Artificial neural network modeling and sensitivity analysis of performance and emissions in a compression ignition engine using biodiesel fuel_CQU.pdf (8.33 MB)
Artificial neural network modeling and sensitivity analysis of performance and emissions in a compression ignition engine using biodiesel fuel
journal contribution
posted on 2023-11-13, 02:37 authored by F Jaliliantabar, B Ghobadian, G Najafi, Talal YusafTalal YusafIn the present research work, a neural network model has been developed to predict the exhaust emissions and performance of a compression ignition engine. The significance and novelty of the work, with respect to existing literature, is the application of sensitivity analysis and an artificial neural network (ANN) simultaneously in order to predict the engine parameters. The inputs of the model were engine load (0, 25, 50, 75 and 100%), engine speed (1700, 2100, 2500 and 2900 rpm) and the percent of biodiesel fuel derived from waste cooking oil in diesel fuel (B0, B5, B10, B15 and B20). The relationship between the input parameters and engine cylinder performance and emissions can be determined by the network. The global sensitivity analysis results show that all the investigated factors are effective on the created model and cannot be ignored. In addition, it is found that the most emissions decreased while using biodiesel fuel in the compression ignition engine.
History
Volume
11Issue
9Start Page
1End Page
24Number of Pages
24eISSN
1996-1073Publisher
MDPI AGPublisher DOI
Full Text URL
Additional Rights
CC BY 4.0 DEEDLanguage
enPeer Reviewed
- Yes
Open Access
- Yes
Acceptance Date
2018-09-10Era Eligible
- Yes