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用复数自回归模式预报月平均气温
引用本文:谷湘潜, 康红文, 江剑民. 用复数自回归模式预报月平均气温. 应用气象学报, 2007, 18(4): 435-441.
作者姓名:谷湘潜 康红文 江剑民
作者单位:1.中国气象科学研究院灾害天气国家重点实验室, 北京 100081;2.中国气象局培训中心, 北京 100081
摘    要:在复数域最小二乘法的基础上, 建立了复数自回归模式。数学推导和实例应用表明:这一复数自回归模式不同于将复数序列中的实部和虚部分开来计算的结果, 将实部和虚部分开来计算的方法不是真正意义的最小二乘法。应用包括一个任意给定的复数序列和全国160个基本气象台站上历年7月月平均气温。采用距平相关系数和均方根误差两种检验标准, 对独立预报结果进行检验, 并与其他3种常用统计模型作比较。结果显示:该复数自回归模式确实具有较好的预报效果。

关 键 词:复数自回归模式   月平均气温预报   傅立叶变换
收稿时间:2006-06-08
修稿时间:2006-06-082007-03-06

Monthly Temperature Forecasts by Using a Complex Autoregressive Model
Gu Xiangqian, Kang Hongwen, Jiang Jianmin. Monthly temperature forecasts by using a complex autoregressive model. J Appl Meteor Sci, 2007, 18(4): 435-441.
Authors:Gu Xiangqian  Kang Hongwen  Jiang Jianmin
Affiliation:1. State Key Laboratory of Severe Weather, Chinese Academy of Meteorological Sciences, Beijing 100081;2. China Meteorological Administration Training Center, Beijing 100081
Abstract:In order to find a new method to improve the skill of short-rang climate prediction, a complex autoregressive model is established based on mathematic derivation of the complex least-square, in which the conventional least-square formula is extended from the real number domain into the complex number domain.This complex least-square solution is an exact analytic formula, and the conventional way is corrected that the real number and the imaginary number are separately calculated to reserve the least-square in the complex number domain.With a spatial expansion of Fourier series on monthly temperature fields in mainland China, the applications of this complex autoregressive model (M1) to monthly temperature forecasts show a high skill comparing with other conventional statistical models in predicting monthly temperature anomalies for July and most other months at 160 meteorological stations in mainland China.The conventional statistical models include an autoregressive model in the complex number domain that the real number and the imaginary number are separately disposed (M2), an autoregressive model in the real number domain (M3), and a persistence-forecast model (M4). For example, the anomaly correlation coefficient and root mean square error prediction for July by the M1 reaches up to 0.185 and 1.079 ℃ comparing with 0.089 and 1.113 ℃ by the M2, 0.061 and 1.147 ℃ by the M3, and 0.064 and 1.449 ℃ by the M 4 respectively, although the M2 does somewhat higher skill than the M3 and M4. It is expected that a better method of spatial expansion should improve further the forecast skill.The complex least-square derived in this study is an exact solution comparing with the conventional method that the real part and the imaginary part are separately calculated.In fact, the conventional method does not reach the actual least square in a complex number domain.The forecast experiments suggest that the complex least-square is an effective technique to dispose a complex number series, and may be applied to the linear and non-linear regression and similar statistic methods that are based on the least-square method.Developments of complex statistical models could be a perspective way to improve sim ulation and forecast skill in complex number fields in meteorology and relative disciplines.
Keywords:complex autoregressive model  monthly temperature forecast  Fourier transform
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