Deep Neural Networks for Assessing Sustainable Jet Fuels from Two-Dimensional Gas Chromatography

喷气燃料 人工神经网络 蒸馏 航空燃料 计算机科学 人工智能 化学 工程类 航空航天工程 色谱法
作者
Ji-Hun Oh,Anna Oldani,Tonghun Lee,Linda Shafer
标识
DOI:10.2514/6.2022-0228
摘要

View Video Presentation: https://doi.org/10.2514/6.2022-0228.vid This paper investigates deep learning algorithms to aid the evaluation of sustainable aviation fuels (SAF) using comprehensive two-dimensional gas chromatography (GCxGC). Specifically, two tasks are addressed: 1) Detection of low-confidence fuels with novel chemical characteristics from reference fuels; this is achieved via an autoencoding neural network to reductively encode all available GCxGC information of target fuels to latent representations of highest variance and optimal clustering properties to compute an overall novelty score per fuel. 2) On “normal” fuels, the feasibility of learning-based predictions of key physicochemical properties such as density, distillation, flash-point, and kinematic viscosity from the aforementioned GCxGC features using artificial neural networks. These tasks are demonstrated on a highly diverse jet fuel dataset comprised of 106 samples including petroleum-based aviation fuels and SAFs derived from various sources, methods, and blending ratios. The GCxGC data covers over 80 hydrocarbon groups within aromatics, iso-paraffins, n-paraffins, and cycloparaffins of various carbon numbers. Results show that the proposed novelty detection scheme is successful in preemptively identifying chemically novel fuels that exhibit high predictive errors when evaluated on downstream models. Furthermore, the neural network-based fuel property predictions were found to be superior to the traditional, linear partial least squares regression model, despite the relatively small dataset size and the large number of GCxGC features utilized, both of which are known to compromise modelling of large neu-ral networks.
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