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2024 | OriginalPaper | Chapter

Cloud Distribution Forecasting Model Using Ground Altitude Information and CNN

Authors : Takahiro Kitajima, Koki Akiyama, Hiroshi Suzuki, Takashi Yasuno

Published in: Progressive and Integrative Ideas and Applications of Engineering Systems Under the Framework of IOT and AI

Publisher: Springer Nature Singapore

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Abstract

This paper describes a cloud distribution forecasting model based on deep convolutional neural network (CNN) for application of forecasting photovoltaic power generation (PV) output. PV output information is used for stable operation of the electricity grid and electricity trading markets. It is important to forecast cloud distribution because PV output varies mainly affected by clouds position and irradiation. In our previous research, satellite images were used for the input of the forecasting model. However, clouds appear and disappear from time to time by some factors such as topography, temperature, and humidity. In this paper, ground altitude information which is geopotential altitude is added to the input of the forecasting model to improve the forecasting accuracy. Geopotential altitude is a height referenced to earth’s mean sea level. Because the altitude is provided as two-dimensional data, it is suitable for the forecasting model which treats with images. The forecasting results with August dataset show some improvements in terms of the forecasting accuracy.

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Metadata
Title
Cloud Distribution Forecasting Model Using Ground Altitude Information and CNN
Authors
Takahiro Kitajima
Koki Akiyama
Hiroshi Suzuki
Takashi Yasuno
Copyright Year
2024
Publisher
Springer Nature Singapore
DOI
https://doi.org/10.1007/978-981-99-6303-4_11

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