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Ultra-short-term load forecasting using robust exponentially weighted method in distribution networks

机译:配电网中使用鲁棒指数加权方法的超短期负荷预测

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Ultra-short-term forecasting results of the loads of distribution transformers are one of the main sources of the pseudo measurements in state estimation programs for distribution networks, and the forecasting accuracy seriously affects the state estimation results. This paper describes a robust exponentially weighted load forecast model to improve the forecasting accuracy. Firstly, a load change rate estimating method based on the trend similarity of the load curve segment is proposed to improve the accuracy for inflection point of load curve. Then, an exponentially weighted model combined with the Huber ψ -function is introduced, which is robust for bad data. Finally, these two algorithms are combined. The combined method has been tested for a real distribution networks and the results show this method has good prediction precision especially for the inflection point of load curve, and has the ability of automatic compression of bad data.1
机译:配电变压器负荷的超短期预测结果是配电网状态估计程序中伪测量的主要来源之一,预测精度严重影响状态估计结果。本文介绍了一种鲁棒的指数加权负荷预测模型,以提高预测精度。首先,提出了一种基于负荷曲线段趋势相似度的负荷变化率估计方法,以提高负荷曲线拐点的精度。然后,引入了结合了Huberψ函数的指数加权模型,该模型对不良数据具有鲁棒性。最后,将这两种算法结合在一起。该组合方法已经在实际的配电网中进行了测试,结果表明该方法具有较好的预测精度,特别是对于负荷曲线的拐点,具有自动压缩不良数据的能力。1

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