论文标题
通过热量和传质的数据驱动的高血压再入流的建模
Data-driven modeling of hypersonic reentry flow with heat and mass transfer
论文作者
论文摘要
进入阶段构成了包括如此关键步骤的航空航天系统的设计驱动程序。该阶段的特征是高超音速流,包括需要高级建模功能的多尺度现象。但是,由于在需要快速预测的多学科分析中,高保真模拟通常是计算上的过度模拟,因此需要简化模型。这项工作提出了数据驱动的替代模型,以预测流动的流量,并沿高超音速流的停滞流线经过球形对象。替代模型旨在预测速度,压力,温度,密度和空气成分,这是对象半径,速度,重新进入高度和表面温度的函数。这些模型是通过数值模拟的Quasi-One尺寸Navier-Stokes公式和选定的地球大气模型产生的数据训练的。为每个感兴趣的流量变量构建了物理受限的参数函数,并使用人工神经网络将模型参数映射到模型的输入。还开发了替代模型,以预测非反应或烧蚀性碳基表面的表面含量量,从而提供了半经验相关性的替代方案。对所有开发的模型进行了验证研究,其预测能力将沿着来自低地球轨道的空间碎屑的重新进入轨迹展示。
The entry phase constitutes a design driver for aerospace systems that include such a critical step. This phase is characterized by hypersonic flows encompassing multiscale phenomena that require advanced modeling capabilities. However, since high fidelity simulations are often computationally prohibitive, simplified models are needed in multidisciplinary analyses requiring fast predictions. This work proposes data-driven surrogate models to predict the flow, and mixture properties along the stagnation streamline of hypersonic flows past spherical objects. Surrogate models are designed to predict velocity, pressure, temperature, density and air composition as a function of the object's radius, velocity, reentry altitude and surface temperature. These models are trained with data produced by numerical simulation of the quasi-one-dimensional Navier-Stokes formulation and a selected Earth atmospheric model. Physics-constrained parametric functions are constructed for each flow variable of interest, and artificial neural networks are used to map the model parameters to the model's inputs. Surrogate models were also developed to predict surface quantities of interest for the case of nonreacting or ablative carbon-based surfaces, providing alternatives to semiempirical correlations. A validation study is presented for all the developed models, and their predictive capabilities are showcased along selected reentry trajectories of space debris from low-Earth orbits.