ログイン サインアップ
言語:

WEKO3

  • トップ
  • ランキング
To
lat lon distance
To

Field does not validate



インデックスリンク

インデックスツリー

メールアドレスを入力してください。

WEKO

One fine body…

WEKO

One fine body…

アイテム

{"_buckets": {"deposit": "82e6c34b-db6e-41b6-ac58-b691db768546"}, "_deposit": {"id": "4363", "owners": [1], "pid": {"revision_id": 0, "type": "depid", "value": "4363"}, "status": "published"}, "_oai": {"id": "oai:nied-repo.bosai.go.jp:00004363", "sets": []}, "author_link": [], "item_10001_biblio_info_7": {"attribute_name": "書誌情報", "attribute_value_mlt": [{"bibliographicIssueDates": {"bibliographicIssueDate": "2014-08"}, "bibliographicPageEnd": "413", "bibliographicPageStart": "403", "bibliographicVolumeNumber": "68", "bibliographic_titles": [{"bibliographic_title": "RENEWABLE ENERGY", "bibliographic_titleLang": "en"}]}]}, "item_10001_description_5": {"attribute_name": "抄録", "attribute_value_mlt": [{"subitem_description": "Regional forecasts of power generated by photovoltaic systems have an important role helping power utilities to manage grids with a high level of penetration of such systems. The objective of this study is to propose a method to obtain one-day ahead hourly regional forecasts of photovoltaic power when regional information is available. The method is based on the use of principal component analysis, support vector regression and weather forecast data. One-day ahead regional forecasts of photovoltaic power were done for 4 of the main regions of Japan for 1 year, 2009, using hourly power generation data of 453 photovoltaic systems. The performance of the method was characterized comparing the results it yielded with the ones provides by a persistence approach and by an approach that do not employ the principal component analysis. Moreover, the expected smoothing effect on the error achieved when the regional forecasts are based on forecasts for each photovoltaic system is presented, constituting an additional reference to evaluate the proposed method. The results show that the method performed well; its regional forecasts had a normalized annual root mean square error of 0.07 kWh/kW(rated) in the worst case, and the persistence approach was outperformed by at least 51% regarding the same error. The use of principal component proved to be a simple and particularly effective approach, decreasing the bias of the forecasts in all regions, and causing a reduction of the normalized root mean square error from 20.2% to 57.8% depending on the region. The proposed method also yielded results within the same level of forecasts which benefitted from the smoothing effect; the former presented a maximum variation of 10.2% of the normalized root mean square error of the latter in the worst case. (C) 2014 Elsevier Ltd. All rights reserved.", "subitem_description_language": "en", "subitem_description_type": "Other"}]}, "item_10001_publisher_8": {"attribute_name": "出版者", "attribute_value_mlt": [{"subitem_publisher": "PERGAMON-ELSEVIER SCIENCE LTD", "subitem_publisher_language": "en"}]}, "item_10001_relation_14": {"attribute_name": "DOI", "attribute_value_mlt": [{"subitem_relation_type_id": {"subitem_relation_type_id_text": "10.1016/j.renene.2014.02.018"}}]}, "item_10001_source_id_9": {"attribute_name": "ISSN", "attribute_value_mlt": [{"subitem_source_identifier": "0960-1481", "subitem_source_identifier_type": "ISSN"}]}, "item_creator": {"attribute_name": "著者", "attribute_type": "creator", "attribute_value_mlt": [{"creatorNames": [{"creatorName": "Joao Gari da Silva Fonseca Junior", "creatorNameLang": "en"}]}, {"creatorNames": [{"creatorName": "Takashi Oozeki", "creatorNameLang": "en"}]}, {"creatorNames": [{"creatorName": "Hideaki Ohtake", "creatorNameLang": "en"}]}, {"creatorNames": [{"creatorName": "Ken-ichi Shimose", "creatorNameLang": "en"}]}, {"creatorNames": [{"creatorName": "Takumi Takashima", "creatorNameLang": "en"}]}, {"creatorNames": [{"creatorName": "Kazuhiko Ogimoto", "creatorNameLang": "en"}]}]}, "item_language": {"attribute_name": "言語", "attribute_value_mlt": [{"subitem_language": "eng"}]}, "item_title": "Regional forecasts and smoothing effect of photovoltaic power generation in Japan: An approach with principal component analysis", "item_titles": {"attribute_name": "タイトル", "attribute_value_mlt": [{"subitem_title": "Regional forecasts and smoothing effect of photovoltaic power generation in Japan: An approach with principal component analysis", "subitem_title_language": "en"}]}, "item_type_id": "40001", "owner": "1", "path": ["1670839190650"], "permalink_uri": "https://nied-repo.bosai.go.jp/records/4363", "pubdate": {"attribute_name": "PubDate", "attribute_value": "2023-03-30"}, "publish_date": "2023-03-30", "publish_status": "0", "recid": "4363", "relation": {}, "relation_version_is_last": true, "title": ["Regional forecasts and smoothing effect of photovoltaic power generation in Japan: An approach with principal component analysis"], "weko_shared_id": -1}
  1. 防災科研関係論文

Regional forecasts and smoothing effect of photovoltaic power generation in Japan: An approach with principal component analysis

https://nied-repo.bosai.go.jp/records/4363
https://nied-repo.bosai.go.jp/records/4363
4e899dbb-ce05-487f-8d8c-c15eb01c44bb
Item type researchmap(1)
公開日 2023-03-30
タイトル
言語 en
タイトル Regional forecasts and smoothing effect of photovoltaic power generation in Japan: An approach with principal component analysis
言語
言語 eng
著者 Joao Gari da Silva Fonseca Junior

× Joao Gari da Silva Fonseca Junior

en Joao Gari da Silva Fonseca Junior

Search repository
Takashi Oozeki

× Takashi Oozeki

en Takashi Oozeki

Search repository
Hideaki Ohtake

× Hideaki Ohtake

en Hideaki Ohtake

Search repository
Ken-ichi Shimose

× Ken-ichi Shimose

en Ken-ichi Shimose

Search repository
Takumi Takashima

× Takumi Takashima

en Takumi Takashima

Search repository
Kazuhiko Ogimoto

× Kazuhiko Ogimoto

en Kazuhiko Ogimoto

Search repository
抄録
内容記述タイプ Other
内容記述 Regional forecasts of power generated by photovoltaic systems have an important role helping power utilities to manage grids with a high level of penetration of such systems. The objective of this study is to propose a method to obtain one-day ahead hourly regional forecasts of photovoltaic power when regional information is available. The method is based on the use of principal component analysis, support vector regression and weather forecast data. One-day ahead regional forecasts of photovoltaic power were done for 4 of the main regions of Japan for 1 year, 2009, using hourly power generation data of 453 photovoltaic systems. The performance of the method was characterized comparing the results it yielded with the ones provides by a persistence approach and by an approach that do not employ the principal component analysis. Moreover, the expected smoothing effect on the error achieved when the regional forecasts are based on forecasts for each photovoltaic system is presented, constituting an additional reference to evaluate the proposed method. The results show that the method performed well; its regional forecasts had a normalized annual root mean square error of 0.07 kWh/kW(rated) in the worst case, and the persistence approach was outperformed by at least 51% regarding the same error. The use of principal component proved to be a simple and particularly effective approach, decreasing the bias of the forecasts in all regions, and causing a reduction of the normalized root mean square error from 20.2% to 57.8% depending on the region. The proposed method also yielded results within the same level of forecasts which benefitted from the smoothing effect; the former presented a maximum variation of 10.2% of the normalized root mean square error of the latter in the worst case. (C) 2014 Elsevier Ltd. All rights reserved.
言語 en
書誌情報 en : RENEWABLE ENERGY

巻 68, p. 403-413
出版者
言語 en
出版者 PERGAMON-ELSEVIER SCIENCE LTD
ISSN
収録物識別子タイプ ISSN
収録物識別子 0960-1481
DOI
関連識別子 10.1016/j.renene.2014.02.018
戻る
0
views
See details
Views

Versions

Ver.1 2023-03-31 01:51:42.180971
Show All versions

エクスポート

OAI-PMH
  • OAI-PMH JPCOAR
  • OAI-PMH DublinCore
  • OAI-PMH DDI
Other Formats
  • JSON
  • BIBTEX

Confirm


Powered by WEKO3

Change consent settings


Powered by WEKO3

Change consent settings