Title of article :
Adaptive Fusion of Inertial Navigation System and Tracking Radar Data
Author/Authors :
fathi ، m. - Malek Ashtar University of Technology , Ghahramani ، N. - Malek Ashtar University of Technology , Ashtiani ، M. A. S. - Malek Ashtar University of Technology , Mohammadi ، A. - Malek Ashtar University of Technology , Fallah ، M. - Malek Ashtar University of Technology
Pages :
11
From page :
81
To page :
91
Abstract :
Against the range-dependent accuracy of the tracking radar measurements including range, elevation and bearing angles, a new hybrid adaptive Kalman filter is proposed to enhance the performance of the radar aided strapdown inertial navigation system (INS/Radar). This filter involves the concept of residual-based adaptive estimation and adaptive fading Kalman filter, and tunes dynamically the filter parameters, including the fading factors and the measurement and process noises scaling factors based on the ratio of the actual residual covariance to the theoretical one. In fact, due to the unknown and fastvarying statistical parameters of the radar measurement noises and their nonlinear characteristics, applying a conventional Kalman filter to INS/Radar fusion yields a low-performance navigation and in-flight alignment. The Monte Carlo simulation results of the integrated navigation system on an interceptor missile trajectory indicate the new algorithm has an effective performance in the face of nonlinearities and uncertainties of the tracking radar measurements. These results allow knowing whether the fine inflight alignment and high-performance navigation can be possible for the long-range air defense missile using the low-cost INS/Radar system without aiding global navigation satellite system signals.
Keywords :
Adaptive Kalman Filter , Inertial Navigation , In , flight Alignment , Radar
Journal title :
Amirkabir International Journal of Electrical Electronics Engineering
Serial Year :
2016
Journal title :
Amirkabir International Journal of Electrical Electronics Engineering
Record number :
2454275
Link To Document :
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