Robustly optimal filter design for nonlinear systems

C. Novara, F. Ruiz, M. Milanese
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Abstract

A relevant issue in filter design is that, in most practical situations, the system whose variables have to be estimated is not known, and a two-step procedure is adopted, based on model identification from data and filter design from the identified model. However, only approximate models can be identified from real data, and this approximation may lead to large estimation errors. In this paper, a new approach to filter design overcoming this important issue is considered, allowing the design of filters for nonlinear systems with suitable optimality and robustness properties. In particular, it is shown that the approach is intrinsically robust, since based on the direct design of the filter from a set of data generated by the system, avoiding the need of any (approximate) model. A result is also provided, allowing us to evaluate the trade-off between the estimation accuracy and the number of data required for filter design.
非线性系统鲁棒最优滤波器设计
滤波器设计中的一个相关问题是,在大多数实际情况下,需要估计变量的系统是未知的,因此采用两步法,从数据中识别模型,从识别的模型中设计滤波器。然而,从实际数据中只能识别出近似的模型,这种近似可能会导致较大的估计误差。本文考虑了一种新的滤波器设计方法,克服了这一重要问题,使非线性系统的滤波器设计具有适当的最优性和鲁棒性。特别是,该方法具有内在的鲁棒性,因为它基于从系统生成的一组数据直接设计滤波器,避免了任何(近似)模型的需要。还提供了一个结果,允许我们评估估计精度和滤波器设计所需的数据数量之间的权衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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