Title: WFM 6311: Climate Change Risk Management
1WFM 6311 Climate Change Risk Management
Lecture-4 Module- 3 Regional Climate Change
Modeling
Institute of Water and Flood Management
(IWFM) Bangladesh University of Engineering and
Technology (BUET)
December, 2009
2Module-3
- Prediction of climate change
- Global and regional climate change predictions
- Dynamic and static downscaling for impact study.
- Uncertainty of predictions
3Regional Climate Change Modeling
4Regional details of Climate Change
5Regional Climate modeling
- An RCM is a tool to add small-scale detailed
information of future climate change to the
large-scale projections of a GCM. RCMs are full
climate models and as such are physically based
and represent most or all of the processes,
interactions and feedbacks between the climate
system components that are represented in GCMs. - They take coarse resolution information from a
GCM and then develop temporally and spatially
fine-scale information consistent with this using
their higher resolution representation of the
climate system. - The typical resolution of an RCM is about 50 km
in the horizontal and GCMs are typically 500300
km
6(No Transcript)
7RCM can simulate cyclones and hurricanes
8Regional Climate change modeling in Bangladesh
- PRECIS regional climate modeling is now running
in Climate change study cell at IWFM,BUET. - Uses LBC data from GCM (e.g. HadCM3).
- LBC data available for baseline, A2, B2, A1B
scenarios up to 2100. - Predictions for every hour. Needs more than 100
GB free space.
9PRECIS
- PRECIS, developed by Hadley Center's, UK, is a
regional climate modeling system. - A regional climate model (RCM) is a dynamic
downscaling tool that adds fine scale (high
resolution) information to the large-scale
projections of a global general circulation model
(GCM). - This makes for a more accurate representation of
many surface features, such as complex mountain
topographies and coastlines. RCMs are full
climate models, and as such are physically based.
10Domain used in PRECIS experiment
11Topography of Experiment Domain
Simulation Domain 88 x 88 Resolution 0.44
degree
Zoom over Bangladesh
12Predicted Change of Mean Temperature (0C) using
A1B
Baseline 2000
2050
2090
13Predicting Maximum Temperature using A2 Scenarios
Output of PRECIS model using SRES A2 scenario
14Predicting Minimum Temperature using A2 Scenarios
Output of PRECIS model using SRES A2 scenario
15Change of Mean Rainfall (mm/d) using A1B Scenarios
Baseline 2000
2050
2090
16Predicting Rainfall using A2 Scenarios
Output of PRECIS model using SRES A2 scenario
17Change of mean climatic variables of Bangladesh
using A1B Scenarios
Rainfall (mm/d)
Temperate (0C)
18Monthly Average Rainfall (mm/d)
Month 1990 2000 2010 2020 2030 2040 2050 2060 2070 2080 2090
January 2.61 0.34 0.03 0.03 0.42 0.99 1.24 0.21 0.12 1.66 1.02
February 0.61 0.55 1.38 1.01 1.24 1.88 0.45 1.10 0.53 1.61 0.76
March 2.42 1.02 4.82 3.04 1.87 3.07 0.99 3.62 2.84 1.27 3.59
April 5.84 1.38 11.46 5.99 2.82 7.84 11.41 6.60 8.39 8.74 3.66
May 10.03 5.59 10.36 6.42 11.92 18.16 33.47 16.53 29.47 11.29 11.96
June 17.06 7.90 14.79 13.59 10.84 21.48 12.87 12.93 7.24 10.04 11.70
July 7.20 9.07 7.97 8.13 7.32 11.26 5.62 10.26 10.31 6.33 9.98
August 7.39 5.46 5.11 3.92 9.79 6.67 7.46 13.60 10.65 9.13 9.59
September 4.49 6.71 5.47 7.83 7.51 8.82 10.29 10.80 10.52 8.18 7.48
October 5.68 1.48 4.16 2.76 6.16 3.11 1.89 3.94 2.55 8.84 7.58
November 0.14 0.16 0.41 0.91 0.03 0.73 0.08 1.91 0.27 1.23 0.51
December 0.14 0.06 0.10 0.26 0.06 0.18 1.09 0.04 0.13 0.32 0.03
19Monthly Average Temperature (0C)
Month 1990 2000 2010 2020 2030 2040 2050 2060 2070 2080 2090
January 14.74 15.08 14.63 15.94 15.66 17.66 19.52 16.49 17.68 21.55 20.88
February 14.27 21.18 20.18 22.36 20.61 20.65 23.14 25.37 24.50 23.00 23.32
March 24.25 26.34 25.68 25.66 28.82 26.70 29.23 29.04 29.71 28.53 28.84
April 27.95 32.36 29.10 31.28 34.07 31.96 31.29 32.64 32.81 31.53 34.52
May 29.51 32.11 32.16 33.17 31.97 32.37 29.31 32.00 32.59 33.88 35.62
June 29.18 31.42 30.66 31.44 30.82 31.56 31.94 31.18 37.24 34.80 35.07
July 28.59 28.23 28.88 28.99 29.35 30.28 30.58 30.45 31.03 31.76 30.44
August 28.19 28.24 29.06 29.65 28.62 30.34 30.26 29.31 30.12 29.93 30.09
September 28.02 27.29 28.65 28.11 28.58 30.72 29.07 29.79 30.72 29.01 29.87
October 25.24 25.21 27.10 27.29 26.14 28.48 28.22 29.25 29.72 27.82 29.09
November 19.44 20.20 21.03 20.52 21.06 23.21 22.64 22.04 23.76 25.52 26.30
December 14.48 17.37 17.86 18.53 16.24 18.85 19.99 18.26 19.36 20.90 20.80
20Summary
- Analysis of the historic data (1948-2007) shows
that daily maximum and minimum temperature has
been increased with a rate of 0.63 0C and 1.37
0C per 100 years respectively. - PRECIS simulation for Bangladesh using A1B
climate change scenarios showed that mean
temperature will be increased at a constant rate
40C per 100 year from the base line year 2000. - On the other hand, mean rainfall will be
increased by 4mm/d in 2050 and then decreased by
2.5mm/d in 2100 from base line year 2000.
21Recommendations
- In future, Climate change predictions will be
generated in more finer spatial scale(25km). - PRECIS model will be simulated with other
Boundary condition data such as ECHAM5 using A1B
scenarios. - Results will be compared with other regional
climate models such as RegCM3 etc.