Exploitation of a New Short-Term Multimodel Photovoltaic Power Forecasting Method in the Short-Term Horizon to Derive A Multi-Time Scale Forecasting System

The<b> </b>relentless spread of photovoltaic production drives searches of smart approaches to mitigate unbalances in power demand and supply, instability on the grid and ensuring stable revenues to the producer. Because of the development of energy markets with multiple time sessions, t...

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Main Authors: Elena Collino, Dario Ronzio
Format: Article
Language:English
Published: MDPI AG 2021-02-01
Series:Energies
Subjects:
Online Access:https://www.mdpi.com/1996-1073/14/3/789
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spelling doaj-a542969fb3f34bb7a9ad2b5685f8c87d2021-02-03T00:05:48ZengMDPI AGEnergies1996-10732021-02-011478978910.3390/en14030789Exploitation of a New Short-Term Multimodel Photovoltaic Power Forecasting Method in the Short-Term Horizon to Derive A Multi-Time Scale Forecasting SystemElena Collino0Dario Ronzio1RSE S.p.A.—Ricerca sul Sistema Energetico, Via Rubattino 54, 20134 Milano, ItalyRSE S.p.A.—Ricerca sul Sistema Energetico, Via Rubattino 54, 20134 Milano, ItalyThe<b> </b>relentless spread of photovoltaic production drives searches of smart approaches to mitigate unbalances in power demand and supply, instability on the grid and ensuring stable revenues to the producer. Because of the development of energy markets with multiple time sessions, there is a growing need of power forecasting for multiple time steps, from fifteen minutes up to days ahead. To address this issue, in this study both a short-term-horizon of three days and a very-short-term-horizon of three hours photovoltaic production forecasting methods are presented. The short-term is based on a multimodel approach and referred to several configurations of the Analog Ensemble method, using the weather forecast of four numerical weather prediction models. The very-short-term consists of an Auto-Regressive Integrated Moving Average Model with eXogenous input (ARIMAX) that uses the short-term power forecast and the irradiance from satellite elaborations as exogenous variables. The methods, applied for one year to four small-scale grid-connected plants in Italy, have obtained promising improvements with respect to refence methods. The time horizon after which the short-term was able to outperform the very-short-term has also been analyzed. The study also revealed the usefulness of satellite data on cloudiness to properly interpret the results of the performance analysis.https://www.mdpi.com/1996-1073/14/3/789photovoltaic power forecastAnalog EnsembleARIMAXmultimodelsatellite datanumerical weather prediction
collection DOAJ
language English
format Article
sources DOAJ
author Elena Collino
Dario Ronzio
spellingShingle Elena Collino
Dario Ronzio
Exploitation of a New Short-Term Multimodel Photovoltaic Power Forecasting Method in the Short-Term Horizon to Derive A Multi-Time Scale Forecasting System
Energies
photovoltaic power forecast
Analog Ensemble
ARIMAX
multimodel
satellite data
numerical weather prediction
author_facet Elena Collino
Dario Ronzio
author_sort Elena Collino
title Exploitation of a New Short-Term Multimodel Photovoltaic Power Forecasting Method in the Short-Term Horizon to Derive A Multi-Time Scale Forecasting System
title_short Exploitation of a New Short-Term Multimodel Photovoltaic Power Forecasting Method in the Short-Term Horizon to Derive A Multi-Time Scale Forecasting System
title_full Exploitation of a New Short-Term Multimodel Photovoltaic Power Forecasting Method in the Short-Term Horizon to Derive A Multi-Time Scale Forecasting System
title_fullStr Exploitation of a New Short-Term Multimodel Photovoltaic Power Forecasting Method in the Short-Term Horizon to Derive A Multi-Time Scale Forecasting System
title_full_unstemmed Exploitation of a New Short-Term Multimodel Photovoltaic Power Forecasting Method in the Short-Term Horizon to Derive A Multi-Time Scale Forecasting System
title_sort exploitation of a new short-term multimodel photovoltaic power forecasting method in the short-term horizon to derive a multi-time scale forecasting system
publisher MDPI AG
series Energies
issn 1996-1073
publishDate 2021-02-01
description The<b> </b>relentless spread of photovoltaic production drives searches of smart approaches to mitigate unbalances in power demand and supply, instability on the grid and ensuring stable revenues to the producer. Because of the development of energy markets with multiple time sessions, there is a growing need of power forecasting for multiple time steps, from fifteen minutes up to days ahead. To address this issue, in this study both a short-term-horizon of three days and a very-short-term-horizon of three hours photovoltaic production forecasting methods are presented. The short-term is based on a multimodel approach and referred to several configurations of the Analog Ensemble method, using the weather forecast of four numerical weather prediction models. The very-short-term consists of an Auto-Regressive Integrated Moving Average Model with eXogenous input (ARIMAX) that uses the short-term power forecast and the irradiance from satellite elaborations as exogenous variables. The methods, applied for one year to four small-scale grid-connected plants in Italy, have obtained promising improvements with respect to refence methods. The time horizon after which the short-term was able to outperform the very-short-term has also been analyzed. The study also revealed the usefulness of satellite data on cloudiness to properly interpret the results of the performance analysis.
topic photovoltaic power forecast
Analog Ensemble
ARIMAX
multimodel
satellite data
numerical weather prediction
url https://www.mdpi.com/1996-1073/14/3/789
work_keys_str_mv AT elenacollino exploitationofanewshorttermmultimodelphotovoltaicpowerforecastingmethodintheshorttermhorizontoderiveamultitimescaleforecastingsystem
AT darioronzio exploitationofanewshorttermmultimodelphotovoltaicpowerforecastingmethodintheshorttermhorizontoderiveamultitimescaleforecastingsystem
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