In distributed multiple-input multiple-output (D-MIMO) networks, power control is crucial to optimize the spectral efficiencies of users and max-min fairness (MMF) power control is a commonly used strategy as it satisfies uniform quality-of-service to all users. The optimal solution of MMF power control requires high complexity operations and hence deep neural network based artificial intelligence (AI) solutions are proposed to decrease the complexity. Although quite accurate models can be achieved by using AI, these models have some intrinsic vulnerabilities against adversarial attacks where carefully crafted perturbations are applied to the input of the AI model. In this work, we show that threats against the target AI model which might be originated from malicious users or radio units can substantially decrease the network performance by applying a successful adversarial sample, even in the most constrained circumstances. We also demonstrate that the risk associated with these kinds of adversarial attacks is higher than the conventional attack threats. Detailed simulations reveal the effectiveness of adversarial attacks and the necessity of smart defense techniques.
翻译:在分布式多投入多输出(D-MIMO)网络中,电源控制对于优化用户光谱效率和最大公平(MMF)电源控制至关重要,因为它满足了所有用户的统一服务质量,因此是一种常用战略。MMMF电源控制的最佳解决方案需要高复杂操作,因此提出了基于人工智能的深度神经网络解决方案,以降低复杂性。虽然使用AI可以实现相当准确的模型,但这些模型对于对抗性攻击具有一些内在的弱点,因为对AI模型的投入应用了精心设计的扰动。在这项工作中,我们表明对目标AI模型的威胁可能来自恶意用户或无线电单位,通过应用成功的对抗性抽样,即使在最受限制的情况下,也可能大幅降低网络性能。我们还表明,与这类对抗性攻击相关的风险高于常规攻击威胁。详细模拟揭示了对抗性攻击的有效性和智能防御技术的必要性。