基于预测误差统计的中长期能源预测动态横向修正方法

Bike Xue, Jian Geng
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引用次数: 11

摘要

在对预测误差进行统计的基础上,提出了中长期能源预测的修正模型。并给出了校正步骤。将影响预期负荷能的因素分为长期因素、中期因素和短期因素三大类。根据预测误差变化幅度,划分出高误差段和低误差段。因此,载荷影响因子类型与高低误差段之间有六种组合。通过对历史预测误差的分析和统计,动态计算出6个误差修正因子的值。然后对修正因子赋予不同的权重,得到下一个预测期预测模型的预测误差值。用实际数据验证了该方法的有效性和实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic transverse correction method of middle and long term energy forecasting based on statistic of forecasting errors
Based on statistic of forecasting errors, a correction model of middle and long term energy forecasting is proposed. The correction steps are also presented. The factors that influence intending load energy are classified into three categories, long-term factors, middle-factors and short-term factors. According to forecasting errors variation amplitude, high and low error sections are also divided out. So there are six combinations between the load influence factor types and high-low error sections. By the analysis and statistic of history forecasting errors, the six error correction factors value are calculated dynamically. Then assign different weights to the correction factors, the forecasting error value of forecasting model for the next forecast period is gained. The validity and practicability of the proposed method are tested with the actual data.
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