Title of article :
Calibration of an Inertial Accelerometer using Trained Neural Network by Levenberg-Marquardt Algorithm for Vehicle Navigation
Author/Authors :
Ghaffari, A Professor - Mechanical Engineering Department - K.N.Toosi University of Technology, Tehran , Khodayari, A Postdoctoral Researcher - Mechanical Engineering Department - K.N.Toosi University of Technology, Tehran , Arefnezhad, S M.Sc. Mechanical Engineering Department - K.N.Toosi University of Technology, Tehran
Abstract :
The designing of advanced driver assistance systems and autonomous vehicles needs measurement of
dynamical variations of vehicle, such as acceleration, velocity and yaw rate. Designed adaptive controllers
to control lateral and longitudinal vehicle dynamics are based on the measured variables. Inertial MEMSbased
sensors have some benefits including low price and low consumption that make them suitable
choices to use in vehicle navigation problems. However, these sensors have some deterministic and
stochastic error sources. These errors could diverge sensor outputs from the real values. Therefore,
calibration of the inertial sensors is one of the most important processes that should be done in order to
have the exact model of dynamical behaviors of the vehicle. In this paper, a new method, based on artificial
neural network, is presented for the calibration of an inertial accelerometer applied in the vehicle
navigation. Levenberg-Marquardt algorithm is used to train the designed neural network. This method has
been tested in real driving scenarios and results show that the presented method reduces the root mean
square error of the measured acceleration up to 96%. The presented method can be used in managing the
traffic flow and designing collision avoidance systems.
Keywords :
Calibration , Inertial Accelerometer , Levenberg-Marquardt Algorithm , Neural Network , Vehicle Navigation
Journal title :
Astroparticle Physics