WIT Press


Rainfall Estimation From GMS Imagery Data Using Neural Network

Price

Free (open access)

Volume

7

Pages

8

Published

1994

Size

989 kb

Paper DOI

10.2495/HY940141

Copyright

WIT Press

Author(s)

S. Tohma & S. Igata

Abstract

Rainfall estimation from GMS imagery data using neural network S. Tohma, S. Igata Department of Civil Engineering and Architecture, Muroran Institute of Technology, Muroran, Hokkaido, 050, Japan ABSTRACT Rainfall estimation at the mesoscale level generally involves with a huge amount of data which demands a time consuming process, as well as, a big computing memory of the computer. This problem can be solved by the use of Neural Network. In this study, Neural Network is used for forecasting the rainfall by using remote-sensing image cloud data, which can express many characteristics of clouds such as topography, temperature, surrounding atmosphere etc. Neural Network can store data of image variation of clouds between the connections of the network. By utilizing these stored data, the rainfall fields are estimated. From the result of the investigation of cloud image data and rain intensity, it is clear that the data correspond to May to July are distributed above the 30% albed

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