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Tabular Machine Learning Methods for Predicting Gas Turbine Emissions
Authors
Rick Hackney
Georgios Leontidis
Rebecca Lauren Potts
Publication date
17 July 2023
Publisher
ArXiv
Doi
Cite
Abstract
The work presented here received funding from EPSRC (EP/W522089/1) and Siemens Energy Industrial Turbomachinery Ltd. as part of the iCASE EPSRC PhD studentship ”Predictive Emission Monitoring Systems for Gas Turbines”.Preprin
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Aberdeen University Research
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Last time updated on 27/07/2023