Validation of a camera-based intra-hour irradiance nowcasting model using synthetic cloud data

<p>This work introduces a model for all-sky-image-based cloud and direct irradiance nowcasting (MACIN), which predicts direct normal irradiance (DNI) for solar energy applications based on hemispheric sky images from two all-sky imagers (ASIs). With a synthetic setup based on simulated cloud s...

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Main Authors: P. Gregor, T. Zinner, F. Jakub, B. Mayer
Format: Article
Language:English
Published: Copernicus Publications 2023-06-01
Series:Atmospheric Measurement Techniques
Online Access:https://amt.copernicus.org/articles/16/3257/2023/amt-16-3257-2023.pdf
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author P. Gregor
T. Zinner
F. Jakub
B. Mayer
author_facet P. Gregor
T. Zinner
F. Jakub
B. Mayer
author_sort P. Gregor
collection DOAJ
description <p>This work introduces a model for all-sky-image-based cloud and direct irradiance nowcasting (MACIN), which predicts direct normal irradiance (DNI) for solar energy applications based on hemispheric sky images from two all-sky imagers (ASIs). With a synthetic setup based on simulated cloud scenes, the model and its components are validated in depth. We train a convolutional neural network on real ASI images to identify clouds. Cloud masks are generated for the synthetic ASI images with this network. Cloud height and motion are derived using sparse matching. In contrast to other studies, all derived cloud information, from both ASIs and multiple time steps, is combined into an optimal model state using techniques from data assimilation. This state is advected to predict future cloud positions and compute DNI for lead times of up to <span class="inline-formula">20</span> min. For the cloud masks derived from the ASI images, we found a pixel accuracy of 94.66 % compared to the references available in the synthetic setup. The relative error of derived cloud-base heights is 4 % and cloud motion error is in the range of <span class="inline-formula"><math xmlns="http://www.w3.org/1998/Math/MathML" id="M2" display="inline" overflow="scroll" dspmath="mathml"><mrow><mo>±</mo><mn mathvariant="normal">0.1</mn><mspace linebreak="nobreak" width="0.125em"/><mrow class="unit"><mi mathvariant="normal">m</mi><mspace width="0.125em" linebreak="nobreak"/><msup><mi mathvariant="normal">s</mi><mrow><mo>-</mo><mn mathvariant="normal">1</mn></mrow></msup></mrow></mrow></math><span><svg:svg xmlns:svg="http://www.w3.org/2000/svg" width="52pt" height="14pt" class="svg-formula" dspmath="mathimg" md5hash="3fee4f8ee0736c5e67dad1621ed9b149"><svg:image xmlns:xlink="http://www.w3.org/1999/xlink" xlink:href="amt-16-3257-2023-ie00001.svg" width="52pt" height="14pt" src="amt-16-3257-2023-ie00001.png"/></svg:svg></span></span>. For the DNI nowcasts, we found an improvement over persistence for lead times larger than 1 min. Using the synthetic setup, we computed a DNI reference for a point and also an area of <span class="inline-formula">500 m×500 m</span>. Errors for area nowcasts as required, e.g., for photovoltaic plants, are smaller compared with errors for point nowcasts. Overall, the novel ASI nowcasting model and its components proved to work within the synthetic setup.</p>
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spelling doaj.art-c10d5fb786684f3d990707e2f56773bf2023-06-29T04:26:26ZengCopernicus PublicationsAtmospheric Measurement Techniques1867-13811867-85482023-06-01163257327110.5194/amt-16-3257-2023Validation of a camera-based intra-hour irradiance nowcasting model using synthetic cloud dataP. GregorT. ZinnerF. JakubB. Mayer<p>This work introduces a model for all-sky-image-based cloud and direct irradiance nowcasting (MACIN), which predicts direct normal irradiance (DNI) for solar energy applications based on hemispheric sky images from two all-sky imagers (ASIs). With a synthetic setup based on simulated cloud scenes, the model and its components are validated in depth. We train a convolutional neural network on real ASI images to identify clouds. Cloud masks are generated for the synthetic ASI images with this network. Cloud height and motion are derived using sparse matching. In contrast to other studies, all derived cloud information, from both ASIs and multiple time steps, is combined into an optimal model state using techniques from data assimilation. This state is advected to predict future cloud positions and compute DNI for lead times of up to <span class="inline-formula">20</span> min. For the cloud masks derived from the ASI images, we found a pixel accuracy of 94.66 % compared to the references available in the synthetic setup. The relative error of derived cloud-base heights is 4 % and cloud motion error is in the range of <span class="inline-formula"><math xmlns="http://www.w3.org/1998/Math/MathML" id="M2" display="inline" overflow="scroll" dspmath="mathml"><mrow><mo>±</mo><mn mathvariant="normal">0.1</mn><mspace linebreak="nobreak" width="0.125em"/><mrow class="unit"><mi mathvariant="normal">m</mi><mspace width="0.125em" linebreak="nobreak"/><msup><mi mathvariant="normal">s</mi><mrow><mo>-</mo><mn mathvariant="normal">1</mn></mrow></msup></mrow></mrow></math><span><svg:svg xmlns:svg="http://www.w3.org/2000/svg" width="52pt" height="14pt" class="svg-formula" dspmath="mathimg" md5hash="3fee4f8ee0736c5e67dad1621ed9b149"><svg:image xmlns:xlink="http://www.w3.org/1999/xlink" xlink:href="amt-16-3257-2023-ie00001.svg" width="52pt" height="14pt" src="amt-16-3257-2023-ie00001.png"/></svg:svg></span></span>. For the DNI nowcasts, we found an improvement over persistence for lead times larger than 1 min. Using the synthetic setup, we computed a DNI reference for a point and also an area of <span class="inline-formula">500 m×500 m</span>. Errors for area nowcasts as required, e.g., for photovoltaic plants, are smaller compared with errors for point nowcasts. Overall, the novel ASI nowcasting model and its components proved to work within the synthetic setup.</p>https://amt.copernicus.org/articles/16/3257/2023/amt-16-3257-2023.pdf
spellingShingle P. Gregor
T. Zinner
F. Jakub
B. Mayer
Validation of a camera-based intra-hour irradiance nowcasting model using synthetic cloud data
Atmospheric Measurement Techniques
title Validation of a camera-based intra-hour irradiance nowcasting model using synthetic cloud data
title_full Validation of a camera-based intra-hour irradiance nowcasting model using synthetic cloud data
title_fullStr Validation of a camera-based intra-hour irradiance nowcasting model using synthetic cloud data
title_full_unstemmed Validation of a camera-based intra-hour irradiance nowcasting model using synthetic cloud data
title_short Validation of a camera-based intra-hour irradiance nowcasting model using synthetic cloud data
title_sort validation of a camera based intra hour irradiance nowcasting model using synthetic cloud data
url https://amt.copernicus.org/articles/16/3257/2023/amt-16-3257-2023.pdf
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AT fjakub validationofacamerabasedintrahourirradiancenowcastingmodelusingsyntheticclouddata
AT bmayer validationofacamerabasedintrahourirradiancenowcastingmodelusingsyntheticclouddata