SIMPLE MODEL TO GENERATE DAILY AVERAGED POINT CLOUDINESS DATA

V. Badescu
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引用次数: 3

Abstract

A new simple model to generate daily averaged point cloudiness values was proposed. The model uses as input the long-term mean value of point cloudiness. The model was tested in two Romanian locations. During the cold season there is a good agreement between the frequency distribution functions (FDF) obtained by using observed and generated data, respectively. When the warm season is considered, the concordance between the FDFs based on synthetic and observed data is slightly worse. The present model generates data whose mean and standard deviation are very close to those of the observed data. The model can be used to synthesize time series in those locations where the long-term mean value of point cloudiness is the only known information about the cloud cover amount. However, if both the long-term mean and standard deviation of point cloudiness are known, one recommends to use first or second order autoregressive (AR) models. If one looks about FDFs based on generated data the present model should be pre...
简单的模型,以产生每日平均点云量数据
提出了一种新的生成日平均点云量的简单模型。该模型使用点云量的长期平均值作为输入。该模型在罗马尼亚的两个地方进行了测试。在寒冷季节,分别利用观测数据和生成数据得到的频率分布函数(FDF)之间有很好的一致性。当考虑暖季时,基于合成数据的fdf与观测数据之间的一致性略差。本模型生成的数据的均值和标准差与观测数据的均值和标准差非常接近。该模型可用于在点云量的长期平均值是唯一已知云量信息的地点合成时间序列。然而,如果点云的长期平均值和标准偏差都是已知的,建议使用一阶或二阶自回归(AR)模型。如果根据生成的数据来观察fdf,那么目前的模型应该是预先的。
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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