基于量化观测的简约系统辨识

Omar M. Sleem, C. Lagoa
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引用次数: 1

摘要

量化作为模拟环境和数字环境之间的接口起着重要的作用。由于量化是多对少的映射,因此是一个非线性的不可逆过程。这使得除了量化噪声信号依赖性外,传统的系统识别方法不再适用。在这项工作中,我们提出了一种方法,当只有输出的量化测量是可观察到的简约系统识别。更准确地说,我们开发了一种算法,旨在识别一个低阶系统,该系统与系统上的先验信息和收集的量化输出信息兼容。此外,即使只有量化输出的碎片信息可用,所提出的方法也可以使用。提出的算法依赖于ADMM方法来求解拟范数优化。数值结果突出了该方法在诱导解的稀疏性方面与l1最小化方法相比的性能。
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Parsimonious System Identification from Quantized Observations
Quantization plays an important role as an inter-face between analog and digital environments. Since quantization is a many to few mapping, it is a non-linear irreversible process. This made, in addition of the quantization noise signal dependency, the traditional methods of system identification no longer applicable. In this work, we propose a method for parsimonious system identification when only quantized measurements of the output are observable. More precisely, we develop an algorithm that aims at identifying a low order system that is compatible with a priori information on the system and the collected quantized output information. Moreover, the proposed approach can be used even if only fragmented information on the quantized output is available. The proposed algorithm relies on an ADMM approach to ℓp quasi-norm optimization. Numerical results highlight the performance of the proposed approach when compared to the ℓ1 minimization in terms of the sparsity of the induced solution.
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