Precipitation interpolation using digital terrain model and multivariate regression in hilly and low mountainous areas of Hungary

IF 1.4 Q2 GEOGRAPHY
Tamás Schneck, T. Telbisz, I. Zsuffa
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引用次数: 3

Abstract

The relationship between precipitation and elevation is a well-known topic in the field of geography and meteorology. Radar-based precipitation data are often used in hydrologic models, however, they have several inaccuracies, and elevation can be one of the additional parameters that may help to improve them. Thus, our aim in this article is to find a quantitative relationship between precipitation and elevation in order to correct precipitation data input into hydrologic models. It is generally accepted that precipitation increases with elevation, however, the real situation is much more complicated, and besides elevation, the precipitation is dependent on several other topographic factors (e.g., slope, aspect) and many other climatic parameters, and it is not easy to establish statistically reliable correlations between precipitation and elevation. In this paper, we examine precipitation-elevation correlations by using multiple regression analysis based on monthly climatic data. Further on, we present a method, in which these regression equations are combined with kriging or inverse distance weighting (IDW) interpolation to calculate precipitation fields, which take into account topographic elevations based on digital terrain models. Thereafter, the results of the different interpolation methods are statistically compared. Our study areas are in the hilly or low mountainous regions of Hungary (Bakony, Mecsek, Börzsöny, Cserhát, Mátra and Bükk montains) with a total of 52 meteorological stations. Our analysis proved that there is a linear relationship between the monthly sum of precipitation and elevation. For the North Hungarian Mountains, the correlation coefficients were statistically significant for the whole study period with values between 0.3 and 0.5. Multivariate regression analysis pointed out that there are remarkable differences among seasons and even months. The best correlation coefficients are typical of late spring-early summer and October, while the weakest linear relationships are valid for the winter period and August. The vertical gradient of precipitation is between one and four millimetres per 100 metres for each month. The statistical comparison of the precipitation interpolation had the following results: for most months, co-kriging was the best method, and the combined method using topography-derived regression parameters lead to only slightly better results than the standard kriging or IDW.
基于数字地形模型和多元回归的匈牙利丘陵和低山区降水插值
降水和海拔之间的关系是地理学和气象学领域的一个众所周知的话题。基于雷达的降水数据通常用于水文模型,然而,它们有一些不准确之处,高程可能是有助于改进它们的额外参数之一。因此,我们在本文中的目的是找到降水和海拔之间的定量关系,以便校正水文模型中输入的降水数据。人们普遍认为,降水量随着海拔的升高而增加,但实际情况要复杂得多,除海拔外,降水量还取决于其他几个地形因素(如坡度、坡向)和许多其他气候参数,在降水量和海拔之间建立统计上可靠的相关性并不容易。在本文中,我们使用基于月度气候数据的多元回归分析来检验降水-海拔的相关性。此外,我们提出了一种方法,将这些回归方程与克里格或反距离加权(IDW)插值相结合来计算降水场,该方法基于数字地形模型考虑地形高程。然后,对不同插值方法的结果进行统计比较。我们的研究区域位于匈牙利的丘陵或低山区(Bakony、Meccek、Börzsöny、Cserhát、Mátra和Bükk montains),共有52个气象站。我们的分析证明,月降水量和海拔高度之间存在线性关系。对于北匈牙利山脉,相关系数在整个研究期间具有统计学意义,数值在0.3和0.5之间。多元回归分析指出,不同季节甚至不同月份之间存在显著差异。最佳的相关系数典型地出现在春末夏初和十月,而最弱的线性关系适用于冬季和八月。每月的垂直降水梯度在每100米1至4毫米之间。降水插值的统计比较结果如下:在大多数月份,共克里格法是最好的方法,使用地形导出的回归参数的组合方法只比标准克里格法或IDW产生略好的结果。
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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来源期刊
Hungarian Geographical Bulletin
Hungarian Geographical Bulletin Social Sciences-Geography, Planning and Development
CiteScore
3.20
自引率
0.00%
发文量
24
审稿时长
24 weeks
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