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Advancing data assimilation in operational hydrologic forecasting: Progresses, challenges, and emerging opportunities

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Advancing data assimilation in operational hydrologic forecasting: Progresses, challenges, and emerging opportunities. / Liu, Y.; Weerts, A. H.; Clark, M. et al.
In: Hydrology and Earth System Sciences, Vol. 16, No. 10, 29.10.2012, p. 3863-3887.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

Liu, Y, Weerts, AH, Clark, M, Hendricks Franssen, HJ, Kumar, S, Moradkhani, H, Seo, DJ, Schwanenberg, D, Smith, P, Van Dijk, AIJM, Van Velzen, N, He, M, Lee, H, Noh, SJ, Rakovec, O & Restrepo, P 2012, 'Advancing data assimilation in operational hydrologic forecasting: Progresses, challenges, and emerging opportunities', Hydrology and Earth System Sciences, vol. 16, no. 10, pp. 3863-3887. https://doi.org/10.5194/hess-16-3863-2012

APA

Liu, Y., Weerts, A. H., Clark, M., Hendricks Franssen, H. J., Kumar, S., Moradkhani, H., Seo, D. J., Schwanenberg, D., Smith, P., Van Dijk, A. I. J. M., Van Velzen, N., He, M., Lee, H., Noh, S. J., Rakovec, O., & Restrepo, P. (2012). Advancing data assimilation in operational hydrologic forecasting: Progresses, challenges, and emerging opportunities. Hydrology and Earth System Sciences, 16(10), 3863-3887. https://doi.org/10.5194/hess-16-3863-2012

Vancouver

Liu Y, Weerts AH, Clark M, Hendricks Franssen HJ, Kumar S, Moradkhani H et al. Advancing data assimilation in operational hydrologic forecasting: Progresses, challenges, and emerging opportunities. Hydrology and Earth System Sciences. 2012 Oct 29;16(10):3863-3887. doi: 10.5194/hess-16-3863-2012

Author

Liu, Y. ; Weerts, A. H. ; Clark, M. et al. / Advancing data assimilation in operational hydrologic forecasting : Progresses, challenges, and emerging opportunities. In: Hydrology and Earth System Sciences. 2012 ; Vol. 16, No. 10. pp. 3863-3887.

Bibtex

@article{3eeae1c4b09f479ca16c1e66a5660482,
title = "Advancing data assimilation in operational hydrologic forecasting: Progresses, challenges, and emerging opportunities",
abstract = "Data assimilation (DA) holds considerable potential for improving hydrologic predictions as demonstrated in numerous research studies. However, advances in hydrologic DA research have not been adequately or timely implemented in operational forecast systems to improve the skill of forecasts for better informed real-world decision making. This is due in part to a lack of mechanisms to properly quantify the uncertainty in observations and forecast models in real-time forecasting situations and to conduct the merging of data and models in a way that is adequately efficient and transparent to operational forecasters. The need for effective DA of useful hydrologic data into the forecast process has become increasingly recognized in recent years. This motivated a hydrologic DA workshop in Delft, the Netherlands in November 2010, which focused on advancing DA in operational hydrologic forecasting and water resources management. As an outcome of the workshop, this paper reviews, in relevant detail, the current status of DA applications in both hydrologic research and operational practices, and discusses the existing or potential hurdles and challenges in transitioning hydrologic DA research into cost-effective operational forecasting tools, as well as the potential pathways and newly emerging opportunities for overcoming these challenges. Several related aspects are discussed, including (1) theoretical or mathematical aspects in DA algorithms, (2) the estimation of different types of uncertainty, (3) new observations and their objective use in hydrologic DA, (4) the use of DA for real-time control of water resources systems, and (5) the development of community-based, generic DA tools for hydrologic applications. It is recommended that cost-effective transition of hydrologic DA from research to operations should be helped by developing community-based, generic modeling and DA tools or frameworks, and through fostering collaborative efforts among hydrologic modellers, DA developers, and operational forecasters.",
author = "Y. Liu and Weerts, {A. H.} and M. Clark and {Hendricks Franssen}, {H. J.} and S. Kumar and H. Moradkhani and Seo, {D. J.} and D. Schwanenberg and P. Smith and {Van Dijk}, {A. I.J.M.} and {Van Velzen}, N. and M. He and H. Lee and Noh, {S. J.} and O. Rakovec and P. Restrepo",
year = "2012",
month = oct,
day = "29",
doi = "10.5194/hess-16-3863-2012",
language = "English",
volume = "16",
pages = "3863--3887",
journal = "Hydrology and Earth System Sciences",
issn = "1027-5606",
publisher = "Copernicus Gesellschaft mbH",
number = "10",

}

RIS

TY - JOUR

T1 - Advancing data assimilation in operational hydrologic forecasting

T2 - Progresses, challenges, and emerging opportunities

AU - Liu, Y.

AU - Weerts, A. H.

AU - Clark, M.

AU - Hendricks Franssen, H. J.

AU - Kumar, S.

AU - Moradkhani, H.

AU - Seo, D. J.

AU - Schwanenberg, D.

AU - Smith, P.

AU - Van Dijk, A. I.J.M.

AU - Van Velzen, N.

AU - He, M.

AU - Lee, H.

AU - Noh, S. J.

AU - Rakovec, O.

AU - Restrepo, P.

PY - 2012/10/29

Y1 - 2012/10/29

N2 - Data assimilation (DA) holds considerable potential for improving hydrologic predictions as demonstrated in numerous research studies. However, advances in hydrologic DA research have not been adequately or timely implemented in operational forecast systems to improve the skill of forecasts for better informed real-world decision making. This is due in part to a lack of mechanisms to properly quantify the uncertainty in observations and forecast models in real-time forecasting situations and to conduct the merging of data and models in a way that is adequately efficient and transparent to operational forecasters. The need for effective DA of useful hydrologic data into the forecast process has become increasingly recognized in recent years. This motivated a hydrologic DA workshop in Delft, the Netherlands in November 2010, which focused on advancing DA in operational hydrologic forecasting and water resources management. As an outcome of the workshop, this paper reviews, in relevant detail, the current status of DA applications in both hydrologic research and operational practices, and discusses the existing or potential hurdles and challenges in transitioning hydrologic DA research into cost-effective operational forecasting tools, as well as the potential pathways and newly emerging opportunities for overcoming these challenges. Several related aspects are discussed, including (1) theoretical or mathematical aspects in DA algorithms, (2) the estimation of different types of uncertainty, (3) new observations and their objective use in hydrologic DA, (4) the use of DA for real-time control of water resources systems, and (5) the development of community-based, generic DA tools for hydrologic applications. It is recommended that cost-effective transition of hydrologic DA from research to operations should be helped by developing community-based, generic modeling and DA tools or frameworks, and through fostering collaborative efforts among hydrologic modellers, DA developers, and operational forecasters.

AB - Data assimilation (DA) holds considerable potential for improving hydrologic predictions as demonstrated in numerous research studies. However, advances in hydrologic DA research have not been adequately or timely implemented in operational forecast systems to improve the skill of forecasts for better informed real-world decision making. This is due in part to a lack of mechanisms to properly quantify the uncertainty in observations and forecast models in real-time forecasting situations and to conduct the merging of data and models in a way that is adequately efficient and transparent to operational forecasters. The need for effective DA of useful hydrologic data into the forecast process has become increasingly recognized in recent years. This motivated a hydrologic DA workshop in Delft, the Netherlands in November 2010, which focused on advancing DA in operational hydrologic forecasting and water resources management. As an outcome of the workshop, this paper reviews, in relevant detail, the current status of DA applications in both hydrologic research and operational practices, and discusses the existing or potential hurdles and challenges in transitioning hydrologic DA research into cost-effective operational forecasting tools, as well as the potential pathways and newly emerging opportunities for overcoming these challenges. Several related aspects are discussed, including (1) theoretical or mathematical aspects in DA algorithms, (2) the estimation of different types of uncertainty, (3) new observations and their objective use in hydrologic DA, (4) the use of DA for real-time control of water resources systems, and (5) the development of community-based, generic DA tools for hydrologic applications. It is recommended that cost-effective transition of hydrologic DA from research to operations should be helped by developing community-based, generic modeling and DA tools or frameworks, and through fostering collaborative efforts among hydrologic modellers, DA developers, and operational forecasters.

U2 - 10.5194/hess-16-3863-2012

DO - 10.5194/hess-16-3863-2012

M3 - Journal article

AN - SCOPUS:84871397512

VL - 16

SP - 3863

EP - 3887

JO - Hydrology and Earth System Sciences

JF - Hydrology and Earth System Sciences

SN - 1027-5606

IS - 10

ER -