تعزيز انتاج النفط عن طريق تحسين تقنية الرفع بالغاز لحقل نفطي في االشرق الأوسط: باستخدام الخوارزمية الجينية

المؤلفون

  • محمد احمد الجنابي Ministry of Oil, Baghdad, Iraq
  • حيدر عبد المحسن محمود Iraqi Ministry of Oil, Iraq
  • عمر فالح الفتلاوي Department of Petroleum Engineering Department, College of Engineering, University of Baghdad, Iraq
  • ضفاف جعفر صادق Department of Petroleum Engineering Department, College of Engineering, University of Baghdad, Iraq
  • يوسف محمد الجمعة Basrah Oil Company, Iraq
  • اسعد عبود عيسى Basrah Oil Company, Iraq

DOI:

https://doi.org/10.52716/jprs.v14i3.876

الكلمات المفتاحية:

Gas Lift, Optimization, Genetic Algorithm, Artificial Lift, Water Cut.

الملخص

يقدم هذه البحث دراسة لتطبيق تقنية الرفع بالغاز (GL) لتحسين إنتاج النفط في حقل نفطي. يعاني الحقل من تراجع سريع في الإنتاج بسبب انخفاض الضغط المكمني، حيث تعد تقنية الرفع بالغاز تقنية رفع صناعي مستخدمة على نطاق واسع يمكن استخدامها لزيادة إنتاج النفط عن طريق تقليل الضغط الهيدروستاتيكي في البئر. استخدمت الدراسة نموذج حقل كامل لمحاكاة تأثيرات الرفع بالغاز على الإنتاج. تم تشغيل النموذج تحت سيناريوهات إنتاج مختلفة، بما في ذلك قيم مختلفة لنسبة انتاج الماء (WC%) وضغط المكمن. أظهرت النتائج أن الرفع بالغاز يمكن أن يزيد بشكل كبير من إنتاج النفط تحت جميع السيناريوهات. ووجدت الدراسة أيضاً أن معظم الآبار في الحقل ستغلق قريباً بسبب ارتفاع نسبة الماء المنتج. ومع ذلك، يمكن أن تجعل تطبيق تقنية الرفع بالغاز هذه الآبار اقتصادية وقابلة للتشغيل. أظهرت التقييمات الاقتصادية للدراسة أن تصميم الرفع بالغاز الأمثل ممكن ويمكن أن يحسن بشكل كبير من إنتاج النفط. هذا يشير إلى أن لبتقنية واعدة لتحسين إنتاج النفط في الحقول التي تعاني من تراجع الإنتاج. تقدم الدراسة أيضاً نهجًا جديدًا لتحسين رفع الغاز باستخدام البخوارزمية الجينية، والتي يمكن استخدامها لإيجاد تصميم رفع الغاز الأمثل لحقل معين.

المراجع

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التنزيلات

منشور

2024-09-22

كيفية الاقتباس

(1)
Al-Janabi, M. A.; Mahmood, H. A.; Al-Fatlawi, O. F.; Sadeq, D. J.; Al-Jumaah, Y. M.; Essa, A. A. تعزيز انتاج النفط عن طريق تحسين تقنية الرفع بالغاز لحقل نفطي في االشرق الأوسط: باستخدام الخوارزمية الجينية. Journal of Petroleum Research and Studies 2024, 14, 52-74.