利用物理引导神经网络对固体火箭发动机燃烧面进行回归瞬态建模

Xueqin Sun, Yu Li, Yihong Li, SuKai Wang, Xuan Li, Ming Lu, Ping Chen
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摘要

监测地面静态点火试验中的燃烧面回归对预测固体火箭发动机(SRM)的内部弹道性能至关重要。之前提出的超稀疏计算机断层扫描(CT)成像方法为实时监测提供了可能。然而,SRM 的样本短缺凸显了对监测精度的需求,特别是考虑到与 SRM 系统的设计和开发相关的高成本。因此,通过回归模拟构建数据集以弥补 SRM 样品短缺至关重要。为解决这一问题,我们建议采用水平集(LS)方法,通过求解偏微分方程(PDE)来动态跟踪燃烧面。对于涉及大规模时空域的科学应用来说,数值求解的计算成本过高。物理信息神经网络(PINN)和神经算子已被用于加速 PDE 的求解,显示出令人满意的预测性能和较高的计算效率。我们设计了一种物理引导网络,命名为 LS-PhyNet,它将燃烧面回归的潜在物理机制与深度学习框架相结合。所提出的方法能够将成熟的传统数值离散化方法编码到网络架构中,以利用底层物理的先验知识,从而增强模型的表达能力和可解释性。实验结果证明,LS-PhyNet 能够更好地再现通过数值求解获得的燃烧面,而且只需少量数据,为在静态点火试验中实时监测燃烧面回归瞬态提供了新的范例。
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Regression Transients Modeling of Solid Rocket Motor Burning Surfaces with Physics-guided Neural Network
Monitoring the burning surface regression in ground static ignition tests is crucial for predicting the internal ballistic performance of solid rocket motors (SRMs). A previously proposed ultra-sparse computed tomography (CT) imaging method provides a possibility for real-time monitoring. However, sample shortages of SRMs highlights the need for monitoring accuracy, especially given the high cost associated with the design and development of SRM systems. Therefore, constructing datasets via regression simulations to compensate for SRM sample shortages is critical. To address this issue, we recommend adopting the level-set (LS) method to dynamically track the burning surface by solving partial differential equations (PDEs). The computational cost of numerical solution is prohibitive for scientific applications involving large-scale spatiotemporal domains. The physics-informed neural network (PINN) and neural operator have been used to accelerate the solution of PDE, showing satisfactory prediction performance and high computational efficiency. We designed a physics-guided network, named LS-PhyNet, that couples the potential physical mechanisms of burning surface regression into the deep learning framework. The proposed method is capable of encoding well-established traditional numerical discretization methods into the network architecture to leverage prior knowledge of underlying physics, thus providing the model with enhanced expressive power and interpretability. Experimental results prove that LS-PhyNet can better reproduce the burning surfaces obtained by numerical solution with only small data regimes, providing a new paradigm for real-time monitoring of burning surface regression transients during static ignition tests.
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