| Literature DB >> 32831593 |
N Benjamin Erichson1, Lionel Mathelin2, Zhewei Yao3, Steven L Brunton4, Michael W Mahoney1, J Nathan Kutz5.
Abstract
In many applications, it is important to reconstruct a fluid flow field, or some other high-dimensional state, from limited measurements and limited data. In this work, we propose a shallow neural network-based learning methodology for such fluid flow reconstruction. Our approach learns an end-to-end mapping between the sensor measurements and the high-dimensional fluid flow field, without any heavy preprocessing on the raw data. No prior knowledge is assumed to be available, and the estimation method is purely data-driven. We demonstrate the performance on three examples in fluid mechanics and oceanography, showing that this modern data-driven approach outperforms traditional modal approximation techniques which are commonly used for flow reconstruction. Not only does the proposed method show superior performance characteristics, it can also produce a comparable level of performance to traditional methods in the area, using significantly fewer sensors. Thus, the mathematical architecture is ideal for emerging global monitoring technologies where measurement data are often limited.Keywords: flow field estimation; fluid dynamics; machine learning; neural networks; sensors
Year: 2020 PMID: 32831593 PMCID: PMC7428025 DOI: 10.1098/rspa.2020.0097
Source DB: PubMed Journal: Proc Math Phys Eng Sci ISSN: 1364-5021 Impact factor: 2.704