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ارزیابی پایداری امنیت آب و کشاورزی با تحلیل جدایی اقتصاد کشاورزی از مصرف آبا زیرزمینی | ||
مدیریت آب و آبیاری | ||
دوره 14، شماره 3، آذر 1403، صفحه 543-565 اصل مقاله (1.67 M) | ||
نوع مقاله: مقاله پژوهشی | ||
شناسه دیجیتال (DOI): 10.22059/jwim.2024.370493.1133 | ||
نویسندگان | ||
سورنا نادری1؛ علی مریدی* 2 | ||
1گروه اقتصاد کشاورزی، دانشکده کشاورزی، دانشگاه تهران، کرج، ایران. | ||
2گروه مهندسی آب، فاضلاب و محیط زیست، دانشکده مهندسی عمران، آب و محیطزیست، دانشگاه شهید بهشتی، تهران، ایران. | ||
چکیده | ||
نقش محوری کشاورزی در تخلیه منابع آب زیرزمینی و همچنین اشتغالزایی برای برخی از محرومترین اقشار جامعه باعث شده تا اعمال هر محدودیتی بر این بخش با هدف احیای منابع آب زیرزمینی عملاً به طیف وسیعی از چالشهای اقتصادی-اجتماعی منتهی شود. در چنین شرایطی یک راهکار بالقوه برای فائقآمدن بر وضع وخیم آبهای زیرزمینی بدون بروز پیامدهای اقتصادی-اجتماعی دستیابی به رشد اقتصادی در بخش کشاورزی همزمان باکاهش حجم برداشت از آبهای زیرزمینی است که در ادبیات پژوهش تحت عنوان جداسازی پرقدرت شناخته میشود. در این مطالعه سعی شده تا با بهکارگیری رویکردی موسوم به رویکرد تاپیو ماهیت ارتباط میان رشد اقتصاد کشاورزی و برداشت از آب زیرزمینی در استانهای ایران در بازه 1398-1391 موردارزیابی قرار گیرد و سپس اثر قرارگیری در وضعیت جداسازی پرقدرت بر عمق آبهای زیرزمینی بابرآورد الگوی رگرسیون کوانتایل (Quantile) تخمین زده شود. براساس نتایج حاصله تقریباً تمام قطبهای کشاورزی ایران نظیر فارس و خراسان رضوی نه تنها در دستیابی پایدار به جداسازی پرقدرت ناموفق بودهاند بلکه در بسیاری موارد رشد منفی در اقتصادکشاورزی را همراه با افزایش برداشت از آبهای زیرزمینی نیز تجربه کردهاند و در نتیجه هم از نظر اقتصادی و هم از نظر آبهای زیرزمینی در شرایط ناپایداری قرار دارند. نتایج حاصل از الگوی کوانتایل نیزنشان داد که در نواحی دارای منابع آب زیرزمینی با عمق متوسط و زیاد دستیابی به جداسازی پرقدرت در حدود 8 درصد عمق این منابع را کاهش میدهد، اگرچه در نواحی دارای آبهای زیرزمینی کمعمق اثری بر عمق این منابع برجای نمیگذارد. | ||
کلیدواژهها | ||
اقتصاد کشاورزی؛ تاپیو؛ جداسازی؛ رگرسیون کوانتایل | ||
عنوان مقاله [English] | ||
Assessing the sustainability of water and agriculture security by analyzing the decoupling of agriculture economics from groundwater withdrawal | ||
نویسندگان [English] | ||
Soorena Naderi1؛ Ali Moridi2 | ||
1Department of Agricultural Economics, Faculty of Agriculture, University of Tehran, Karaj, Iran. | ||
2Department of Water, Wastewater and Environmental Engineering, Faculty of Civil, Water and Environmental Engineering, Shahid Beheshti University, Tehran, Iran. | ||
چکیده [English] | ||
The important share of agriculture in groundwater resources depletion as well as job creation for some of the most disadvantaged sections of the society has caused hiring any restrictions on this sector with the aim of restoring groundwater resources results in a wide range of socio-economic challenges. In such a situation, a potential solution to overcome the dire situation of groundwater resources without the emergence of socio-economic consequences is to achieve the growth of the agricultural economy along with the decrease of groundwater consumption, which is known as strong decoupling in the research literature. In this study, an attempt was made to evaluate the nature of the relationship between the growth of the agricultural economy and the withdrawal of groundwater resources in 31 provinces of Iran between 2012 and 2019 by applying an approach called the Tapio approach. Then, the effect of being placed in a state of strong decoupling on the depth of groundwater should be estimated by quantile regression model. According to the findings, almost all the main agricultural centers of Iran, such as Fars and Khorasan Razavi, have not only failed to achieve strong decoupling, but in many cases, they have also experienced negative growth in the agricultural economy along with the increase in the withdrawal of groundwater resources, and consequently, they are in unstable conditions in terms of economic and groundwater resources. Further, the results of the quantile model depicted that in the areas with medium and deep groundwater resources, achieving strong decoupling reduces the depth of these resources by about 8%, although the same thing does not affect the depth of these resources in areas with shallow groundwater. | ||
کلیدواژهها [English] | ||
Agriculture, Economics, Decoupling, Quantile Reg | ||
مراجع | ||
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