FACE gasoline surrogates formulated by an enhanced multivariate optimization framework
Shane R. Daly, Kyle E. Niemeyer, William J. Cannella, and Christopher, L. Hagen

TL;DR
This study enhances gasoline surrogate formulation by integrating chemometric models with infrared spectra, enabling accurate, tailored surrogate blends that emulate real fuel properties for advanced engine research.
Contribution
The paper introduces a novel surrogate formulation algorithm incorporating infrared spectral chemometric models, allowing for more accurate and customizable gasoline surrogate blends.
Findings
Surrogates match real fuel properties within 5% accuracy.
Inclusion of new hydrocarbon species broadens surrogate diversity.
Enhanced algorithm improves surrogate design for complex fuels.
Abstract
Design and optimization of higher efficiency, lower-emission internal combustion engines are highly dependent on fuel chemistry. Resolving chemistry for complex fuels, like gasoline, is challenging. A solution is to study a fuel surrogate: a blend of a small number of well-characterized hydrocarbons to represent real fuels by emulating their thermophysical and chemical kinetics properties. In the current study, an existing gasoline surrogate formulation algorithm is further enhanced by incorporating novel chemometric models. These models use infrared spectra of hydrocarbon fuels to predict octane numbers, and are valid for a wide array of neat hydrocarbons and mixtures of such. This work leverages 14 hydrocarbon species to form tailored surrogate palettes for the Fuels for Advanced Combustion Engine (FACE) gasolines, including candidate component species not previously considered:…
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