منابع
خواجهامیری، چکاوک، خسروی، محمود، طاوسی، تقی، حمیدیانپور، محسن، و کیانیمقدم، منصور (1401). صحتسنجی عملکرد برونداد مدل اقلیمی CMIP6 با دادههای مشاهداتی کرانههای مکران. هواشناسی و علوم جو، 5 (1)، 22-41. doi:10.22034/jmas.2023.379448.1193
روشن، غلامرضا، قنقرمه، عبدالعظیم، و شاهکوئی، اسماعیل (1393). ارزیابی پتانسیل تولید انرژی بادی در ایستگاههای منتخب ایران. برنامهریزی منطقهای، 4 (14)، 13-30.
کهخامقدم، پریسا، و دلبری، معصومه (1396). ارزیابی امکان بهرهگیری از انرژی باد در استان سیستان و بلوچستان. پژوهشهای جغرافیای طبیعی، 49 (3)، 441-455.
فرزانه، مهسا، ملبوسی، شراره، و حمیدیانپور، محسن (1401). پیشنگری متغییرهای اقلیمی استان سیستان و بلوچستان تحت سناریوهای واداشت تابشی RCP. پژوهشهای اقلیم شناسی، 13 (51)، 129-148. doi: 10.30495/sarzamin.2023.22861
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