Modeling moisture fluxes using artificial neural networks: can information extraction overcome data loss?

Eddy covariance sites can experience data losses as high as 30 to 45% on an annual basis. Artificial neural networks (ANNs) have been identified as powerful tools for gap filling, but their performance depends on the representativeness of data used to train the model. In this paper, we develop a nor...

Full description

Bibliographic Details
Main Authors: A. L. Neal, H. V. Gupta, S. A. Kurc, P. D. Brooks
Format: Article
Language:English
Published: Copernicus Publications 2011-01-01
Series:Hydrology and Earth System Sciences
Online Access:http://www.hydrol-earth-syst-sci.net/15/359/2011/hess-15-359-2011.pdf
id doaj-c91caac572f5445dae9ca2900a585733
record_format Article
spelling doaj-c91caac572f5445dae9ca2900a5857332020-11-24T23:06:10ZengCopernicus PublicationsHydrology and Earth System Sciences1027-56061607-79382011-01-0115135936810.5194/hess-15-359-2011Modeling moisture fluxes using artificial neural networks: can information extraction overcome data loss?A. L. NealH. V. GuptaS. A. KurcP. D. BrooksEddy covariance sites can experience data losses as high as 30 to 45% on an annual basis. Artificial neural networks (ANNs) have been identified as powerful tools for gap filling, but their performance depends on the representativeness of data used to train the model. In this paper, we develop a normalization method, which has similar performance compared to conventional training approaches, but exhibits differences in the timing of fluxes, indicating different and previously unused information in the data record. Specifically, the differences between half-hourly model fluxes, especially during summer months, indicate that the structure of the information content in the data changes seasonally, diurnally and with the rate of data loss. Extracting more information from data may not improve model performance and indicates the need for improved data and models to address flux behavior at critical times. We advise several approaches to address these concerns, including use of separate models for day and nighttime processes and the use of alternate data streams at dawn, when eddy covariance may be particularly ineffective due to the timing of the onset of turbulent mixing. http://www.hydrol-earth-syst-sci.net/15/359/2011/hess-15-359-2011.pdf
collection DOAJ
language English
format Article
sources DOAJ
author A. L. Neal
H. V. Gupta
S. A. Kurc
P. D. Brooks
spellingShingle A. L. Neal
H. V. Gupta
S. A. Kurc
P. D. Brooks
Modeling moisture fluxes using artificial neural networks: can information extraction overcome data loss?
Hydrology and Earth System Sciences
author_facet A. L. Neal
H. V. Gupta
S. A. Kurc
P. D. Brooks
author_sort A. L. Neal
title Modeling moisture fluxes using artificial neural networks: can information extraction overcome data loss?
title_short Modeling moisture fluxes using artificial neural networks: can information extraction overcome data loss?
title_full Modeling moisture fluxes using artificial neural networks: can information extraction overcome data loss?
title_fullStr Modeling moisture fluxes using artificial neural networks: can information extraction overcome data loss?
title_full_unstemmed Modeling moisture fluxes using artificial neural networks: can information extraction overcome data loss?
title_sort modeling moisture fluxes using artificial neural networks: can information extraction overcome data loss?
publisher Copernicus Publications
series Hydrology and Earth System Sciences
issn 1027-5606
1607-7938
publishDate 2011-01-01
description Eddy covariance sites can experience data losses as high as 30 to 45% on an annual basis. Artificial neural networks (ANNs) have been identified as powerful tools for gap filling, but their performance depends on the representativeness of data used to train the model. In this paper, we develop a normalization method, which has similar performance compared to conventional training approaches, but exhibits differences in the timing of fluxes, indicating different and previously unused information in the data record. Specifically, the differences between half-hourly model fluxes, especially during summer months, indicate that the structure of the information content in the data changes seasonally, diurnally and with the rate of data loss. Extracting more information from data may not improve model performance and indicates the need for improved data and models to address flux behavior at critical times. We advise several approaches to address these concerns, including use of separate models for day and nighttime processes and the use of alternate data streams at dawn, when eddy covariance may be particularly ineffective due to the timing of the onset of turbulent mixing.
url http://www.hydrol-earth-syst-sci.net/15/359/2011/hess-15-359-2011.pdf
work_keys_str_mv AT alneal modelingmoisturefluxesusingartificialneuralnetworkscaninformationextractionovercomedataloss
AT hvgupta modelingmoisturefluxesusingartificialneuralnetworkscaninformationextractionovercomedataloss
AT sakurc modelingmoisturefluxesusingartificialneuralnetworkscaninformationextractionovercomedataloss
AT pdbrooks modelingmoisturefluxesusingartificialneuralnetworkscaninformationextractionovercomedataloss
_version_ 1725623860477296640