Literature DB >> 33975115

Modeling urban evapotranspiration using remote sensing, flux footprints, and artificial intelligence.

Stenka Vulova1, Fred Meier2, Alby Duarte Rocha3, Justus Quanz4, Hamideh Nouri5, Birgit Kleinschmit6.   

Abstract

As climate change progresses, urban areas are increasingly affected by water scarcity and the urban heat island effect. Evapotranspiration (ET) is a crucial component of urban greening initiatives of cities worldwide aimed at mitigating these issues. However, ET estimation methods in urban areas have so far been limited. An expanding number of flux towers in urban environments provide the opportunity to directly measure ET by the eddy covariance method. In this study, we present a novel approach to model urban ET by combining flux footprint modeling, remote sensing and geographic information system (GIS) data, and deep learning and machine learning techniques. This approach facilitates spatio-temporal extrapolation of ET at a half-hourly resolution; we tested this approach with a two-year dataset from two flux towers in Berlin, Germany. The benefit of integrating remote sensing and GIS data into models was investigated by testing four predictor scenarios. Two algorithms (1D convolutional neural networks (CNNs) and random forest (RF)) were compared. The best-performing models were then used to model ET values for the year 2019. The inclusion of GIS data extracted using flux footprints enhanced the predictive accuracy of models, particularly when meteorological data was more limited. The best-performing scenario (meteorological and GIS data) showed an RMSE of 0.0239 mm/h and R2 of 0.840 with RF and an RMSE of 0.0250 mm/h and a R2 of 0.824 with 1D CNN for the more vegetated site. The 2019 ET sum was substantially higher at the site surrounded by more urban greenery (366 mm) than at the inner-city site (223 mm), demonstrating the substantial influence of vegetation on the urban water cycle. The proposed method is highly promising for modeling ET in a heterogeneous urban environment and can support climate change mitigation initiatives of urban areas worldwide.
Copyright © 2021 The Authors. Published by Elsevier B.V. All rights reserved.

Entities:  

Keywords:  1D convolutional neural networks (CNN); Deep learning; Eddy covariance; Harmonized Landsat and Sentinel-2; Latent heat flux; Urban water

Year:  2021        PMID: 33975115     DOI: 10.1016/j.scitotenv.2021.147293

Source DB:  PubMed          Journal:  Sci Total Environ        ISSN: 0048-9697            Impact factor:   7.963


  3 in total

1.  Urban Water Storage Capacity Inferred From Observed Evapotranspiration Recession.

Authors:  H J Jongen; G J Steeneveld; J Beringer; A Christen; N Chrysoulakis; K Fortuniak; J Hong; J W Hong; C M J Jacobs; L Järvi; F Meier; W Pawlak; M Roth; N E Theeuwes; E Velasco; R Vogt; A J Teuling
Journal:  Geophys Res Lett       Date:  2022-02-08       Impact factor: 5.576

2.  A Survey Towards Decision Support System on Smart Irrigation Scheduling Using Machine Learning approaches.

Authors:  Mandeep Kaur Saggi; Sushma Jain
Journal:  Arch Comput Methods Eng       Date:  2022-05-09       Impact factor: 8.171

3.  Direct observations of CO2 emission reductions due to COVID-19 lockdown across European urban districts.

Authors:  Giacomo Nicolini; Gabriele Antoniella; Federico Carotenuto; Andreas Christen; Philippe Ciais; Christian Feigenwinter; Beniamino Gioli; Stavros Stagakis; Erik Velasco; Roland Vogt; Helen C Ward; Janet Barlow; Nektarios Chrysoulakis; Pierpaolo Duce; Martin Graus; Carole Helfter; Bert Heusinkveld; Leena Järvi; Thomas Karl; Serena Marras; Valéry Masson; Bradley Matthews; Fred Meier; Eiko Nemitz; Simone Sabbatini; Dieter Scherer; Helmut Schume; Costantino Sirca; Gert-Jan Steeneveld; Carolina Vagnoli; Yilong Wang; Alessandro Zaldei; Bo Zheng; Dario Papale
Journal:  Sci Total Environ       Date:  2022-03-19       Impact factor: 10.753

  3 in total

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