WP-5 description
Date: Saturday, October 09 @ 03:06:49 CEST
Topic: General information on Anemos


Work- Package 1: "DEFINITION OF PREDICTION REQUIREMENTS

 

Work-Package 5:

"Prediction Models for Offshore Wind Farms".

   

WP Leader:

Univ. OLDENBURG (Detlev Heinemann).

   

Partners Involved:

ARIA, ARMINES, CCLRC/RAL, CENER, CIEMAT, DTU, OVERSPEED, RISOE

Objectives:

This Work-Package aims to develop forecasting models for offshore wind farms. In a given area of interest, offshore wind parks are currently located in the 5 to 10 km zones from coast. Considering the surface covered by wind farms, the resolution of the wind grid needed is about 1 km. The data available for offshore applications will be measurements at the level of wind farm as well as Numerical Weather Predictions (NWP) provided by a meteorological system. The downscaling of NWPs to the level of wind farm involves several difficulties; for example due to the variable roughness of sea surface that depends on wind speed. This Work-Package focuses on the specificities of the meteorological conditions offshore. The roughness is very low, and the thermal state of the atmosphere, the stability, is for long periods very different from the near neutral case expected onshore. Additionally, the low roughness increases the influence of stability on the wind speed profile dramatically. It is of interest to investigate the parameters that influence the wind speed offshore most. In a first step purely NWPs are evaluated against measurements.

Of special interest is the evaluation of meteorological forecasts by estimation of wind speed on a kilometric grid from Satellite Radar data. Radar images from open waters contain information about wind speed and wind direction. In contrast to mast measurements, the absolute accuracy is quite poor (rmse ~2 m/s), but spatial information for a large region can be delivered. This spatial information about wind speed and direction can be used e.g. to validate shadowing within the windfarm. Patterns of wind field around the wind farm can be defined from Satellite images. It will be examined how this high-resolution information can be integrated in either physical or statistical prediction models.

The ultimate objective is to develop statistical (i.e. artificial intelligence based ones) and physical models able to perform accurately for the offshore case. The physical models should be able to describe the vertical wind profile for vertical refinement of the wind speed. Emphasis is given in modelling spatio-temporal characteristics in large offshore wind farms. Offshore installed capacity will be very concentrated. Therefore large power fluctuations will occur much more often then onshore.

 

Description of Work:

Task 5.1: Impact of high-resolution meteorological forecasts.

Task 5.2: Contribution of satellite-radar information.

Task 5.3: Development of physical & statistical models

Task 5.4: Modelling spatio-temporal characteristics in large offshore wind farms

Project flow-chart

Back to Task Overview









This article comes from ANEMOS Project. Short-Term Wind Power Forecasting
http://www.anemos-project.eu

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