稳健的短期负荷预测

Y. Chakhchoukh, A. Zoubir
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引用次数: 0

摘要

分析许多国家电力消费序列的随机特征表明存在非典型观测值或异常值。异常值是偏离的数据点,不遵循大多数观测值的模型。它们显著降低了传统的日前估计和预测方法的准确性,即使它们只占很小的一部分。因此,在实践中,对它们的鉴别和区分处理都是很重要的。本文通过比较分析,评价了几种鲁棒估计方法的性能。即鲁棒滤波后的S-和滤波后的τ-估计量、最小协方差行列式(MCD)和3 σ抑制规则。在法国电力需求预测精度方面,对这些方法的性能进行了评价。与非鲁棒方法或基本鲁棒方法相比,复杂鲁棒方法表现出最好的可靠性。实际负荷预测证实了在标称模型下鲁棒性和效率之间必要的良好理论权衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust short-term load forecasting
Analyzing the stochastic characteristics of electric consumption series in many countries shows the presence of atypical observations or outliers. Outliers are deviant data points that do not follow the model of the majority of observations. They significantly degrade the accuracy of conventional day-ahead estimation and forecasting methods even if they are present in a very low fraction. Thus, both their identification and separate treatment are important in practice. In this paper, we evaluate by a comparison analysis the performance of some robust estimation methods. Namely, the robust filtered S- and filtered τ-estimators, the minimum covariance determinant (MCD), and the 3-σ rejection rule. The performance of these methods has been evaluated on the French electric demand in terms of forecasting accuracy. The sophisticated robust methods exhibit the best reliability if compared to non-robust or basic robust methods. Practical load forecasting confirms the necessary good theoretical tradeoff between robustness and efficiency under the nominal model.
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