With massive advancements in sensor technologies and Internet-of-things, we now have access to terabytes of historical data; however, there is a lack of clarity in how to best exploit the data to predict future events. One possible alternative in this context is to utilize operator learning algorithm that directly learn nonlinear mapping between two functional spaces; this facilitates real-time prediction of naturally arising complex evolutionary dynamics. In this work, we introduce a novel operator learning algorithm referred to as the Wavelet Neural Operator (WNO) that blends integral kernel with wavelet transformation. WNO harnesses the superiority of the wavelets in time-frequency localization of the functions and enables accurate tracking of patterns in spatial domain and effective learning of the functional mappings. Since the wavelets are localized in both time/space and frequency, WNO can provide high spatial and frequency resolution. This offers learning of the finer details of the parametric dependencies in the solution for complex problems. The efficacy and robustness of the proposed WNO are illustrated on a wide array of problems involving Burger's equation, Darcy flow, Navier-Stokes equation, Allen-Cahn equation, and Wave advection equation. Comparative study with respect to existing operator learning frameworks are presented. Finally, the proposed approach is used to build a digital twin capable of predicting Earth's air temperature based on available historical data.
翻译:随着传感器技术和互联网数据的巨大进步,我们现在可以获取历史数据的百万字节数据;然而,在如何最好地利用数据来预测未来事件方面缺乏明确性;在这方面,一种可能的替代办法是利用操作员学习算法,直接学习两个功能空间之间的非线性绘图;这便于实时预测自然产生的复杂进化动态。在这项工作中,我们引入了被称为“波列神经操作员”的新型操作员学习算法,将波盘与波盘转换融为一体。WNO利用波盘在时间频率功能本地化中的优势,使得能够准确跟踪空间领域的模式和有效学习功能制图。由于波盘在时间/空间和频率上都具有本地性,WNO可以提供高空间和频度分辨率分辨率的分辨率解析。在这项工作中,我们引入了一种称为“波列神经操作员”的新操作员学习算法(WNO)的功效和稳健性,这体现在涉及布尔格方程式、达西流、纳维-斯托克元的波子优势,能够准确跟踪空间域图的格局和有效学习功能绘图。由于时间/Allen-Annal-cal-dal-slicomma,Ang 正在构建一个基于现有的数字等等等式的、All-dal-dal-dal-dal-dal-dal-dal-dal-dal-dal-dalmamamamamama, 正在提出一个现有的现有的、Ang-dal-dal-dal-dal-dal-dal-dal-dal-dal-dal-dal-dal-dal-dal-dal-dal-dal-dal-dal-dal-dal-dal-dal-d-d-dal-dal-d-dal-d-dal-dal-dal-d-d-dal-dal-dal-dal-d-d-d-d-dal-d-dal-dal-dal-d-d-d-dal-d-d-d-d-d-d-dal-d-dal-dal-d-d-dal-d-d-d-d-d-d-d-d-d-