Water (May 2020)

An Integrative Information Aqueduct to Close the Gaps between Satellite Observation of Water Cycle and Local Sustainable Management of Water Resources

  • Zhongbo Su,
  • Yijian Zeng,
  • Nunzio Romano,
  • Salvatore Manfreda,
  • Félix Francés,
  • Eyal Ben Dor,
  • Brigitta Szabó,
  • Giulia Vico,
  • Paolo Nasta,
  • Ruodan Zhuang,
  • Nicolas Francos,
  • János Mészáros,
  • Silvano Fortunato Dal Sasso,
  • Maoya Bassiouni,
  • Lijie Zhang,
  • Donald Tendayi Rwasoka,
  • Bas Retsios,
  • Lianyu Yu,
  • Megan Leigh Blatchford,
  • Chris Mannaerts

DOI
https://doi.org/10.3390/w12051495
Journal volume & issue
Vol. 12, no. 5
p. 1495

Abstract

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The past decades have seen rapid advancements in space-based monitoring of essential water cycle variables, providing products related to precipitation, evapotranspiration, and soil moisture, often at tens of kilometer scales. Whilst these data effectively characterize water cycle variability at regional to global scales, they are less suitable for sustainable management of local water resources, which needs detailed information to represent the spatial heterogeneity of soil and vegetation. The following questions are critical to effectively exploit information from remotely sensed and in situ Earth observations (EOs): How to downscale the global water cycle products to the local scale using multiple sources and scales of EO data? How to explore and apply the downscaled information at the management level for a better understanding of soil-water-vegetation-energy processes? How can such fine-scale information be used to improve the management of soil and water resources? An integrative information flow (i.e., iAqueduct theoretical framework) is developed to close the gaps between satellite water cycle products and local information necessary for sustainable management of water resources. The integrated iAqueduct framework aims to address the abovementioned scientific questions by combining medium-resolution (10 m–1 km) Copernicus satellite data with high-resolution (cm) unmanned aerial system (UAS) data, in situ observations, analytical- and physical-based models, as well as big-data analytics with machine learning algorithms. This paper provides a general overview of the iAqueduct theoretical framework and introduces some preliminary results.

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