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Fuel dropsize prediction model on prefilming airblast nozzle at pressurized operating conditions

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中国科学数据2026-03-02 更新2026-04-25 收录
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https://www.sciengine.com/AA/doi/10.3724/1001-4055.202410004
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资源简介:
Due to the scarcity of atomization particle size data under pressurized operating conditions and the absence of physically-based particle size prediction models, a study is conducted on the fuel particle size prediction model for prefilming airblast atomizers under pressurized conditions. Through Design of Experiments (DOE), a laser particle size analyzer was used to test the atomization particle size data under the cross-influence of multiple parameters such as air pressure, air temperature, air pressure drop, fuel temperature, and fuel-to-air ratio. Based on the surface wave instability theory, a prediction model incorporating non-dimensional parameters such as the Weber number, Reynolds number, and Ohnesorge number was established. Validation with experimental data shows that the prediction model has a maximum error of 14.1% and an average error of 5.2%, with residuals following a normal distribution. Sensitivity analysis demonstrates that the prediction model accurately captures the influence of non-dimensional parameters and experimental conditions on particle size.
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2025-04-23
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