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A new paradigm for parameter estimation in system modeling

机译:系统建模中参数估计的新范式

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In this paper, we consider a basic problem in system identification, that of estimating the unknown parameters of a given model by using input/output data. Available methods (extended Kalman filtering, unscented Kalman filtering, particle filtering, maximum likelihood, prediction error method, etc.) have been extensively studied in the literature, especially in relation to consistency analysis. Yet, other important aspects, such as computational complexity, have been somewhat overlooked so that, when such methods are used in practical problems, remarkable drawbacks may arise. This is why parameter estimation is often performed using empirical procedures. This paper aims to revisit the issue of setting up an estimator that is able to provide reliable estimates at low computational cost. In contrast to other paradigms, the main idea in the new introduced two-stage estimation method is to retrieve the estimator through simulation experiments in a training phase. Once training is terminated, the user is provided with an explicitly given estimator that can be used over and over basically with no computational effort. The advantages and drawbacks of the two-stage approach as well as other traditional paradigms are identified with an illustrative example. A more concrete example of tire parameter estimation is also provided.
机译:在本文中,我们考虑了系统识别中的一个基本问题,即通过使用输入/输出数据来估计给定模型的未知参数的问题。可用的方法(扩展卡尔曼滤波,无味卡尔曼滤波,粒子滤波,最大似然,预测误差方法等)已在文献中进行了广泛研究,尤其是与一致性分析有关。然而,其他重要方面,例如计算复杂度,在某种程度上已被忽略,因此,当将这些方法用于实际问题时,可能会出现明显的缺点。这就是为什么通常使用经验程序执行参数估计的原因。本文旨在重新探讨设置估算器的问题,该估算器能够以较低的计算成本提供可靠的估算。与其他范例相反,新引入的两阶段估计方法的主要思想是在训练阶段通过模拟实验来检索估计器。训练终止后,将为用户提供一个明确给出的估算器,该估算器可以反复使用,而无需计算。两阶段方法以及其他传统范式的优缺点通过一个说明性示例来确定。还提供了轮胎参数估计的更具体示例。

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