O-RAN is a new, open, adaptive, and intelligent RAN architecture. Motivated by the success of artificial intelligence in other domains, O-RAN strives to leverage machine learning (ML) to automatically and efficiently manage network resources in diverse use cases such as traffic steering, quality of experience prediction, and anomaly detection. Unfortunately, it has been shown that ML-based systems are vulnerable to an attack technique referred to as adversarial machine learning (AML). This special kind of attack has already been demonstrated in recent studies and in multiple domains. In this paper, we present a systematic AML threat analysis for O-RAN. We start by reviewing relevant ML use cases and analyzing the different ML workflow deployment scenarios in O-RAN. Then, we define the threat model, identifying potential adversaries, enumerating their adversarial capabilities, and analyzing their main goals. Next, we explore the various AML threats associated with O-RAN and review a large number of attacks that can be performed to realize these threats and demonstrate an AML attack on a traffic steering model. In addition, we analyze and propose various AML countermeasures for mitigating the identified threats. Finally, based on the identified AML threats and countermeasures, we present a methodology and a tool for performing risk assessment for AML attacks for a specific ML use case in O-RAN.
翻译:O-RAN是一个新的、开放的、适应性的和智能的RAN结构。在其他领域人工智能的成功推动下,O-RAN努力利用机器学习(ML),在交通指导、经验预测质量和异常检测等多种使用案例中自动和高效地管理网络资源。不幸的是,事实证明,以ML为基础的系统容易受到称为对抗机器学习(AML)的攻击技术的伤害。这种特殊类型的攻击已经在近期的研究和多个领域中表现出来。我们在本文件中为O-RAN提供了系统的AML威胁分析。我们首先审查相关的ML使用案例,分析O-RAN不同的ML工作流程部署情景。然后,我们界定威胁模式,确定潜在的对手,总结其对抗能力,分析其主要目标。接下来,我们探讨与O-RAN有关的各种AML威胁,并审查为认识这些威胁而可以实施的大量攻击,并展示对交通指导模型的AML攻击。此外,我们分析并提议各种AML反措施的应对措施,以目前确定的威胁和ML攻击风险的方法为基础,进行我们所查明的A-L攻击的具体方法。</s>