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Using a Statistical Machine Learning Tool for Diesel Engine Air Path Calibration
Technical Paper
2014-01-2391
ISSN: 0148-7191, e-ISSN: 2688-3627
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English
Abstract
A full calibration exercise of a diesel engine air path can take months to complete (depending on the number of variables). Model-based calibration approach can speed up the calibration process significantly. This paper discusses the overall calibration process of the air-path of the Cat® C7.1 engine using statistical machine learning tool. The standard Cat® C7.1 engine's twin-stage turbocharger was replaced by a VTG (Variable Turbine Geometry) as part of an evaluation of a novel air system. The changes made to the air-path system required a recalculation of the air path's boost set point and desired EGR set point maps. Statistical learning processes provided a firm basis to model and optimize the air path set point maps and allowed a healthy balance to be struck between the resources required for the exercise and the resulting data quality.
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Mohd Azmin, F., Stobart, R., Rutledge, J., and Winward, E., "Using a Statistical Machine Learning Tool for Diesel Engine Air Path Calibration," SAE Technical Paper 2014-01-2391, 2014, https://doi.org/10.4271/2014-01-2391.Also In
References
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