شماره ركورد
15243
عنوان
ارزيابي و سنجش سيستمهاي تشخيص ناهنجاري در شبكههاي نرمافزار محور
سال تحصيل
1402
استاد راهنما
دكتر مرتضى ملاجعفري
چکيده
Software-Defined Networking (SDN) offers centralized programmability and global visibility, positioning it as a suitable platform for intelligent and adaptive security solutions. Many Machines Learning (ML) and Deep Learning (DL) based Anomaly Detection Systems (ADS) have been suggested, but their evaluation methods are still scattered, inconsistent, and too dependent on old datasets and limited metrics. We propose the SDN Anomaly Detection evaluation Framework (SADEF), a benchmarking approach intended to facilitate systematic and reproducible testing of anomaly detection systems inside realistic emulated SDN settings. SADEF is different from other methods since it uses a multi-dimensional set of assessment measures, such as detection accuracy, computing overhead, network performance impact, and adversarial robustness. SADEF connects theoretical developments with real-world use by combining contemporary traffic statistics, different attack scenarios, and adversarial machine learning methods. The main goal of this framework is to create a standardized and comprehensive benchmark that enables academics and practitioners to create, compare, and implement more reliable, efficient, and robust ADS solutions for SDN networks.
نام دانشجو
حسام طاهر
تاريخ ارائه
10/29/2025 12:00:00 AM
متن كامل
87999
پديد آورنده
حسام طاهر
تاريخ ورود اطلاعات
1404/08/08
عنوان به انگليسي
Benchmarking and evaluation of Anomaly Detection Systems in Software Defined Networking
كليدواژه هاي لاتين
Software-Defined Networking (SDN) , Anomaly Detection System (ADS) , Machine Learning (ML) , Deep Learning (DL) , Benchmarking Framework