Comprehensive analysis of normal shock wave propagation in turbulent non-ideal gas flows with analytical and neural network methods

IF 4.1 2区 工程技术 Q1 MECHANICS Physics of Fluids Pub Date : 2024-09-09 DOI:10.1063/5.0220497
VenkataKoteswararao Nilam, Xavier Suresh M, Harish Babu Dondu, Benerji Babu Avula
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Abstract

Shock wave propagation in gases through turbulent flow has wide-reaching implications for both theoretical research and practical applications, including aerospace engineering, propulsion systems, and industrial gas processes. The study of normal shock propagation in turbulent flow over non-ideal gas investigates the changes in pressure, density, and flow velocity across the shock wave. The Mach number is derived for the system and explored across various gas molecule quantities and turbulence intensities. This study analytically investigated the normal shock wave propagation in turbulent flow of adiabatic gases with modified Rankine–Hugoniot conditions. Artificial neural network (ANN) techniques are used to estimate the solutions for shock strength and Mach number training validation phases of back-propagated neural networks with the Levenberg–Marquardt algorithm. The results reveal that pressure ratio with density ratio increase for higher values of increase in the turbulence level as well as intermolecular forces. A reverse trend is observed in velocity coefficient after shock in the presence of adiabatic gas. The regression coefficient values obtained using the network model ranged from 0.999 99 to 1, indicating an almost perfect correlation. These findings demonstrate that the ANN can predict the Mach number with high accuracy.
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用分析和神经网络方法全面分析湍流非理想气体流中的法向冲击波传播
气体在湍流中的冲击波传播对理论研究和实际应用都有广泛的影响,包括航空航天工程、推进系统和工业气体工艺。非理想气体湍流中的正常冲击波传播研究调查了冲击波在压力、密度和流速方面的变化。研究得出了系统的马赫数,并探讨了各种气体分子数量和湍流强度。本研究通过分析研究了绝热气体湍流中的正常冲击波传播,其条件为修改后的兰金-胡戈尼奥特(Rankine-Hugoniot)条件。采用 Levenberg-Marquardt 算法,利用人工神经网络(ANN)技术估算了反向传播神经网络的冲击强度和马赫数训练验证阶段的解。结果表明,当湍流水平和分子间作用力的增加值越大时,压力比和密度比也会增加。在存在绝热气体的情况下,冲击后的速度系数呈相反趋势。利用网络模型获得的回归系数值从 0.999 99 到 1 不等,表明两者几乎完全相关。这些结果表明,ANN 可以高精度地预测马赫数。
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来源期刊
Physics of Fluids
Physics of Fluids 物理-力学
CiteScore
6.50
自引率
41.30%
发文量
2063
审稿时长
2.6 months
期刊介绍: Physics of Fluids (PoF) is a preeminent journal devoted to publishing original theoretical, computational, and experimental contributions to the understanding of the dynamics of gases, liquids, and complex or multiphase fluids. Topics published in PoF are diverse and reflect the most important subjects in fluid dynamics, including, but not limited to: -Acoustics -Aerospace and aeronautical flow -Astrophysical flow -Biofluid mechanics -Cavitation and cavitating flows -Combustion flows -Complex fluids -Compressible flow -Computational fluid dynamics -Contact lines -Continuum mechanics -Convection -Cryogenic flow -Droplets -Electrical and magnetic effects in fluid flow -Foam, bubble, and film mechanics -Flow control -Flow instability and transition -Flow orientation and anisotropy -Flows with other transport phenomena -Flows with complex boundary conditions -Flow visualization -Fluid mechanics -Fluid physical properties -Fluid–structure interactions -Free surface flows -Geophysical flow -Interfacial flow -Knudsen flow -Laminar flow -Liquid crystals -Mathematics of fluids -Micro- and nanofluid mechanics -Mixing -Molecular theory -Nanofluidics -Particulate, multiphase, and granular flow -Processing flows -Relativistic fluid mechanics -Rotating flows -Shock wave phenomena -Soft matter -Stratified flows -Supercritical fluids -Superfluidity -Thermodynamics of flow systems -Transonic flow -Turbulent flow -Viscous and non-Newtonian flow -Viscoelasticity -Vortex dynamics -Waves
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