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Continuous-time model identification from sampled data: implementation issues and performance evaluation

机译:从采样数据中连续时间识别模型:实施问题和绩效评估

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This paper deals with equation error methods that fit continuous-time transfer function models to discrete-time data recently included in the CONTSID (CONtinuous-Time System IDentification) Matlab toolbox. An overview of the methods is first given where implementation issues are highlighted. The performances of the methods are then evaluated on simulated examples by Monte Carlo simulations. The experiments have been carried out to study the sensitivity of each approach to the design parameters, sampling period, signal-to-noise ratio, noise power spectral density and type of input signal. The effectiveness of the CONTSID toolbox techniques is also briefly compared with indirect methods in which discrete-time models are first estimated and then transformed into continuous-time models. The paper does not consider iterative or recursive algorithms for continuous-time transfer function model identification. [References: 53]
机译:本文研究了方程误差方法,这些方法使连续时间传递函数模型适合最近包含在CONTSID(连续时间系统IDentification)Matlab工具箱中的离散时间数据。首先概述了实现问题的方法。然后,通过蒙特卡洛模拟在模拟示例上评估方法的性能。已经进行了实验以研究每种方法对设计参数,采样周期,信噪比,噪声功率谱密度和输入信号类型的敏感性。 CONTSID工具箱技术的有效性也与间接方法进行了简要比较,在间接方法中,首先估计离散时间模型,然后将其转换为连续时间模型。本文没有考虑用于连续时间传递函数模型识别的迭代或递归算法。 [参考:53]

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