انتخاب محل بهینه برای پرورش آبزیان با استفاده از تحلیل مکانی داده‌های ماهواره‌ای

نوع مقاله : مقاله پژوهشی

نویسندگان

1 دانشیار دانشکده مهندسی نقشه برداری و اطلاعات مکانی دانشگاه تهران

2 استادیار، گروه نقشه‌برداری، دانشکده مهندسی عمران، دانشگاه صنعتی نوشیروانی بابل، بابل، ایران

3 دانشجوی کارشناسی ارشد، گروه ژئودزی و هیدروگرافی، دانشکده مهندسی نقشه‌برداری و اطلاعات مکانی، دانشگاه تهران، تهران، ایران

چکیده

امروزه بخش مهمی از منابع پروتئینی مصرفی از تولید آبزیان تأمین می‌گردد. تولید آبزیان به روش‌های صید و پرورش انجام می‌شود که پرورش در قفس با توجه به مزایایی نظیر استفاده بهینه از منابع آب، توسعه اقتصادی و کمک به حفظ گونه‌ها مورد توجه متخصصان قرار گرفته است. این مطالعه با هدف انتخاب محل بهینه برای تأسیس قفس پرورش ماهی سی‌باس، به تحلیل مکانی و ارزیابی چندمعیاره داده‌های ماهواره‌ای در منطقه خلیج فارس و دریای عمان پرداخته است. داده‌های محیطی شامل عمق، سرعت باد، ارتفاع سطح آب، دما، شوری، غلظت کلروفیلآ، pH، اکسیژن محلول، نیترات و فسفات از منابع معتبر ماهواره‌ای مانند MODIS، SMOS، GEBCO و CMEMS برای سال 2024 تهیه شدند. داده‌ها پس از هم‌مقیاس‌سازی زمانی، با روش درون‌یابی کریجینگ به لایه‌های پیوسته مکانی با وضوح یک کیلومتر تبدیل شدند. هر معیار بر اساس منابع علمی به سه سطح «بسیار مناسب»، «نسبتاً مناسب» و «نامناسب» طبقه‌بندی شد. وزن هر معیار با استفاده از روش تحلیل سلسله‌مراتبی (AHP) و بر اساس مطالعات گذشته تعیین شد. سپس نقشه‌های رتبه‌بندی‌شده به روش ترکیب خطی وزن‌دار (WLC) تلفیق و نقشه نهایی پهنه‌بندی تهیه گردید. اعتبارسنجی نتایج با استفاده از داده‌های زیستگاه ماهی سی‌باس از پایگاه OBIS و موقعیت مزارع فعلی شیلات انجام شد که نشان داد تمام مزارع در مناطق با امتیاز بالا قرار دارند. در نهایت، 15 شهرستان جنوبی ایران به عنوان مناطق دارای پتانسیل بالا شناسایی شدند.

کلیدواژه‌ها

موضوعات


عنوان مقاله [English]

Optimal Site Selection for Aquaculture Using Spatial Analysis of Satellite Data

نویسندگان [English]

  • saeed farzaneh 1
  • ali sam khanian 2
  • reyhaneh mardani 3
1 North Kargar
2 Assistant Professor, Surveying Department, Faculty of Civil Engineering, Babol Noshirvani University of Technology, Babol, Iran
3 Master's student, Department of Geodesy and Hydrography, Faculty of Surveying and Spatial Information Engineering, University of Tehran, Tehran, Iran
چکیده [English]

Aquaculture has become a key strategy in meeting the growing global demand for animal protein, especially as natural fish stocks face overexploitation and ecological degradation. Among modern aquaculture methods, cage farming stands out for its cost-effectiveness, environmental sustainability, and potential to boost regional economies. In this context, the current study focuses on identifying optimal sites for the development of sea bass (Lates calcarifer) cage aquaculture in the southern coastal waters of Iran, particularly in the Persian Gulf and the Gulf of Oman. The study employs satellite remote sensing data, geospatial analysis, and spatial multi-criteria evaluation (SMCE) to propose a systematic approach to aquaculture site selection. To achieve this objective, the researchers collected environmental and oceanographic data from multiple satellite and modeling sources, including MODIS (for temperature and dissolved oxygen), SMOS (for salinity), GEBCO (for bathymetric depth), and CMEMS (for variables such as chlorophyll concentration, pH, nitrate, phosphate, sea surface height, and wind speed). All data were obtained for the year 2024 and processed using the Kriging interpolation method to create continuous raster layers at a spatial resolution of one kilometer. The study identifies ten criteria crucial for sea bass aquaculture: depth, water temperature, salinity, wind speed, sea surface height, chlorophyll-a concentration, pH, dissolved oxygen, nitrate, and phosphate levels. These variables were selected based on biological needs of sea bass and insights from prior studies. For each parameter, suitable ranges were defined—such as water depth between 20–50 meters, salinity between 8.8–39 ppt, and temperature between 13–28°C—ensuring conditions support optimal growth and health of farmed fish. Each criterion was classified into three suitability levels (high, moderate, and low) and then standardized using a ranking method. The relative importance of each criterion was determined using the Analytic Hierarchy Process (AHP), a well-established decision-making framework. Through pairwise comparisons and consistency checks (with a consistency ratio of 0.076), the study assigned the highest weight to depth (0.3342), followed by temperature (0.2061) and salinity (0.1216), while phosphate received the lowest weight (0.0277). Using a Weighted Linear Combination (WLC) approach, the standardized criteria layers were integrated to generate a final suitability map. The results were categorized into three classes—highly suitable, moderately suitable, and unsuitable—for sea bass cage farming. Spatial analysis revealed that 15 counties along the southern coast of Iran hold significant potential for sea bass cage aquaculture. Among them, Gachsaran, Bushehr, Tangestan, Ganaveh, Qeshm, Bandar Abbas, and Minab showed the highest suitability scores. To validate the model, the study compared the identified suitable zones with actual cage farming sites reported by Iran’s Fisheries Organization and the species’ recorded habitat range from the OBIS (Ocean Biodiversity Information System) database. The overlap between current farms and high-scoring zones confirmed the reliability of the methodology. Furthermore, areas with high suitability also aligned well with recorded sea bass presence in global biodiversity datasets. This research underscores the significant potential of remote sensing and geospatial analysis in aquaculture planning. By leveraging freely available satellite datasets and integrating them into a structured spatial decision-making framework, the study presents a replicable and scalable method for aquaculture site selection. The approach significantly reduces the need for time-consuming and costly field surveys, while also enabling wide-area assessments that account for environmental variability. In addition to environmental considerations, the study also highlights economic and operational benefits. The proposed locations support optimal growth conditions, reducing the risks of fish mortality, disease, or operational failure. Moreover, by identifying regions with low concentrations of pollutants (e.g., nitrate and phosphate) and stable physical conditions (e.g., low wind and wave height), the model aids in promoting sustainable aquaculture practices. In conclusion, the integration of satellite-based environmental data, spatial interpolation techniques, and multi-criteria decision-making tools offers a robust solution for site selection in marine aquaculture. Given the increasing global emphasis on food security, environmental sustainability, and efficient resource use, such methodologies can play a pivotal role in guiding policy and investment in the aquaculture sector—especially in coastal regions like southern Iran, where natural conditions are favorable for fish farming.

کلیدواژه‌ها [English]

  • Aquaculture
  • Site Selection
  • Remote Sensing
  • Multi-Criteria Decision Analysis
  • Persian Gulf