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Clustering-Based Improvement of Nonparametric Functional Time Series Forecasting: Application to Intra-Day Household-Level Load Curves

机译:基于聚类的非参数功能时间序列预测的改进:在日内家庭水平负荷曲线中的应用

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摘要

Energy suppliers are facing ever increasing competition, so that factors like quality and continuity of offered services must be properly taken into account. Furthermore, in the last few years, many countries are interested in renewable energies such as solar and wind. Renewable energy resources are mainly used for environmental and economic reasons such as reducing the carbon emission. It might also be used to reinforce the electric network especially during high peak periods. However, the injection of such energy resources in the low-voltage (LV) network can leads to high voltage constrains. To overcome this issue, one can motivate customers to use thermal or electric storage devices during high-production periods of PV to foster the integration of renewable energy generation into the network. In this paper, we are interested in forecasting household-level electricity demand which represents a key factor to assure the balance supply/demand in the LV network. A novel methodology able to improve short term functional time series forecasts has been introduced. An application to the Irish smart meter data set showed the performance of the proposed methodology to forecast the intra-day household level load curves.
机译:能源供应商面临日益激烈的竞争,因此必须适当考虑诸如提供服务的质量和连续性等因素。此外,在最近几年中,许多国家对太阳能和风能等可再生能源感兴趣。可再生能源主要用于环境和经济原因,例如减少碳排放。它也可能用于增强电网,特别是在高峰期。但是,将此类能源注入低压(LV)网络可能会导致高压约束。为了克服这个问题,人们可以激励客户在高产量的光伏发电期间使用蓄热或蓄电设备,以促进将可再生能源发电集成到网络中。在本文中,我们对预测家庭用电需求感兴趣,这是确保LV网络中供需平衡的关键因素。引入了一种能够改善短期功能时间序列预测的新颖方法。爱尔兰智能电表数据集的一个应用程序显示了所提出方法的预测日内家庭水平负荷曲线的性能。

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