Affiliation:
1. Wayne State University, USA
Abstract
<div>This article presents surrogate mixtures that simulate the physical and chemical
properties in the auto-ignition of hydrotreated vegetable oil (HVO).
Experimental investigation was conducted in the Ignition Quality Tester (IQT) to
validate the auto-ignition properties with respect to those of the target fuel.
The surrogate development approach is assisted by artificial neural network
(ANN) embedded in MATLAB optimization function. Aspen HYSYS is used to calculate
the key physical and chemical properties of hundreds of mixtures of
representative components, mainly alkanes—the dominant components of HVO, to
train the learning algorithm. Binary and ternary mixtures are developed and
validated in the IQT. The target properties include the derived cetane number
(DCN), density, viscosity, surface tension, molecular weight, and volatility
represented by the distillation curve. The developed surrogates match the target
fuel in terms of ignition delay and DCN within 6% error range. This
investigation will be of value to developing high-fidelity models to investigate
HVO combustion and spray behavior. This will be beneficial to researchers
advancing the design and development of compression ignition engines to
efficiently operate on renewable fuels such as HVO.</div>
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