Parameter identification and reconstruction for distributed phenomena based on hybrid density filter

F. Sawo, Marco F. Huber, U. Hanebeck
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引用次数: 9

Abstract

This paper addresses the problem of model-based reconstruction and parameter identification of distributed phenomena characterized by partial differential equations. The novelty of the proposed method is the systematic approach and the integrated treatment of uncertainties, which naturally occur in the physical system and arise from noisy measurements. The main challenge of accurate reconstruction is that model parameters, i.e., diffusion coefficients, of the physical model are not known in advance and usually need to be identified. Generally, the problem of parameter identification leads to a nonlinear estimation problem. Hence, a novel efficient recursive procedure is employed. Unlike other estimators, the so-called Hybrid Density Filter not only assures accurate estimation results for nonlinear systems, but also offers an efficient processing. By this means it is possible to reconstruct and identify distributed phenomena monitored by autonomous wireless sensor networks. The performance of the proposed estimation method is demonstrated by means of simulations.
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基于混合密度滤波的分布现象参数辨识与重构
本文研究了以偏微分方程为特征的分布现象的基于模型的重构和参数辨识问题。提出的方法的新颖之处在于系统的方法和对不确定性的综合处理,不确定性自然出现在物理系统中,并由噪声测量引起。精确重建的主要挑战是物理模型的模型参数,即扩散系数,是事先不知道的,通常需要识别。通常,参数辨识问题会导致非线性估计问题。因此,采用了一种新颖高效的递归过程。与其他估计器不同,所谓的混合密度滤波器不仅保证了非线性系统的准确估计结果,而且提供了高效的处理。通过这种方法,可以重建和识别由自主无线传感器网络监测的分布式现象。通过仿真验证了所提估计方法的有效性。
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