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Geoinformatic Intelligence Methodologies for Drought Spatiotemporal Variability in Greece

机译:希腊干旱时空变异的地理信息智能方法

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摘要

One of the most important hazards in terms of cost, frequency of occurrence and impact on humans is drought. Drought indices are estimations of precipitation shortage and water supply deficit. Satellite drought indices are normally radiometric recordings of vegetation condition and dynamics, exploiting the unique spectral signatures of canopy elements, particularly in the red and near-infrared bands. However, the identification of drought based on the Reconnaissance Drought Index (RDI) enables the assessment of hydro-meteorological drought, since it uses hydro-meteorological parameters. RDI is a fairly comprehensive index as it combines the simplicity of use and the successfully assessment and monitoring of the phenomenon. However, the study and understanding of the spatiotemporal variability of drought is not an easy process. In this study the main goal is to use the PCA + clustering method to transform the RDI temporal data (1982-2001) and cluster the different regions of Greece based on that temporal variations. Firstly, Principal Component Analysis (PCA) applied onto 19 annual RDI indices followed by Clustering that was based on certain eigenchannels resulted from the previous PCA analysis. Both methods are linear transformations capable to decorrelate the spatiotemporal information provided in the estimated RDI. The time series presented approach proved to be advantageous in relation to other statistical methods used to describe variability and provide excellent and fast results for stakeholders and environmental organizations. The results are quite satisfactory in classifying the drought-induced climatic regions of Greece.
机译:就成本,发生频率和对人类的影响而言,最重要的危害之一是干旱。干旱指数是对降水不足和供水不足的估计。卫星干旱指数通常是对植被状况和动态的辐射记录,利用了冠层元素的独特光谱特征,特别是在红色和近红外波段。但是,基于勘测干旱指数(RDI)进行的干旱识别可以评估水文气象干旱,因为它使用了水文气象参数。 RDI是一个相当全面的索引,因为它结合了使用的简便性以及对现象的成功评估和监视。但是,对干旱的时空变异性的研究和理解并不是一个容易的过程。在本研究中,主要目标是使用PCA +聚类方法转换RDI时间数据(1982-2001年),并基于该时间变化对希腊不同地区进行聚类。首先,将主成分分析(PCA)应用于19个年度RDI指数,然后基于先前PCA分析得出的某些特征通道进行聚类。两种方法都是线性变换,能够去相关估计的RDI中提供的时空信息。与其他用于描述变异性的统计方法相比,时间序列提出的方法被证明是有利的,并且可以为利益相关者和环境组织提供出色而快速的结果。在对希腊干旱造成的气候区域进行分类的结果中,结果令人满意。

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