Evaluation of the value of radar QPE data and rain gauge data for hydrological modeling

Research output: Contribution to journalJournal articleResearchpeer-review

Standard

Evaluation of the value of radar QPE data and rain gauge data for hydrological modeling. / He, Xin; Sonnenborg, Torben Obel; Refsgaard, Jens Christian; Vejen, Flemming; Jensen, Karsten Høgh.

In: Water Resources Research, Vol. 49, No. 9, 2013, p. 5989-6005.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

He, X, Sonnenborg, TO, Refsgaard, JC, Vejen, F & Jensen, KH 2013, 'Evaluation of the value of radar QPE data and rain gauge data for hydrological modeling', Water Resources Research, vol. 49, no. 9, pp. 5989-6005. https://doi.org/10.1002/wrcr.20471

APA

He, X., Sonnenborg, T. O., Refsgaard, J. C., Vejen, F., & Jensen, K. H. (2013). Evaluation of the value of radar QPE data and rain gauge data for hydrological modeling. Water Resources Research, 49(9), 5989-6005. https://doi.org/10.1002/wrcr.20471

Vancouver

He X, Sonnenborg TO, Refsgaard JC, Vejen F, Jensen KH. Evaluation of the value of radar QPE data and rain gauge data for hydrological modeling. Water Resources Research. 2013;49(9):5989-6005. https://doi.org/10.1002/wrcr.20471

Author

He, Xin ; Sonnenborg, Torben Obel ; Refsgaard, Jens Christian ; Vejen, Flemming ; Jensen, Karsten Høgh. / Evaluation of the value of radar QPE data and rain gauge data for hydrological modeling. In: Water Resources Research. 2013 ; Vol. 49, No. 9. pp. 5989-6005.

Bibtex

@article{2a370bc555a74572a52c61b11f79dd30,
title = "Evaluation of the value of radar QPE data and rain gauge data for hydrological modeling",
abstract = "Weather radar-based quantitative precipitation estimation (QPE) is in principle superior to the areal precipitation estimated by using rain gauge data only, and therefore has become increasingly popular in applications such as hydrological modeling. The present study investigates the potential of using multiannual radar QPE data in coupled surface water—groundwater modeling with emphasis given to the groundwater component. Since the radar QPE is partly dependent on the rain gauge observations, it is necessary to evaluate the impact of rain gauge network density on the quality of the estimated rainfall and subsequently the simulated hydrological responses. A headwater catchment located in western Denmark is chosen as the study site. Two hydrological models are built using the MIKE SHE code, where they have identical model structures expect for the rainfall forcing: one model is based on rain gauge interpolated rainfall, while the other is based on radar QPE which is a combination of both radar and rain gauge information. The two hydrological models are inversely calibrated and then validated against field observations. The model results show that the improvement introduced by using radar QPE data is in fact more obvious to groundwater than to surface water at daily scale. Moreover, substantial negative impact on the simulated hydrological responses is observed due to the cut down in operational rain gauge network between 2006 and 2010. The radar QPE based model demonstrates the added value of the extra information from radar when rain gauge density decreases; however it is not able to sustain the level of model performance preceding the reduction in number of rain gauges",
author = "Xin He and Sonnenborg, {Torben Obel} and Refsgaard, {Jens Christian} and Flemming Vejen and Jensen, {Karsten H{\o}gh}",
year = "2013",
doi = "10.1002/wrcr.20471",
language = "English",
volume = "49",
pages = "5989--6005",
journal = "Water Resources Research",
issn = "0043-1397",
publisher = "Wiley-Blackwell",
number = "9",

}

RIS

TY - JOUR

T1 - Evaluation of the value of radar QPE data and rain gauge data for hydrological modeling

AU - He, Xin

AU - Sonnenborg, Torben Obel

AU - Refsgaard, Jens Christian

AU - Vejen, Flemming

AU - Jensen, Karsten Høgh

PY - 2013

Y1 - 2013

N2 - Weather radar-based quantitative precipitation estimation (QPE) is in principle superior to the areal precipitation estimated by using rain gauge data only, and therefore has become increasingly popular in applications such as hydrological modeling. The present study investigates the potential of using multiannual radar QPE data in coupled surface water—groundwater modeling with emphasis given to the groundwater component. Since the radar QPE is partly dependent on the rain gauge observations, it is necessary to evaluate the impact of rain gauge network density on the quality of the estimated rainfall and subsequently the simulated hydrological responses. A headwater catchment located in western Denmark is chosen as the study site. Two hydrological models are built using the MIKE SHE code, where they have identical model structures expect for the rainfall forcing: one model is based on rain gauge interpolated rainfall, while the other is based on radar QPE which is a combination of both radar and rain gauge information. The two hydrological models are inversely calibrated and then validated against field observations. The model results show that the improvement introduced by using radar QPE data is in fact more obvious to groundwater than to surface water at daily scale. Moreover, substantial negative impact on the simulated hydrological responses is observed due to the cut down in operational rain gauge network between 2006 and 2010. The radar QPE based model demonstrates the added value of the extra information from radar when rain gauge density decreases; however it is not able to sustain the level of model performance preceding the reduction in number of rain gauges

AB - Weather radar-based quantitative precipitation estimation (QPE) is in principle superior to the areal precipitation estimated by using rain gauge data only, and therefore has become increasingly popular in applications such as hydrological modeling. The present study investigates the potential of using multiannual radar QPE data in coupled surface water—groundwater modeling with emphasis given to the groundwater component. Since the radar QPE is partly dependent on the rain gauge observations, it is necessary to evaluate the impact of rain gauge network density on the quality of the estimated rainfall and subsequently the simulated hydrological responses. A headwater catchment located in western Denmark is chosen as the study site. Two hydrological models are built using the MIKE SHE code, where they have identical model structures expect for the rainfall forcing: one model is based on rain gauge interpolated rainfall, while the other is based on radar QPE which is a combination of both radar and rain gauge information. The two hydrological models are inversely calibrated and then validated against field observations. The model results show that the improvement introduced by using radar QPE data is in fact more obvious to groundwater than to surface water at daily scale. Moreover, substantial negative impact on the simulated hydrological responses is observed due to the cut down in operational rain gauge network between 2006 and 2010. The radar QPE based model demonstrates the added value of the extra information from radar when rain gauge density decreases; however it is not able to sustain the level of model performance preceding the reduction in number of rain gauges

U2 - 10.1002/wrcr.20471

DO - 10.1002/wrcr.20471

M3 - Journal article

VL - 49

SP - 5989

EP - 6005

JO - Water Resources Research

JF - Water Resources Research

SN - 0043-1397

IS - 9

ER -

ID: 100303383