Publication detail

Reconstructive Mapping from Sparsely-Sampled Groundwater Data Using Compressive Sensing

LEE, T. LEE, J. PARK, J. BELLEROVÁ, H. RAUDENSKÝ, M.

Original Title

Reconstructive Mapping from Sparsely-Sampled Groundwater Data Using Compressive Sensing

Type

journal article - other

Language

English

Original Abstract

Compressive sensing is a powerful method for reconstruction of sparsely-sampled data, based on statistical optimization. It can be applied to a range of flow measurement and visualization data, and in this work we show the usage in groundwater mapping. Due to scarcity of water in many regions of the world, including southwestern United States, monitoring and management of groundwater is of utmost importance. A complete mapping of groundwater is difficult since the monitored sites are far from one another, and thus the data sets are considered extremely “sparse”. To overcome this difficulty in complete mapping of groundwater, compressive sensing is an ideal tool, as it bypasses the classical Nyquist criterion. We show that compressive sensing can effectively be used for reconstructions of groundwater level maps, by validating against data. This approach can have an impact on geographical sensing and information, as effective monitoring and management are enabled without constructing numerous or expensive measurement sites for groundwater.

Keywords

Visualization Data, Compressive Sensing, Reconstruction, Mapping

Authors

LEE, T.; LEE, J.; PARK, J.; BELLEROVÁ, H.; RAUDENSKÝ, M.

Released

10. 5. 2021

Publisher

Scientific Research Publishing

ISBN

0269-3798

Periodical

International Journal of Geographical Information Systems

Year of study

13

Number

3

State

United Kingdom of Great Britain and Northern Ireland

Pages from

287

Pages to

301

Pages count

15

URL

Full text in the Digital Library

BibTex

@article{BUT171469,
  author="Taewoo {Lee} and Joon Young {Lee} and Jung Eun {Park} and Hana {Bellerová} and Miroslav {Raudenský}",
  title="Reconstructive Mapping from Sparsely-Sampled Groundwater Data Using Compressive Sensing",
  journal="International Journal of Geographical Information Systems",
  year="2021",
  volume="13",
  number="3",
  pages="287--301",
  doi="10.4236/jgis.2021.133016",
  issn="0269-3798",
  url="https://www.scirp.org/journal/paperinformation.aspx?paperid=108983"
}