Modelling of instantaneous emissions from diesel vehicles with a special focus on NOx: Insights from machine learning techniques

Science of The Total Environment - Tập 737 - Trang 139625 - 2020
Clémence M.A. Le Cornec1, Nick Molden2, Maarten van Reeuwijk1, Marc E.J. Stettler1
1Department of Civil and Environmental Engineering, Imperial College London, London SW7 2AZ, United Kingdom
2Emissions Analytics, Unit 2 CR Bates Industrial Estate, Wycombe Road, Stokenchurch, High Wycombe, Buckinghamshire, HP14 3PD, United Kingdom

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