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Keywords: Langevin particle-based ignition modeling
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Proceedings Papers
Proc. ASME. GTINDIA2019, Volume 2: Combustion, Fuels, and Emissions; Renewable Energy: Solar and Wind; Inlets and Exhausts; Emerging Technologies: Hybrid Electric Propulsion and Alternate Power Generation; GT Operation and Maintenance; Materials and Manufacturing (Including Coatings, Composites, CMCs, Additive Manufacturing); Analytics and Digital Solutions for Gas Turbines/Rotating Machinery, V002T04A001, December 5–6, 2019
Publisher: American Society of Mechanical Engineers
Paper No: GTINDIA2019-2307
... applicability in predicting ignition sequence and ignition probability for complex configurations. Implemented particle-based model found to predict reasonably good results for all evaluated configurations. relight Langevin particle-based ignition modeling ignition probability PHENOMENA BASED MODEL...