Title :
Blowing hard is not all we want: Quantity vs quality of wind power in the smart grid
Author :
Fanxin Kong ; Chuansheng Dong ; Xue Liu ; Haibo Zeng
Author_Institution :
Sch. of Comput. Sci., McGill Univ., Montreal, QC, Canada
fDate :
April 27 2014-May 2 2014
Abstract :
The growing awareness about global climate change has boosted the need to mitigate greenhouse gas emissions from existing power systems and spurred efforts to accelerate the integration of renewable energy sources (e.g. wind and solar power) into the electrical grid. A fundamental difficulty here is that renewable energy sources are usually of high variability. The electrical grid must absorb this variability through employing many additional operations (e.g., operating reserves, energy storage), which will largely raise the cost of electricity from renewable energy sources. To make it affordable, numerous advancements in technologies and methods for the smart grid are required. In this paper, we will confine ourselves to one of them: how to plan the construction of wind farms with high capacity and low variability locally and distributedly. We first study the characteristics of both wind resources and wind turbines and present a more accurate wind power evaluation method based on Gaussian Regression. Then, we analyze a trade-off between wind power´s quantity and quality and propose an approach to optimally combine different types of wind turbines to balance the trade-off for a specific site. Finally, we explore geographical diversity among different sites and develop an extended approach that jointly optimizes the combination of sites and turbine types. Extensive experiments using the realistic historical wind resource data are conducted for either of the local and distributed case. Encouraging results are shown for the proposed approaches and some interesting insights are also provided.
Keywords :
Gaussian processes; power generation planning; power supply quality; regression analysis; smart power grids; wind power plants; wind turbines; Gaussian regression analysis; electrical smart grid; energy storage; geographical diversity; global climate change; greenhouse gas emission mitigation; historical wind resource data; operating reserve; power quality; power system; renewable energy source; solar power; wind farm construction plan; wind power; wind power evaluation method; wind turbine; Equations; Renewable energy sources; Wind power generation; Wind speed; Wind turbines;
Conference_Titel :
INFOCOM, 2014 Proceedings IEEE
Conference_Location :
Toronto, ON
DOI :
10.1109/INFOCOM.2014.6848231