Forecasting power load curves from spatial and temporal mobile data

Q3 Multidisciplinary
F. Coelho, M. Menezes, Lourenço Ribeiro, A. Barbosa, Vinícius O. Silva, A. Braga, C. Natalino, P. Monti
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引用次数: 0

Abstract

This work aims at applying computational intelligence approaches to telecommunication data, in order to associate mobile data to energy consumption load curves. Clustering methods are applied in order to allow the telecommunication network to infer about its topology and consumption load forecasting. Through an extensive analysis of Telecom Italia dataset and power distribution lines data available for the city of Trento, it was possible to confirm the high correlation between them, mainly when voice data is considered. To a great extent, this correlation can be explained by the fact that cellular communication devices are physically present in the service area of the distribution lines and when people are communicating, they are also consuming energy. Based on the aforementioned dataset, load curves for the city of Trento were constructed having as inputs data from telecommunication transactions. Results show that it is possible to use the telecommunication load as the input to predict the energy load, with the proposed model performing better than the naive predictor in 82% of the tested distribution lines.
从时空移动数据预测电力负荷曲线
这项工作旨在将计算智能方法应用于电信数据,以便将移动数据与能耗负载曲线相关联。为了使电信网络能够推断其拓扑结构和消费负荷预测,采用了聚类方法。通过对意大利电信数据集和特伦托市可用的配电线路数据的广泛分析,有可能确认它们之间的高度相关性,主要是在考虑语音数据时。在很大程度上,这种相关性可以用这样一个事实来解释,即蜂窝通信设备实际存在于配电线路的服务区域,当人们进行通信时,它们也在消耗能量。基于上述数据集,以来自电信交易的输入数据构建了特伦托市的负载曲线。结果表明,将电信负荷作为电力负荷预测的输入是可行的,在82%的测试配电线路中,所提出的预测模型的性能优于朴素预测模型。
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来源期刊
CiteScore
1.60
自引率
0.00%
发文量
28
期刊介绍: WRSTSD is a multidisciplinary refereed review on issues that will be central to world sustainable development through efficient and effective technology transfer, the challenges these pose for developing countries, and the global framework for dealing with science and technology. The general theme of WRSTSD is to discuss integrated approaches to the problems of technology transfer within an urban and rural development context. The theme has been very carefully chosen to include science and technology and the challenges these represent in terms of sustainable development.
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