The impact of training period for forecasting clearness index and insolation using support vector regression

Takumi Ogawa, Yuzuru Ueda

研究成果: Conference contribution査読

抄録

Forecasting insolation of the next day is expected as a method to deal with photovoltaic power fluctuation. In general, extending the training period as long as possible is desirable for the training of a machine learning. However, annual variation of global horizontal insolation could affect the accuracy of insolation forecast. Thus, the objective of this study is to forecast clearness index and to investigating the forecast error of forecast models with various training periods. The proposed clearness index forecast model uses temperature, absolute humidity, cloudiness at each level from GPV-MSM, and air mass as input data into support vector regression. Also, the model was divided into three models depending on the solar height. Results showed that root mean square error, mean absolute error, and mean bias error were better compared to the insolation forecast. Consequently, the clearness index forecast model is preferable to eliminate a negative effect of annual variation.

本文言語English
ホスト出版物のタイトル2016 IEEE Power and Energy Society Innovative Smart Grid Technologies Conference, ISGT 2016
出版社Institute of Electrical and Electronics Engineers Inc.
ISBN(電子版)9781509051670
DOI
出版ステータスPublished - 9 12月 2016
イベント2016 IEEE Power and Energy Society Innovative Smart Grid Technologies Conference, ISGT 2016 - Minneapolis, United States
継続期間: 6 9月 20169 9月 2016

出版物シリーズ

名前2016 IEEE Power and Energy Society Innovative Smart Grid Technologies Conference, ISGT 2016

Conference

Conference2016 IEEE Power and Energy Society Innovative Smart Grid Technologies Conference, ISGT 2016
国/地域United States
CityMinneapolis
Period6/09/169/09/16

フィンガープリント

「The impact of training period for forecasting clearness index and insolation using support vector regression」の研究トピックを掘り下げます。これらがまとまってユニークなフィンガープリントを構成します。

引用スタイル