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SYSTEM IDENTIFICATION VIA A COMPUTATIONAL BAYESIAN APPROACH

机译:通过计算贝叶斯方法的系统识别

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This paper takes a Bayesian approach to the problem of dynamic system estimation, and illustrates how posterior densities for system parameters, or more abstract and rather arbitrary system properties (such a frequency response, phase margin etc.) may be numerically computed. In achieving this, the key idea of constructing an ergodic Markov chain with invariant distribution equal to the desired posterior is fundamental, and it is inspired by recent developments in the mathematical statistics literature. An essential point of the work here is that via the associated posterior computation from the Markov chain, error bounds on estimates are provided that do not rely on asymptotic in data length arguments, and hence they apply with arbitrary accuracy for arbitrarily short data records.
机译:本文对动态系统估计问题采取贝叶斯方法,并说明了系统参数的后密度,或者更多的抽象和相当任意系统特性(这种频率响应,相位裕度等)是如何计算的。在实现这一点时,构建具有等于所需后验的不变分布的ergodic马尔可夫链的关键观点是基本的,它受到最近的数学统计文献的发展。这里的工作的基本点是,通过来自马尔可夫链的相关后部计算,提供了估计上的误差限制,其不依赖于数据长度参数的渐近,因此它们适用于任意短数据记录的任意精度。

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