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Global-scale massive feature extraction from monthly hydroclimatic time series: Statistical characterizations, spatial patterns and hydrological similarity.
Papacharalampous, Georgia; Tyralis, Hristos; Papalexiou, Simon Michael; Langousis, Andreas; Khatami, Sina; Volpi, Elena; Grimaldi, Salvatore.
Affiliation
  • Papacharalampous G; Department of Engineering, Roma Tre University, Rome, Italy; Department of Civil Engineering, School of Engineering, University of Patras, University Campus, Rio, 26504 Patras, Greece; Department of Water Resources and Environmental Engineering, School of Civil Engineering, National Technical Univer
  • Tyralis H; Department of Water Resources and Environmental Engineering, School of Civil Engineering, National Technical University of Athens, Heroon Polytechneiou 5, 15780 Zographou, Greece; Air Force Support Command, Hellenic Air Force, Elefsina Air Base, 19200 Elefsina, Greece. Electronic address: montchrist
  • Papalexiou SM; Department of Civil, Geological and Environmental Engineering, University of Saskatchewan, Saskatoon, Saskatchewan, Canada; Global Institute for Water Security, Saskatoon, Saskatchewan, Canada; Faculty of Environmental Sciences, Czech University of Life Sciences Prague, Czech Republic. Electronic ad
  • Langousis A; Department of Civil Engineering, School of Engineering, University of Patras, University Campus, Rio, 26504 Patras, Greece. Electronic address: andlag@alum.mit.edu.
  • Khatami S; Department of Physical Geography and the Bolin Centre for Climate Research, Stockholm University, SE-10691 Stockholm, Sweden; Climate & Energy College, University of Melbourne, Parkville, Victoria, Australia; Department of Infrastructure Engineering, University of Melbourne, Parkville, Victoria,
  • Volpi E; Department of Engineering, Roma Tre University, Rome, Italy. Electronic address: elena.volpi@uniroma3.it.
  • Grimaldi S; Department for Innovation in Biological, Agro-food and Forest Systems, University of Tuscia, Viterbo, Italy; Department of Mechanical and Aerospace Engineering, Tandon School of Engineering, New York University, Brooklyn, NY 10003, USA. Electronic address: salvatore.grimaldi@unitus.it.
Sci Total Environ ; 767: 144612, 2021 May 01.
Article in En | MEDLINE | ID: mdl-33454612
ABSTRACT
Hydroclimatic time series analysis focuses on a few feature types (e.g., autocorrelations, trends, extremes), which describe a small portion of the entire information content of the observations. Aiming to exploit a larger part of the available information and, thus, to deliver more reliable results (e.g., in hydroclimatic time series clustering contexts), here we approach hydroclimatic time series analysis differently, i.e., by performing massive feature extraction. In this respect, we develop a big data framework for hydroclimatic variable behaviour characterization. This framework relies on approximately 60 diverse features and is completely automatic (in the sense that it does not depend on the hydroclimatic process at hand). We apply the new framework to characterize mean monthly temperature, total monthly precipitation and mean monthly river flow. The applications are conducted at the global scale by exploiting 40-year-long time series originating from over 13 000 stations. We extract interpretable knowledge on seasonality, trends, autocorrelation, long-range dependence and entropy, and on feature types that are met less frequently. We further compare the examined hydroclimatic variable types in terms of this knowledge and, identify patterns related to the spatial variability of the features. For this latter purpose, we also propose and exploit a hydroclimatic time series clustering methodology. This new methodology is based on Breiman's random forests. The descriptive and exploratory insights gained by the global-scale applications prove the usefulness of the adopted feature compilation in hydroclimatic contexts. Moreover, the spatially coherent patterns characterizing the clusters delivered by the new methodology build confidence in its future exploitation. Given this spatial coherence and the scale-independent nature of the delivered feature values (which makes them particularly useful in forecasting and simulation contexts), we believe that this methodology could also be beneficial within regionalization frameworks, in which knowledge on hydrological similarity is exploited in technical and operative terms.
Key words

Full text: 1 Collection: 01-internacional Database: MEDLINE Type of study: Prognostic_studies Language: En Journal: Sci Total Environ Year: 2021 Document type: Article

Full text: 1 Collection: 01-internacional Database: MEDLINE Type of study: Prognostic_studies Language: En Journal: Sci Total Environ Year: 2021 Document type: Article