Improving measurement performance via fusion of classical and quantum accelerometers
Loading...
Date
Authors
Wang, Xuezhi
Kealy, Allison
Gilliam, Christopher
Haine, Simon
Close, John
Moran, Bill
Talbot, Kyle
Williams, Simon
Hardman, Kyle
Freier, Chris
Journal Title
Journal ISSN
Volume Title
Publisher
Access Statement
Abstract
While quantum accelerometers sense with extremely low drift and low bias, their practical sensing capabilities face at least two limitations compared with classical accelerometers: a lower sample rate due to cold atom interrogation time; and a reduced dynamic range due to signal phase wrapping. In this paper, we propose a maximum likelihood probabilistic data fusion method, under which the actual phase of the quantum accelerometer can be unwrapped by fusing it with the output of a classical accelerometer on the platform. Consequently, the recovered measurement from the quantum accelerometer is used to estimate bias and drift of the classical accelerometer which is then removed from the system output. We demonstrate the enhanced error performance achieved by the proposed fusion method using a simulated 1D accelerometer precision test scenario. We conclude with a discussion on fusion error and potential solutions.
Description
Citation
Collections
Source
Journal of Navigation
Type
Book Title
Entity type
Publication