Title of article :
Prediction of emissions and exhaust temperature for direct injection diesel enginewith emulsied fuel using ANN
Author/Authors :
KOKKULUNK, Gorkem Yldz Technical University - Faculty of Naval Architecture and Maritime - Department of Marine Engineering, Turkey , AKDOGAN, Erhan Yldz Technical University - Faculty of Mechanical Engineering - Department of Mechatronics Engineering, Turkey , AYHAN, Vezir Sakarya University - Faculty of Technical Education - Department of Mechanical Education, Turkey
Abstract :
Exhaust gases have many e ects on human beings and the environment. Therefore, they must be kept under control. The International Convention for the Prevention of Pollution from Ships (MARPOL), which is concerned with the prevention of marine pollution, limits the emissions according to the regulations. In Emission Control Area (ECA) regions, which are determined by MARPOL as ECAs, the emission rates should be controlled. Direct injection (DI) diesel engines are commonly used as a propulsion system on ships. The prediction and control of diesel engine emission rates is not an easy task in real time. Therefore, in this study, an articial neural network (ANN) structure using the back propagation (BP) learning algorithm and radial basis function (RBF) has been developed to predict the emissions and exhaust temperature for DI diesel engines with emulsied fuel. In order to show the ANN performance, the network outputs and experimental results of the BP and RBF have been compared in this paper. The experimental results were obtained from a real diesel engine. The results showed that the emissions and exhaust temperature were estimated with a very high accuracy by means of the designed neural network structures and the RBF is more reliable than the BP.
Keywords :
Neural networks , emulsied fuel , diesel engine emissions , back propagation , radial basis function
Journal title :
Turkish Journal of Electrical Engineering and Computer Sciences
Journal title :
Turkish Journal of Electrical Engineering and Computer Sciences