System Identification Algorithm for Non-Uniformly Sampled Data.

Korkut Bekiroglu, Constantino Lagoa, Stephanie T Lanza, Mario Sznaier
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Abstract

Considerable effort has been devoted to the development of algorithms for identification of parsimonious discrete time models from noisy input/output data sets since this facilitates controller design. Several methods, such as nuclear norm minimization, have been used to provide approximate solutions to this non-convex problem. However, even though the field of continuous time system identification is now mature, results on parsimonious model identification of continuous time systems are still very limited. In this paper, an atomic norm minimization method is proposed for this purpose that can handle non-uniformly sampled data without preprocessing. The proposed approach provides an efficient way to use noisy, non-uniformly sampled data to determine a reliable, low-order continuous time model. Numerical performance is illustrated using academic examples and simulated behavioral data from a smoking cessation study.

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非均匀采样数据的系统识别算法
人们一直致力于开发从噪声输入/输出数据集中识别离散时间模型的算法,因为这有助于控制器的设计。有几种方法(如核规范最小化)已被用于为这一非凸问题提供近似解。然而,尽管连续时间系统识别领域目前已经非常成熟,但有关连续时间系统准模型识别的成果仍然非常有限。本文为此提出了一种原子规范最小化方法,无需预处理即可处理非均匀采样数据。所提出的方法提供了一种有效的方法,利用有噪声的非均匀采样数据来确定可靠的低阶连续时间模型。利用学术实例和戒烟研究中的模拟行为数据对数值性能进行了说明。
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