基于三阶段综合和随机自适应机制的电力需求混合预测模型

Shuping Dang, Jiahong Ju, L. Baker, A. Gholamzadeh, Yizhi Li
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引用次数: 12

摘要

电力系统和智能电网的电力需求是时域上的随机函数,受天气、日期、经济等大量随机因素以及一系列不可预测的人为因素的影响。因此,基于统计和模糊数学的随机模型是最方便、最有效的电力需求预测方法,因为它可以将所有难以甚至无法数学建模的复杂因素合并到一个合适的修正变量中。本文将引入一种电力需求混合预测模型,该模型将电力需求预测过程分为长期、中期和短期三个阶段。大多数长期因素将结合在一个中期阶段的综合修正因素中。在中期阶段,预测机制将几种不同的预测原理和方法整合在一起,形成组合预测结果,并通过对预测结果和相应的实际测量进行测量和比较,根据不同预测方法的不同权重动态调整其预测方案。通过这种自适应算法,该预测模型能够利用其数据库中获得的历史数据预测未来24小时的电力需求。在短期阶段,将引入精细调整机制,提高整体预测机制的可靠性和稳健性。
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Hybrid forecasting model of power demand based on three-stage synthesis and stochastically self-adapting mechanism
The power demand over the electrical power system and smart grid is a random function in the time domain which is affected by a larger number of stochastic factors, for example weather, date and economy as well as a series of unpredictable human factors. Therefore, the most convenient and efficient methodology to forecast the power demand is a stochastic model based on statistics and fuzzy mathematics, because it can merge all complex factors which are difficult or even impossible to be modelled mathematically into an appropriate correction variable. In this paper, we will introduce a hybrid forecasting model of power demand which separates the forecasting process into three stages, i.e. long-term, middle-term and short-term analysis. Most of the long-term factors will be combined in a comprehensive correction factor for the middle-term stage. In the middle-term stage the forecasting mechanism integrates several different forecasting principles and methods to produce a combined forecasting result and dynamically adjusts its forecasting scheme by different weights for different forecasting methods by measuring and comparing the forecasting result and its corresponding practical measurement. By this self-adapting algorithm, the forecasting model is able to forecast the next 24-hour power demand via using the historical data obtained in its database. In the short-term stage, a fine adjustment mechanism will be involved to enhance the reliability and robustness of the holistic forecasting mechanism.
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