A data-driven intelligent learning algorithm for simultaneous prediction of aerodynamic heat and thermo-physical property parameters

IF 4.9 2区 工程技术 Q1 ENGINEERING, MECHANICAL
Yuxuan Li, Chengbao Sun, Zhenkun Cao, Miao Cui, Kun Liu
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引用次数: 0

Abstract

It is of great importance and challenging to simultaneously determine time-varying aerodynamic heat and temperature-dependent thermo-physical property parameters with high accuracy, for the optimization of thermal protection systems of hypersonic vehicles. However, it is difficult to directly measure these parameters under high temperature conditions. It is an effective way to determine thermo-physical property parameters and aerodynamic heat by solving inverse problems, based on measurable or easily measured transient temperatures. However, the prediction error of these parameters may be too large, if the measurement error is large, due to the thermal inertia. To deal with this issue, an intelligent algorithm is proposed to simultaneously predict the aerodynamic heat and thermo-physical property parameters for the thermal protection systems of hypersonic vehicles, based on the temperature measurement information. It combines a genetic algorithm and a machine learning algorithm, and the genetic algorithm is employed to update the relevant parameters in the neural network. By training the neural network, the relationship among the predicted parameters and transient temperatures could be established. Thereafter, the aerodynamic heat subjected to the outer surface of the aircraft and the temperature-dependent non-linear thermo-physical property parameters could be predicted. Examples are given to verify the present algorithm. The results show that this work provides an accurate and efficient method for simultaneously determining the aerodynamic heat and thermo-physical property parameters for the thermal protection system of a hypersonic vehicle. The prediction errors of aerodynamic heat and thermo-physical property parameters are much smaller than the measurement errors, when there are relatively large measurement errors in the input data.
一种数据驱动的智能学习算法,用于同时预测空气动力热量和热物理特性参数
同时高精度地确定随时间变化的气动热和与温度相关的热物理性质参数,对于优化高超音速飞行器的热保护系统具有重要意义和挑战性。然而,在高温条件下很难直接测量这些参数。根据可测量或易于测量的瞬态温度,通过求解逆问题来确定热物理特性参数和气动热是一种有效方法。然而,由于热惯性,如果测量误差较大,这些参数的预测误差可能会过大。针对这一问题,提出了一种智能算法,根据温度测量信息同时预测高超音速飞行器热保护系统的气动热和热物理特性参数。该算法结合了遗传算法和机器学习算法,利用遗传算法更新神经网络中的相关参数。通过训练神经网络,可以建立预测参数与瞬态温度之间的关系。此后,就可以预测飞机外表面的气动热量以及与温度相关的非线性热物理性质参数。我们给出了一些例子来验证本算法。结果表明,这项工作为同时确定高超音速飞行器热保护系统的气动热和热物理特性参数提供了一种准确而有效的方法。当输入数据存在相对较大的测量误差时,气动热和热物理特性参数的预测误差远小于测量误差。
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来源期刊
International Journal of Thermal Sciences
International Journal of Thermal Sciences 工程技术-工程:机械
CiteScore
8.10
自引率
11.10%
发文量
531
审稿时长
55 days
期刊介绍: The International Journal of Thermal Sciences is a journal devoted to the publication of fundamental studies on the physics of transfer processes in general, with an emphasis on thermal aspects and also applied research on various processes, energy systems and the environment. Articles are published in English and French, and are subject to peer review. The fundamental subjects considered within the scope of the journal are: * Heat and relevant mass transfer at all scales (nano, micro and macro) and in all types of material (heterogeneous, composites, biological,...) and fluid flow * Forced, natural or mixed convection in reactive or non-reactive media * Single or multi–phase fluid flow with or without phase change * Near–and far–field radiative heat transfer * Combined modes of heat transfer in complex systems (for example, plasmas, biological, geological,...) * Multiscale modelling The applied research topics include: * Heat exchangers, heat pipes, cooling processes * Transport phenomena taking place in industrial processes (chemical, food and agricultural, metallurgical, space and aeronautical, automobile industries) * Nano–and micro–technology for energy, space, biosystems and devices * Heat transport analysis in advanced systems * Impact of energy–related processes on environment, and emerging energy systems The study of thermophysical properties of materials and fluids, thermal measurement techniques, inverse methods, and the developments of experimental methods are within the scope of the International Journal of Thermal Sciences which also covers the modelling, and numerical methods applied to thermal transfer.
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