بررسی رابطه شاخص های NINO4 و NAO با خشکسالی هواشناسی در ایستگاه های سینوپتیک نواحی شمالی ایران

نویسندگان

1 دانشجوی دکتری آبخیزداری، دانشکده مرتع و آبخیزداری، دانشگاه علوم کشاورزی و منابع طبیعی گرگان.

2 استاد گروه مرتع و آبخیزداری، دانشکده منابع طبیعی، دانشگاه صنعتی اصفهان، اصفهان

3 دانشیار گروه مرتع و آبخیزداری، دانشکده منابع طبیعی، دانشگاه صنعتی اصفهان، اصفهان

چکیده

خشکسالی مخاطره اقلیمی است که در پهنه وسیعی از کشور ایران خود را بـه اشکال متفاوتی نشان می‌دهد. پیوند از دور نیز شاخه‌ای جدید از اقلیم شناسی سینوپتیک است که به شناخت روابط بین عناصر اقلیمی، دورتر از رخدادهای اصلی می‌پردازد. هدف از این مطالعه، بررسی تاثیر شاخص های NINO4 و NAO بر خشکسالی هواشناسی در ایستگاه های سینوپتیک نواحی شمالی ایران است. برای این منظور، ابتدا شاخص بارش استاندارد شده (SPI) محاسبه گردید. سپس با استفاده از نرم افزارهای آماری MINITAB16 و SPSS16، رابطه هم‌زمان و غیرهم‌زمان بین شاخص‌ها با استفاده از آزمون هم‌بستگی اسپیرمن و تابع هم‌بستگی عرضی تعیین و در گام بعدی مدل‌های رگرسیون با در نظر گرفتن حالت هم‌زمان و غیرهم‌زمان محاسبه شد. نتایج نشان داد که بین NAO با SPI در ایستگاه‌های اردبیل و بابلسر در ماه‌های ژانویه (دی)، آوریل (فروردین)، آگوست (مرداد) و دسامبر (آذر) و شاخص NINO4 با SPI در ایستگاه اردبیل در تمام ماه‌های سال به جز اکتبر (مهر) و دسامبر (آذر) رابطه معناداری وجود دارد. هم‌چنین در سری‌های مختلف زمانیSPI ، شاخص NINO4 دارای بالاترین و شاخصNAO دارای پایین‌ترین هم‌بستگی با خشکسالی در مناطق مورد مطالعه بودند. در انتها نیز با محاسبه آماره‌های خطا بهترین مدل در ایستگاه گرگان مشاهده شد.

کلیدواژه‌ها


عنوان مقاله [English]

Investigation of the relationship of NINO4 and NAO indices with meteorological drought in synoptic stations in northern Iran

نویسندگان [English]

  • Maryam Mohammadrezaei 1
  • Saeid Soltani 2
  • Reza Modares 3
1 PhD Student of Watershed Management, Dept. of Watershed & Rangland, Gorgan University of Agriculture and Natural Resources, Gorgan, Iran
2 Prof. of Rangland and Watershed, Dept. of Natural Resources, Isfahan University of Technology, Isfahan. Iran
3 Assoc. Prof. of Rangland and Watershed, Dept. of Natural Resources, Isfahan University of Technology, Isfahan, Iran
چکیده [English]

Background and Objectives: Water shortages in a defined area and in a certain period are called drought. This phenomenon is time dependent rather than aridity, and it is quitely temporary. drought in various regions of Iran in arid, semi-arid and even humid areas shows different forms and causes great damage. Drought is calculated using indices such as precipitation and evapotranspiration. The teleconnection is also a new branch of synoptic climatology, which recognizes the relationships between phenomena and climatic elements such as rainfall, drought, and temperature in remote locations. In other words, teleconnection patterns are the occurrence and continuation of large scale models of circulation abnormalities and air pressure that extend over a wide geographical range. These patterns are also oscillatory behavior of low frequencies. Teleconnection mechanisms are one of the important issues in justifying the behavior of the climate, and its effects do not always appear in the same form everywhere (Khosravi, 2004). In worldwide, many studies have been done on climate signals in variety ways. Iran is also affected by rainfall systems, which affects the pattern of rainfall and drought in it.
Methodology: The purpose of this study was to investigate the relationship between NINO4 and NAO indices with meteorological droughts in synoptic stations in the southern part of the Caspian Sea. For this purpose, data of rainfall were obtained monthly from the Meteorological Organization of Iran. Then, SPI was calculated for different time scales of months including 1, 3, 6, 9, 12, 15, 18, 24, 48. The next step was to obtain the values of the Ocean Atmospheric indices, including NINO4 and NAO, at the monthly scale from the Australian Meteorological Organization. For analysis, the MINITAB16, SPSS16 was used. In this case, the simultaneous and asynchronous relationship between the time series of SPI and the NAO and NINO4 indices was determined. In this stage, Spearman's correlation test and cross-correlation function were determined. In the next step, regression modeling was done. In this way, regression models for the time series of SPI were calculated taking into the simultaneous and asynchronous state of the NAO and NINO4 indices. The lag times were 1-6, 12, 24, 48 months. Finally, errors for regression models were determined at all stations to select the best model.
Findings: The results showed relationships between NAO with SPI different series at Ardabil and Babolsar stations in January, April, August and December; the NINO4 with SPI at Ardebil station in all months except October and December. Also, the results of regression equations showed that in SPI time series of NINO4 with the highest coefficient, the highest and NAO with lowest coefficient, had the lowest effect on drought in studied areas. In this case, the Ardabil has the highest coefficient in SPI24 months. At the end, the error statistics including RMSE, R, R2, CE were calculated for model reliability and calculation of errors.
Conclusion: In this case, the best model was found at the Gorgan station by calculating the error statistics. The result suggests that these stations are neighbor to the Caspian Sea, which has affected the rainfall and drought pattern of the regions. This can also be the result of the universality of the Enso phenomenon that affects the world's climate. In order to obtain better results, it is recommended to study the precipitation and temperature pattern of these areas with other Ocean Atmospheric indices such as SOI and AO. Regarding the fact that the distant teleconnection indices do not occur in all directions in one way, it is suggested to study rainfall and temperature pattern of other parts of Iran in relation to climate signals. This study is also in line with another study by researchers who through statistical and synoptic methods have investigated the relationship between climatic factors such as rainfall and temperature with climatic signals. Study of other researchers determine that there is a significant relationship between the annual rainfall of Iran and the South Oscillation Index.
temperature pattern of these areas with other Ocean Atmospheric indices such as SOI and AO. Regarding the fact that the distant teleconnection indices do not occur in all directions in one way, it is suggested to study rainfall and temperature pattern of other parts of Iran in relation to climate signals. This study is also in line with another study by researchers who through statistical and synoptic methods have investigated the relationship between climatic factors such as rainfall and temperature with climatic signals. Study of other researchers determine that there is a significant relationship between the annual rainfall of Iran and the South Oscillation Index.

کلیدواژه‌ها [English]

  • Correlation
  • Error statistic
  • Modeling
  • Ocean- Atmospheric oscillations
  • Regression
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