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A scalable load forecasting system for low voltage grids

机译:可扩展的低压电网负荷预测系统

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A recent research trend is driven to increase the monitoring and control capabilities of low voltage networks. This paper describes a probabilistic forecasting methodology based on kernel density estimation and that makes use of distributed computing techniques to create a highly scalable forecasting system for LV networks. The results show that the proposed algorithm outperforms three benchmark models (one for point forecast and two for probabilistic forecasts) and demonstrate the applicability of the distributed in-memory computing solution for a practical operational scenario. The ultimate goal is to integrate information about net-load forecasts in power flow optimization frameworks for low voltage networks in order to solve technical constraints with the available home energy management system flexibility.
机译:近来的研究趋势被驱动以增加低压网络的监视和控制能力。本文介绍了一种基于内核密度估计的概率预测方法,该方法利用分布式计算技术为LV网络创建了高度可扩展的预测系统。结果表明,所提出的算法优于三个基准模型(一个用于点预测,两个用于概率预测),并证明了分布式内存计算解决方案在实际操作场景中的适用性。最终目标是将有关净负荷预测的信息集成到低压网络的潮流优化框架中,以便利用可用的家庭能源管理系统的灵活性解决技术约束。

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