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AR(p)与指数平滑组合预测算法
引用本文:邵义元.AR(p)与指数平滑组合预测算法[J].鄂州大学学报,2002,9(4):38-40.
作者姓名:邵义元
作者单位:鄂州大学,教育系,湖北,鄂州,436000
摘    要:本文提出一种对铜铳品位进行预测的新方法,以采集的现场数据为基础,采用系统辩识动态地建立了AR(p)模型与三次指数平滑模型,AR(p)模型要求数据对象是平衡时间序列,而三次指数平滑型的数据对象具有随机性,考虑到铜锍品位的波动性,本文将二模型按最小二乘法原理,以组合预测误差平方和为目标函数,通过使误差平方和极小化来确定两种预测方法的优化,建立了一种新的组合模型,在三种模型中其预测误差最小。

关 键 词:预测算法  AR(p)模型  指数平滑模型  组合加权系数  铜锍品位  吹炼过程
文章编号:1008-9004(2002)04-0038-03
修稿时间:2002年1月21日

The Combined Predicton Approach of Auto-regressive and Exponential Smoothing
SHAO Yi-yuan.The Combined Predicton Approach of Auto-regressive and Exponential Smoothing[J].Journal of Ezhou University,2002,9(4):38-40.
Authors:SHAO Yi-yuan
Institution:SHAO Yi-yuan
Abstract:This paper came up with a new method for forecasting the grade of copper matte based on the collected data from the factory and it established the dynamic Auto-Regressive and Exponential Smooth model by the system identification.The Data target of the Auto-Regressive model requires time series is smooth,however,the data target of Exponential Smoothing is random.The grade fluctuation of copper matte being considered,this paper established a new kind of combined model,in which the forecasting error could get the minimum among three models.The square of the forecasting error was regarded as the target function and the best weight numbers were gotten according to the principle of the minimal least square.
Keywords:auto regressive model  exponential smoothing  combined weight number  combined forecasting LM
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