An artificial neural network model for rainfall forecasting in Bangkok, Thailand

This paper presents a new approach using an Artificial Neural Network technique to improve rainfall forecast performance. A real world case study was set up in Bangkok; 4 years of hourly data from 75 rain gauge stations in the area were used to develop the ANN model. The developed ANN model is being...

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Main Authors: N. Q. Hung, M. S. Babel, S. Weesakul, N. K. Tripathi
Format: Article
Language:English
Published: Copernicus Publications 2009-08-01
Series:Hydrology and Earth System Sciences
Online Access:http://www.hydrol-earth-syst-sci.net/13/1413/2009/hess-13-1413-2009.pdf
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spelling doaj-2408b9a4606b448dac87d6a74f8950792020-11-25T02:42:39ZengCopernicus PublicationsHydrology and Earth System Sciences1027-56061607-79382009-08-0113814131425An artificial neural network model for rainfall forecasting in Bangkok, ThailandN. Q. HungM. S. BabelS. WeesakulN. K. TripathiThis paper presents a new approach using an Artificial Neural Network technique to improve rainfall forecast performance. A real world case study was set up in Bangkok; 4 years of hourly data from 75 rain gauge stations in the area were used to develop the ANN model. The developed ANN model is being applied for real time rainfall forecasting and flood management in Bangkok, Thailand. Aimed at providing forecasts in a near real time schedule, different network types were tested with different kinds of input information. Preliminary tests showed that a generalized feedforward ANN model using hyperbolic tangent transfer function achieved the best generalization of rainfall. Especially, the use of a combination of meteorological parameters (relative humidity, air pressure, wet bulb temperature and cloudiness), the rainfall at the point of forecasting and rainfall at the surrounding stations, as an input data, advanced ANN model to apply with continuous data containing rainy and non-rainy period, allowed model to issue forecast at any moment. Additionally, forecasts by ANN model were compared to the convenient approach namely simple persistent method. Results show that ANN forecasts have superiority over the ones obtained by the persistent model. Rainfall forecasts for Bangkok from 1 to 3 h ahead were highly satisfactory. Sensitivity analysis indicated that the most important input parameter besides rainfall itself is the wet bulb temperature in forecasting rainfall. http://www.hydrol-earth-syst-sci.net/13/1413/2009/hess-13-1413-2009.pdf
collection DOAJ
language English
format Article
sources DOAJ
author N. Q. Hung
M. S. Babel
S. Weesakul
N. K. Tripathi
spellingShingle N. Q. Hung
M. S. Babel
S. Weesakul
N. K. Tripathi
An artificial neural network model for rainfall forecasting in Bangkok, Thailand
Hydrology and Earth System Sciences
author_facet N. Q. Hung
M. S. Babel
S. Weesakul
N. K. Tripathi
author_sort N. Q. Hung
title An artificial neural network model for rainfall forecasting in Bangkok, Thailand
title_short An artificial neural network model for rainfall forecasting in Bangkok, Thailand
title_full An artificial neural network model for rainfall forecasting in Bangkok, Thailand
title_fullStr An artificial neural network model for rainfall forecasting in Bangkok, Thailand
title_full_unstemmed An artificial neural network model for rainfall forecasting in Bangkok, Thailand
title_sort artificial neural network model for rainfall forecasting in bangkok, thailand
publisher Copernicus Publications
series Hydrology and Earth System Sciences
issn 1027-5606
1607-7938
publishDate 2009-08-01
description This paper presents a new approach using an Artificial Neural Network technique to improve rainfall forecast performance. A real world case study was set up in Bangkok; 4 years of hourly data from 75 rain gauge stations in the area were used to develop the ANN model. The developed ANN model is being applied for real time rainfall forecasting and flood management in Bangkok, Thailand. Aimed at providing forecasts in a near real time schedule, different network types were tested with different kinds of input information. Preliminary tests showed that a generalized feedforward ANN model using hyperbolic tangent transfer function achieved the best generalization of rainfall. Especially, the use of a combination of meteorological parameters (relative humidity, air pressure, wet bulb temperature and cloudiness), the rainfall at the point of forecasting and rainfall at the surrounding stations, as an input data, advanced ANN model to apply with continuous data containing rainy and non-rainy period, allowed model to issue forecast at any moment. Additionally, forecasts by ANN model were compared to the convenient approach namely simple persistent method. Results show that ANN forecasts have superiority over the ones obtained by the persistent model. Rainfall forecasts for Bangkok from 1 to 3 h ahead were highly satisfactory. Sensitivity analysis indicated that the most important input parameter besides rainfall itself is the wet bulb temperature in forecasting rainfall.
url http://www.hydrol-earth-syst-sci.net/13/1413/2009/hess-13-1413-2009.pdf
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