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  5. Deep feature learning of in-cylinder flow fields to analyze cycle-to-cycle variations in an SI engine
 
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2021
Zweitveröffentlichung
Artikel
Verlagsversion

Deep feature learning of in-cylinder flow fields to analyze cycle-to-cycle variations in an SI engine

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Hauptpublikation
10.1177_1468087420974148.pdf
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Format: Adobe PDF
Size: 4.36 MB
TUDa URI
tuda/7840
URN
urn:nbn:de:tuda-tuprints-201798
DOI
10.26083/tuprints-00020179
Autor:innen
Dreher, Daniel
Schmidt, Marius ORCID 0000-0002-5424-1251
Welch, Cooper ORCID 0000-0001-9067-9405
Ourza, Sara
Zündorf, Samuel
Maucher, Johannes
Peters, Steven ORCID 0000-0003-3131-1664
Dreizler, Andreas ORCID 0000-0001-5803-7947
Böhm, Benjamin ORCID 0000-0003-2654-6266
Hanuschkin, Alexander ORCID 0000-0001-9643-8987
Kurzbeschreibung (Abstract)

Machine learning (ML) models based on a large data set of in-cylinder flow fields of an IC engine obtained by high-speed particle image velocimetry allow the identification of relevant flow structures underlying cycle-to-cycle variations of engine performance. To this end, deep feature learning is employed to train ML models that predict cycles of high and low in-cylinder maximum pressure. Deep convolutional autoencoders are self-supervised-trained to encode flow field features in low dimensional latent space. Without the limitations ascribable to manual feature engineering, ML models based on these learned features are able to classify high energy cycles already from the flow field during late intake and the compression stroke as early as 290 crank angle degrees before top dead center (-290° CA) with a mean accuracy above chance level. The prediction accuracy from -290° CA to -10° CA is comparable to baseline ML approaches utilizing an extensive set of engineered features. Relevant flow structures in the compression stroke are revealed by feature analysis of ML models and are interpreted using conditional averaged flow quantities. This analysis unveils the importance of the horizontal velocity component of in-cylinder flows in predicting engine performance. Combining deep learning and conventional flow analysis techniques promises to be a powerful tool for ultimately revealing high-level flow features relevant to the prediction of cycle-to-cycle variations and further engine optimization.

Freie Schlagworte

Deep learning

machine learning

feature analysis

particle image veloci...

in-cylinder flow

cycle-to-cycle variat...

IC engine

Sprache
Englisch
Fachbereich/-gebiet
16 Fachbereich Maschinenbau > Fachgebiet Reaktive Strömungen und Messtechnik (RSM)
DDC
000 Allgemeines, Informatik, Informationswissenschaft > 004 Informatik
600 Technik, Medizin, angewandte Wissenschaften > 620 Ingenieurwissenschaften und Maschinenbau
Institution
Universitäts- und Landesbibliothek Darmstadt
Ort
Darmstadt
Titel der Zeitschrift / Schriftenreihe
International Journal of Engine Research
Startseite
3263
Endseite
3285
Jahrgang der Zeitschrift
22
Heftnummer der Zeitschrift
11
ISSN
2041-3149
Verlag
SAGE Publications
Ort der Erstveröffentlichung
London
Publikationsjahr der Erstveröffentlichung
2021
Verlags-DOI
10.1177/1468087420974148
PPN
513585923

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