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Paprika’s hydrological stations. BasinArea (km²)% glac. Phakding 120828.5 Pheriche 14638.8 Dingboche 13637.9 Khote 14835,3.

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Presentation on theme: "Paprika’s hydrological stations. BasinArea (km²)% glac. Phakding 120828.5 Pheriche 14638.8 Dingboche 13637.9 Khote 14835,3."— Presentation transcript:

1 Paprika’s hydrological stations

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3 BasinArea (km²)% glac. Phakding 120828.5 Pheriche 14638.8 Dingboche 13637.9 Khote 14835,3

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5 More Paprika’s hydrology

6 Pangboche 4000-6500m Kharikola 1600-4000m Two small slope basins could be studied in a detailed hydrological field approach. PhD project submitted for funding (feb. 2011) at UM2 CoP

7 Spatialized climate data sets

8 Available climate datasets précipitation TypeNameSpatial resol. Time resol. PeriodDerived productsFormat Precip.Aphrodite 10.30.25°daily1951-2006monthly seasonal yearly netcdf matlab Precip.CRUTS 3.00.5°monthly1901-2006seasonal, yearlynetcdf Precip.TRMM 3B420.25°daily1998-2008dailymatlab Air temp. CRUTS 3.00.5°monthly1901-2006seasonal, yearlynetcdf Air temp. Ncep/Ncar reanalysis 17 levels 2.5°daily1948-2009regrided on 0.25° (*) daily, monthly, seasonal, yearly netcdf Air temp. Ncep/Ncar reanalysis 2m (gauss grid) 1.8°daily1948-2009regrided on 0.25° (*) daily, monthly, seasonal, yearly netcdf (*) bilinear interpolation

9 Comparison of seasonal (monthly) precipitation CRU versus Aphrodite on 1952-2006 period over Koshi basin

10 Spatial comparison of monthly precipitation CRU versus Aphrodite on 1952-2006 period over Koshi basin (resol = 0.25°) monthly bias (CRU-Aphro) monthly correlation between CRU and Aphro (636 values for each cell) Bias: higher CRU values over Tibet plateau (~1000 mm/year) better agreement in the southern basin Correlation: good correlation CRU-Aphrodite on southern part of the basin

11 Spatial comparison of monthly precipitation TRMM versus Aphrodite on 2000-2007 period over Koshi basin (resol = 0.25°) monthly bias (Aphro-TRMM) monthly correlation between TRMM and Aphro (120 values for each cell) Bias: higher TRMM values over Tibet plateau and in south of Nepal (up to 350 mm/year)  probably reflect a bad aphrodite precipitation interpolation (lack of gages) over Tibet plateau higher Aphrodite values along the montains (up to 1000 mm/year)  TRMM :only rain, Aprhodite : rain+ snow better agreement over a small area in the southern basin Correlation: low correlation TRMM-Aphrodite on north-west part of the basin

12 DHM’s hydrological balance

13 Awa Gaon Mulghat Simle Khurkot Rabuwa bazar Comparison of annual/monthly discharge and precipitation - 5 sub catchments of Koshi river at Chatara (93% of Koshi catchment area at Chatara) - 600.1 : Awa Gaon 29 700 km² 606 : Simle 33 500 km² 690 : Mulghat 5 880 km² 652 : Khurkot 10 200 km² 670 : Rabuwabazar 3 720 km² 695 : Chatara 57 300 km² Aims :  Analysing the reliability of discharge measurements  Basic anlayses of the catchment hydrology Data : -Discharge : DHM data base -Precipitation : spatial mean precipitation calculated for each catchment with aphrodite data Chatara

14 BasinArea (km²) % glac. Chatara 578002,4 Simle 335005,9 Awa Goan 297006,5 Rabuwabazar 372013,9 Muhlghat 58809,1 Khurkot 102008,8 Simle-AwaG 38000,9

15 The main problems : 1. For all the catchment the runoff coefficients C (annual and seasonal time steps) happen to be higher than one Exemple of the Dud Koshi catchment at the annual scale : All catchments All seasons C >>1 in 2005

16 2. This pattern can not be explain by snow or ice melting as it is observed in all season an mainly in Winter and October-November it does not exhibit a seasonal cycle Exemple of Dud Koshi winter (=DJF) runoff coefficient  May be it can be explain by the uncertainty of low flows measurement ? by the catchment precipitation estimations (Aphrodite)

17 3.Inconsistency for Arun river : Decreasing discharges at Awa Gaon and Simle No decreasing trend observed for the precipitation Arun – Awa Gaon – 29700 km² Arun – Simle – 33500 km² Decreasing trend in annual discharge Break in the annual discharge time serie (near 1996-1997) No significant trend for annual precipitation (green curves)

18 4. Inconsistency in the sub catchments contributions to the total Koshi catchment discharge We have computed the ratio Qsubcatchment/Qkoshi (annual and seasonal scale)  The sum of the 5 ratio is greater than one ! Annual contribution of the 5 subcatchments to the Koshi annual discharge (black curve)  This pattern also appears at the seasonal scale  not systematicaly the same year than for annual discharges  the years with runoff coefficient and contribution inconsistencies are not simultaneous !

19 Comparison of monthly temperature, discharge and precipitation (standardized values)  Show consistent pattern : maximum discharge, temperature and precipitation simultanously happen during summer (Monsoon)

20 Data bases

21 HYDRACCESS DHM hydro & climato EvK2 climato Paprika hydro &climato Contact : Pierre Chevallier

22 Spatial infos Aphrodite CRU TRMM NCEP Etc. Contacts: François Delclaux Luc Neppel

23 ArcGis Projection WGS 84 UTM 45N (Nepal) UTM 43N (Pakistan) DEM Snow Cover Hydrology Etc. Contacts: Pierre Chevallier


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