This work demonstrates that neural operator learning provides a powerful and flexible framework for building fast, accurate emulators of moving boundary systems, enabling their integration into digital twin platforms. To this end, a Deep Operator Network (DeepONet) architecture is employed to construct an efficient surrogate model for moving boundary problems in single-phase Darcy flow through porous media. The surrogate enables rapid and accurate approximation of complex flow dynamics and is coupled with an Ensemble Kalman Inversion (EKI) algorithm to solve Bayesian inverse problems. The proposed inversion framework is demonstrated by estimating the permeability and porosity of fibre reinforcements for composite materials manufactured via the Resin Transfer Moulding (RTM) process. Using both synthetic and experimental in-process data, the DeepONet surrogate accelerates inversion by several orders of magnitude compared with full-model EKI. This computational efficiency enables real-time, accurate, high-resolution estimation of local variations in permeability, porosity, and other parameters, thereby supporting effective monitoring and control of RTM processes, as well as other applications involving moving boundary flows. Unlike prior approaches for RTM inversion that learn mesh-dependent mappings, the proposed neural operator generalises across spatial and temporal domains, enabling evaluation at arbitrary sensor configurations without retraining, and represents a significant step toward practical industrial deployment of digital twins.
翻译:本研究证明,神经算子学习为构建快速、准确的移动边界系统仿真器提供了一个强大而灵活的框架,从而支持其集成至数字孪生平台。为此,我们采用深度算子网络(DeepONet)架构,为多孔介质中单相达西流的移动边界问题构建了一个高效的代理模型。该代理模型能够快速、准确地近似复杂的流动动力学,并与集成卡尔曼反演(EKI)算法结合以求解贝叶斯反问题。所提出的反演框架通过估计树脂传递模塑(RTM)工艺制造复合材料所用纤维增强体的渗透率和孔隙率进行了验证。利用合成与实验过程数据,DeepONet代理模型将反演速度较全模型EKI提升了数个数量级。这种计算效率使得对渗透率、孔隙率及其他参数的局部变化能够进行实时、准确、高分辨率的估计,从而有效支持RTM工艺以及其他涉及移动边界流动的应用的监测与控制。与先前学习依赖于网格映射的RTM反演方法不同,所提出的神经算子能够在空间和时间域上泛化,无需重新训练即可在任意传感器配置下进行评估,这标志着向数字孪生实际工业应用迈出了重要一步。