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DoE-ML guided optimization of an active pre-chamber geometry using CFD

Mickael Silva, Balaji Mohan, Jihad Badra, Anqi Zhang, Ponnya Hlaing, Emre Cenker, Abdullah S. AlRamadan, Hong G. Im

2022International Journal of Engine Research25 citationsDOI

Abstract

An optimized active pre-chamber geometry was obtained by combining computational fluid dynamics (CFD) and machine learning (ML). A heavy-duty engine operating with methane under lean conditions was considered. The combustion process was modeled with a multi-zone well-stirred reactor (MZ-WSR) with a skeletal methane oxidation mechanism. The simulations were run for a complete cycle. For the optimization study, the pre-chamber was parametrized; six independent and three dependent variables were considered, while the volume was kept constant. Three hundred pre-chamber designs were generated, and a one-shot design of experiments (DoE) optimization was first considered. A merit function was adopted to rank the designs, and an optimum design was found from the DoE results, which yielded considerable improvements in merit ranking, considering fuel consumption, engine-out emissions, noise, and safety; secondly, machine learning algorithms were trained by utilizing the DoE results aiming at finding a globally optimum geometry for the considered operating condition. Five sequential iterations were performed, and the ML algorithms were capable of proposing a new design with superior performance compared to the best DoE.

Topics & Concepts

Computational fluid dynamicsDesign of experimentsVolume (thermodynamics)Combustion chamberFuel efficiencyAutomotive engineeringMechanical engineeringSimulationEngineeringComputer scienceCombustionMathematicsPhysicsAerospace engineeringOrganic chemistryChemistryStatisticsQuantum mechanicsAdvanced Combustion Engine TechnologiesCombustion and flame dynamicsHeat transfer and supercritical fluids
DoE-ML guided optimization of an active pre-chamber geometry using CFD | Litcius