论文标题

通过物理知识的神经网络在膨胀游泳池大火中的速度重建

Velocity Reconstruction in Puffing Pool Fires with Physics-Informed Neural Networks

论文作者

Sitte, Michael Philip, Doan, Nguyen Anh Khoa

论文摘要

游泳池是许多意外火灾的规范表示,它们可能表现出不稳定的不稳定行为,称为膨化,涉及温度和速度场之间的强耦合。尽管与火灾研究相关,但由于测量相关数量并联的复杂性,他们的实验研究可能会受到限制。在这项工作中,我们分析了一种称为“隐藏流体力学(HFM)”的最新物理知识的机器学习方法的使用,以从测量的数量中重建浮肿的池火中的未测量数量。 HFM框架依靠物理信息的神经网络(PINN)来完成此任务。 PINN是一个神经网络,它既使用可用数据,此处的测量数量和控制系统的物理方程,此处是反应的Navier-Stokes方程,以推断出完整的流体动态状态。该框架用于从密度,压力和温度的测量值中推断出浮肿的火灾中的速度场。在这项工作中,用于此测试的数据集是通过数值模拟生成的。结果表明,PINN能够准确地重建速度场并推断速度场的大多数特征。此外,还表明,相对于嘈杂的数据,重建精度具有鲁棒性,并且探索和讨论了测量数量的数量减少。这项研究开辟了使用PINN从测量量重建未测量数量的可能性,从而为它们用于消防研究的实验提供了潜在的基础。

Pool fires are canonical representations of many accidental fires, which can exhibit an unstable unsteady behaviour, known as puffing, which involves a strong coupling between the temperature and velocity fields. Despite their practical relevance to fire research, their experimental study can be limited due to the complexity of measuring relevant quantities in parallel. In this work, we analyse the use of a recent physics-informed machine learning approach, called Hidden Fluid Mechanics (HFM), to reconstruct unmeasured quantities in a puffing pool fire from measured quantities. The HFM framework relies on a Physics-Informed Neural Network (PINN) for this task. A PINN is a neural network that uses both the available data, here the measured quantities, and the physical equations governing the system, here the reacting Navier-Stokes equations, to infer the full fluid dynamic state. This framework is used to infer the velocity field in a puffing pool fire from measurements of density, pressure and temperature. In this work, the dataset used for this test was generated from numerical simulations. It is shown that the PINN is able to reconstruct the velocity field accurately and to infer most features of the velocity field. In addition, it is shown that the reconstruction accuracy is robust with respect to noisy data, and a reduction in the number of measured quantities is explored and discussed. This study opens up the possibility of using PINNs for the reconstruction of unmeasured quantities from measured ones, providing the potential groundwork for their use in experiments for fire research.

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