DOAJ Open Access 2025

IP Spoofing Detection Using Deep Learning

İsmet Kaan Çekiş Buğra Ayrancı Fezayim Numan Salman İlker Özçelik

Abstrak

IP spoofing is a critical component in many cyberattacks, enabling attackers to evade detection and conceal their identities. This study rigorously compares eight deep learning models—LSTM, GRU, CNN, MLP, DNN, RNN, ResNet1D, and xLSTM—for their efficacy in detecting IP spoofing attacks. Overfitting was mitigated through techniques such as dropout, early stopping, and normalization. Models were trained using binary cross-entropy loss and the Adam optimizer. Performance was assessed via accuracy, precision, recall, F1 score, and inference time, with each model executed a total of 15 times to account for stochastic variability. Results indicate a powerful performance across all models, with LSTM and GRU demonstrating superior detection efficacy. After ONNX conversion, the MLP and DNN models retained their performance while achieving significant reductions in inference time, miniaturized model sizes, and platform independence. These advancements facilitated the effective utilization of the developed systems in real-time network security applications. The comprehensive performance metrics presented are crucial for selecting optimal IP spoofing detection strategies tailored to diverse application requirements, serving as a valuable reference for network anomaly monitoring and targeted attack detection.

Penulis (4)

İ

İsmet Kaan Çekiş

B

Buğra Ayrancı

F

Fezayim Numan Salman

İ

İlker Özçelik

Format Sitasi

Çekiş, İ.K., Ayrancı, B., Salman, F.N., Özçelik, İ. (2025). IP Spoofing Detection Using Deep Learning. https://doi.org/10.3390/app15179508

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Informasi Jurnal
Tahun Terbit
2025
Sumber Database
DOAJ
DOI
10.3390/app15179508
Akses
Open Access ✓