2021 IEEE International Black Sea Conference on Communications and Networking (BlackSeaCom) 2021
DOI: 10.1109/blackseacom52164.2021.9527756
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Adversarial Machine Learning Security Problems for 6G: mmWave Beam Prediction Use-Case

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Cited by 22 publications
(18 citation statements)
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“…Therefore, sophisticated AI-based algorithms can help to model the highly nonlinear correlations and estimate the channel characteristics [20]. In our recent papers [21] and [22], adversarial attacks and mitigation methods have been investigated along with the proposed framework for mmWave beamforming prediction models in next-generation networks. This study provides a comprehensive vulnerability analysis of deep learning (DL)based channel estimation models trained with the dataset obtained from MATLAB's 5G toolbox for adversarial attacks and defensive distillation-based mitigation methods.…”
Section: Purpose and Contributionsmentioning
confidence: 99%
“…Therefore, sophisticated AI-based algorithms can help to model the highly nonlinear correlations and estimate the channel characteristics [20]. In our recent papers [21] and [22], adversarial attacks and mitigation methods have been investigated along with the proposed framework for mmWave beamforming prediction models in next-generation networks. This study provides a comprehensive vulnerability analysis of deep learning (DL)based channel estimation models trained with the dataset obtained from MATLAB's 5G toolbox for adversarial attacks and defensive distillation-based mitigation methods.…”
Section: Purpose and Contributionsmentioning
confidence: 99%
“…In our recent works [11] and [9], we only investigated FGSM attacks, which can be mitigated using the adversarial training method. In this work, four different adversarial machine learning methods (FGSM, BIM, PGD, and MIM) are investigated to build robust beamforming DL models using two mitigation methods.…”
Section: Purpose and Contributionsmentioning
confidence: 99%
“…Therefore, sophisticated AI-based algorithms can help to model the highly nonlinear correlations and estimate the channel characteristics [19]. In our recent papers [20] and [21], adversarial attacks and mitigation methods have been investigated along with the proposed framework for mmWave beamforming prediction models in next-generation networks. This paper implements widely used adversarial attacks from Fast Gradient Sign Method (FGSM), Basic Iterative Method (BIM), Projected Gradient Descent (PGD), Momentum Iterative Method (MIM), to Carlini & Wagner (C&W) as well as a defensive distillation based mitigation method for DL-based channel estimation models in next-generation wireless networks.…”
Section: Purpose and Contributionsmentioning
confidence: 99%