TY - JOUR
T1 - A review on the application of response surface method and artificial neural network in engine performance and exhaust emissions characteristics in alternative fuel
AU - Yusri, I. M.
AU - Abdul Majeed, A. P.P.
AU - Mamat, R.
AU - Ghazali, M. F.
AU - Awad, Omar I.
AU - Azmi, W. H.
N1 - Funding Information:
Appreciation and acknowledgment are due to the Ministry of Higher Education (KPT) for providing the author with the scholarship under My Brain 15 schemes. This research also was supported by UMP flagship research grant (RDU172204) and FRGS research grant (RDU130131). We thank our colleagues from Automotive Engineering Centre (AEC) and Advanced Automotive Liquid Laboratory (ALL), who provided insight and expertise that greatly assisted the research.
Funding Information:
Appreciation and acknowledgment are due to the Ministry of Higher Education (KPT) for providing the author with the scholarship under My Brain 15 schemes. This research also was supported by UMP flagship research grant ( RDU172204 ) and FRGS research grant ( RDU130131 ). We thank our colleagues from Automotive Engineering Centre (AEC) and Advanced Automotive Liquid Laboratory (ALL), who provided insight and expertise that greatly assisted the research.
Publisher Copyright:
© 2018 Elsevier Ltd
PY - 2018/7
Y1 - 2018/7
N2 - Alternative fuel is one of the widely used fuel substitutions for both petrol and diesel in the field of internal combustion engine. The increase in the demand for alternative fuel is currently driven by the requirement of decreasing engine fuel consumption and fulfilling the stringent engine exhaust emissions pollutant regulations. In order to effectively tackle the aforementioned concerns, it appears that through engine experimental analysis alone for both engine performance and exhaust emissions is insufficient. Recently, the need for engine modelling based on statistical and machine learning methodologies through response surface and artificial neural network technique, respectively, are non-trivial to provide a better decision support analysis. Therefore, the present study reviews the extent to which the application of these methods in various alternative fuel in both spark and compression ignition engine to investigate their viability. The paper also describes herein the ways to determine the accuracy and the significance of model fitting for both methodologies. It was demonstrated from the review that most of the research yield favourable results of engine modelling prediction for both of the methods. It can be concluded the comparison between predicted and experimental results provided a high degree of determination coefficient indicating that the model could predict the model efficiency with reasonable accuracy.
AB - Alternative fuel is one of the widely used fuel substitutions for both petrol and diesel in the field of internal combustion engine. The increase in the demand for alternative fuel is currently driven by the requirement of decreasing engine fuel consumption and fulfilling the stringent engine exhaust emissions pollutant regulations. In order to effectively tackle the aforementioned concerns, it appears that through engine experimental analysis alone for both engine performance and exhaust emissions is insufficient. Recently, the need for engine modelling based on statistical and machine learning methodologies through response surface and artificial neural network technique, respectively, are non-trivial to provide a better decision support analysis. Therefore, the present study reviews the extent to which the application of these methods in various alternative fuel in both spark and compression ignition engine to investigate their viability. The paper also describes herein the ways to determine the accuracy and the significance of model fitting for both methodologies. It was demonstrated from the review that most of the research yield favourable results of engine modelling prediction for both of the methods. It can be concluded the comparison between predicted and experimental results provided a high degree of determination coefficient indicating that the model could predict the model efficiency with reasonable accuracy.
KW - Alternative fuel
KW - Artificial neural network
KW - Internal combustion engine
KW - Response surface methodology
UR - http://www.scopus.com/inward/record.url?scp=85045470508&partnerID=8YFLogxK
U2 - 10.1016/j.rser.2018.03.095
DO - 10.1016/j.rser.2018.03.095
M3 - Review article
AN - SCOPUS:85045470508
SN - 1364-0321
VL - 90
SP - 665
EP - 686
JO - Renewable and Sustainable Energy Reviews
JF - Renewable and Sustainable Energy Reviews
ER -