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Data-based continuous-time modelling of dynamic systems

机译:动态系统基于数据的连续时间建模

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Data-based continuous-time model identification of continuous-time dynamic systems is a mature subject. In this contribution, we focus first on a refined instrumental variable method that yields parameter estimates with optimal statistical properties for hybrid continuous-time Box-Jenkins transfer function models. The second part of the paper describes further recent developments of this reliable estimation technique, including its extension to handle non-uniformly sampled data situation, closed-loop and nonlinear model identification. It also discusses how the recently developed methods are implemented in the CONTSID toolbox for Matlab and the advantages of these direct schemes to continuous-time model identification.
机译:基于数据的连续时间动态系统的连续时间模型识别是一个成熟的课题。在此贡献中,我们首先关注改进的工具变量方法,该方法可为混合连续时间Box-Jenkins传递函数模型提供具有最佳统计属性的参数估计。本文的第二部分描述了这种可靠的估计技术的最新发展,包括其扩展以处理非均匀采样的数据情况,闭环和非线性模型识别。它还讨论了如何在CONTSID工具箱中为Matlab实现最新开发的方法,以及这些直接方案对连续时间模型识别的优势。

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