Bayesian state estimation in partially-observed dynamic multidisciplinary systems

Negar Asadi, S. F. Ghoreishi
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引用次数: 1

Abstract

Multidisciplinary systems comprise several disciplines that are connected to each other with feedback coupled interactions. These coupled multidisciplinary systems are often observed through sensors providing noisy and partial measurements from these systems. A large number of disciplines and their complex interactions pose a huge uncertainty in the behavior of multidisciplinary systems. The reliable analysis and monitoring of these partially-observed multidisciplinary systems require an accurate estimation of their underlying states, in particular the coupling variables which characterize their stability. In this paper, we present a probabilistic state-space formulation of coupled multidisciplinary systems and develop a particle filtering framework for state estimation of these systems through noisy time-series measurements. The performance of the proposed framework is demonstrated through comprehensive numerical experiments using a coupled aerostructural system and a fire detection satellite. We empirically analyze the impact of monitoring a single discipline on state estimation of the entire coupled system.
部分观测动态多学科系统的贝叶斯状态估计
多学科系统包括几个学科,这些学科通过反馈耦合的相互作用相互连接。这些耦合的多学科系统通常通过传感器从这些系统中提供噪声和部分测量来观察。大量的学科及其复杂的相互作用给多学科系统的行为带来了巨大的不确定性。要对这些部分观测到的多学科系统进行可靠的分析和监测,需要对其潜在状态进行准确的估计,特别是表征其稳定性的耦合变量。在本文中,我们提出了耦合多学科系统的概率状态空间公式,并开发了一个粒子滤波框架,用于通过噪声时间序列测量来估计这些系统的状态。通过一个耦合航空结构系统和一颗火灾探测卫星的综合数值实验,验证了该框架的性能。我们实证分析了监测单个学科对整个耦合系统状态估计的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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