Design and implementation of a model predictive observer for AHRS

被引:0
作者
Jafar Keighobadi
Hamid Vosoughi
Javad Faraji
机构
[1] University of Tabriz,Department of Mechanical Engineering
来源
GPS Solutions | 2018年 / 22卷
关键词
Moving horizon estimation; Model predictive observer; Duality; MPC; AHRS; INS/GPS;
D O I
暂无
中图分类号
学科分类号
摘要
A GPS-aided Inertial Navigation System (GAINS) is used to determine the orientation‚ position and velocity of ground and aerial vehicles. The data measured by Inertial Navigation System (INS) and GPS are commonly integrated through an Extended Kalman Filter (EKF). Since the EKF requires linearized models and complete knowledge of predefined stochastic noises‚ the estimation performance of this filter is attenuated by unmodeled nonlinearity and bias uncertainties of MEMS inertial sensors. The Attitude Heading Reference System (AHRS) is applied based on the quaternion and Euler angles methods. A moving horizon-based estimator such as Model Predictive Observer (MPO) enables us to approximate and estimate linear systems affected by unknown uncertainties. The main objective of this research is to present a new MPO method based on the duality principle between controller and observer of dynamic systems and its implementation in AHRS mode of a low-cost INS aided by a GPS. Asymptotic stability of the proposed MPO is proven by applying Lyapunov’s direct method. The field test of a GAINS is performed by a ground vehicle to assess the long-time performance of the MPO method compared with the EKF. Both the EKF and MPO estimators are applied in AHRS mode of the MEMS GAINS for the purpose of real-time performance comparison. Furthermore‚ we use flight test data of the GAINS for evaluation of the estimation filters. The proposed MPO based on both the Euler angles and quaternion methods yields better estimation performances compared to the classic EKF.
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共 32 条
[1]  
Bucy RS(1970)Linear and nonlinear filtering Proc IEEE 58 854-864
[2]  
Doostdar P(2012)Design and implementation of SMO for a nonlinear MIMO AHRS Mech Syst Signal Process 32 94-115
[3]  
Keighobadi J(2010)Predictive iterated Kalman filter for INS/GPS integration and its application to SAR motion compensation IEEE Trans Instrum Meas 59 909-915
[4]  
Fang J(2000)Extended Kalman filter synthesis for integrated global positioning/inertial navigation systems Appl Math Comput 115 213-227
[5]  
Gong X(2003)Adaptive Kalman filtering for low-cost INS/GPS J Navig 56 143-152
[6]  
Faruqi FA(2011)An enhanced fuzzy H∞ estimator applied to low-cost attitude-heading reference system Kybernetes 40 300-326
[7]  
Turner KJ(2001)Neuro fuzzy model for adaptive filtering of oscillatory signals Measurement 30 231-239
[8]  
Hide C(2015)Adaptive fuzzy neuro-observer applied to low cost INS/GPS Appl Soft Comput 29 82-94
[9]  
Moore T(2000)New developments in state estimation for nonlinear systems Automatica 36 1627-1638
[10]  
Smith M(1996)A moving horizon-based approach for least-squares estimation AIChE J 42 2209-2224