In this work, we introduce, justify and demonstrate the Corrective Source Term Approach (CoSTA) -- a novel approach to Hybrid Analysis and Modeling (HAM). The objective of HAM is to combine physics-based modeling (PBM) and data-driven modeling (DDM) to create generalizable, trustworthy, accurate, computationally efficient and self-evolving models. CoSTA achieves this objective by augmenting the governing equation of a PBM model with a corrective source term generated using a deep neural network. In a series of numerical experiments on one-dimensional heat diffusion, CoSTA is found to outperform comparable DDM and PBM models in terms of accuracy -- often reducing predictive errors by several orders of magnitude -- while also generalizing better than pure DDM. Due to its flexible but solid theoretical foundation, CoSTA provides a modular framework for leveraging novel developments within both PBM and DDM. Its theoretical foundation also ensures that CoSTA can be used to model any system governed by (deterministic) partial differential equations. Moreover, CoSTA facilitates interpretation of the DNN-generated source term within the context of PBM, which results in improved explainability of the DNN. These factors make CoSTA a potential door-opener for data-driven techniques to enter high-stakes applications previously reserved for pure PBM.
翻译:在这项工作中,我们引入、论证和展示了 " 纠正源代码周期方法 " (CoSTA) -- -- 混合分析和模型(HAM)的新做法。 " HAM " 的目标是将基于物理的建模(PBM)和数据驱动模型(DDM)结合起来,以创建通用的、可信赖的、准确的、计算效率高的和自我演进的模式。 " CSTA " 实现这一目标的方法是,利用深层神经网络生成的纠正源术语,加强PBM模型的管理方程式的治理方程式。在一维热扩散的一系列数字实验中,发现CSTA在准确性方面优于可比的DDM和PBM模型 -- -- 往往以几级数量减少预测错误 -- -- 同时也比纯DDDMM模型(DMM)更为普及。 " CoSTA " 由于其灵活而牢固的理论基础,为利用PBM和DDDM的新发展提供了模块框架。 " CoSTA " 还可以确保CSTA " 可用于模拟任何受(确定性)部分差异方程式的系统。此外,CSTA便于解释DNDN-GA的源术语,在以前驱动的高质量应用中,在高门应用中,这些CMBMBMA的高级技术中可以进入高可实现。