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Neural Network-Based Modeling for Fuel Consumption Prediction of Vehicle  

Lee, Min-Goo (Korea Electronics Technology Institute)
Jung, Kyung-Kwon (Korea Electronics Technology Institute)
Yi, Sang-Hoi (Dept. of Digital Electronics, Dong Seoul College)
Publication Information
전자공학회논문지 IE / v.48, no.2, 2011 , pp. 19-25 More about this Journal
Abstract
This paper presented neural network modeling method using vehicle data to predict fuel consumption. To acquire data for training and testing the proposed neural network, medium-class gasoline vehicle drove at downtown and parameters measured include speed, engine rpm, throttle position sensor (TPS), and mass air flow (MAF) as input data, and fuel consumption as target data from OBD-II port. Multi layer perception network was used for nonlinear mapping between the input and the output data. It was observed that the neural network model can predict the vehicle quite well with mean squared error was $1.306{\times}10^{-6}$ for the fuel consumption.
Keywords
fuel consumption; neural network; OBD-II; RPM; TPS; MAF;
Citations & Related Records
Times Cited By KSCI : 1  (Citation Analysis)
연도 인용수 순위
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