天气预报
概率预测
期限(时间)
计算机科学
模型输出统计
估计
数值天气预报
北美中尺度模式
全球预报系统
预测误差
热带气旋预报模式
气象学
计量经济学
工程类
数学
人工智能
物理
量子力学
概率逻辑
系统工程
作者
Damien Fay,John V. Ringwood
标识
DOI:10.1109/tpwrs.2009.2038704
摘要
Weather information is an important factor in load forecasting models. Typically, load forecasting models are constructed and tested using actual weather readings. However, online operation of load forecasting models requires the use of weather forecasts, with associated weather forecast errors. These weather forecast errors inevitably lead to a degradation in model performance. This is an important factor in load forecasting but has not been widely examined in the literature. The main aim of this paper is to present a novel technique for minimizing the consequences of this degradation. In addition, a supplementary technique is proposed to model weather forecast errors to reflect current accuracy. The proposed technique utilizes a combination of forecasts from several load forecasting models (sub-models). The parameter estimation may thus be split into two parts: sub-model and combination parameter estimation. It is shown that the lowest PMSE corresponds to training the sub-models with actual weather but training the combiner with forecast weather.
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