DocumentCode
3209375
Title
Neural network technique for real-time classification automotive problem
Author
Vergidis, A. ; Howlett, R.J.
Author_Institution
Brighton Univ., UK
fYear
1997
fDate
35559
Firstpage
42583
Lastpage
42586
Abstract
Although a large number of neural architectures exist and are applied to a wide range of problems, there continues to be a need for fast real time neural network classifiers, especially in the area of sensor interpretation. Moreover, a need currently exists for cost efficient neural network solutions for automotive applications. An algorithm suitable for this task should be fast and dependable and its hardware platform should be able to operate reliably under challenging conditions such as found in the engine compartment of a vehicle (e.g. temperature, humidity and motion). Work in this area has lead to the idea of neural networks implemented on multiple microprocessor systems (R.J. Howlett and D.H. Lawrence, 1995). The paper describes a novel neural network architecture and implementation, which has the potential to eventually lead to a system that will be able to satisfy the above needs
Keywords
automobile industry; automotive applications; cost efficient neural network solutions; engine compartment; fast real time neural network classifiers; hardware platform; multiple microprocessor systems; neural architectures; neural network architecture; neural network technique; real time classification automotive problem; sensor interpretation;
fLanguage
English
Publisher
iet
Conference_Titel
Neural and Fuzzy Systems: Design, Hardware and Applications (Digest No: 1997/133), IEE Colloquium on
Conference_Location
London
Type
conf
DOI
10.1049/ic:19970737
Filename
643121
Link To Document