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<title> تحقیقات کاربردی علوم جغرافیایی </title>
<link>http://jgs.khu.ac.ir</link>
<description>تحقیقات کاربردی علوم جغرافیایی - مقالات نشریه - سال 1404 جلد25 شماره0</description>
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<language>fa</language>
<pubDate>1404/12/10</pubDate>

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						<title>Dynamical and Synoptic Characteristics of Extreme Precipitation Events in Western Iran (Case Study: Kurdistan Province)</title>
						<link>http://system.khu.ac.ir/jgs/browse.php?a_id=4522&amp;sid=1&amp;slc_lang=fa</link>
						<description>&lt;div style=&quot;text-align: justify;&quot;&gt;Extreme precipitation events pose a significant and growing threat to society, often leading to floods, landslides, and widespread socio-economic damage. Daily precipitation data collected from 9 rain gauges during 1/1/1991 to 31/12/2023. To identify days associated with heavy precipitation, the 95th-percentile threshold was employed. Days on which the recorded precipitation exceeded the long-term mean of the 95th percentile at more than half stations were classified as heavy-precipitation days for Kurdistan Province. Based on this threshold and criterion, 210 days were selected. Two data arrays with an S-mode structure were constructed for sea-level pressure and 500-hPa geopotential height. Using Principle Component Analysis (PCA) analysis, components explaining more than one percent of the variance were retained as significant modes. For sea-level pressure, nine components were identified, and for the 500-hPa geopotential height, eight components were extracted. Together, these components explained over 92% of the variance in sea-level pressure and more than 95% of the variance in the 500-hPa geopotential height over the study domain. Cluster analysis (CA) performed on the score matrix of the 17 components was then used to identify the prevailing circulation patterns.&lt;br&gt;
&amp;nbsp;&lt;/div&gt;</description>
						<author>Mohammad Darand</author>
						<category></category>
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