Global field reconstruction from sparse sensors with Voronoi tessellation-assisted deep learning

01/03/2021
by   Kai Fukami, et al.
7

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 naïve use of machine learning becomes prohibitively expensive for global field reconstruction and is furthermore not adaptable to an arbitrary number of sensors. In the present work, we consider the use of Voronoi tessellation to obtain a structured-grid representation from sensor locations enabling the computationally tractable use of convolutional neural networks. One of the central features of the present method is its compatibility with deep-learning based super-resolution reconstruction techniques for structured sensor data that are established for image processing. The proposed reconstruction technique is demonstrated for unsteady wake flow, geophysical data, and three-dimensional turbulence. The current framework is able to handle an arbitrary number of moving sensors, and thereby overcomes a major limitation with existing reconstruction methods. The presented technique opens a new pathway towards the practical use of neural networks for real-time global field estimation.

READ FULL TEXT

page 4

page 5

page 6

page 7

research
02/23/2022

Super-resolution GANs of randomly-seeded fields

Reconstruction of field quantities from sparse measurements is a problem...
research
02/08/2022

Deep learning fluid flow reconstruction around arbitrary two-dimensional objects from sparse sensors using conformal mappings

The usage of deep neural networks (DNNs) for flow reconstruction (FR) ta...
research
02/20/2019

Shallow Learning for Fluid Flow Reconstruction with Limited Sensors and Limited Data

In many applications, it is important to reconstruct a fluid flow field,...
research
08/22/2013

A Unified Framework for Multi-Sensor HDR Video Reconstruction

One of the most successful approaches to modern high quality HDR-video c...
research
03/12/2022

Energy networks for state estimation with random sensors using sparse labels

State estimation is required whenever we deal with high-dimensional dyna...
research
01/07/2019

Towards a Decentralized, Autonomous Multiagent Framework for Mitigating Crop Loss

We propose a generalized decision-theoretic system for a heterogeneous t...

Please sign up or login with your details

Forgot password? Click here to reset