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International Journal of Scientific and Engineering Research
ISSN Online 2229-5518
ISSN Print: 2229-5518 5    
Website: http://www.ijser.org
scirp IJSER >> Volume 3,Issue 5,May 2012
Artificial Neural Networks based Methodologies for Optimization of Engine Operations
Full Text(PDF, )  PP.166-170  
Anant Bhaskar Garg, Parag Diwan, Mukesh Saxena
—Artificial Neural Networks, Architecture, Activation Functions, Alternative Fuels, Engine Parameters, Optimization of Operations, Training, and Modeling
This paper presents overview of applications of artificial neural networks (ANN) in the field of engine development. Various approaches using ANN are highlighted that resulted in better modeling of engine operations. Using ANN we can reduce engine development time. The paper discusses ANN approach, algorithms and importance of architecture. This will also help in advancing ANN research.
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