Physics-Guided, Physics-Informed, and Physics-Encoded Neural Networks in Scientific Computing
Salah A Faroughi, Nikhil Pawar, Celio Fernandes, Maziar Raissi,, Subasish Das, Nima K. Kalantari, Seyed Kourosh Mahjour

TL;DR
This paper reviews recent neural network frameworks that incorporate physics knowledge into scientific computing, discussing their architectures, applications, limitations, and future research directions.
Contribution
It provides a comprehensive review of physics-guided, physics-informed, physics-encoded neural networks, and neural operators, highlighting their differences, advantages, and challenges in scientific computing.
Findings
Summarizes state-of-the-art architectures and applications.
Discusses limitations and challenges of current methods.
Identifies future research opportunities in physics-integrated neural networks.
Abstract
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…
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Taxonomy
TopicsModel Reduction and Neural Networks · Machine Learning in Materials Science · Machine Learning and ELM
