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A data mining approach for producing small area statistics-based load profiles for distribution network planning

机译:一种数据挖掘方法,用于为配电网络规划生成基于小区域统计数据的负载配置文件

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The recent European Union and national level initiatives such as INSPIRE and PSI have increased the availability of public sector data, which provides interesting new opportunities to support decision making in electricity distribution network planning. With big amounts of available data, data mining methods can be utilised to produce improved spatial load models. We propose a data mining approach, which uses the Self-organizing map for producing representative small area level load profiles based on building characteristics, demographics and automated meter reading data. Furthermore, the k-nearest neighbour algorithm and a genetic algorithm based feature selection are used in order to find a parsimonious set of features that can be used in selecting proper load profile. As the load profiles are based on area level statistics, they can be used to estimate the future loads in different scenarios regarding changes in population and building stock, which is particularly advantageous in distribution network planning.
机译:最近的欧盟和国家级举措(例如INSPIRE和PSI)增加了公共部门数据的可用性,这为支持配电网络规划中的决策提供了有趣的新机会。在拥有大量可用数据的情况下,可以利用数据挖掘方法来生成改进的空间负荷模型。我们提出了一种数据挖掘方法,该方法使用“自组织”地图根据建筑物特征,人口统计数据和自动抄表数据来生成代表性的小区域级别的负载曲线。此外,使用k最近邻算法和基于遗传算法的特征选择,以便找到可用于选择合适的载荷分布图的简约特征集。由于负荷曲线基于面积级别的统计数据,因此可以用于估计有关人口和建筑存量变化的不同方案中的未来负荷,这在配电网络规划中特别有利。

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