Title of article :
Real-time adaptive cruise controller with neural network model trained by multiobjective model predictive controller data
Author/Authors :
Samani, Behzad Candidate - K.N.Toosi University of technology , Shamekhi, Amir Hossein K.N.Toosi University of technology
Abstract :
In this paper, an adaptive cruise control system is designed that is
controlled by a neural network model. This neural network model is
trained with data resulting from the simulation of a multi-objective
adaptive cruise control system. For this purpose, first, an adaptive cruise
control system was designed using the concept of model predictive control
to maintain the desired speed of the driver, maintain a safe distance with
the car in front, reduce fuel consumption and increase ride comfort. Due
to the time-consuming computations in predictive control systems and the
consequent need for powerful and expensive hardware, it was decided to
use the extracted data from the simulation of this designed cruise control
system to train a neural network model and use this model to achieve
control objectives instead of the predictive controller. Using the neural
network model in the cruise control system, despite a significant reduction
in computation time, the control objectives were well achieved, and in fact
the model predictive controller accuracy and the neural network controller
speed is combined.
Keywords :
Comfort , Adaptive Cruise Control , Model Predictive Control , Artificial Neural Networks , Fuel Consumption
Journal title :
Automotive Science and Engineering