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ROBUSTNESS ISSUES IN CONTINUOUS-TIME SYSTEM IDENTIFICATION FROM SAMPLED DATA

机译:从采样数据中识别连续系统中的鲁棒性问题

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This paper explores the robustness issues that arise in the identi?cation of continuous-time systems from sampled data. A key observation is that, in practice, one cannot rely upon the ?delity of the model at high frequencies. This implies that any result which implicitly or explicitly depends upon the folding of high frequency components down to lower frequencies will be inherently nonrobust. We illustrate this point by referring to the identification of continuous-time auto-regressive stochastic models from sampled data. We argue that traditional approaches to this problem are sensitive to high frequency modelling errors. We also propose an alternative maximum likelihood procedure in the frequency domain, which is robust to high frequency modelling errors.
机译:本文探讨了从采样数据识别连续时间系统时出现的鲁棒性问题。一项关键的观察结果是,实际上,人们不能依赖高频模型的真实性。这意味着,任何隐含或显式依赖于将高频分量向下折叠至低频的结果都将固有地不可靠。我们通过参考从采样数据中识别连续时间自回归随机模型来说明这一点。我们认为解决此问题的传统方法对高频建模错误敏感。我们还提出了一种在频域中的替代最大似然程序,该程序对高频建模误差具有鲁棒性。

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