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首页> 外文期刊>IMA Journal of Mathematical Control and Information >Guaranteed parameter estimation of non-linear dynamic systems using high-order bounding techniques with domain and CPU-time reduction strategies
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Guaranteed parameter estimation of non-linear dynamic systems using high-order bounding techniques with domain and CPU-time reduction strategies

机译:使用具有域和CPU时间减少策略的高阶有界技术来保证非线性动态系统的参数估计

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摘要

This paper is concerned with guaranteed parameter estimation of non-linear dynamic systems in a context of bounded measurement error. The problem consists of finding-or approximating as closely as possible-the set of all possible parameter values such that the predicted values of certain outputs match their corresponding measurements within prescribed error bounds. A set-inversion algorithm is applied, whereby the parameter set is successively partitioned into smaller boxes and exclusion tests are performed to eliminate some of these boxes, until a given threshold on the approximation level is met. Such exclusion tests rely on the ability to bound the solution set of the dynamic system for a finite parameter subset, and the tightness of these bounds is therefore paramount; equally important in practice is the time required to compute the bounds, thereby defining a trade-off. In this paper, we investigate such a trade-off by comparing various bounding techniques based on Taylor models with either interval or ellipsoidal bounds as their remainder terms. We also investigate the use of optimization-based domain reduction techniques in order to enhance the convergence speed of the set-inversion algorithm, and we implement simple strategies that avoid recomputing Taylor models or reduce their expansion orders wherever possible. Case studies of various complexities are presented, which show that these improvements using Taylor-based bounding techniques can significantly reduce the computational burden, both in terms of iteration count and CPU time.
机译:本文涉及在有界测量误差的情况下非线性动态系统的有保证参数估计。问题在于找到或尽可能接近所有可能的参数值的集合,以使某些输出的预测值在规定的误差范围内与它们的相应测量值匹配。应用集反转算法,从而将参数集连续划分为较小的框,并执行排除测试以消除其中的某些框,直到满足逼近级别的给定阈值为止。这种排除测试依赖于为有限参数子集绑定动态系统解集的能力,因此,这些绑定的紧密性至关重要。在实践中,同样重要的是计算边界所需的时间,从而定义了折衷方案。在本文中,我们通过比较基于泰勒模型的各种边界技术(区间或椭圆边界作为余项)来研究这种折衷。我们还研究了基于优化的域约简技术的使用,以提高集反转算法的收敛速度,并且我们实现了避免重计算泰勒模型或尽可能减少其扩展阶数的简单策略。提出了各种复杂性的案例研究,这些研究表明,使用基于泰勒(Taylor)的边界技术的这些改进可以显着减少迭代次数和CPU时间方面的计算负担。

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