Mean Droplet Size Prediction of Twin Swirl Airblast Nozzle at Elevated Operating Conditions
Jiaming Miao,
Bo Wang,
Guangming Ren
et al.
Abstract:This study introduces a novel predictive model for atomization droplet size, developed using comprehensive data collected under elevated temperature and pressure conditions using a twin swirl airblast nozzle. The model, grounded in flow instability theory, has been meticulously parameterized using the Particle Swarm Optimization (PSO) algorithm. Through rigorous analysis, including analysis of variance (ANOVA), the model has demonstrated robust reliability and precision, with a maximum relative error of 19.3% … Show more
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