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Identifiability of the stochastic semi-blind deconvolution problem for a class of time-invariant linear systems

机译:一类时不变线性系统的随机半盲反卷积问题的可辨识性

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Semi-blind deconvolution is the process of estimating the unknown input of a linear system, starting from output data, when the kernel of the system contains unknown parameters. In this paper, identifiability issues related to such a problem are investigated. In particular, we consider time-invariant linear models whose impulse response is given by a sum of exponentials and assume that smoothness is the sole available a priori information on the unknown signal. We state the semi-blind deconvolution problem in a Bayesian setting where prior knowledge on the smoothness of the unknown function is mathematically formalized by describing the system input as a Brownian motion. This leads to a Tychonov-type estimator containing unknown smoothness and system parameters which we estimate by maximizing their marginal likelihood/posterior. The mathematical structure of this estimator is studied in the ideal situation of output data noiseless with their number tending to infinity. Simulated case studies are used to illustrate the practical implications of the theoretical findings in system modeling. Finally, we show how semi-blind deconvolution can be improved by proposing a new prior for signals that are initially highly nonstationary but then become, as time progresses, more regular.
机译:当系统的内核包含未知参数时,半盲反卷积是从输出数据开始估计线性系统的未知输入的过程。在本文中,调查了与此类问题有关的可识别性问题。特别地,我们考虑时不变线性模型,其脉冲响应由指数和给出,并假设平滑度是未知信号唯一可用的先验信息。我们在贝叶斯环境中陈述半盲反卷积问题,其中通过将系统输入描述为布朗运动,以数学形式形式形式化了对未知函数平滑度的先验知识。这将导致Tychonov型估计器包含未知的平滑度和系统参数,我们可以通过最大化其边际可能性/后验来进行估计。在无噪声且输出数据趋于无穷大的理想情况下研究了该估计器的数学结构。模拟案例研究用于说明系统建模中理论发现的实际含义。最后,我们展示了如何为信号提出一个新的先验,从而改善半盲反卷积,这些信号最初是高度不稳定的,但随着时间的流逝变得更加规则。

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