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基于季节性AR(P)模型的水质预测
引用本文:程万里,LI Yi-fang,李亦芳,郝伏勤,程银行.基于季节性AR(P)模型的水质预测[J].西安文理学院学报,2008,11(1):5-10.
作者姓名:程万里  LI Yi-fang  李亦芳  郝伏勤  程银行
作者单位:[1]华北水利水电学院数学与信息科学学院,河南郑州450011 [2]黄河流域水资源保护局,河南郑州450004 [3]中国地质调查局天津地质矿产研究所,天津300170
摘    要:自回归模型的建立是基于序列平稳性的假设,只能描述平稳序列的统计特性,而水质的月监测数据序列往往具有季节性变化的现象.文章介绍了平稳过程的相关理论及其检验方法并应用到黄河潼关、三门峡断面的水质序列的检验中,检验结果为非平稳序列,且序列具有明显季节性(月份)变化的特性.为此尝试建立季节性AR(P)模型来捕捉黄河水质的季节性变化规律,实践表明该模型预测总体效果是较为满意的.

关 键 词:季节性AR(P)模型  溶解氧  水质预测
文章编号:1008-5564(2008101-0005-06
收稿时间:2007-08-20
修稿时间:2007年8月20日

Water Quality Prediction Based on Seasonal AR(P)Model
LI Yi-fang.Water Quality Prediction Based on Seasonal AR(P)Model[J].Journal of Xi‘an University of Arts & Science:Natural Science Edition,2008,11(1):5-10.
Authors:LI Yi-fang
Institution:CHENG Wan-li, LI Yi-fang, HAO Fu-qin, CHENG Yin-hang ( 1. College of Mathematics and Information Science, North China Institute of Water Conservancy and Hydroelectric Power, Zhengzhou 450011, China; 2. Water Resources Protection Bureau of the Yellow River Basin, Zhengzhou 450004,China; 3. Tianjin Institute of Geology and Mineral Resources, Chinese Geological Survey, Tianjin 300170 ,China)
Abstract:The regression model is based on a series of assumptions, which can only describe the statistical characteristics of smooth steady sequence, while water quality monitoring data from the test sequence are often of seasonal phenomenon. This paper introduces the relevant theories and testing methods in the smooth process, as well as the application in the test sequence quality at Tongguan, Sanmenxia section of the Yellow River, the test results show non- stationary sequence of obvious seasonal (monthly) changes. The seasonal AR (1) model is attempted to establish to capture the seasonal changes in water quality in the Yellow River. Experiments show that the overall effect is satisfying.
Keywords:seasonal AR (P) model  DO  water quality prediction
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