Intro
https://en.wikipedia.org/wiki/Physics-informed_neural_networks
Physics-informed neural networks (PINNs) are a type of universal function approximators that can embed the knowledge of any physical laws that govern a given data-set in the learning process, and can be described by partial differential equations (PDEs).[1] They overcome the low data availability of some biological and engineering systems that makes most state-of-the-art machine learning techniques lack robustness, rendering them ineffective in these scenarios.[1] The prior knowledge of general physical laws acts in the training of neural networks (NNs) as a regularization agent that limits the space of admissible solutions, increasing the correctness of the function approximation. This way, embedding this prior information into a neural network results in enhancing the information content of the available data, facilitating the learning algorithm to capture the right solution and to generalize well even with a low amount of training examples.
==> think of it as a SL DNN version of RL's expert trajectory
====> significantly reduce hypothesis space and reduce training time; enforce a baseline of "correctness" of approximation results
==> how exciting! could be a paradigm for how human and machine can collaborate in the future.

本文介绍了物理学指导的神经网络(PINNs),一种结合了物理定律的深度学习方法。它通过减少假设空间和缩短训练时间,提高了对偏微分方程求解的准确性。文章详细讨论了PINNs的应用,包括解决流体动力学难题,如Euler方程的奇异点,以及数据驱动的物理方程发现。这一技术展示了人类与机器在未来合作的潜力。
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