中的重要问题。 (2)我们的目标是在所有有界输入的类别上统一描述行为。本文的主要重点是建立一个框架,用于在所有输入上均匀地学习非线性衰落存储系统类别的行为。主要思想是将识别的组件分为对参数部分的估计,然后对残余动力学进行粗略描述,目标是估计给出最严格描述的模型。原则上的困难是由于我们需要在所有有界输入的集合上统一表征行为而产生的,这是由控制应用程序引起的。尽管这个目标是无法实现的,但仍然有可能在抖动输入类别上表征“基本”输入输出行为。我们证明了该概念直接适用于鲁棒的控制情况。此外,利用有限的输入输出数据进行系统识别也变得容易,在抖动,不确定性大小和样本复杂度之间进行权衡。版权所有(C)2000 John Wiley&Sons,Ltd. [引用:31]

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