Back to Search Start Over

Machine-learning based prediction of injection rate and solenoid voltage characteristics in GDI injectors.

Authors :
Oh, Heechang
Hwang, Joonsik
Pickett, Lyle M.
Han, Donghee
Source :
Fuel. Mar2022, Vol. 311, pN.PAG-N.PAG. 1p.
Publication Year :
2022

Abstract

• Injection rate and solenoid voltage of GDI injectors were measured. • Regression model was derived using an artificial neural network. • The injection rate model well predicted non-linear behaviors of the injection rate. • The solenoid voltage model showed good agreement with the measured signal. Current state-of-the-art gasoline direct-injection (GDI) engines use multiple injections as one of the key technologies to improve exhaust emissions and fuel efficiency. For this technology to be successful, secured adequate control of fuel quantity for each injection is mandatory. However, nonlinearity and variations in the injection quantity can deteriorate the accuracy of fuel control, especially with small fuel injections. Therefore, it is necessary to understand the complex injection behavior and to develop a predictive model to be utilized in the development process. This study presents a methodology for rate of injection (ROI) and solenoid voltage modeling using artificial neural networks (ANNs) constructed from a set of Zeuch-style hydraulic experimental measurements conducted over a wide range of conditions. A quantitative comparison between the ANN model and the experimental data shows that the model is capable of predicting not only general features of the ROI trend, but also transient and non-linear behaviors at particular conditions. In addition, the end of injection (EOI) could be detected precisely with a virtually generated solenoid voltage signal and the signal processing method, which applies to an actual engine control unit. A correlation between the detected EOI timings calculated from the modeled signal and the measurement results showed a high coefficient of determination. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00162361
Volume :
311
Database :
Academic Search Index
Journal :
Fuel
Publication Type :
Academic Journal
Accession number :
154453504
Full Text :
https://doi.org/10.1016/j.fuel.2021.122569