Interannual Variability and Seasonal Predictability of Wind and Solar Resources
Solar and wind resources available for power generation are subject to variability due to meteorological factors. Here, we use a new global climate reanalysis product, Version 2 of the NASA Modern-Era Retrospective Analysis for Research and Applications (MERRA-2), to quantify interannual variability...
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Format: | Article in Journal/Newspaper |
Language: | English |
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CUNY Academic Works
2017
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Subjects: | |
Online Access: | https://academicworks.cuny.edu/cc_pubs/797 https://academicworks.cuny.edu/context/cc_pubs/article/1866/viewcontent/resources_06_00029.pdf |
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author | Krakauer, Nir Cohen, Daniel S. |
author_facet | Krakauer, Nir Cohen, Daniel S. |
author_sort | Krakauer, Nir |
collection | City University of New York: CUNY Academic Works |
description | Solar and wind resources available for power generation are subject to variability due to meteorological factors. Here, we use a new global climate reanalysis product, Version 2 of the NASA Modern-Era Retrospective Analysis for Research and Applications (MERRA-2), to quantify interannual variability of monthly-mean solar and wind resource from 1980 to 2016 at a resolution of about 0.5 degrees. We find an average coefficient of variation (CV) of 11% for monthly-mean solar radiation and 8% for wind speed. Mean CVs were about 25% greater over ocean than over land and, for land areas, were greatest at high latitude. The correlation between solar and wind anomalies was near zero in the global mean, but markedly positive or negative in some regions. Both wind and solar variability were correlated with values of climate modes such as the Southern Oscillation Index and Arctic Oscillation, with correlations in the Northern Hemisphere generally stronger during winter. We conclude that reanalysis solar and wind fields could be helpful in assessing variability in power generation due to interannual fluctuations in the solar and wind resource. Skillful prediction of these fluctuations seems to be possible, particularly for certain regions and seasons, given the persistence or predictability of climate modes with which these fluctuations are associated. |
format | Article in Journal/Newspaper |
genre | Arctic |
genre_facet | Arctic |
geographic | Arctic Merra |
geographic_facet | Arctic Merra |
id | ftcityunivny:oai:academicworks.cuny.edu:cc_pubs-1866 |
institution | Open Polar |
language | English |
long_lat | ENVELOPE(12.615,12.615,65.816,65.816) |
op_collection_id | ftcityunivny |
op_relation | https://academicworks.cuny.edu/cc_pubs/797 https://academicworks.cuny.edu/context/cc_pubs/article/1866/viewcontent/resources_06_00029.pdf |
op_source | Publications and Research |
publishDate | 2017 |
publisher | CUNY Academic Works |
record_format | openpolar |
spelling | ftcityunivny:oai:academicworks.cuny.edu:cc_pubs-1866 2025-03-23T15:32:18+00:00 Interannual Variability and Seasonal Predictability of Wind and Solar Resources Krakauer, Nir Cohen, Daniel S. 2017-07-20T07:00:00Z application/pdf https://academicworks.cuny.edu/cc_pubs/797 https://academicworks.cuny.edu/context/cc_pubs/article/1866/viewcontent/resources_06_00029.pdf English eng CUNY Academic Works https://academicworks.cuny.edu/cc_pubs/797 https://academicworks.cuny.edu/context/cc_pubs/article/1866/viewcontent/resources_06_00029.pdf Publications and Research renewable energy interannual variability seasonal forecasting teleconnections Civil and Environmental Engineering article 2017 ftcityunivny 2025-02-27T09:40:20Z Solar and wind resources available for power generation are subject to variability due to meteorological factors. Here, we use a new global climate reanalysis product, Version 2 of the NASA Modern-Era Retrospective Analysis for Research and Applications (MERRA-2), to quantify interannual variability of monthly-mean solar and wind resource from 1980 to 2016 at a resolution of about 0.5 degrees. We find an average coefficient of variation (CV) of 11% for monthly-mean solar radiation and 8% for wind speed. Mean CVs were about 25% greater over ocean than over land and, for land areas, were greatest at high latitude. The correlation between solar and wind anomalies was near zero in the global mean, but markedly positive or negative in some regions. Both wind and solar variability were correlated with values of climate modes such as the Southern Oscillation Index and Arctic Oscillation, with correlations in the Northern Hemisphere generally stronger during winter. We conclude that reanalysis solar and wind fields could be helpful in assessing variability in power generation due to interannual fluctuations in the solar and wind resource. Skillful prediction of these fluctuations seems to be possible, particularly for certain regions and seasons, given the persistence or predictability of climate modes with which these fluctuations are associated. Article in Journal/Newspaper Arctic City University of New York: CUNY Academic Works Arctic Merra ENVELOPE(12.615,12.615,65.816,65.816) |
spellingShingle | renewable energy interannual variability seasonal forecasting teleconnections Civil and Environmental Engineering Krakauer, Nir Cohen, Daniel S. Interannual Variability and Seasonal Predictability of Wind and Solar Resources |
title | Interannual Variability and Seasonal Predictability of Wind and Solar Resources |
title_full | Interannual Variability and Seasonal Predictability of Wind and Solar Resources |
title_fullStr | Interannual Variability and Seasonal Predictability of Wind and Solar Resources |
title_full_unstemmed | Interannual Variability and Seasonal Predictability of Wind and Solar Resources |
title_short | Interannual Variability and Seasonal Predictability of Wind and Solar Resources |
title_sort | interannual variability and seasonal predictability of wind and solar resources |
topic | renewable energy interannual variability seasonal forecasting teleconnections Civil and Environmental Engineering |
topic_facet | renewable energy interannual variability seasonal forecasting teleconnections Civil and Environmental Engineering |
url | https://academicworks.cuny.edu/cc_pubs/797 https://academicworks.cuny.edu/context/cc_pubs/article/1866/viewcontent/resources_06_00029.pdf |