Title of article :
GPS/INS Integration for Vehicle Navigation based on INS Error Analysis in Kalman Filtering
Author/Authors :
Emami Shaker, M. R M.Sc. Student - Mechanical Engineering Department - Science and Research Branch - Islamic Azad University, Tehran , Ghaffari, A Professor - Mechanical Engineering Department - K.N.Toosi University of Technology, Tehran , Maghsoodpour, A Assistant Professor - Mechanical Engineering Department - Science and Research Branch - Islamic Azad University, Tehran , Khodayari, A Associate Professor - Mechanical Engineering Department - Pardis Branch - Islamic Azad University, Tehran
Abstract :
The Global Positioning System (GPS) and an Inertial Navigation System (INS) are two basic navigation
systems. Due to their complementary characters in many aspects, a GPS/INS integrated navigation system
has been a hot research topic in the recent decade. The Micro Electrical Mechanical Sensors (MEMS)
successfully solved the problems of price, size and weight with the traditional INS. Therefore they are
commonly applied in GPS/INS integrated systems. The biggest problem of MEMS is the large sensor
errors, which rapidly degrade the navigation performance in an exponential speed. Three levels of
GPS/IMU integration structures, i.e. loose, tight and ultra tight GPS/IMU navigation, are proposed by
researchers. The loose integration principles are given with detailed equations as well as the basic INS
navigation principles. The Extended Kalman Filter (EKF) is introduced as the basic data fusion algorithm,
which is also the core of the whole navigation system to be presented. The kinematic constraints of land
vehicle navigation, i.e. velocity constraint and height constraint, are presented. A detailed implementation
process of the GPS/IMU integration system is given. Based on the system model, we show the propagation
of position standard errors with the tight integration structure under different scenarios. A real test with
loose integration structure is carried out, and the EKF performances as well as the physical constraints are
analyzed in detail.
Keywords :
GPS/INS Integration , Vehicle Navigation , INS Error Analysis , Kalman Filtering
Journal title :
Astroparticle Physics