The Role of Statistical Methods and Tools for Weather Forecasting and Modeling

E. Agbo
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引用次数: 7

Abstract

The need to understand the role of statistical methods for the forecasting of climatological parameters cannot be trivialized. This study gives an in depth review on the different variations of the Mann-Kendall (M-K) trend test and how they can be applied, regression techniques (Simple and Multiple), the Angstrom-Prescott model for solar radiation, etc. The study then goes ahead to apply some of them with data obtained from the Nigerian Meteorological Agency (NiMet), and applying tools like the python programming language and Wolfram Mathematica. Results show that the maximum ambient temperature for Calabar is increasing (Z = 2.52) significantly after the calculated p-value <0.05 (significant level). The seasonal M-K test was also applied for the dry and wet seasons and both were found to be increasing (Z = 3.23 and Z = 4.04 respectively) after their calculated p-values <0.05. The relationship between refractivity and other meteorological parameters relating to it was discerned using partial differential equations giving the gradient of each with refractivity; this was compared with results from the correlation matrix to show that the water vapor contents of the atmosphere contributes significantly to the variation of refractivity. Multiple linear regression has also been adopted to give an accurate model for the prediction of refractivity in the region after the residual error between the calculated refractivity and predicted refractivity was minimal.
统计方法和工具在天气预报和建模中的作用
不能轻视了解统计方法在预测气候参数方面的作用的需要。本研究对Mann-Kendall (M-K)趋势检验的不同变化及其应用、回归技术(简单和多元)、埃斯特-普雷斯科特太阳辐射模型等进行了深入的综述。然后,该研究将其中一些应用于从尼日利亚气象局(NiMet)获得的数据,并应用python编程语言和Wolfram Mathematica等工具。结果表明,在计算p值<0.05(显著水平)后,卡拉巴的最高环境温度显著升高(Z = 2.52)。旱季和雨季也进行了季节M-K检验,在计算p值<0.05后,两者均呈增加趋势(Z = 3.23和Z = 4.04)。利用偏微分方程确定折射率与其他气象参数之间的关系,给出各参数与折射率的梯度;与相关矩阵的结果比较表明,大气水汽含量对折射率的变化有显著影响。在折射率计算值与预测值的残差最小的情况下,采用多元线性回归给出了准确的区域折射率预测模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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