Discrepancy Modeling with Physics Informed Machine Learning

Steve Brunton
Steve Brunton
43.9 هزار بار بازدید - 2 سال پیش - This video describes how to
This video describes how to combine machine learning with classical physics models to correct for discrepancies in the data (e.g., from nonlinear friction, wind resistance, etc.).  Several examples are covered, from modern robotics, to classical connections with Galileo v. Aristotle, and Kepler v. Ptolemy.  The examples in this video highlight work and discussions with Prof. Nathan Kutz, especially connections to classical scientific discoveries.  

Citable link for this video at: https://doi.org/10.52843/cassyni.ftzlk9
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Papers discussed within:
https://arxiv.org/abs/1909.08574 [Double Pendulum]
https://www.frontiersin.org/articles/... [Ball Drop]

This video was produced at the University of Washington

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0:00 Introduction
2:27 Double Pendulum Experiment (Example)
4:28 Hybrid Physics + Machine Learning Models
8:32 Analogy with Planetary Motion
10:37 Galileo's Ball Drop Experiment
2 سال پیش در تاریخ 1401/05/14 منتشر شده است.
43,965 بـار بازدید شده
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