Full text: Proceedings, XXth congress (Part 7)

International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B7. Istanbul 2004 
Owing to the extreme cloudiness over Malaysia during heavy 
down pour, this study envisages the development of a 
Nowcasting system for the monitoring of Langat river 
catchment (Fig 2). The operational coupling quantitative 
precipitation forecasting (QPF) using cloud indexing and 
modeling based techniques with Mike 11 hydrodynamic 
oriented GIS in the bid to implement a fully automated 
simulation and early warning system (Fig 3). According to 
Karlsson (1999), Nowcasting defines forecasting in the 
   
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A 
  
   
   
    
approximate range +0-9 hours from observation time. 
However, due to data processing restrictions and present 
deficiencies in the shortest numerical weather prediction 
(NWP) model forecasts, special forecasting techniques are 
necessary for bridging the gap in the knowledge of weather 
evolution between the latest observation information and the 
information available from NWP models. He concluded that the 
challenge in Nowcasting is to utilize the latest observations 
together with models to improve very short forecasts. 
  
     
  
     
    
  
    
   
    
      
       
      
  
  
  
  
   
  
  
  
4 QPF Modeling (P CI.9.1) H&HD Modeling (Mike 11) 
3 NOAA-AVHRR & Rainfall in -Hydrological Parameters 
GMS-5 data ASCII Format Rainfall 
| - QPF Models, Time Series data 
ins of - Classifications -Hydraulic Parameters 
ms c | - Computation Rain- Pre 
: - Networ chainage 
ement - Cross section£ R. Depth 
itative | e - Runoff point, 
paper 
OAA- | 
lentify | 
umber 
s been | N 1 
s like 11 GIS (Arc View) 
on the Catchment geometry Dev 
xi2.5 Surface DEM Dev 
3D built-up areas 
Road Network overlay 
Simulation 
Water level profiling 
system Runoff & flow simulation 
at Visualization & interpretation of 
ied in P 
to. the flooding process 
C ZZ 
recasts 
ending 
sts and : i : ; 
cs LS Fig 3. QPF& Hydrodynamic oriented GIS Flood Early Warning 
| flood 
arning. 
of rain 2 Cloud base Modeling Techniques using NOAA-AVHRR rate and rain area in convective stratiform technique (CST). 
is and Local clouds in IR 7B are screened to eliminate thin, non- 
remote Satellite images are currently an in dispensable tool for precipitating clouds. The governing formulas are as follows: 
itation forecasters to obtain a synoptic view of the distribution of cloud 
of few and cloud structures over region. Over the years various 
  
methods and techniques have been explored for rainfall 
estimation from cloud cover . Arkin, (1979) described the cloud 
indexing method to be based on the high correlations and 
probability fraction of cloud cluster colder than 235 K in 
infrared (IR). This model was initially developed for NOAA 
data and later adopted for Geostationary images. Rain days are 
identified from the occurrence of IR brightness temperature 
(TB) below a threshold at given location. Details of this method 
are given by (Arkin,(1979), Arkin and Janowiak,(1991), Ba and 
Nicholson (1998), (Todd et al., 1995,1999). 
The cloud model-based technique is another method that 
introduces cloud physics into the retrieval process for a 
quantitative improvement deriving from the overall better 
physical description of the rain formation processes. Details of 
these studies are found in (Gruber, (1973), Anagnostou et al., 
(1999), Reudenbach et al., (2001), Bendix, (1997, 2002)). This 
one dimensional cloud model, relates cloud temperature to rain- 
721 
Slope S is calculated for each temperature minimum T min- 
Parameters defined as 
S7 T 1-6 - Tmin. Tmin is Ave Temp of six closest pixels. 
The rain area (Ar) is assumed to be five times the model up 
Ar= Smr2 . Rmean = VRR/Ar,, Rmean= 74.89-0.266 Te, Ar = 
exp(15.27-0.0465T;) 
Our study area, the Langat river basin catchment area is about 
1,988 km? The average annual rainfall depth is approximately 
2,400 mm ranging from 1,800 to 3,000 mm. The highest 
rainfall occurs in the month of April and November with a 
mean of 280 mm. The lowest rainfall occurs in the month of 
June with a mean of 115 mm. The wet seasons occur in the 
transitional periods of the monsoons, from March to April and 
from October to November. In this study NOAA-AVHRR data 
was used because of moderately good spatial resolution of 
1.1km and because of it repeated coverage of about 6 hr daily, 
 
	        
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