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PHYSICS-INFORMED GENERATIVE ADVERSARIAL NETWORKS FOR STOCHASTIC DIFFERENTIAL EQUATIONS

机译:用于随机微分方程的物理知识生成的对抗网络

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We developed a new class of physics-informed generative adversarial networks (PI-GANs) to solve forward, inverse, and mixed stochastic problems in a unified manner based on a limited number of scattered measurements. Unlike standard GANs relying solely on data for training, here we encoded into the architecture of GANs the governing physical laws in the form of stochastic differential equations (SDEs) using automatic differentiation. In particular, we applied Wasserstein GANs with gradient penalty (WGAN-GP) for its enhanced stability compared to vanilla GANs. We first tested WGAN-GP in approximating Gaussian processes of different correlation lengths based on data realizations collected from simultaneous reads at sparsely placed sensors. We obtained good approximation of the generated stochastic processes to the target ones even if there is a mismatch between the input noise dimensionality and the effective dimensionality of the target stochastic processes. We also studied the overfitting issue for both the discriminator and the generator, and we found that overfitting occurs also in the generator in addition to the discriminator as previously reported. Subsequently, we considered the solution of elliptic SDEs requiring approximations of three stochastic processes, namely the solution, the forcing, and the diffusion coefficient. Here again, we assumed data collected from simultaneous reads at a limited number of sensors for the multiple stochastic processes. Three generators were used for the PI-GANs: two of them were feed forward deep neural networks (DNNs), while the other one was the neural network induced by the SDE. For the case where we have one group of data, we employed one feed forward DNN as the discriminator, while for the case of multiple groups of data we employed multiple discriminators in PI-GANs. We solved forward, inverse, and mixed problems without changing the framework of PI-GANs, obtaining both the means and the standard deviations of the stochastic solution and the diffusion coefficient in good agreement with benchmarks. In this work, we have demonstrated the effectiveness of PI-GANs in solving SDEs for about 120 dimensions. In principle, PI-GANs could tackle very high dimensional problems given more sensor data with low-polynomial growth in computational cost.
机译:我们开发了一种新的物理知识生成的对抗网络(PI-GANS)以基于有限数量的散射测量来以统一的方式解决前向,逆和混合随机问题。与单独依赖于培训数据的标准GAN,在这里,我们使用自动分化编码了随机微分方程(SDES)形式的GANS管理物理规则。特别是,与香草甘蓝的GAN相比,我们将Wassersein Gans与梯度惩罚(WAN-GP)进行梯度罚款(WAN-GP)。我们首先基于从稀疏放置的传感器的同时读取的数据实现近似不同相关长度的高斯过程的Wgan-GP。即使在输入噪声维度与目标随机过程的有效维度之间存在不匹配,我们也能够对目标随机过程的良好近似。我们还研究了鉴别器和发电机的过度装备问题,我们发现除了先前报道的鉴别器之外,还发现过度装箱也发生在发电机中。随后,我们考虑了需要三个随机过程的近似的椭圆SDE的溶液,即溶液,迫使和扩散系数。同样,我们认为,在多个随机过程中,我们假设从有限数量的传感器中从同时读取的数据。三个发电机用于PI-GANS:其中两个是馈送深层神经网络(DNN),而另一个是由SDE引起的神经网络。对于我们有一组数据的情况,我们使用一个饲料向前DNN作为鉴别者,而对于多组数据的情况我们在PI-GAN中使用了多个鉴别器。在不改变PI-GAN的框架的情况下,我们解决了前进,逆和混合问题,从而获得随机解决方案的手段和标准偏差以及与基准的良好一致性。在这项工作中,我们已经证明了PI-GAN在求解SDES约120维度的有效性。原则上,PI-GAN可以在计算成本中具有低多项式增长的更多传感器数据来解决非常高的尺寸问题。

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