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A covariance based framework for the propagation of uncertainty through inverse problems with an application to force identification

机译:基于协方差的反问题传播不确定性框架及其在力识别中的应用

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Inverse problems are widely encountered in fields as diverse as physics, geophysics, engineering and finance. In the present paper, a covariance based framework for the estimation of their uncertainty is presented and applied to the problem of inverse force identification. A key step in its application involves the propagation of frequency response function (FRF) uncertainty through a matrix inversion, for example, between mobility and impedance. To this end a Linearised Inverse Propagation relation is derived. This relation may be considered a generalisation of work presented in the particle physics literature, where we consider both complex valued and non-square matrices through a bivariate description of their uncertainty. Results are illustrated, first, through a numerical simulation where force-moment pairs are applied to a free-free beam model. An experimental study then illustrates the in-situ determination of blocked forces and their subsequent use in the prediction of an operational response. The uncertainties predicted by the proposed framework are in agreement with those acquired through Monte-Carlo (MC) methods for small input variance but are obtained at much lower computational cost, and with improved insight. In the process of illustrating the propagation framework, matrix condition number, often taken as an indicator of uncertainty, is shown to relate poorly to a more rigorous uncertainty estimate, leaving open the question as to whether condition number is an appropriate indicator of experimental uncertainty. Crown Copyright (C) 2018 Published by Elsevier Ltd. All rights reserved.
机译:反问题在物理学,地球物理学,工程学和金融学等领域广泛遇到。在本文中,提出了一种基于协方差的不确定性估计框架,并将其应用于反力识别问题。其应用中的关键步骤涉及通过矩阵求逆(例如,在迁移率和阻抗之间)传播频率响应函数(FRF)不确定性。为此,得出线性化逆传播关系。这种关系可以看作是粒子物理学文献中提出的工作的概括,在该文献中,我们通过对它们的不确定性进行双变量描述来考虑复值矩阵和非平方矩阵。首先,通过数值模拟说明了结果,其中,力-力矩对应用于自由-自由梁模型。然后,一项实验研究说明了在原位确定受阻力及其在预测操作响应中的后续用途。提出的框架所预测的不确定性与通过蒙特卡洛(MC)方法获得的不确定性相一致,从而获得了较小的输入方差,但是这些不确定性的计算成本低得多,洞察力也得到了提高。在说明传播框架的过程中,经常被视为不确定性指标的矩阵条件数与更严格的不确定性估计之间的联系不佳,从而使人们无法确定条件数是否是实验不确定性的适当指标。 Crown版权所有(C)2018,由Elsevier Ltd.出版。保留所有权利。

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