پژوهش های اقلیم شناسی

پژوهش های اقلیم شناسی

مدل سازی و پیش نگری پارامترهای اقلیمی در شمال غرب یزد با استفاده از مدل های گردش کلی و سناریوهای واداشت تابشی

نوع مقاله : مقاله پژوهشی

نویسندگان
1 دکتری مدیریت و کنترل بیابان، دانشکده منابع طبیعی و علوم زمین، دانشگاه کاشان، ایران
2 دانشیار گروه مدیریت و کنترل بیابان، دانشکده منابع طبیعی و علوم زمین، دانشگاه کاشان، ایران.
3 دانشیار گروه جغرافیا، دانشگاه پیام نور، تهران، ایران.
4 دانشیار گروه مدیریت مناطق خشک و بیابانی، دانشکده منابع طبیعی و کویرشناسی، دانشگاه یزد، ایران.
چکیده
در سال‌های اخیر، بسیاری از نهادها، اثرات تغییر اقلیم در توسعه برنامه‌های منطبق با کاهش خطرات طبیعی را در دستور کار خود قرار می‌دهند. بنابراین، برنامه‌ریزی موثر مستلزم بررسی سناریوهای تغییر اقلیم فعلی و پیش‌بینی شده است. اکنون مدل‌های گردش‌کلی، ابزار پیشرفته‌ای هستند که برای پیش‌نگری پارامترهای اقلیمی مورد استفاده قرار می‌گیرند. در این مطالعه، پارامتر‌های اقلیمی تابش، بارندگی و دمای حداقل، حداکثر و میانگین سالانه با استفاده از سه مدل گردش کلی از سری CMIP5 موجود در LARS-WG6 تحت دو سناریوی واداشت تابشی RCP4.5 و RCP8.5 برای دوره 2100-2021 میلادی در شمال‌غرب یزد پیش‌نگری و ریزمقیاس نمایی گردید. کارایی مدل و نتایج تغییر اقلیم آینده با دوره پایه 2020-2001 با شاخص‌های آماری ضریب تبیین، مجذور میانگین مربعات خطای نرمال شده و خطای میانگین مربعات، ارزیابی گردید. براساس یافته‌های به‌دست آمده، میانگین دما تا 7/6 درجه سانتی‌گراد در آینده افزایش خواهد یافت و میزان این افزایش در RCP8.5 بیشتر از RCP4.5 است. بیشترین میزان افزایش دما مربوط به ماه جولای و مدل GFDL-CM3 و کمترین افزایش نیز مربوط به مدل MRI-CGCM3 است. تابش در آینده در فصل زمستان کاهش ولی در فصل تابستان افزایش می‌یابد و این در حالی است که مقدار بارندگی در مدل GFDL-CM3 در سناریوی بدبینانه به میزان 1/18 میلیمتر در آینده کاهش می‌یابد. در پیش‌نگری دما مدل MRI-CGCM3 و در پیش‌نگری داده تابش و بارندگی مدل GFDL-CM3، با داشتن کمترین شاخص-های آماری، به عنوان بهترین مدل معرفی می شوند. به‌طورکلی پیامدهای تغییر اقلیم در شمال‌غرب یزد در پارامترهای اقلیمی ردیابی و منجر به ترسیم آینده‌ای با افزایش خشکی، خشکسالی و افزایش وسعت مناطق بیابان‌زائی برای این منطقه می شود. هم‌چنین، نتایج به‌دست آمده در مطالعات اقلیمی و هواشناسی ارزشمند است و می‌تواند به برنامه‌ریزان و مدیران منابع آبی کمک کند.
کلیدواژه‌ها

عنوان مقاله English

Modeling and projection of climate parameters in northwest of Yazd using General Circulation Models and Representative Concentration Pathway scenarios

نویسندگان English

Azam Sadat Hosseini KhezrAbad 1
Abbasali Vali 2
Amirhossein Halabian 3
Mohammad Hossein Mokhtari 4
1 PhD in Desert Management and Control, University of Kashan, Iran.
2 Desert management and control Department, University of Kashan, Iran.
3 Department of Geography, Payame Noor University, Tehran, Iran.
4 at Desert and Arid Land Management Department, University of Yazd, Iran.
چکیده English

Extended Abstract



Introduction

In recent years, addressing of climate change effects in the development of adaptation plans with natural hazards mitigation has been on the agenda of many institutions. Hence, effective planning requires the examination of both current and projected climate change scenarios. To investigate past and future climatic parameters, researchers usually use observations and theoretical models. General Circulation Models (GCMs) based on the physical sciences are the most reliable theoretical methods, that available for simulating the climatic parameters. The main purpose of the study is to project temperature, radiation and precipitation parameters in the northwest of Yazd town and evaluate their impact on climate change.



Materials and methods

This research took place at Center of Iran, which is situated in the northwest of Yazd town. The minimum and maximum temperature in this region is -3.5 and 36 degrees Celsius with an average annual precipitation of 48.81 mm.

In this research, the parameters of precipitation, minimum, maximum and average temperature and radiation, over the northwest of Yazd town in the base period (2001-2020) with three general circulation models (GFDL-CM3, CMCC-CM and MRI-CGCM3) from the CMIP5 series, under two scenarios RCP4.5 and RCP8.5 were simulated and predicted using the LARS-WG6 model for an 80-year period in future (2021-2100). Then, by evaluating statistics such as Coefficient Of Determination (R^2), Root Mean Square Error (RMSE), Normalized Root Mean Square Error (NRMSE) and Mean Square Error (MSE), the best model in the region was determined to project future climate parameters.



Results and Discussion

Evaluation of the LARS-WG 6.0 performance in modeling and Prediction daily climate parameters for the northwest of Yazd Province was perfect (R^2=0.996). According to the results, the highest increase in temperature in the base period (2001-2020) was related to 2018, which had the minimum, maximum and average annual values of 14.2, 31.1 and 22.6 degrees Celsius, respectively. Also, based on both Representative Concentration Pathway scenarios, the temperature will increase in the future until the year 2100, and the amount of this increase in RCP8.5 is greater than in RCP4.5. The amount of temperature increase in both scenarios in the GFDL-CM3 model is higher than the other two models, and the MRI-CGCM3 model has the lowest increase in annual temperature compared to the other two models. The average temperature changes among 1.1- 4.3 °C (RCP4.5) and 2.6- 6.7 °C (RCP8.5). In project the temperature parameter, the MRI-CGCM3 and CMCC-CM models are respectively introduced as the best models with NRMSE<20%.

In the future, radiation will decrease in the winter season but increase in the summer season. The highest amount of radiation both in the base and future period in both radiative forcing scenarios is related to the months of June and July. Radiation amount modeling in the RCP8.5 is lower than the RCP4.5, and in the GFDL-CM3 model is higher than the MRI-CGCM3 model, and this model is also higher than the CMCC-CM model. Average precipitation in the future has a variable trend. The total average precipitation in the future varies from -17.82 (GFDL-CM3) to +17.23 (MRI-CGCM3) and +34.07 (CMCC_CM) mm in RCP4.5 and from -18.04 (GFDL-CM3) to +14.37 (MRI-CGCM3) and +35.94 (CMCC_CM) mm for RCP8.5. In the projection of precipitation and radiation parameters, the GFDL-CM3 model is introduced as the best model with the lowest error indicators.







Conclusion

According to the obtained results, with the increase of temperature and radiation in the summer season and Decrease in Precipitation in future, the climate of northwest of Yazd town will be warmer than the base period in the future. The possible consequences of this situation in the future include an increase in evapotranspiration and water stress, lack of vegetation cover and bareness of the soil surface, a decrease in soil water and groundwater recharge, an increase in wind speed and the creation of dust storms. That these changes with high human effects of cause the amount with increase in drought and the area of deserts in the region. And these conditions will lead to the destruction of ecosystems and settlements. Therefore, the results of this study can be used in planning related to the management of natural resources such as water resources. Also, the obtained results are valuable in climatic and meteorological studies and can help water resources planners and managers.

کلیدواژه‌ها English

Projection
Climate Change
Northwest of Yazd Town
General Circulation Models
LARS-WG6
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