Deep operator learning has emerged as a promising tool for reduced-order modelling and PDE model discovery. Leveraging the expressive power of deep neural networks, especially in high dimensions, such methods learn the mapping between functional state variables. While proposed methods have assumed noise only in the dependent variables, experimental and numerical data for operator learning typically exhibit noise in the independent variables as well, since both variables represent signals that are subject to measurement error. In regression on scalar data, failure to account for noisy independent variables can lead to biased parameter estimates. With noisy independent variables, linear models fitted via ordinary least squares (OLS) will show attenuation bias, wherein the slope will be underestimated. In this work, we derive an analogue of attenuation bias for linear operator regression with white noise in both the independent and dependent variables. In the nonlinear setting, we computationally demonstrate underprediction of the action of the Burgers operator in the presence of noise in the independent variable. We propose error-in-variables (EiV) models for two operator regression methods, MOR-Physics and DeepONet, and demonstrate that these new models reduce bias in the presence of noisy independent variables for a variety of operator learning problems. Considering the Burgers operator in 1D and 2D, we demonstrate that EiV operator learning robustly recovers operators in high-noise regimes that defeat OLS operator learning. We also introduce an EiV model for time-evolving PDE discovery and show that OLS and EiV perform similarly in learning the Kuramoto-Sivashinsky evolution operator from corrupted data, suggesting that the effect of bias in OLS operator learning depends on the regularity of the target operator.
翻译:深操作员的深层次学习已成为减少命令建模和PDE模型发现的一个很有希望的工具。利用深神经神经网络的显性力量,特别是在高维度方面,这些方法在功能状态变量之间学习绘图。虽然提议的方法只在依赖变量中假定噪音,但用于操作员学习的实验和数字数据通常在独立变量中也显示噪音,因为这两个变量代表了可测量错误的信号。在卡路里数据回归中,不考虑吵闹的独立变量可能导致偏差参数估计。由于吵闹的独立变量,通过普通最小正方(OLS)安装的线性模型将显示衰减偏差,坡度将会被低估。在这项工作中,我们为线性操作员下降的偏差偏差偏差,在独立变量中,我们得出线性偏差偏差偏差偏差的线性偏差偏差值,在运行员OVLSO上和Deeplead ONet中,我们得出线性斜度偏差的线性偏差偏差偏差的模拟值,在运行员EVLS经常学习的轨变数中,我们不断学习EV的操作员的轨变变变数,我们学习的操作员的轨变数的轨变数,在OV的操作员在不断变数中学习的轨变数,我们学习的轨变数的轨变数的变数的变数的操作员在ELS。