مراجعة لاستخدام خوارزميات الذكاء الاصطناعي في التنبؤ بالإصابات والأداء لدى لاعبي كرة القدم

محتوى المقالة الرئيسي

هيثم جواد كاظم
مأب فتحي حمزه
محمد لطيف حسين

الملخص

تهدف هذه الدراسة إلى البحث في الخوارزميات الذكاء الاصطناعي المستخدمة في لعبة كرة القدم، لا سيما فيما يتعلق بتوقع أداء اللاعبين والوقاية من الإصابات. لتحقيق هذا الهدف، تم استخدام مصادر أكاديمية مثل Google Scholar وResearchGate  و Springerو  Scopus لإجراء مراجعة منهجية للأبحاث المنشورة خلال السنوات العشر الأخيرة ( 2015 – 2025 ). من خلال عملية منهجية شملت جمع البيانات والمصادر، واختيار الدراسات بناءً على معايير محددة، وتصنيفها وفقًا لتطبيقات وخوارزميات الذكاء الاصطناعي المستخدمة في لعبة كرة القدم، وتقييم المشكلات البحثية الرئيسية والاتجاهات والفرص المستقبلية، تم العثور على ما يقرب من خمسين ورقة بحثية وتحليلها. تسلط الدراسة الضوء على ثلاثة محاور رئيسية: تلخيص تطبيقات الذكاء الاصطناعي في كرة القدم فيما يتعلق بتوقع الأداء والإصابات، التنبؤ بالإصابات وتحليل المخاطر المرتبطة بها، وتقييم أداء اللاعبين باستخدام نماذج الذكاء الاصطناعي. تؤكد هذه الدراسة على دور الخوارزميات الذكية في المجال الرياضي، لا سيما في توقع الإصابات والتنبؤ بأداء الفرق أو اللاعبين في كرة القدم.

التنزيلات

بيانات التنزيل غير متوفرة بعد.

تفاصيل المقالة

كيفية الاقتباس
Haitham Jawad Kadhim, Maab Fathi Hamzah, & Mohammed Lateif Hussain. (2025). مراجعة لاستخدام خوارزميات الذكاء الاصطناعي في التنبؤ بالإصابات والأداء لدى لاعبي كرة القدم. Mustansiriyah Journal of Sports Science, 7(2), 148–161. https://doi.org/10.62540/mjss.2025.2.7.12
القسم
Articles

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