Title of article :
Neural network prediction of disc brake performance
Author/Authors :
Aleksendri?، نويسنده , , Dragan and Barton، نويسنده , , David C.، نويسنده ,
Issue Information :
ماهنامه با شماره پیاپی سال 2009
Abstract :
An automotive brakeʹs performance results from the complex interrelated phenomena occurring at the contact of the friction pair. These complex braking phenomena are mostly affected by the tribochemical properties of the friction materialʹs ingredients, the brake disc properties, and the brakeʹs operating regimes. In this paper, the synergistic effects of the friction materialʹs properties, defined by its composition and manufacturing conditions, and the brakeʹs operating regimes on the disc brake factor C variation have been modelled by means of artificial neural networks. The influences of 26 input parameters, determined by the friction material composition (18 ingredients), its manufacturing conditions (5 parameters), and the brakeʹs operating regimes (3 parameters) on the brake factor C variation, have been predicted. The neural model of the disc brake cold performance has been developed by training 18 different neural network architectures with the five different learning algorithms. The optimal neural model of disc brake operation has been shown to be valid for predicting the brake factor C variation of the cold disc brake over a wide range of brakeʹs operating regimes and for different types of friction material.
Keywords :
neural network , Prediction , Disc brake performance , Friction material
Journal title :
Tribology International
Journal title :
Tribology International