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Parallel and reliable probabilistic load forecasting via quantile regression forest and quantile determination

机译:通过分位数回归林和分位数确定来进行并行且可靠的概率负载预测

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With the rapidly increasing complexity of operational challenges in smart grid environment, the traditional load point forecasting methods are no longer adequate. Probabilistic load forecasting has been proven to be more suitable in these environments due to their superior ability to provide more advanced uncertainty quantification. Most of the probabilistic forecasting methods, however are either insufficiently accurate or take very long training time. While probabilistic forecasting using quantile forecasts has been popular in research, the industry has been adopting another form of probabilistic forecasts, namely prediction intervals (PIs). The direct PI construction (DPIC) method typically employed for deciding the corresponding upper and lower quantile pair in PIs, however cannot guarantee the reliability of constructed PIs. This paper not only proposes a parallel and improved load quantile forecasting method but also solves the reliability issue of DPIC by proposing an alternative quantile determination (QD) method. Case studies show that the proposed load quantile forecasting method is both more accurate and more computationally efficient than the state-of-the-art methods and the reliability issue of DPIC is considerably alleviated by QD. (C) 2018 Elsevier Ltd. All rights reserved.
机译:随着智能电网环境中运营挑战的复杂性迅速增加,传统的负荷点预测方法已不再足够。事实证明,概率负载预测更适合在这些环境中使用,因为它们具有提供更高级的不确定性量化的出色能力。但是,大多数概率预测方法要么准确性不足,要么需要很长的训练时间。尽管使用分位数预测的概率预测已在研究中流行,但业界一直在采用另一种形式的概率预测,即预测间隔(PI)。直接PI构造(DPIC)方法通常用于确定PI中相应的上下分位数对,但是不能保证所构造PI的可靠性。本文不仅提出了一种并行改进的负荷分位数预测方法,而且通过提出一种替代分位数确定(QD)方法解决了DPIC的可靠性问题。案例研究表明,所提出的负载分位数预测方法比最先进的方法更准确,计算效率更高,并且QD大大减轻了DPIC的可靠性问题。 (C)2018 Elsevier Ltd.保留所有权利。

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