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dc.contributor.author Schaffrin B.
dc.contributor.author Kwon J.H.
dc.date.accessioned 2021-04-20T00:44:56Z
dc.date.available 2021-04-20T00:44:56Z
dc.date.issued 2002
dc.identifier https://www.elibrary.ru/item.asp?id=1205292
dc.identifier.citation Geophysical Journal International, 2002, 149, 1, 64-75
dc.identifier.issn 0956-540X
dc.identifier.uri https://repository.geologyscience.ru/handle/123456789/28150
dc.description.abstract We introduce a dynamic linear model in which the observation equations are perturbed by a form that has constant (over time), non-random coefficients and may represent the disturbing gravity field under investigation. Because of its non-random behaviour, their form cannot be determined using Friedland's generalization of the Kalman filter. However, after putting it in dual form ('Bayes filter'), Friedland's approach can be further generalized to also cover the present case. This (apparently new) filter version is then employed to estimate the disturbing gravity vector from airborne INS/GPS data, following the ideas of Jekeli & Kwon (1999) for the combined analysis. Thus, the filter acts on the integration of INS and GPS acceleration vectors where the discrepancies are simultaneously modelled in terms of random system 'biases', i.e. self-calibration, and the local non-random disturbing gravity vector. We do not introduce a second filter step ('cascaded filter'), owing to problems with neglected correlations in a two-step procedure. The new results are eventually compared with those of a related algorithm that may be interpreted as Kalman filtering with 'partial regularization', effectively using a stochastic gravity field representation. Improvements of between 10 per cent ('down' direction) and 60 per cent (north direction) were achieved, which we attribute in large part to the use of the disturbing gravity vector as a non-stochastic quantity.
dc.subject GENERALIZED KALMAN/BAYES FILTERING
dc.subject INS/GPS INTEGRATION
dc.subject NON-RANDOM GRAVITY FIELD REPRESENTATION
dc.subject VECTOR GRAVIMETRY
dc.title A BAYES FILTER IN FRIEDLAND FORM FOR INS/GPS VECTOR GRAVIMETRY
dc.type Статья


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