TL;DR
This paper introduces a deep learning method using Voronoi tessellation to reconstruct global fields from sparse, arbitrarily positioned, and moving sensors, enabling real-time, high-resolution field estimation in complex systems.
Contribution
It presents a novel Voronoi tessellation-based structured grid approach that allows deep neural networks to reconstruct global fields from sparse, mobile sensors, overcoming previous limitations.
Findings
Effective reconstruction of unsteady wake flow.
Successful application to geophysical data.
Demonstrated in three-dimensional turbulence.
Abstract
Achieving accurate and robust global situational awareness of a complex time-evolving field from a limited number of sensors has been a longstanding challenge. This reconstruction problem is especially difficult when sensors are sparsely positioned in a seemingly random or unorganized manner, which is often encountered in a range of scientific and engineering problems. Moreover, these sensors can be in motion and can become online or offline over time. The key leverage in addressing this scientific issue is the wealth of data accumulated from the sensors. As a solution to this problem, we propose a data-driven spatial field recovery technique founded on a structured grid-based deep-learning approach for arbitrary positioned sensors of any numbers. It should be noted that the na\"ive use of machine learning becomes prohibitively expensive for global field reconstruction and is…
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