DocumentCode :
2831451
Title :
New artificial intelligence based tire size identification for fast and safe inflating cycle
Author :
Kahandawa, Gayan ; Choudhury, T.A. ; Ibrahim, M. Yousef ; Dzitac, Pavel ; Md Mazid, Abdul
Author_Institution :
Sch. of Eng. & Inf. Technol., Fed. Univ. Australia, Gippsland, VIC, Australia
fYear :
2015
fDate :
17-19 March 2015
Firstpage :
1729
Lastpage :
1734
Abstract :
Motor vehicle accidents are one of the main killers on the road. Modern vehicles have several safety features to improve the stability and controllability. The tire condition is critical to the proper function of the designed safety features. Under or over inflated tires adversely affects the stability of vehicles. It is generally the vehicle´s user responsibility to ensure the tire inflation pressure is set and maintained to the required value using a tire inflator. In the tire inflator operation, the vehicle´s user sets the desired value and the machine has to complete the task. During the inflation process, the pressure sensor does not read instantaneous static pressure to ensure the target value is reached. Hence, the inflator is designed to stop repetitively for pressure reading and avoid over inflation. This makes the inflation process slow, especially for large tires. This paper presents a novel approach using artificial neural network based technique to identify the tire size. Once the tire size is correctly identified, an optimized inflation cycle can be computed to improve performance, speed and accuracy of the inflation process. The developed neural network model was successfully simulated and tested for predicting tire size from the given sets of input parameters. The test results are analyzed and discussed in this paper.
Keywords :
controllability; inflatable structures; mechanical stability; neurocontrollers; pressure sensors; road accidents; road safety; road vehicles; tyres; artificial intelligence; artificial neural network model; controllability; inflated tires; inflation pressure; inflation process; instantaneous static pressure; modern vehicles; motor vehicle accidents; optimized inflation cycle; pressure reading; pressure sensor; safe inflating cycle; safety features; tire condition; tire inflator; tire size identification; vehicle stability; vehicle user responsibility; Artificial neural networks; Australia; Neurons; Safety; Tires; Training; Vehicles; artificial neural network; back-propagation algorithm; microcontroller applications; sensors; tire safety;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Industrial Technology (ICIT), 2015 IEEE International Conference on
Conference_Location :
Seville
Type :
conf
DOI :
10.1109/ICIT.2015.7125347
Filename :
7125347
Link To Document :
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