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ID 118128
Author
Horihata, Daichi Tokushima University
Kuwahara, Akinobu Tokushima University
Takigawa, Kiyoshi Shikoku Research Institute
Content Type
Journal Article
Description
This paper describes a statistical correction model for wind speed data of the Meso-Scale Model Grid Point Value (MSM-GPV), which is one of the numerical weather forecasting systems. In the numerical forecasting system, there are calculation errors caused by both the physical modeling and estimation of initial values. Because numerical forecast data have two-dimensional spatial information, convolution with a convolutional neural network (CNN) is used to grasp and correct the two-dimensional features of errors contained in the forecast data. In the simulations, several MSM-GPV data used for the input data and various correction models are prepared and compared with the results of a fully connected neural network from the viewpoints of the error improvement rate and error distribution.
Journal Title
Journal of Signal Processing
ISSN
18801013
Publisher
Research Institute of Signal Processing
Volume
24
Issue
4
Start Page
195
End Page
198
Published Date
2020-07-15
Remark
利用は著作権の範囲内に限られる。
EDB ID
DOI (Published Version)
URL ( Publisher's Version )
FullText File
language
eng
TextVersion
Publisher
departments
Science and Technology
Technical Support Department