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首页> 外文期刊>Proceedings of the IEEE >Quantity Versus Quality: Optimal Harvesting Wind Power for the Smart Grid
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Quantity Versus Quality: Optimal Harvesting Wind Power for the Smart Grid

机译:数量与质量:智能电网的最佳风力发电

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The need to reduce greenhouse gases from our current power systems accelerates the integration of renewable energy sources (for example, wind and solar power). A fundamental difficulty is that renewable energy is usually of high variability. Numerous advancements in technologies and methods for the smart grid are required to mitigate and absorb this variability. In this paper, we focus on one of them: how to plan wind farms with high capacity and low variability locally and distributedly. First, we study the characteristics of both wind resource and wind turbines and propose a novel wind power estimation method based on Gaussian regression. The experimental result shows that our method achieves a more accurate estimation compared to other ones and has a nearly zero error for most of the turbine types. Then, we analyze a tradeoff between wind power's quantity and quality for large-scale wind farms, and find that there is an optimal turbine type for each location as to either the quantity or the quality. We propose an approach to optimally combine different types of wind turbines to balance the tradeoff. Finally, we explore geographical diversity among different locations and develop an extended approach that jointly optimizes the combination of locations and turbine types. Besides applying to plan new wind farms, we also discuss how to adapt the two approaches to decide an upgrade plan for a wind farm and a network of wind farms, respectively. We conduct extensive experiments using two different wind resource data traces for both local and distributed cases. The result shows that the proposed approaches significantly outperform those approaches using a single turbine type and those separately optimizing locations and turbine types. We also provide interesting insights about the quantity–quality balancing.
机译:减少我们现有电力系统中温室气体的需求加速了可再生能源(例如风能和太阳能)的整合。一个基本的困难是可再生能源通常具有很大的可变性。为了减轻和吸收这种可变性,需要智能电网技术和方法的许多进步。在本文中,我们重点关注其中之一:如何在本地和分布式地规划具有高容量和低可变性的风电场。首先,我们研究了风力资源和风力涡轮机的特性,并提出了一种基于高斯回归的新型风能估算方法。实验结果表明,与其他方法相比,我们的方法可以实现更准确的估算,并且对于大多数涡轮机类型,其误差几乎为零。然后,我们分析了大型风电场的风能数量与质量之间的权衡,发现无论数量还是质量,每个位置都有一个最佳的涡轮机类型。我们提出了一种最佳组合不同类型的风力涡轮机以平衡权衡的方法。最后,我们探索了不同位置之间的地理多样性,并开发了一种扩展方法,可以共同优化位置和涡轮机类型的组合。除了申请规划新的风电场外,我们还将讨论如何采用两种方法分别确定风电场和风电场网络的升级计划。我们针对本地和分布式案例使用两种不同的风资源数据迹线进行了广泛的实验。结果表明,所提出的方法明显优于那些使用单个涡轮机类型以及单独优化位置和涡轮机类型的方法。我们还提供了有关数量与质量平衡的有趣见解。

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