Renewable Energy Complementarity (RECom) maps – a comprehensive visualisation tool to support spatial diversification

IF 3.6 Q3 GREEN & SUSTAINABLE SCIENCE & TECHNOLOGY
T. Vrana, Harald G. Svendsen
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引用次数: 0

Abstract

Abstract. Maps showing the mean wind speed only give an inaccurate indication of the quality of locations for future wind power developments. Calculating the capacity factor and plotting that on a map gives a better indication of the expected mean power output, but the outcome depends on the turbine choice. In this article, we introduce a general step-by-step method for improved visualisation of potential wind power locations. First, the mentioned dependency on turbine choice is compensated for by putting the expected mean power output in relation to the expected mean power output of all other wind parks of the region. This relative capacity factor results in comprehensive wind resource maps and can be plotted for the situation today and also for a future scenario. Since the expected income of a potential wind park is the product of mean power output and mean market value, looking at the relative capacity factor only does not give the full picture. The mean market value is influenced by the merit order effect that is mainly driven by covariance with other wind parks and the capacity factor's relation to production at low-wind moments. A market value factor is introduced that captures the expected mean market value relative to other wind parks, based on a simplified power market model. Finally the Renewable Energy Complementarity (RECom) index is defined, combining the relative capacity factor and market value factor into a single index, resulting in RECom maps. This map can comprehensively show the revenue potential of different locations for potential future wind power developments.
可再生能源互补性 (RECom) 地图--支持空间多样化的综合可视化工具
摘要显示平均风速的地图只能不准确地显示未来风电开发地点的质量。计算容量因子并将其绘制在地图上,可以更好地显示预期的平均功率输出,但结果取决于涡轮机的选择。在本文中,我们将介绍一种逐步改进潜在风电地点可视化的通用方法。首先,通过将预期平均功率输出与该地区所有其他风场的预期平均功率输出进行比较,来弥补上述风机选择的依赖性。这种相对容量因子可以绘制出全面的风力资源图,并可根据当前和未来的情况进行绘制。由于潜在风场的预期收入是平均发电量和平均市场价值的乘积,因此只看相对容量系数并不能全面了解情况。平均市场价值受优序效应的影响,而优序效应主要是由与其他风场的协方差以及容量因子与低风时刻产量的关系所驱动的。在简化电力市场模型的基础上,引入了市场价值因子,以捕捉相对于其他风场的预期平均市场价值。最后,定义了可再生能源互补性 (RECom) 指数,将相对容量系数和市场价值系数合并为一个单一指数,形成 RECom 地图。该地图可全面显示不同地点未来潜在风电开发的收益潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Wind Energy Science
Wind Energy Science GREEN & SUSTAINABLE SCIENCE & TECHNOLOGY-
CiteScore
6.90
自引率
27.50%
发文量
115
审稿时长
28 weeks
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