Volume 12, Issue 1 (March 2016)                   IJEEE 2016, 12(1): 21-28 | Back to browse issues page


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Mousavi Moaiied M, Mosavi M R. Increasing Accuracy of Combined GPS and GLONASS Positioning using Fuzzy Kalman Filter. IJEEE 2016; 12 (1) :21-28
URL: http://ijeee.iust.ac.ir/article-1-808-en.html
Abstract:   (5327 Views)

In this paper, combined GPS and GLONASS positioning systems are discussed and some solutions have been proposed to improve the accuracy of navigation. Global Satellite Navigation System (GNSS) is able to provide position, velocity and time with respect to coordinated universal time. GNSS positioning is based on received satellite signals, so its performance is highly dependent on the quality of these received signals. The effect of noise and multi-path can often be large enough to produce significant errors in positioning. Satellite navigation is difficult in this situation. In such circumstances, GPS or GLONASS alone are often not able to ensure consistency and accuracy in positioning due to the absence (or low quality) of signals. The combination of these two systems is an appropriate solution to improve the situation. In positioning a receiver, one of the ways that is often used to reduce the error due to observation noise and calculation errors is Kalman Filter (KF) estimation. In this paper, some changes in the structure of the KF is applied to improve the accuracy of positioning. Process of updating KF's gain, is done in fuzzy form based on the parameters available in RINEX files, including the P code pseudo-range used as an input of the proposed fuzzy system. Simulation results show that applying a fuzzy KF based on P code pseudo-range on the available data sets, in terms of noise and blocking condition, reduces the positioning error respectively from 24 to 14 meters and 90 to 25 meters.

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Type of Study: Research Paper | Subject: Filtering, Smoothing and Estimation
Received: 2015/06/12 | Revised: 2017/08/23 | Accepted: 2015/12/26

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© 2022 by the authors. Licensee IUST, Tehran, Iran. This is an open access journal distributed under the terms and conditions of the Creative Commons Attribution-NonCommercial 4.0 International (CC BY-NC 4.0) license.