LGNov 14, 2022

Physics-Guided, Physics-Informed, and Physics-Encoded Neural Networks in Scientific Computing

arXiv:2211.07377v278 citationsh-index: 33
Originality Synthesis-oriented
AI Analysis

This is an incremental review paper that synthesizes existing methods for researchers and engineers in scientific computing fields like fluid mechanics and materials science.

This paper reviews four neural network frameworks—physics-guided, physics-informed, physics-encoded neural networks, and neural operators—used in scientific computing to address challenges like sparse data and accelerate modeling of complex multiscale multi-physics phenomena, discussing their architectures, applications, limitations, and future research opportunities.

Recent breakthroughs in computing power have made it feasible to use machine learning and deep learning to advance scientific computing in many fields, including fluid mechanics, solid mechanics, materials science, etc. Neural networks, in particular, play a central role in this hybridization. Due to their intrinsic architecture, conventional neural networks cannot be successfully trained and scoped when data is sparse, which is the case in many scientific and engineering domains. Nonetheless, neural networks provide a solid foundation to respect physics-driven or knowledge-based constraints during training. Generally speaking, there are three distinct neural network frameworks to enforce the underlying physics: (i) physics-guided neural networks (PgNNs), (ii) physics-informed neural networks (PiNNs), and (iii) physics-encoded neural networks (PeNNs). These methods provide distinct advantages for accelerating the numerical modeling of complex multiscale multi-physics phenomena. In addition, the recent developments in neural operators (NOs) add another dimension to these new simulation paradigms, especially when the real-time prediction of complex multi-physics systems is required. All these models also come with their own unique drawbacks and limitations that call for further fundamental research. This study aims to present a review of the four neural network frameworks (i.e., PgNNs, PiNNs, PeNNs, and NOs) used in scientific computing research. The state-of-the-art architectures and their applications are reviewed, limitations are discussed, and future research opportunities in terms of improving algorithms, considering causalities, expanding applications, and coupling scientific and deep learning solvers are presented. This critical review provides researchers and engineers with a solid starting point to comprehend how to integrate different layers of physics into neural networks.

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