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タイトルRepresentation of Probability Density Functions from Orbit Determination using the Particle Filter
本文(外部サイト)http://hdl.handle.net/2060/20120017458
著者(英)Mashiku, Alinda K.; Garrison, James; Carpenter, J. Russell
著者所属(英)NASA Goddard Space Flight Center
発行日2012-10-29
言語eng
内容記述Statistical orbit determination enables us to obtain estimates of the state and the statistical information of its region of uncertainty. In order to obtain an accurate representation of the probability density function (PDF) that incorporates higher order statistical information, we propose the use of nonlinear estimation methods such as the Particle Filter. The Particle Filter (PF) is capable of providing a PDF representation of the state estimates whose accuracy is dependent on the number of particles or samples used. For this method to be applicable to real case scenarios, we need a way of accurately representing the PDF in a compressed manner with little information loss. Hence we propose using the Independent Component Analysis (ICA) as a non-Gaussian dimensional reduction method that is capable of maintaining higher order statistical information obtained using the PF. Methods such as the Principal Component Analysis (PCA) are based on utilizing up to second order statistics, hence will not suffice in maintaining maximum information content. Both the PCA and the ICA are applied to two scenarios that involve a highly eccentric orbit with a lower apriori uncertainty covariance and a less eccentric orbit with a higher a priori uncertainty covariance, to illustrate the capability of the ICA in relation to the PCA.
NASA分類Statistics and Probability
レポートNOGSFC.CP.7489.2012
権利Copyright, Distribution as joint owner in the copyright


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