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A Hybrid Edge-Cloud Computing Method for Short-Term Electric Load Forecasting Based on Smart Metering Terminal

机译:基于智能计量终端的短期电负载预测混合边缘云计算方法

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摘要

As the edge node in electric Internet of Things, the application of smart metering terminal (SMT) enables the massive electric big data to be widely collected and processed on the edge. This creates a positive condition for short-term electric load forecasting, which is very important for electricity sales company under the back ground of electricity spot market. In this study, the structure of a novel hybrid edge-cloud computing framework for electric load forecasting is proposed, and the forecasting model based on extreme learning machine (ELM) is also developed. In the proposed framework, the distributed SMTs are regarded as the edge nodes and widely collect electric data inner electricity customers. Then, these original data are preprocessed in the regional SMT, and then sent to the cloud server as standard time series data. Finally, the proposed ELM forecasting model runs in the cloud server, and outputs the forecasting load demand for all the customers of electricity sales company. Experimental results show the efficiency of the proposed framework and ELM forecasting model.
机译:作为电子互联网的边缘节点,智能计量终端(SMT)的应用使得能够广泛收集并在边缘上被广泛收集和处理的大量电动大数据。这为短期电负载预测产生了积极条件,这对于电力现货市场后面的电力销售公司非常重要。在该研究中,提出了一种用于电负荷预测的新型混合边缘云计算框架的结构,并且还开发了基于极端学习机(ELM)的预测模型。在拟议的框架中,分布式SMT被视为边缘节点并广泛收集电动数据内部电力客户。然后,这些原始数据在区域SMT中预处理,然后作为标准时间序列数据发送到云服务器。最后,建议的ELM预测模型在云服务器中运行,并为所有电力销售公司的所有客户输出预测负载需求。实验结果表明了拟议框架和榆树预测模型的效率。

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