论文标题
多尺度双曲线模型的渐近保护神经网络流行病
Asymptotic-Preserving Neural Networks for multiscale hyperbolic models of epidemic spread
论文作者
论文摘要
当通过差异模型研究流行动力学时,要了解现象并模拟预测场景所需的参数需要一个微妙的校准阶段,通常会因官方来源报告的稀缺性和不确定性而变得更加挑战。在这种情况下,通过嵌入控制物理现象在学习过程中的差异模型的知识,可以有效地解决数据驱动的学习的逆问题并解决相应的流行病问题。然而,在许多情况下,传染病的空间传播的特征是在多尺度PDE的不同尺度上的个体运动。这反映了与城市和邻近区域内动态有关的区域或领域的异质性。在存在多个量表的情况下,PINN的直接应用通常会导致由于神经网络损失函数中差分模型的多尺度性质而导致的结果差。为了使神经网络相对于小尺度均匀运行,希望神经网络在学习过程中满足渐近保护(AP)的特性。为此,我们考虑了一类新的AP神经网络(APNN),用于多尺度的双曲线传输模型的流行病扩散模型,由于损失函数的适当配方,能够在系统的不同尺度上均匀地工作。一系列针对不同流行病的数值测试证实了所提出方法的有效性,在处理多尺度问题时,突出了AP在神经网络中的重要性,尤其是在存在稀疏和部分观察到的系统的情况下。
When investigating epidemic dynamics through differential models, the parameters needed to understand the phenomenon and to simulate forecast scenarios require a delicate calibration phase, often made even more challenging by the scarcity and uncertainty of the observed data reported by official sources. In this context, Physics-Informed Neural Networks (PINNs), by embedding the knowledge of the differential model that governs the physical phenomenon in the learning process, can effectively address the inverse and forward problem of data-driven learning and solving the corresponding epidemic problem. In many circumstances, however, the spatial propagation of an infectious disease is characterized by movements of individuals at different scales governed by multiscale PDEs. This reflects the heterogeneity of a region or territory in relation to the dynamics within cities and in neighboring zones. In presence of multiple scales, a direct application of PINNs generally leads to poor results due to the multiscale nature of the differential model in the loss function of the neural network. To allow the neural network to operate uniformly with respect to the small scales, it is desirable that the neural network satisfies an Asymptotic-Preservation (AP) property in the learning process. To this end, we consider a new class of AP Neural Networks (APNNs) for multiscale hyperbolic transport models of epidemic spread that, thanks to an appropriate AP formulation of the loss function, is capable to work uniformly at the different scales of the system. A series of numerical tests for different epidemic scenarios confirms the validity of the proposed approach, highlighting the importance of the AP property in the neural network when dealing with multiscale problems especially in presence of sparse and partially observed systems.