4.1 Article

Discovery of Physics From Data: Universal Laws and Discrepancies

期刊

出版社

FRONTIERS MEDIA SA
DOI: 10.3389/frai.2020.00025

关键词

dynamical systems; system identification; machine learning; artificial intelligence; sparse regression; discrepancy modeling

资金

  1. Defense Advanced Research Projects Agency [DARPA PA-18-01-FP-125]
  2. Air Force Office of Scientific Research [FA9550-18-1-0200, FA9550-17-1-0329]

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Machine learning (ML) and artificial intelligence (AI) algorithms are now being used to automate the discovery of physics principles and governing equations from measurement data alone. However, positing a universal physical law from data is challenging without simultaneously proposing an accompanying discrepancy model to account for the inevitable mismatch between theory andmeasurements. By revisiting the classic problem of modeling falling objects of different size and mass, we highlight a number of nuanced issues that must be addressed by modern data-driven methods for automated physics discovery. Specifically, we show that measurement noise and complex secondary physical mechanisms, like unsteady fluid drag forces, can obscure the underlying law of gravitation, leading to an erroneous model. We use the sparse identification of non-linear dynamics (SINDy) method to identify governing equations for real-world measurement data and simulated trajectories. Incorporating into SINDy the assumption that each falling object is governed by a similar physical law is shown to improve the robustness of the learned models, but discrepancies between the predictions and observations persist due to subtleties in drag dynamics. This work highlights the fact that the naive application of ML/ AI will generally be insufficient to infer universal physical laws without further modification.

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