Predictive Capability Assessment of Probabilistic Machine Learning Models for Density Prediction of Conventional and Synthetic Jet Fuels

Machine Learning (ML) models are increasingly applied in the field of jet fuel property predictions due to their ability of modeling a high number of complex composition–property relationships dire...

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