This work is concerned with discovering the governing partial differential equation (PDE) of a physical system. Existing methods have demonstrated the PDE identification from finite observations but failed to maintain satisfying results against noisy data, partly owing to suboptimal estimated derivatives and found PDE coefficients. We address the issues by introducing a noise-aware physics-informed machine learning (nPIML) framework to discover the governing PDE from data following arbitrary distributions. We propose training a couple of neural networks, namely solver and preselector, in a multi-task learning paradigm, which yields important scores of basis candidates that constitute the hidden physical constraint. After they are jointly trained, the solver network estimates potential candidates, e.g., partial derivatives, for the sparse regression algorithm to initially unveil the most likely parsimonious PDE, decided according to the information criterion. We also propose the denoising physics-informed neural networks (dPINNs), based on Discrete Fourier Transform (DFT), to deliver a set of the optimal finetuned PDE coefficients respecting the noise-reduced variables. The denoising PINNs are structured into forefront projection networks and a PINN, by which the formerly learned solver initializes. Our extensive experiments on five canonical PDEs affirm that the proposed framework presents a robust and interpretable approach for PDE discovery, applicable to a wide range of systems, possibly complicated by noise.
翻译:这项工作涉及从物理系统中发现管理部分差异方程(PDE) 。 现有方法已经通过有限观测显示出PDE的识别方法,但未能保持对噪音数据的满意结果,部分原因是估算衍生物的不最佳估计值和发现PDE系数。 我们通过引入一个有噪音意识的物理知情机器学习(nPIML)框架,从任意分布后的数据中发现管理PDE(PDE) 。 我们提议在一个多任务学习模式中培训几个神经网络,即解答器和预选器,以产生构成隐性物理制约的重要基准候选人分数。在经过联合培训后,解答器网络估计潜在候选人,例如部分衍生物,以根据信息标准决定的原始回归算法,初步公布最可能偏差的 PDE。 我们还提议根据Discrete Fourier变换(DFDT) 来取消对物理学知情的内线网进行分解,以提供一套最优化的PDEED系数,以显示隐藏的物理限制。 解变异的参数。 解后, PIN 将先导式系统结构化为先导图,,, 将先导为PIN 预演制成一个可以对PIN 的先导式的先导图, 。