Predictability of artificial neural network (ANN) in performance prediction of a retrofitted CNG engine

Compressed natural gas (CNG) is a potential alternative of liquid petroleum fuel in automotive application. The combustion process of CNG in engine is a complex thermodynamic process and highly sensitive with operating conditions. Additionally, the experimental investigations of engine performance a...

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Main Authors: Jahirul, M.I., Saidur, Rahman, Masjuki, Haji Hassan
Format: Article
Published: University of Malaya 2010
Subjects:
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author Jahirul, M.I.
Saidur, Rahman
Masjuki, Haji Hassan
author_facet Jahirul, M.I.
Saidur, Rahman
Masjuki, Haji Hassan
author_sort Jahirul, M.I.
collection UM
description Compressed natural gas (CNG) is a potential alternative of liquid petroleum fuel in automotive application. The combustion process of CNG in engine is a complex thermodynamic process and highly sensitive with operating conditions. Additionally, the experimental investigations of engine performance are time consuming and quite expensive. Present study utilized artificial neural networks (ANN) modeling technique to evaluate the performance of a retrofitted automotive CNG engine. Back propagation (BP) neural network with single hidden-layer and logistic sigmoid transfer function was used to optimize prediction model performance. The neural networks toolbox of MatLab 7 was used to train and test the prediction models. Engine speed (rpm), throttle position () and operation time (min) were used as the input layers, while engine thermal efficiency (η, ), brake power (bp, kW), break specific fuel consumption (bsfc, kg/kWh) and exhaust temperature (Tex, °C) were used in output layers. For each performance parameter two prediction models, trained with 12 and 24 set of experimental data, were developed in order to investigate the prediction ability of ANN in different number of training samples. After successful model development, CNG performance parameters were simulated with new set of input parameter. Simulation results then compared with experimental results and prediction performance of ANN were evaluated statistically. The results of this study show that ANN is an appropriate modeling technique to estimate performance of the engine used in the experiments. Moreover the prediction ability of ANN models was significantly improved with increasing number of training sample.
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spelling um.eprints-67622018-10-19T01:16:53Z http://eprints.um.edu.my/6762/ Predictability of artificial neural network (ANN) in performance prediction of a retrofitted CNG engine Jahirul, M.I. Saidur, Rahman Masjuki, Haji Hassan TA Engineering (General). Civil engineering (General) TJ Mechanical engineering and machinery Compressed natural gas (CNG) is a potential alternative of liquid petroleum fuel in automotive application. The combustion process of CNG in engine is a complex thermodynamic process and highly sensitive with operating conditions. Additionally, the experimental investigations of engine performance are time consuming and quite expensive. Present study utilized artificial neural networks (ANN) modeling technique to evaluate the performance of a retrofitted automotive CNG engine. Back propagation (BP) neural network with single hidden-layer and logistic sigmoid transfer function was used to optimize prediction model performance. The neural networks toolbox of MatLab 7 was used to train and test the prediction models. Engine speed (rpm), throttle position () and operation time (min) were used as the input layers, while engine thermal efficiency (η, ), brake power (bp, kW), break specific fuel consumption (bsfc, kg/kWh) and exhaust temperature (Tex, °C) were used in output layers. For each performance parameter two prediction models, trained with 12 and 24 set of experimental data, were developed in order to investigate the prediction ability of ANN in different number of training samples. After successful model development, CNG performance parameters were simulated with new set of input parameter. Simulation results then compared with experimental results and prediction performance of ANN were evaluated statistically. The results of this study show that ANN is an appropriate modeling technique to estimate performance of the engine used in the experiments. Moreover the prediction ability of ANN models was significantly improved with increasing number of training sample. University of Malaya 2010 Article PeerReviewed Jahirul, M.I. and Saidur, Rahman and Masjuki, Haji Hassan (2010) Predictability of artificial neural network (ANN) in performance prediction of a retrofitted CNG engine. International Journal of Mechanical and Materials Engineering, 5 (2). pp. 268-275. ISSN 1823-0334, http://ejum.fsktm.um.edu.my/article/1003.pdf
spellingShingle TA Engineering (General). Civil engineering (General)
TJ Mechanical engineering and machinery
Jahirul, M.I.
Saidur, Rahman
Masjuki, Haji Hassan
Predictability of artificial neural network (ANN) in performance prediction of a retrofitted CNG engine
title Predictability of artificial neural network (ANN) in performance prediction of a retrofitted CNG engine
title_full Predictability of artificial neural network (ANN) in performance prediction of a retrofitted CNG engine
title_fullStr Predictability of artificial neural network (ANN) in performance prediction of a retrofitted CNG engine
title_full_unstemmed Predictability of artificial neural network (ANN) in performance prediction of a retrofitted CNG engine
title_short Predictability of artificial neural network (ANN) in performance prediction of a retrofitted CNG engine
title_sort predictability of artificial neural network ann in performance prediction of a retrofitted cng engine
topic TA Engineering (General). Civil engineering (General)
TJ Mechanical engineering and machinery
work_keys_str_mv AT jahirulmi predictabilityofartificialneuralnetworkanninperformancepredictionofaretrofittedcngengine
AT saidurrahman predictabilityofartificialneuralnetworkanninperformancepredictionofaretrofittedcngengine
AT masjukihajihassan predictabilityofartificialneuralnetworkanninperformancepredictionofaretrofittedcngengine