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حبیب اله بازدار هادی فتاحی فریدون قدیمی

چکیده

علوم‌ زمین به‌طور عمومی ‌و اکتشاف منابع معدنی به‌خصوص، به‌دلیل پیچیدگی‌هایی که دارد و نیز عوامل تأثیر‌گذار و دخیل در آن، همواره جزو علومی ‌بوده است که احاطه بر تمام ویژگی‌های آن یا ناممکن بوده و یا بسیار مشکل است. به‌دلیل دشوار‌بودن اندازه‌گیری دقیق مؤلفه‌ها و مرزبندی آنها، در چند سال اخیر سعی شده است برای رفع این نوع مشکل‌ها و مسائل، از روش‌های جدید مانند روش‌های پیشرفته هوش محاسباتی استفاده شود که توانایی بالایی در بسیاری از زمینه های محاسباتی دارند. با توجه به تنوع کارهای تحقیقاتی انجام‌شده در این زمینه و نبود مقاله مروری جامع، انجام این کار پژوهشی ضروری است. هدف از نگارش این مقاله، مروری جامع بر کاربرد انواع روش‌های پیشرفته هوش محاسباتی در حیطه اکتشاف منابع معدنی و ایجاد منبع مطالعاتی جامع برای پژوهشگران علاقه مند به این زمینه است. نتایج این تحقیقات همگی نشان می دهند، روش‌های پیشرفته هوش محاسباتی در مقایسه با سایر روش‌ها در بررسی اکتشاف منابع معدنی، کارآمدتر، سریعتر، دقیقتر و مقرون به صرفه‌تر هستند.

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ارجاع به مقاله
بازدار ح. ا., فتاحی ه., & قدیمی ف. (2017). مرور کلی بر کاربرد روش‌ های پیشرفته هوش محاسباتی در اکتشاف منابع معدنی. زمین‌شناسی اقتصادی, 9(2), 509-544. https://doi.org/10.22067/econg.v9i2.48265
نوع مقاله
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