Climate and Hydrological and Extremes in Lake Victoria Basin An Assessment of Vulnerability and Adaptation to Climate Variability and Change Impacts on.

Slides:



Advertisements
Similar presentations
Climate Graphs.
Advertisements

Poster template by ResearchPosters.co.za Effect of Topography in Satellite Rainfall Estimation Errors: Observational Evidence across Contrasting Elevation.
THE USE OF REMOTE SENSING DATA/INFORMATION AS PROXY OF WEATHER AND CLIMATE IN THE GREATER HORN OF AFRICA Gilbert O Ouma IGAD Climate Applications and Prediction.
Snow Trends in Northern Spain. Analysis and Simulation with Statistical Downscaling Methods Thanks to: Daniel San Martín, Sixto.
Climate Change Impacts on the Water Cycle Emmanouil Anagnostou Department of Civil & Environmental Engineering Environmental Engineering Program UCONN.
Climate change impact on recurrence and regime of runoff extremes: floods and droughts An example of the Middle Daugava River Dāvis GRUBERTS, Dr.biol.
Lucinda Mileham, Dr Richard Taylor, Dr Martin Todd
Evaluating Potential Impacts of Climate Change on Surface Water Resource Availability of Upper Awash Sub-basin, Ethiopia rift valley basin. By Mekonnen.
Early warning Systems in Sudan Meteorological Authority Ahmed M Abdel Karim Sudan Meteorological Authority Crop and RAngeland Monitoring.
The Importance of Realistic Spatial Forcing in Understanding Hydroclimate Change-- Evaluation of Streamflow Changes in the Colorado River Basin Hydrology.
Large-scale atmospheric circulation characteristics and their relations to local daily precipitation extremes in Hesse, central Germany Anahita Amiri Department.
WFM 6311: Climate Risk Management © Dr. Akm Saiful Islam WFM 6311: Climate Change Risk Management Akm Saiful Islam Lecture-4: Module- 3 Regional Climate.
Hydrological Modeling FISH 513 April 10, Overview: What is wrong with simple statistical regressions of hydrologic response on impervious area?
Using climate change to predict Nile flow Suzanne Young March 8,
Climate Variability and Prediction in the Little Colorado River Basin Matt Switanek 1 1 Department of Hydrology and Water Resources University of Arizona.
Assessment of Extreme Rainfall in the UK Marie Ekström
The Global Digital Elevation Model (GTOPO30) of Great Basin Location: latitude 38  15’ to 42  N, longitude 118  30’ to 115  30’ W Grid size: 925 m.
Impact of Climate Change on Flow in the Upper Mississippi River Basin
CARPE DIEM Centre for Water Resources Research NUID-UCD Contribution to Area-3 Dusseldorf meeting 26th to 28th May 2003.
Regional Climate Modeling in the Source Region of Yellow River with complex topography using the RegCM3: Model validation Pinhong Hui, Jianping Tang School.
Analysis of extreme precipitation in different time intervals using moving precipitation totals Tiina Tammets 1, Jaak Jaagus 2 1 Estonian Meteorological.
© Crown copyright Met Office Climate Projections for West Africa Andrew Hartley, Met Office: PARCC national workshop on climate information and species.
Climate Change Tendencies in Georgia under Global Warming Conditions Mariam Elizbarashvili 1 Marika Tatishvili 2 Ramaz Meskhia 2 Nato Kutaladze 3 1. Ivane.
1. Introduction 3. Global-Scale Results 2. Methods and Data Early spring SWE for historic ( ) and future ( ) periods were simulated. Early.
Rainfall & Temperature Scenarios for Sri Lanka under the anticipated Climate Change B.R.S.B. Basnayake 1, Janaka Ratnasiri 2, J.C. Vithanage 2 1 Centre.
Constructing Climate Graphs
Assessment of Hydrology of Bhutan What would be the impacts of changes in agriculture (including irrigation) and forestry practices on local and regional.
Application of a rule-based system for flash flood forecasting taking into account climate change scenarios in the Llobregat basin EGU 2012, Vienna Session.
Impact of Climate Change on Water Resources Water Corporation Technical Seminars 10 July 2006 Brian Ryan CSIRO Marine and Atmospheric Research.
Preliminary Results of Global Climate Simulations With a High- Resolution Atmospheric Model P. B. Duffy, B. Govindasamy, J. Milovich, K. Taylor, S. Thompson,
Climate Graphs 20to%20draw%20a%20climate%20graph%20PP.ppt.
3202 / 3200 / 3260 Climate Graphs WORLD GEOGRAPHY 3202 / 3200 / 3260 Climate Graphs Mr. Oliver H. Penney.
Where the Research Meets the Road: Climate Science, Uncertainties, and Knowledge Gaps First National Expert and Stakeholder Workshop on Water Infrastructure.
Assessment of the impacts of and adaptations to climate change in the plantation sector, with particular reference to coconut and tea, in Sri Lanka. AS-12.
Forest fires: from research to stakeholder needs C. Giannakopoulos, M. Hatzaki, A. Karali, A. Roussos, E. Athanasopoulou WP6 Climate services for the forest.
TECHNICAL GUIDE No.1 Estimation of Future Design Rainstorm under the Climate Change Scenario in Peninsular Malaysia Research Centre for Water Resources.
Climate change projections for Vietnam from CMIP5 simulations Ramasamy Suppiah 29 November 2012.
Hope Mizzell, Ph.D. SC State Climatologist South Carolina Department of Natural Resources Carolinas and Virginia Climate Conference Improving Drought Detection.
MODSCAG fractional snow covered area (fSCA )for central and southern Sierra Nevada Spatial distribution of snow water equivalent across the central and.
Potential impact of climate change on growth and wood quality in white spruce Christophe ANDALO 1,2, Jean BEAULIEU 1 & Jean BOUSQUET 2 1 Natural Resources.
Meteorological Data Analysis Urban, Regional Modeling and Analysis Section Division of Air Resources New York State Department of Environmental Conservation.
Evaluation of a dynamic downscaling of precipitation over the Norwegian mainland Orskaug E. a, Scheel I. b, Frigessi A. c,a, Guttorp P. d,a,
Spatial distribution of snow water equivalent across the central and southern Sierra Nevada Roger Bales, Robert Rice, Xiande Meng Sierra Nevada Research.
Assessment and planning of the water resources under various scenarios in the Ganges and Indus basin: Glaciers contribution and WEAP modelling Devaraj.
Feng Zhang and Aris Georgakakos School of Civil and Environmental Engineering, Georgia Institute of Technology Sample of Chart Subheading Goes Here Comparing.
Panut Manoonvoravong Bureau of research development and hydrology Department of water resources.
Evapotranspiration Estimates over Canada based on Observed, GR2 and NARR forcings Korolevich, V., Fernandes, R., Wang, S., Simic, A., Gong, F. Natural.
Chaiwat Ekkawatpanit, Weerayuth Pratoomchai Department of Civil Engineering King Mongkut’s University of Technology Thonburi, Bangkok, Thailand Naota Hanasaki.
Assessing the Influence of Decadal Climate Variability and Climate Change on Snowpacks in the Pacific Northwest JISAO/SMA Climate Impacts Group and the.
The ENSEMBLES high- resolution gridded daily observed dataset Malcolm Haylock, Phil Jones, Climatic Research Unit, UK WP5.1 team: KNMI, MeteoSwiss, Oxford.
RHESSys and SWAT simulations for modeling of long term water yield GEOG711 December 6, 2007 Yuri Kim.
DOWNSCALING GLOBAL MEDIUM RANGE METEOROLOGICAL PREDICTIONS FOR FLOOD PREDICTION Nathalie Voisin, Andy W. Wood, Dennis P. Lettenmaier University of Washington,
VERIFICATION OF A DOWNSCALING SEQUENCE APPLIED TO MEDIUM RANGE METEOROLOGICAL PREDICTIONS FOR GLOBAL FLOOD PREDICTION Nathalie Voisin, Andy W. Wood and.
Homogenization of daily data series for extreme climate index calculation Lakatos, M., Szentimey T. Bihari, Z., Szalai, S. Meeting of COST-ES0601 (HOME)
Indicators for Climate Change over Mauritius Mr. P Booneeady Pr. SDDV Rughooputh.
(Srm) model application: SRM was developed by Martinec (1975) in small European basins. With the progress of satellite remote sensing of snow cover, SRM.
Actions & Activities Report PP8 – Potsdam Institute for Climate Impact Research, Germany 2.1Compilation of Meteorological Observations, 2.2Analysis of.
Trends in Iowa Precipitation: Observed and Projected Future Trends
EGS-AGU-EUG Joint Assembly Nice, France, 10th April 2003
Approach in developing PnET-BGC model inputs for Smoky Mountains
Trends in Iowa Precipitation: Observed and Projected Future Trends
A spatio-temporal assessment of the impact of climate change on hydrological refugia in Eastern Australia using the Budyko water balance framework Luke.
By KWITONDA Philippe Rwanda Natural Resources Authority
Impact of climate change on water cycle: trends and challenges
Constructing Climate Graphs
Focus of analysis – reason for using PRECIS RCM
CORPUS CHRISTI CATHOLIC COLLEGE – GEOGRAPHY DEPARTMENT
HOW TO DRAW CLIMATE GRAPHS
Overview Exercise 1: Types of information Exercise 2: Seasonality
Altai flood’s 2014 and model precipitationg forecasts
Presentation transcript:

Climate and Hydrological and Extremes in Lake Victoria Basin An Assessment of Vulnerability and Adaptation to Climate Variability and Change Impacts on Malaria and Health in the Lake Victoria Region in East Africa Dr. Daniel Olago Department of Geology University of Nairobi Nairobi, Kenya

Lake Victoria Basin SITES Kenya: Kericho (malaria) and Kisumu (cholera). Tanzania: Bugarama village, Muleba District (malaria) and Chato Village, Biharamulo District (cholera). Uganda: Kasese, southwest Uganda (Malaria) and Gaba, Kampala (cholera).

Objectives n 1. To analyse climate variability in temperature and rainfall extremes in relation to reported and documented malaria and cholera outbreaks in order to establish the coupling sensitivities and critical climate thresholds.

Data and Data Sources n Climate data n Climate data (rainfall and temperature) covering the period 1961 to the present has been collected from the various site-related meteorological stations in the Lake Victoria basin. n Water resources data n Long-term data (1961-to the present) on river discharge has been obtained from Water Ministries and Meteorological Agencies.

Climate Data Preliminary Analysis: n Meteorological data (temperature, rainfall, evaporation) has been obtained for all six sites from the Drought Monitoring Centre, Nairobi (DMCN) n Below we outline the results obtained from Kenya, Uganda and Tanzania sites.

Climate Data Preliminary Analysis: n The stations’ locations have been laid over the digital elevation model for the region (resolution: 1km), the darker the brown shade, the higher the elevation. The elevations for the two main Meteorological stations are 1146m for Kisumu and 2148m for Kericho.

Climate Data Preliminary Analysis: n Comparison of mean monthly rainfall patterns in the study regions. n On average, the study regions in Kisumu and Kericho receive about 1400mm and 1940mm of annual rainfall respectively. n In Kericho, there are about 7 months on average, within one year that receive more than 150mm of rainfall as compared to only about 3 months in Kisumu. This should be compared to the fact that a minimum rainfall of 150mm per month for 1 to 2 months is required to precipitate a malaria outbreak.

Climate Data Preliminary Analysis: In Kisumu, the mean maximum temperature occurs in March and the mean minimum temperature occurs in July. The evaporation does not vary much and almost equals the rainfall, except during the rainy seasons where the rainfall is much more than the evaporation. In Kericho, the mean maximum temperature occurs in February and the mean minimum temperature occurs in September. Here the rainfall is seen to exceed the evaporation by large amounts even during the non-raining seasons, unlike for Kisumu. The pattern of humidity in both the study areas is a mirror image of evaporation. It ranges on average from 54% to 65% in Kisumu and 56% to 76% in Kericho.

Climate Data Preliminary Analysis: GCM Validation  The gridded data set was obtained from the Climatic Data Research Unit (CRU) website  The baseline climatology is based on and is averaged in 0.5 by 0.5 degree grid boxes.  The baseline climatology extracted from the website is labelled CRU CL1.0. In addition, interpolated GCM experiments to be used for validation of projections are on the same website.  The experiments used in this exercise are labelled TYN SC2.0. The experiments contain time series of projected climate over the same grid boxes.  Actual rainfall data for the period was obtained from the Drought Monitoring Centre- Nairobi.  Nine stations around Lake Victoria were used in this exercise.

Climate Data Preliminary Analysis: GCM Validation  The gridded data sets were extracted using a program that was generated in-house.  The gridded rainfall data sets are archived in units of mm/day*10. The extracted data sets were converted to mm.  The extraction was done for 9 grid boxes each of which represented one station.  Mean monthly rainfall was computed for the period for each of the stations using the actual time series of the station data.  Time series plots were drawn for each station in which the gridded monthly climatology was superimposed on the mean climatology from station data.  In addition, correlations and correlation coefficients were computed between the gridded climatology and the station climatology.  The correlation coefficients between the gridded data sets and the station climatology are all greater than 0.9.

Climate Data Preliminary Analysis: GCM Validation – Time Series Plots for Tanzania The gridded data set compares very well with the station data for Bukoba There is a tendency for overestimating the station climatology at Musoma in J, F, N, D At Mwanza, the station climatology is overestimated during Jun, Aug, and underestimated in F, N, D

Climate Data Preliminary Analysis: GCM Validation – Time Series Plots for Kenya At Kakamega and Kisii, the gridded data set underestimates the station climatology for most of the months. This underestimation is more apparent at Kisii with deviations of about 50 mm during some months. At Kisumu, the gridded data set overestimates the station climatology during the relatively drier months of Jul to Sep and introduces a slight rainfall peak in August.

Climate Data Preliminary Analysis: GCM Validation – Time Series Plots for Uganda The gridded data set overestimates the station data during the long rains (March to May) season at Jinja and Kampala. It underestimates the station climatology for Entebbe during the same season. At Entebbe, the peak rainfall month during the long rains season is depicted as April when the station climatology shows May as the peak. The differences during some months are close to 100mm.

Hydrology Data Preliminary Analysis:  Hydrological data has been obtained for Kenya sites (Sondu-Miriu and Awach River Basins).  Rivers in the Tanzania and Uganda sites are ungauaged.  Data gaps such as in river discharges were addressed with graphical or statistical (MOVE1) methods of estimation.  Some water quality data is also available and their usefulness in relation to elucidating aspects of water related health risks is being assessed.  Some examples of the datasets are given below.

Hydrology Data Preliminary Analysis:  Preliminary results for the Kericho area, Kenya, show that highest discharge rates in Sondu_Miriu River occur in the six months from April to September.  Peak river discharge lags two of the three observed rainfall peaks (April and August) by one month, but is coincident with the rainfall peak in November.

Hydrology Data: Spectral Analysis:  The discharge data used in this case is in terms of months.  Two peaks predominate. A six months cycle (F=0.1667) is seen for the first peak.  The second peak is centred at F= which is equivalent to a period of 12 months.  Hence seasonal and annual cycles are observed for the discharge over Sondu.

Hydrology Data: Spectral Analysis:  For the case of Awach, similar case like the one for Sondu is noticed where we have 6 month cycles(F=0.1667) and annual cycles(F=0.0833).

Hydrology Data: Analogues  the years 1962, 1963,1964, 1968,1970, 1977 and 1978 were associated with high flows/floods.  the periods 1965, 1969,1972, 1976 and 1980 are associated with low flows/droughts.

Hydrology Data: Analogues  the periods 1966,1968,1977 and 1978 were basically wet periods associated with high flows/floods  the periods 1970, 1976,1982, 1984,1986 were associated with low flows/droughts

Hydrology Data: Flood Frequency Curve  Standard error increases at high return periods – reliability of these models decrease at high return periods.  Return period for maximum discharge for is between 2 to 5 years. 1JG01_SONDU_RIVER Number of years : 45 Fitting procedure : GEV-PWM u = a = k = Return period Magn. S.E * *

Some Problems Encountered GCM data: results from GCM simulations were to be used for validation of climate projections. Problem- downloading GCMs – unsuitability for regional/local scale studies because of the course grid-size resolution. Need for downscaling. Lack of high resolution data (DEM, landuse etc) Scaling, for hydrology. The inputs have a much coarser resolution than the analysis size for the study area, for any meaningful results. Lack of hydrological data for Tanzania and Uganda sites.