Analysing uncertainties in offshore wind farm power output using measure–correlate–predict methodologies
<p>This paper investigates the uncertainties resulting from different measure–correlate–predict (MCP) methods to project the power and energy yield from a wind farm. The analysis is based on a case study that utilises short-term data acquired from a lidar wind measurement system deployed at a...
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2020-05-01
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doaj-0f5d9d8753fa414d99bf654eee6e84582020-11-25T02:24:39ZengCopernicus PublicationsWind Energy Science2366-74432366-74512020-05-01560162110.5194/wes-5-601-2020Analysing uncertainties in offshore wind farm power output using measure–correlate–predict methodologiesM. D. Mifsud0T. Sant1R. N. Farrugia2Institute for Sustainable Energy, University of Malta, Marsaxlokk, MXK1351, MaltaDepartment of Mechanical Engineering, University of Malta, Msida, MSD2080, MaltaInstitute for Sustainable Energy, University of Malta, Marsaxlokk, MXK1351, Malta<p>This paper investigates the uncertainties resulting from different measure–correlate–predict (MCP) methods to project the power and energy yield from a wind farm. The analysis is based on a case study that utilises short-term data acquired from a lidar wind measurement system deployed at a coastal site in the northern part of the island of Malta and long-term measurements from the island's international airport. The wind speed at the candidate site is measured by means of a lidar system. The predicted power output for a hypothetical offshore wind farm from the various MCP methodologies is compared to the actual power output obtained directly from the input of lidar data to establish which MCP methodology best predicts the power generated.</p> <p>The power output from the wind farm is predicted by inputting wind speed and direction derived from the different MCP methods into windPRO<sup>®</sup> (<span class="uri">https://www.emd.dk/windpro</span>, last access: 8 May 2020). The predicted power is compared to the power output generated from the actual wind and direction data by using the normalised mean absolute error (NMAE) and the normalised mean-squared error (NMSE). This methodology will establish which combination of MCP methodology and wind farm configuration will have the least prediction error.</p> <p>The best MCP methodology which combines prediction of wind speed and wind direction, together with the topology of the wind farm, is that using multiple linear regression (MLR). However, the study concludes that the other MCP methodologies cannot be discarded as it is always best to compare different combinations of MCP methodologies for wind speed and wind direction, together with different wake models and wind farm topologies.</p>https://www.wind-energ-sci.net/5/601/2020/wes-5-601-2020.pdf |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
M. D. Mifsud T. Sant R. N. Farrugia |
spellingShingle |
M. D. Mifsud T. Sant R. N. Farrugia Analysing uncertainties in offshore wind farm power output using measure–correlate–predict methodologies Wind Energy Science |
author_facet |
M. D. Mifsud T. Sant R. N. Farrugia |
author_sort |
M. D. Mifsud |
title |
Analysing uncertainties in offshore wind farm power output using measure–correlate–predict methodologies |
title_short |
Analysing uncertainties in offshore wind farm power output using measure–correlate–predict methodologies |
title_full |
Analysing uncertainties in offshore wind farm power output using measure–correlate–predict methodologies |
title_fullStr |
Analysing uncertainties in offshore wind farm power output using measure–correlate–predict methodologies |
title_full_unstemmed |
Analysing uncertainties in offshore wind farm power output using measure–correlate–predict methodologies |
title_sort |
analysing uncertainties in offshore wind farm power output using measure–correlate–predict methodologies |
publisher |
Copernicus Publications |
series |
Wind Energy Science |
issn |
2366-7443 2366-7451 |
publishDate |
2020-05-01 |
description |
<p>This paper investigates the uncertainties resulting from
different measure–correlate–predict (MCP) methods to project the power and energy
yield from a wind farm. The analysis is based on a case study that utilises
short-term data acquired from a lidar wind measurement system deployed at a
coastal site in the northern part of the island of Malta and long-term
measurements from the island's international airport. The wind speed at the
candidate site is measured by means of a lidar system. The predicted power
output for a hypothetical offshore wind farm from the various MCP
methodologies is compared to the actual power output obtained directly from
the input of lidar data to establish which MCP methodology best predicts the
power generated.</p>
<p>The power output from the wind farm is predicted by inputting wind speed and
direction derived from the different MCP methods into windPRO<sup>®</sup> (<span class="uri">https://www.emd.dk/windpro</span>, last access: 8 May 2020). The predicted power is compared to
the power output generated from the actual wind and direction data by using
the normalised mean absolute error (NMAE) and the normalised mean-squared
error (NMSE). This methodology will establish which combination of MCP
methodology and wind farm configuration will have the least prediction
error.</p>
<p>The best MCP methodology which combines prediction of wind speed and wind
direction, together with the topology of the wind farm, is that using
multiple linear regression (MLR). However, the study concludes that the
other MCP methodologies cannot be discarded as it is always best to compare
different combinations of MCP methodologies for wind speed and wind
direction, together with different wake models and wind farm topologies.</p> |
url |
https://www.wind-energ-sci.net/5/601/2020/wes-5-601-2020.pdf |
work_keys_str_mv |
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