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Subspace based methods for continuous-time model identification of MIMO systems from filtered sampled data

机译:基于子空间的MIMO系统连续时间模型识别的方法

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This article introduces a new identification method for continuous-time MIMO state space models from sampled input output data. The proposed approach consists more precisely in combining filtering techniques with a specific subspace algorithm. Two filtering methods (the reinitialised partial moments and the Poisson moment functionals) are considered to circumvent the time derivative problem inherent in continuous-time modelling. The developed subspace algorithm belongs to the MOESP method family. A particular attention is payed to the construction of the instrumental variable used to supply consistent and accurate estimates in a noisy framework. The benefits of the proposed algorithms in comparison with existing methods are illustrated with a simulation study.
机译:本文介绍了一种基于采样输入输出数据的连续时间MIMO状态空间模型的新识别方法。所提出的方法更精确地在于将滤波技术与特定的子空间算法相结合。考虑了两种滤波方法(重新初始化的部分矩和泊松矩函数)来规避连续时间建模中固有的时间导数问题。所开发的子空间算法属于MOESP方法家族。要特别注意工具变量的构造,该工具变量用于在嘈杂的框架中提供一致且准确的估计。仿真研究表明了与现有方法相比,所提出算法的优势。

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