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首页> 外文期刊>Advances in Meteorology >Meteorological Temperature and Humidity Prediction from Fourier-Statistical Analysis of Hourly Data
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Meteorological Temperature and Humidity Prediction from Fourier-Statistical Analysis of Hourly Data

机译:傅立叶统计分析的气象温度和湿度预测

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The temperature readings for all the 365?days and the 24?hours may be fitted through a 3?×?3 matrix (the so-called T-matrix). The mean square deviation between this fit and the actual meteorological measurements is smaller than three degrees Celsius. Four entries of this (nonsymmetric) matrix may be fixed by other means, leaving only five independent components. However, the same method applied to the humidity measurements produces a larger mean square deviation. A strong stochastical connection is found between the T-temperature matrix and the U-humidity matrix. The computer program, in C, may be used to adjust a (2M?+?1)?×?(2m?+?1) matrix simply by changing the arguments at the command line and has been tested with m and M ranging from zero to 11 (eleven) (more than 24 readings per day are necessary for larger values of m). The physical meaning of these constants is given only in the case m?=?M?=?1. Our results have also been connected to fundamental cosmological properties: Earth’s orbit, the ecliptic angle, and the latitude of Querétaro (or whatever geographical location is chosen). A separate program calculates the angular position of the Sun as measured in the sky of Querétaro, to determine the length of the day or the mean value of the solar cosine. This work introduces several new variables which happen to be stochastically connected.
机译:所有365?天和24小时的温度读数可以穿过3?×3矩阵(所谓的T-矩阵)。这种合适与实际气象测量之间的平均方形偏差小于三摄氏度。该(非对称)矩阵的四个条目可以通过其他方式固定,只留下五个独立的组件。然而,应用于湿度测量的相同方法产生较大的平均方形偏差。在T温矩阵和U湿度基质之间发现了强大的随机连接。 C中的计算机程序可用于调整(2M?+?1)?×?(2M?+?1)矩阵,只需通过更改命令行处的参数,并且已使用M和M的测量来测试零至11(十一)(每天超过24个读数对于较大的m)是必要的。这些常数的物理含义仅在案例中施用?=?m?=?1。我们的结果也已连接到基本宇宙学特性:地球的轨道,圆形角度和Querétaro的纬度(或选择的任何地理位置)。单独的程序计算Querétaro的天空中测量的太阳的角度位置,以确定太阳余弦的一天的长度或平均值。这项工作引入了几种恰好是随机连接的新变量。

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