2021
DOI: 10.1177/14680874211020292
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Machine Learning and transcritical sprays: A demonstration study of their potential in ECN Spray-A

Abstract: The present work investigates the application of Machine Learning and Artificial Neural Networks for tackling the complex issue of transcritical sprays, which are relevant to modern compression-ignition engines. Such conditions imply the departure of the classical thermodynamic perspective of ideal gas or incompressible liquid, necessitating the use of costly and elaborate thermodynamic closures to describe property variation and simulation methods. Machine Learning can assist in several ways in speeding up su… Show more

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Cited by 19 publications
(8 citation statements)
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References 46 publications
(74 reference statements)
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“…In contrast, NNs have emerged as a remarkably efficient technique for classification and response prediction. In high-pressure, high-temperature conditions, NN methods are used to predict thermodynamic properties [18], and the tabulation method offers high-precision calculation results in a wide temperature and pressure range [16,17]. ML techniques are rapidly advancing in this era of big data, and there is high potential in exploring the combination between ML and combustion research and achieving remarkable results.…”
Section: Introductionmentioning
confidence: 99%
See 1 more Smart Citation
“…In contrast, NNs have emerged as a remarkably efficient technique for classification and response prediction. In high-pressure, high-temperature conditions, NN methods are used to predict thermodynamic properties [18], and the tabulation method offers high-precision calculation results in a wide temperature and pressure range [16,17]. ML techniques are rapidly advancing in this era of big data, and there is high potential in exploring the combination between ML and combustion research and achieving remarkable results.…”
Section: Introductionmentioning
confidence: 99%
“…R. Maulik et al demonstrate the deployment of a deep neural network for compressing flow-field information using an autoencoder to demonstrate the ability to use state-of-the-art ML tools in the Python ecosystem [20,21]. In the realm of fluid mechanics, NNs are currently being explored as a complementary tool of CFD to expedite design processes [18]. Recent comprehensive reviews have highlighted various applications in fluid mechanics, encompassing flow feature extraction, turbulence modeling, optimization, and flow control [19].…”
Section: Introductionmentioning
confidence: 99%
“…However, the storage memory requirements for the tables may become an issue as the table dimensions are extended for multi-species systems. Recently, other alternatives to the tabulation approach have also been proposed, such as using artificial neural network (ANN) as a regression model for the thermodynamic properties [42] or an in situ adaptive tabulation (ISAT) approach [82]. However, these approaches are still under investigation, and their efficiency for multi-component problems is not yet evaluated.…”
Section: Introductionmentioning
confidence: 99%
“…Zhang and Yang [61] employed an in situ adaptive tabulation (ISAT) approach, where the table is constructed during the CFD simulation. Besides, Koukouvinis et al [33] employed an artificial neural network (ANN) as a regression model for the thermodynamic properties. However, these approaches are still under investigation and their efficiency for multi-component problems is not evaluated.…”
Section: Introductionmentioning
confidence: 99%