论文标题

粗粒非线性系统识别

Coarse-Grained Nonlinear System Identification

论文作者

Spanbauer, Span, Hunter, Ian

论文摘要

我们介绍了基于Volterra系列扩展的非线性系统动力学的粗粒粒度非线性动力学。这些模型需要多个参数,仅在系统内存中的quasilinear中,无论Volterra扩展的截断顺序如何;随着顺序变大,这是参数数量的超级单位减少。这种有效的参数化是通过系统动力学的粗粒部分来实现的,该动力学取决于时间远的输入样品的乘积;从概念上讲,这类似于快速多极方法用于实现$ \ Mathcal {o}(n)$仿真N体动力学的粗糙粒度。我们对非线性动力学的有效参数化可以用于正则化,从而导致粗粒的非线性系统识别,这项技术几乎不需要实验数据才能识别准确的非线性动态模型。我们证明了这种方法在简单的合成问题上的特性。我们还通过实验证明了这种方法,表明它标识了钨丝丝的精确模型,即钨丝的光度动力学,而实验数据的含量不到一秒钟。

We introduce Coarse-Grained Nonlinear Dynamics, an efficient and universal parameterization of nonlinear system dynamics based on the Volterra series expansion. These models require a number of parameters only quasilinear in the system's memory regardless of the order at which the Volterra expansion is truncated; this is a superpolynomial reduction in the number of parameters as the order becomes large. This efficient parameterization is achieved by coarse-graining parts of the system dynamics that depend on the product of temporally distant input samples; this is conceptually similar to the coarse-graining that the fast multipole method uses to achieve $\mathcal{O}(n)$ simulation of n-body dynamics. Our efficient parameterization of nonlinear dynamics can be used for regularization, leading to Coarse-Grained Nonlinear System Identification, a technique which requires very little experimental data to identify accurate nonlinear dynamic models. We demonstrate the properties of this approach on a simple synthetic problem. We also demonstrate this approach experimentally, showing that it identifies an accurate model of the nonlinear voltage to luminosity dynamics of a tungsten filament with less than a second of experimental data.

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