منابع فارسی
افسری، ع.، حاجی ناصری، س.، فاضلی، م. و فیرحی، د. (1396). مدلِ داده بنیاد بررسی جامعهشناختی حکمرانی آب در بحرانِ دریاچهی ارومیه. مطالعات راهبردی سیاستگذاری عمومی، 7(25), 53-72.
دبیرخانه شورای عالی آب، مصوبات کارگروه کارشناسی شورای عالی آب. (1398).
حب وطن، م.، حیدری، ن.، جعفری، ب.، ارشدی، م.، لطفی، س. و ضرغامی، م. (1399). تحلیل راهبردی برای بهبود کارکرد و اقتدارشورای عالی آب با استفاده از روش SWOT. مجله تحقیقات منابع آب ایران، شماره 4.
فتاحی، س.، (1397). گزارش ملی آب و سیاستگذاری مبتنی بر پیچیدگی. مطالعات راهبردی سیاستگذاری عمومی، 8(27)، 53-72
عبدالحسین زاده، م.، ثنایی، م. و ذوالفقارزاده، م م.، (1396). مفهوم شناسی سیاستگذاری داده باز حاکمیتی و تبیین مزایا و فواید آن در عرصههای مختلف سیاستگذاری. مطالعات راهبردی سیاستگذاری عمومی، 7(22), 74-55.
میرعمادی، س. ا.، ضرغامی، م.، و طباطبایی، س. م.، (1403). تحلیل موانع نهادی حکمرانی دادهمحور در سطوح سازمانی و بینسازمانی؛ مطالعهی موردی دسترسی اشتراکی به دادههای آب در ایران. مطالعات راهبردی سیاستگذاری عمومی، 14(51 ویژهنامه), 82-103.
doi: 10.22034/sspp.2024.2033080.3667
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