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Long-term system load forecasting based on data-driven linear clustering method

机译:基于数据驱动的线性聚类方法的长期系统负荷预测

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摘要

In this paper, a data-driven linear clustering (DLC) method is proposed to solve the long-term system load forecasting problem caused by load fluctuation in some developed cities. A large substation load dataset with annual interval is utilized and firstly preprocessed by the proposed linear clustering method to prepare for modelling. Then optimal autoregressive integrated moving average (ARIMA) models are constructed for the sum series of each obtained cluster to forecast their respective future load. Finally, the system load forecasting result is obtained by summing up all the ARIMA forecasts. From error analysis and application results, it is both theoretically and practically proved that the proposed DLC method can reduce random forecasting errors while guaranteeing modelling accuracy, so that a more stable and precise system load forecasting result can be obtained.
机译:本文提出了一种数据驱动的线性聚类(DLC)方法来解决一些发达城市负​​荷波动引起的长期系统负荷预测问题。利用具有年际间隔的大型变电站负荷数据集,首先通过提出的线性聚类方法对其进行预处理,以进行建模。然后,为每个获得的集群的和序列构建最优的自回归综合移动平均(ARIMA)模型,以预测它们各自的未来负荷。最后,通过汇总所有ARIMA预测获得系统负载预测结果。从误差分析和应用结果来看,从理论上和实践上都证明了所提出的DLC方法可以在保证建模精度的同时,减少随机预测误差,从而获得更加稳定,精确的系统负荷预测结果。

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