2007
DOI: 10.1007/s10546-007-9249-7
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Gap Filling and Quality Assessment of CO2 and Water Vapour Fluxes above an Urban Area with Radial Basis Function Neural Networks

Abstract: Vertical turbulent fluxes of water vapour, carbon dioxide, and sensible heat were measured from 16 August to the 28 September 2006 near the city centre of Münster in northwest Germany. In comparison to results of measurements above homogeneous ecosystem sites, the CO 2 fluxes above the urban investigation area showed more peaks and higher variances during the course of a day, probably caused by traffic and other varying, anthropogenic sources. The main goal of this study is the introduction and establishment o… Show more

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Cited by 50 publications
(53 citation statements)
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“…Artificial neural networks that have previously been successfully implemented as a gap-filling method (Falge et al, 2001, Moffat et al, 2007 for carbon dioxide flux time series (Aubinet et al, 2000;Carrara et al, 2003;Valentini, 2003 andSchmidt et al, 2008) have been described as a robust, reliable and versatile tool. Nevertheless, their application is time consuming, particularly in finding the appropriate input variables, the appropriate number of hidden layers, and neurons/nodes within these layers, as well as the choice of training and test data sets (data rows).…”
Section: Discussionmentioning
confidence: 99%
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“…Artificial neural networks that have previously been successfully implemented as a gap-filling method (Falge et al, 2001, Moffat et al, 2007 for carbon dioxide flux time series (Aubinet et al, 2000;Carrara et al, 2003;Valentini, 2003 andSchmidt et al, 2008) have been described as a robust, reliable and versatile tool. Nevertheless, their application is time consuming, particularly in finding the appropriate input variables, the appropriate number of hidden layers, and neurons/nodes within these layers, as well as the choice of training and test data sets (data rows).…”
Section: Discussionmentioning
confidence: 99%
“…The application of neural networks (Jain et al, 1996;Svozil et al, 1997;Elizondo and Góngora, 2005;Saxén and Pettersson, 2006) for data recovery and gap-filling (Aubinet et al, 2000;Gorban et al, 2002;Papale and Valentini, 2003;Ooba et al, 2006;Moffat et al, 2007 andSchmidt et al, 2008) has proven to be a very reliable tool in several scientific disciplines Dorling, 1998, 1999;Lek and Guégan, 1999;Lee and Jeng, 2002;Toptygin et al, 2005). In atmospheric sciences (Gardner and Dorling, 1998;Toptygin et al, 2005;Chattopadhyay G. and Chattopadhyay S., 2008), applying neural networks in forecasting has become a standard application.…”
Section: S Dengel Et Al: Testing the Applicability Of Neural Networmentioning
confidence: 99%
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“…( (Schmidt et al, 2008) e (Ooba et al, 2006)). Este trabalho avaliou a utilização do modelo de Redes Neurais Artificiais (RNA) backpropagation como alternativa para o preenchimento das séries temporais de fluxo de calor latente do lago de Furnas com dados artificiais.…”
Section: Redes Neurais Artificiaisunclassified