Inter-hour direct normal irradiance forecast with multiple data types and time-series

Boosted by a strong solar power market, the electricity grid is exposed to risk under an increasing share of fluctuant solar power. To increase the stability of the electricity grid, an accurate solar power forecast is needed to evaluate such fluctuations. In terms of forecast, solar irradiance is t...

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Main Authors: Tingting Zhu, Hai Zhou, Haikun Wei, Xin Zhao, Kanjian Zhang, Jinxia Zhang
Format: Article
Language:English
Published: IEEE 2019-01-01
Series:Journal of Modern Power Systems and Clean Energy
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8982248/
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spelling doaj-746386955f0d45568cf7759f4ebfede92021-04-23T16:10:51ZengIEEEJournal of Modern Power Systems and Clean Energy2196-54202019-01-01751319132710.1007/s40565-019-0551-48982248Inter-hour direct normal irradiance forecast with multiple data types and time-seriesTingting Zhu0Hai Zhou1Haikun Wei2Xin Zhao3Kanjian Zhang4Jinxia Zhang5Key Laboratory of Measurement and Control of CSE, School of Automation, Southeast University,Ministry of Education,Nanjing,China,210096State Key Laboratory of Operation and Control of Renewable Energy and Storage Systems, China Electric Power Research Institute,Nanjing,China,210003Key Laboratory of Measurement and Control of CSE, School of Automation, Southeast University,Ministry of Education,Nanjing,China,210096Key Laboratory of Measurement and Control of CSE, School of Automation, Southeast University,Ministry of Education,Nanjing,China,210096Key Laboratory of Measurement and Control of CSE, School of Automation, Southeast University,Ministry of Education,Nanjing,China,210096Key Laboratory of Measurement and Control of CSE, School of Automation, Southeast University,Ministry of Education,Nanjing,China,210096Boosted by a strong solar power market, the electricity grid is exposed to risk under an increasing share of fluctuant solar power. To increase the stability of the electricity grid, an accurate solar power forecast is needed to evaluate such fluctuations. In terms of forecast, solar irradiance is the key factor of solar power generation, which is affected by atmospheric conditions, including surface meteorological variables and column integrated variables. These variables involve multiple numerical time-series and images. However, few studies have focused on the processing method of multiple data types in an inter-hour direct normal irradiance (DNI) forecast. In this study, a framework for predicting the DNI for a 10-min time horizon was developed, which included the nondimensionalization of multiple data types and time-series, development of a forecast model, and transformation of the outputs. Several atmospheric variables were considered in the forecast framework, including the historical DNI, wind speed and direction, relative humidity time-series, and ground-based cloud images. Experiments were conducted to evaluate the performance of the forecast framework. The experimental results demonstrate that the proposed method performs well with a normalized mean bias error of 0.41% and a normalized root mean square error (nRMSE) of 20.53%, and outperforms the persistent model with an improvement of 34% in the nRMSE.https://ieeexplore.ieee.org/document/8982248/Inter-hour forecastDirect normal irradianceGround-based cloud imagesMultiple data typesMultiple time-series
collection DOAJ
language English
format Article
sources DOAJ
author Tingting Zhu
Hai Zhou
Haikun Wei
Xin Zhao
Kanjian Zhang
Jinxia Zhang
spellingShingle Tingting Zhu
Hai Zhou
Haikun Wei
Xin Zhao
Kanjian Zhang
Jinxia Zhang
Inter-hour direct normal irradiance forecast with multiple data types and time-series
Journal of Modern Power Systems and Clean Energy
Inter-hour forecast
Direct normal irradiance
Ground-based cloud images
Multiple data types
Multiple time-series
author_facet Tingting Zhu
Hai Zhou
Haikun Wei
Xin Zhao
Kanjian Zhang
Jinxia Zhang
author_sort Tingting Zhu
title Inter-hour direct normal irradiance forecast with multiple data types and time-series
title_short Inter-hour direct normal irradiance forecast with multiple data types and time-series
title_full Inter-hour direct normal irradiance forecast with multiple data types and time-series
title_fullStr Inter-hour direct normal irradiance forecast with multiple data types and time-series
title_full_unstemmed Inter-hour direct normal irradiance forecast with multiple data types and time-series
title_sort inter-hour direct normal irradiance forecast with multiple data types and time-series
publisher IEEE
series Journal of Modern Power Systems and Clean Energy
issn 2196-5420
publishDate 2019-01-01
description Boosted by a strong solar power market, the electricity grid is exposed to risk under an increasing share of fluctuant solar power. To increase the stability of the electricity grid, an accurate solar power forecast is needed to evaluate such fluctuations. In terms of forecast, solar irradiance is the key factor of solar power generation, which is affected by atmospheric conditions, including surface meteorological variables and column integrated variables. These variables involve multiple numerical time-series and images. However, few studies have focused on the processing method of multiple data types in an inter-hour direct normal irradiance (DNI) forecast. In this study, a framework for predicting the DNI for a 10-min time horizon was developed, which included the nondimensionalization of multiple data types and time-series, development of a forecast model, and transformation of the outputs. Several atmospheric variables were considered in the forecast framework, including the historical DNI, wind speed and direction, relative humidity time-series, and ground-based cloud images. Experiments were conducted to evaluate the performance of the forecast framework. The experimental results demonstrate that the proposed method performs well with a normalized mean bias error of 0.41% and a normalized root mean square error (nRMSE) of 20.53%, and outperforms the persistent model with an improvement of 34% in the nRMSE.
topic Inter-hour forecast
Direct normal irradiance
Ground-based cloud images
Multiple data types
Multiple time-series
url https://ieeexplore.ieee.org/document/8982248/
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