Work-Package 3:
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"Development of Statistical
Models ".
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WP Leader:
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DTU-IMM (Henrik Madsen).
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Partners Involved:
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ARMINES,
CCLRC/RAL, CENER, IASA, ICCS/NTUA, UC3M, University of Oldenburg.
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Objectives:
The objective of this Work Package is to develop accurate models for wind resource
forecasting based on advanced statistical and mainly on artificial intelligence
methods (i.e. fuzzy logic, neural networks). These techniques permit to combine
various types of explanatory inputs like wind direction, wind speed from neighbour
sites, numerical weather predictions etc. Statistical techniques are very promising
when high-resolution meteorological information is used as input to predict
wind production up to 48-72 hours ahead.
Emphasis will be given to the development of statistical power curve models
to estimate the relationship between wind power and local forecasts for meteorological
variables such as wind speed and direction. Experience so far shows that one
of the main error sources in wind power prediction lies in insufficient power
curves. The use of certified power curves does not guarantee that the relation
between wind speed and power output is accurately described. Models based on
artificial intelligence will be developed for statistical downscaling. This
consists in using a non-physical model for interpolating metrological forecasts
from the nodes around wind farm to the level of wind farm and height of wind
turbines. Statistical modelling can be an alternative technique to explicit
terrain and roughness modelling.
Tasks will be dedicated on the development of approaches for regional or national
forecasting of wind power (upscaling). Robust approaches for the on-line tuning
of prediction models will be developped and evaluated. Such methods will permit
adaptive models to avoid producing outliers in case of erroneous data input
or extreme wind conditions.
Description of Work:
Task 3.1: Development of advanced statistical prediction
models.
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Task 3.2: Power curve modelling.
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Task 3.3: Statistical downscaling.
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Task 3.4: Upscaling.
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Task 3.5: Automated processes for online tuning.
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Task 3.6: Very short-term prediction for control purposes.
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