Publication:
Comparative study of artificial neural network and mathematical model on marine diesel engine performance prediction

Date
2018
Authors
Noor C.W.M.
Mamat R.
Ahmed A.N.
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ICIC International
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Abstract
The investigation of marine diesel engines is still limited and considered new in both: physical testing and prediction. Therefore, this study deals with an artificial neural network (ANN) modeling for a marine diesel engine performance prediction such as the brake power (BP), brake specific fuel consumption (BSFC), brake thermal efficiency (BTE), volumetric efficiency (VE), exhaust gas temperature (EGT) and nitrogen oxide (NOX) emissions. Input data for network training was gathered from laboratory engine testing operated at various speed, load and fuel blends. ANN prediction model was developed based on standard back-propagation with Levenberg-Marquardt training algorithm. The performance of the model was validated by comparing the prediction data sets with the experimental data and the output from the mathematical model. Results showed that the ANN model provided a good agreement to the experimental data with the coefficient of determinations (R2) of 0.99. Mean absolute prediction error (MAPE) of ANN and the mathematical model is between 1.57-9.32% and 4.06-28.35% respectively. These values indicate that the developed ANN model is more reliable and accurate than the mathematical model. The present study reveals that the ANN approach can be used to predict the performance of marine diesel engine with high accuracy. � 2018, ICIC International. All rights reserved.
Description
Backpropagation algorithms; Brakes; Efficiency; Forecasting; Fuel consumption; Gas emissions; Load testing; Marine engines; Mathematical models; Neural networks; Nitrogen oxides; Artificial neural network models; Brake specific fuel consumption; Brake thermal efficiency; Coefficient of determination; Engine performance; Levenberg-Marquardt training algorithm; Marine Diesel Engines; Mean absolute prediction error; Diesel engines
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