利用分数极点有效地利用短数据记录进行频响建模

K. Barbé, W. van Moer, L. Lauwers, C. Ionescu
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引用次数: 2

摘要

基于测量的系统建模是一个成熟的研究和工程实践领域。可用于构建和识别这些模型的技术是在“足够多”的测量可用的假设下运行的。在大多数情况下,当测量的数量增加时,模型质量就会提高。不幸的是,测量时间是昂贵的,在一些应用中,甚至不可能增加测量的数量。对于这些类型的应用程序,经典的建模工具变得不可信,并且没有可用的替代品。本文用分数阶微分方程代替常微分方程来模拟线性系统。该技术的主要优点是只需要少量的参数就可以获得非常灵活的模型。提出了一种用参数数较少的分数阶微分方程代替常微分方程的辨识方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient use of short data records for FRF modeling by using fractional poles
Modeling systems based on measurements is a well established field of research and engineering practice. The techniques available to build and identify these models operate under the assumption that “sufficiently many” measurements are available. In most cases, the model quality improves when the number of measurements increases. Unfortunately, measurement time is expensive and in some applications it is even infeasible to increase the number of measurements. For these kinds of applications, classical modeling tools become untrustworthy and no alternatives are available. In this paper, we introduce fractional order differential equations instead of ordinary differential equations to model linear systems. The major advantage of the presented technique is that only a small number of parameters is needed to obtain a very flexible model. We propose an identification technique which replaces the ordinary differential equations by fractional order differential equations with a smaller number of parameters.
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