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Clustering the solar resource for grid management in island mode

机译:在孤岛模式下聚集太阳能以进行网格管理

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We propose a novel methodology to select candidate locations for solar power plants that take into account solar variability and geographical smoothing effects. This methodology includes the development of maps created by a clustering technique that determines regions of coherent solar quality attributes as defined by a feature which considers both solar clearness and solar variability. An efficient combination of two well-known clustering algorithms, the affinity propagation and the k-means, is introduced in order to produce stable partitions of the data to a variety of number of clusters in a computationally fast and reliable manner. We use 15 years worth of the 30-min GHI gridded data for the island of Lanai in Hawaii to produce, validate and reproduce clustering maps. A family of appropriate number of clusters is obtained by evaluating the performance of three internal validity indices. We apply a correlation analysis to the family of solutions to determine the map segmentation that maximizes a definite interpretation of the distinction between and within the emerged clusters. Having selected a single clustering we validated the clustering by using a new dataset to demonstrate that the degree of similarity between the two partitions remains high at 90.91%. In the end we show how the clustering map can be used in solar energy problems. Firstly, we explore the effects of geographical smoothing in terms of the clustering maps, by determining the average ramp ratio for two location within and without the same cluster and identify the pair of clusters that shows the highest smoothing potential. Secondly, we demonstrate how the map can be used to select locations for GHI measurements to improve solar forecasting for a PV plant, by showing that additional measurements from within the cluster where the PV plant is located can lead to improvements of 10% in the forecast. (C) 2014 Elsevier Ltd. All rights reserved.
机译:我们提出了一种新颖的方法来选择太阳能发电厂的候选地点,并考虑到了太阳能的可变性和地理平滑效应。该方法论包括开发通过聚类技术创建的地图,该聚类技术确定由考虑了太阳透明度和太阳变化性的特征所定义的相干太阳质量属性的区域。引入了两种众所周知的聚类算法(亲和度传播和k均值)的有效组合,以便以计算快速,可靠的方式将数据稳定划分为多个簇。我们使用15年的夏威夷拉奈岛30分钟GHI网格化数据来生成,验证和重现聚类地图。通过评估三个内部有效性指标的性能,可以获得适当数量的聚类族。我们对解决方案系列应用了相关分析,以确定可以最大程度地确定新兴集群之间和之内的区别的明确解释的地图分割。选择了单个聚类后,我们通过使用新的数据集验证了聚类,以证明两个分区之间的相似度仍然很高,为90.91%。最后,我们展示了如何将聚类图用于太阳能问题。首先,我们通过确定聚类地图上地理平滑的效果,方法是确定两个区域内和没有相同聚类的两个位置的平均坡率,并确定显示最大平滑潜力的一对聚类。其次,我们展示了如何通过显示从光伏电站所在的集群中进行的其他测量可以使GHI测量的位置选择位置来改善光伏电站的太阳能预报,从而提高了10%的预报率。 。 (C)2014 Elsevier Ltd.保留所有权利。

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