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Identification of continuous-time systems utilising Kautz basis functions from sampled-data ?

机译:识别利用来自采样数据的Kautz基函数的连续时间系统

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In this paper we address the problem of identifying a continuous-time deterministic system utilising sampled-data with instantaneous sampling. We develop an identification algorithm based on Maximum Likelihood. The exact discrete-time model is obtained for two cases: i) known continuous-time model structure and ii) using Kautz basis functions to approximate the continuous-time transfer function. The contribution of this paper is threefold: i) we show that, in general, the discretisation of continuous-time deterministic systems leads to several local optima in the likelihood function, phenomenon termed asaliasing,ii) we discretise Kautz basis functions and obtain a recursive algorithm for constructing their equivalent discrete-time transfer functions, and iii) we show that the utilisation of Kautz basis functions to approximate the true continuous-time deterministic system results in convex log-likelihood functions. We illustrate the benefits of our proposal via numerical examples.
机译:在本文中,我们解决了使用瞬时采样的采样数据识别连续时间确定系统的问题。我们开发了基于最大可能性的识别算法。在两个情况下获得确切的离散时间模型:i)已知的连续时间模型结构和II)使用Kautz基函数来近似连续时间传递函数。本文的贡献是三倍:i)我们表明,一般而言,连续时间确定性系统的自行决定导致几个当地最佳函数在可能性函数中,现象称为亚aliasing,ii)我们离散的Kautz基础职能并获得递归构造其等效离散时间传递函数的算法和III)我们表明,利用KAUTZ基本函数来近似真实连续时间确定系统导致凸起对数似函数。我们通过数值例子说明了我们提案的好处。

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