Author/Authors :
Abtahi, M Faculty of Industrial and Mechanical Engineering - Qazvin Branch - Islamic Azad University - Qazvin, Iran
Abstract :
In this paper, I propose an intelligent approach for the dynamic identification of vehicles. The developed
approach is based upon data-driven identification and uses a high performance local model network (LMN)
for estimation of the vehicle longitudinal velocity, lateral acceleration, and yaw rate. The proposed LMN
requires no pre-defined standard vehicle model, and uses measurement data to identify vehicle dynamics.
LMN is trained by the hierarchical binary tree learning algorithm, which results in a network with maximum
generalizability and the best linear or non-linear structure. The proposed approach is applied to a
measurement dataset obtained from a Volvo V70 vehicle in order to estimate its longitudinal velocity, lateral
acceleration, and yaw rate. The identification results reveal that LMN can identify accurately the vehicle
dynamics. Furthermore, comparison of the LMN results and a multi-layer perceptron neural network
demonstrates the far better performance of the proposed approach
Keywords :
Vehicle Dynamics , Identification Neural Network , Hierarchical Binary Tree , Local Model Network