Machine learning technology can distinguish the relationship between engine characteristics and performances. Therefore, the goal of the present work is to predict the performance parameters of a single-cylinder 4-stroke gasoline engine at different ignition timings using a blended mixture of gasoline and bioethanol by an artificial neural network (ANN). Experimental data for training and testing in the proposed ANN was obtained at a dynamic speed and full load condition. An ANN model was developed based on standard Back-Propagation algorithm for the spark ignition engine. Multi-layer perception network (MLP) was used for non-linear mapping between the input and output parameters. An optimizer in the family of quasi-Newton methods (lbfgs) a...
In the present research work, a neural network model has been developed to predict the exhaust emiss...
In this study, firstly, the effect of compression ratio (CR), air excess coefficient (AEC) and ignit...
Biodiesel has been emerging as a potential and promising biofuel for the strategy of reducing toxic ...
The performance of artificial neural network (ANN) to predict spark ignition (S.I) engine performan...
The performance of artificial neural network (ANN) to predict spark ignition (S.I) engine performanc...
WOS: 000470139500004The main purpose of this study is to experimentally investigate the use of ANNs ...
This study deals with artificial neural network (ANN) modeling of a spark ignition engine to predict...
AbstractArtificial neural network (ANN) in artificial intelligence is an implementation of an algori...
Increasing the application of machine learning algorithms in engine development has the potential to...
This study deals with artificial neural network (ANN) modeling of a spark ignition engine to predict...
Abstract- This study deals with artificial neural network (ANN) modelling of a diesel engine to pred...
The changes in the performance, emission and combustion characteristics of bioethanol-safflower biod...
AbstractThis study deals with usage of linear regression (LR) and artificial neural network (ANN) mo...
The present study aims to quantify the applicability of artificial neural network as a black-box mod...
The changes in the performance, emission and combustion characteristics of bioethanol-safflower biod...
In the present research work, a neural network model has been developed to predict the exhaust emiss...
In this study, firstly, the effect of compression ratio (CR), air excess coefficient (AEC) and ignit...
Biodiesel has been emerging as a potential and promising biofuel for the strategy of reducing toxic ...
The performance of artificial neural network (ANN) to predict spark ignition (S.I) engine performan...
The performance of artificial neural network (ANN) to predict spark ignition (S.I) engine performanc...
WOS: 000470139500004The main purpose of this study is to experimentally investigate the use of ANNs ...
This study deals with artificial neural network (ANN) modeling of a spark ignition engine to predict...
AbstractArtificial neural network (ANN) in artificial intelligence is an implementation of an algori...
Increasing the application of machine learning algorithms in engine development has the potential to...
This study deals with artificial neural network (ANN) modeling of a spark ignition engine to predict...
Abstract- This study deals with artificial neural network (ANN) modelling of a diesel engine to pred...
The changes in the performance, emission and combustion characteristics of bioethanol-safflower biod...
AbstractThis study deals with usage of linear regression (LR) and artificial neural network (ANN) mo...
The present study aims to quantify the applicability of artificial neural network as a black-box mod...
The changes in the performance, emission and combustion characteristics of bioethanol-safflower biod...
In the present research work, a neural network model has been developed to predict the exhaust emiss...
In this study, firstly, the effect of compression ratio (CR), air excess coefficient (AEC) and ignit...
Biodiesel has been emerging as a potential and promising biofuel for the strategy of reducing toxic ...