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In-cylinder pressure-based convolutional neural network for real-time estimation of low-pressure cooled exhaust gas recirculation in turbocharged gasoline direct injection engines

Authors
Jung, DonghyukHwang, InyoungJo, YuhyeokJang, ChulhoonHan, ManbaeSunwoo, MyounghoChang, Joon-Hyuk
Issue Date
Mar-2021
Publisher
SAGE PUBLICATIONS LTD
Keywords
In-cylinder pressure; low-pressure cooled exhaust gas recirculation; estimation; convolutional neural network; deep learning; turbocharged gasoline direct injection engines
Citation
INTERNATIONAL JOURNAL OF ENGINE RESEARCH, v.22, no.3, pp.815 - 826
Indexed
SCIE
SCOPUS
Journal Title
INTERNATIONAL JOURNAL OF ENGINE RESEARCH
Volume
22
Number
3
Start Page
815
End Page
826
URI
https://scholarworks.bwise.kr/hanyang/handle/2021.sw.hanyang/7981
DOI
10.1177/1468087419879002
ISSN
1468-0874
Abstract
Low-pressure cooled exhaust gas recirculation is one of the most promising technologies for improving fuel efficiency of turbocharged gasoline direct injection engines. To realize the beneficial effects of the low-pressure cooled exhaust gas recirculation, the accurate estimation of the low-pressure cooled exhaust gas recirculation rate is essential for precise low-pressure cooled exhaust gas recirculation control. In this respect, previous studies have suggested in-cylinder pressure-based low-pressure cooled exhaust gas recirculation models to obtain the low-pressure cooled exhaust gas recirculation rate into the cylinders with fast response. However, these methods require considerable manual process of feature engineering to extract and analyze the combustion characteristics from the cylinder pressure traces. Furthermore, the performance of the entire model is limited solely to certain hand-crafted characteristics and their mathematical formulations. To resolve these limitations, we propose an in-cylinder pressure-based convolutional neural network for low-pressure cooled exhaust gas recirculation estimation. Because the convolutional neural network model automatically learns the complex function between the raw input of the high-dimensional cylinder pressure traces and the low-pressure cooled exhaust gas recirculation rate through an end-to-end deep learning framework, this convolutional neural network model provides a more effective and precise modeling process compared to the conventional combustion characteristics-based regression models. The proposed convolutional neural network model consists of the input layer with the previous consecutive cycles of the pressure traces to resolve the model uncertainty from cycle-to-cycle variations. This input layer is connected to one convolutional layer, two fully connected layers, and the final output layer that is the target low-pressure cooled exhaust gas recirculation rate. The proposed model was trained, validated, and tested using a total of 50,000 cycles of engine experimental data under various transient driving conditions. The remarkable accuracy of the proposed model was evaluated with R-2 values over 0.99 and root mean square error values of less than 1.5% under the transient conditions. Moreover, the real-time performance and low memory requirement were also verified on the target embedded platform.
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COLLEGE OF ENGINEERING (SCHOOL OF ELECTRONIC ENGINEERING)
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