基于分位数回归森林的日前负荷概率预测

Ali Lahouar, Amal Mejri, J. Slama
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引用次数: 1

摘要

负荷预测是现代智能电网的重要任务之一。随着可再生间歇性能源的整合和需求响应策略的采用,准确的短期预测变得必不可少。现代预测方法不仅估计未来的价值,而且还提供不同宽度和概率的置信区间。为此,本文提出了一种基于分位数回归森林的概率日前负荷预测方法。分位数回归森林是随机森林的扩展,它提供置信区间而不是单点。根据负荷曲线的相关性和重要性度量、剖面分析和小波分解来选择预测输入。使用来自安大略省市场的真实数据集进行了几次测试。结果反映了该模型在不同情况下的准确性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Probabilistic day-ahead load forecast using quantile regression forests
Load forecast is one of the most important tasks in modern and smart grids. With the integration of renewable intermittent sources and the adoption of demand response strategies, an accurate short-term prediction becomes mandatory. Modern forecast approaches do not merely estimate future values, but provide also confidence intervals with different widths and probabilities. Therefore, this paper proposes a probabilistic day-ahead load forecast approach based on quantile regression forests. Quantile regression forests are extensions to random forests that provide confidence intervals instead of single points. The forecaster inputs are chosen according to measures of correlation and importance, profile analysis and wavelet decomposition of load curves. Several tests are performed using real data sets from the Ontario market. The results reflect the accuracy and the effectiveness of the proposed model under different circumstances.
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