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ارزیابی پیشیابی میدان باد توسط مدل WRF تحت تأثیر شرایط اولیه و مرزی متفاوت در منطقۀ خلیج فارس: مقایسه با دادههای همدیدی و ماهوارههای QuikSCAT و ASCAT | ||
فیزیک زمین و فضا | ||
مقاله 14، دوره 44، شماره 1، اردیبهشت 1397، صفحه 227-243 اصل مقاله (458.25 K) | ||
شناسه دیجیتال (DOI): 10.22059/jesphys.2017.228347.1006883 | ||
نویسندگان | ||
سیاوش غلامی1؛ سرمد قادر* 2؛ حسن خالقی زواره3؛ پروین غفاریان4 | ||
1دانشجوی دکتری، پژوهشگاه ملی اقیانوسشناسی و علوم جوی، تهران،ایران | ||
2دانشیار، گروه فیزیک فضا، موسسه ژئوفیزیک دانشگاه تهران، ایران | ||
3دانشیار، پژوهشگاه ملی اقیانوسشناسی و علوم جوی، تهران،ایران | ||
4استادیار، پژوهشگاه ملی اقیانوسشناسی و علوم جوی، تهران،ایران | ||
چکیده | ||
در این مقاله عملکرد مدل میانمقیاس پیشبینی وضع هوای WRF با هستۀ دینامیکی ARW برای شبیهسازی میدان باد در منطقۀ خلیج فارس تحت شرایط مرزی و اولیۀ مختلف ارزیابی و بررسی شده است. برای این منظور از سه نوع مجموعه دادۀ ERA-Interim، NCEP-FNL و NCEP-R2 برای تأمین شرایط اولیه و مرزی مدل استفاده شده است. سه نوع شبیهسازی مختلف WRF در این مقاله انجام گرفت و برای مقایسۀ خروجی باد مدل تحت شرایط مرزی و اولیۀ متفاوت از مشاهدات ایستگاههای همدیدی در محدودۀ شمالی خلیج فارس، دادههای ماهوارۀ QuikSCAT و دادههای ماهوارۀ ASCAT استفاده شد. بر اساس ارزیابیهای انجامگرفته در این تحقیق هم برای جهت و هم تندی باد مجموعه دادۀ ERA-Interim در مقایسه با NCEP-FNL و NCEP-R2 میتواند شبیهسازی باد نزدیکتر به واقعیت داشته باشد. در رتبۀ دوم دادههای NCEP-FNL قرار دارد که در غیاب ECMWF ERA-Interim میتواند جایگزین مناسبی برای تأمین شرایط اولیه و مرزی مدل WRF باشد اما دادۀ بازتحلیل NCEP-R2 خطای زیادی در تخمین باد بهخصوص اندازۀ آن (تندی) ایجاد میکند. | ||
کلیدواژهها | ||
دادههای بازتحلیل؛ شرایط اولیه؛ خلیج فارس؛ میدان باد؛ مدل WRF | ||
مراجع | ||
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