Unmanned Vehicle Trajectory Tracking by Neural Networks

Unmanned Vehicle Trajectory Tracking by Neural Networks

Samira Chouraqui and Boumediene Selma

Department of Computer Sciences, University of Sciences and Technologies of Oran USTO’MB, Algeria

 

Abstract: This paper, deals with a path planning and intelligent control of an autonomous vehicle which should move safely in its road partially structured. This road, involves a number of obstacles like donkey, traffic lights and other vehicles. In this paper, the Neural Networks (NN)-based technique Artificial Neural Network (ANN) is described to solve the motion-planning problem in Unmanned Vehicle (UV) control. This is accomplished by choosing the appropriate inputs/outputs and by carefully training the ANN. The network is supplied with distances of the closest obstacles around the vehicle to imitate what a human driver would see. The output is the acceleration and steering of the vehicle. The network has been trained with a set of strategic input-output. The results show the effectiveness of the technique used, the UV drives around avoiding obstacles.

Keywords: UV, NN, control.

Received March 22, 2013; accepted March 19, 2014

 

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