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Model reduction for linear bayesian system identification

机译:线性贝叶斯系统辨识的模型简化

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Bayesian estimation methods have been recently introduced in the system identification community. When applied in this context, they allow to estimate the unknown system in terms of its impulse response coefficients, thus returning a model with high (possibly infinite) McMillan degree. In this paper we discuss how these Bayesian estimation techniques can be equipped with a completely automatic model reduction procedure, in order to obtain a low McMillan degree model as a final estimate. Besides being more suitable for filtering and control applications, low-order models seem also to better capture the dynamics of the systems to be identified, as demonstrated by the extensive Monte Carlo experiments which are included in this paper.
机译:贝叶斯估计方法最近已在系统识别社区中引入。当在这种情况下应用时,它们允许根据其冲激响应系数来估计未知系统,从而返回一个具有高(可能是无限大)McMillan度的模型。在本文中,我们讨论了如何将这些贝叶斯估计技术配备全自动模型简化程序,以便获得低麦克米伦度模型作为最终估计。除了更适合于过滤和控制应用之外,低阶模型似乎还可以更好地捕获要识别的系统的动力学特性,正如本文所包含的大量蒙特卡洛实验所证明的那样。

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