The objective of this work is to build a Digital Twin of a semi-industrial furnace using Gaussian Process Regression coupled with dimensionality reduction via Proper Orthogonal Decomposition. The Digital Twin is capable of integrating different sources of information, such as temperature, chemiluminescence intensity and species concentration at the outlet. The parameters selected to build the design space are the equivalence ratio and the benzene concentration in the fuel stream. The fuel consists of a (Formula presented.) / (Formula presented.) / (Formula presented.) blend, doped with a progressive addition of (Formula presented.). It is an (Formula presented.) -rich fuel mixture, representing a surrogate of a more complex Coke Oven Gas industrial mixture. The experimental measurements include the flame temperature distribution, measured on a (Formula presented.) grid using an air-cooled suction pyrometer, spatially resolved chemiluminescence measurements of (Formula presented.) and (Formula presented.), and the species concentration (i.e., (Formula presented.), (Formula presented.), (Formula presented.), (Formula presented.), (Formula presented.), (Formula presented.)) measured in the exhaust gases. The GPR-based Digital Twin approach has already been successfully applied on numerical datasets coming from CFD simulations. In this work, we demonstrate that the same approach can be applied on heterogeneous datasets, obtained from experimental measurements.
CITATION STYLE
Procacci, A., Cafiero, M., Sharma, S., Kamal, M. M., Coussement, A., & Parente, A. (2023). Digital Twin for Experimental Data Fusion Applied to a Semi-Industrial Furnace Fed with H2-Rich Fuel Mixtures. Energies, 16(2). https://doi.org/10.3390/en16020662
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