Syaikhurrahman, Muh
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Deteksi Serangan DDoS Menggunakan Deep Learning dalam Administrasi Jaringan Zukipli, Zukipli; Riskila, Aprila Kusuma; Saputra, Eko; Syaikhurrahman, Muh; Prasetyo, Bimo
Indo-MathEdu Intellectuals Journal Vol. 6 No. 6 (2025): Indo-MathEdu Intellectuals Journal
Publisher : Lembaga Intelektual Muda (LIM) Maluku

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.54373/imeij.v6i6.4112

Abstract

The DDoS (Distributed Denial-of-Service) attack detection system aims to enhance network security across all aspects of internet technology utilization. One of its applications is in SPKLU (Public Electric Vehicle Charging Stations). This research aims to detect DDoS attacks using deep learning in network administration. The study employs a deep learning approach utilizing Convolutional Neural Network (CNN) on a public dataset. Based on our study and analysis results, CNN has a precision rate of 95%. The high accuracy and balanced performance against various types of attacks indicate the potential application of this model in real-world situations. This model shows promising performance in detecting various network traffic anomalies, providing important insights related to its potential practical use. Further research is still needed to enhance resilience against evolving DDoS attack tactics and to address potential limitations that may exist.