基于随机有限集的动态数据驱动仿真数据同化算法

Peng Wang, Ge Li, Rusheng Ju, Xiang Zhang, Kedi Huang, Zhonghua Yang
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引用次数: 0

摘要

计算机模拟早已被用于研究和预测复杂系统的行为。随着传感器和网络技术的发展,实时测量的可用性和保真度大大提高。这使得动态数据驱动仿真这一新的仿真范式越来越受欢迎。它可以吸收实时测量,以便更好地分析和预测复杂系统。数据同化技术是动态数据驱动仿真的基础,但传统的基于粒子滤波的数据同化算法已不能满足实际应用需求。在本文中,我们研究了如何利用实时测量进行动态数据驱动仿真。针对标准数据同化算法的局限性,提出了一种新的基于随机有限集的数据同化算法。介绍了数据同化过程中使用的基于随机有限集的测量模型和仿真模型。给出了基于随机有限集的数据同化算法的具体实现。以反盗版为例,对所提出的数据同化算法进行了实际验证。通过实验验证了该算法的有效性和准确性。
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Random finite set based data assimilation algorithm for dynamic data driven simulation
Computer simulation has long been used for studying and predicting behaviors of complex systems. With the recent advances in sensor and network technologies, the availability and fidelity of real time measurements have been greatly increased. This makes the new simulation paradigm of dynamic data driven simulation more and more popular. It can assimilate the real time measurements for much better analysis and prediction of complex systems. Data assimilation techniques are the foundation of the dynamic data driven simulation, but the traditional particle filter based data assimilation algorithms can't meet the actual application requirements. In this paper, we study how to utilize the real time measurements for the dynamic data driven simulation. A new random finite set based data assimilation algorithm is proposed to overcome the limitations of the standard data assimilation algorithms. The random finite set based measurement model and simulation model that are used in the data assimilation process are introduced. The detailed implementation of the random finite set based data assimilation algorithm is presented. The study case with anti-piracy is used to practically illustrate the proposed data assimilation algorithm. The effectiveness and accuracy of the algorithm are checked by experiments.
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