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Detection of Anomalous Communications with SDRs and Unsupervised Adversarial Learning

机译:使用SDR和无监督对抗学习来检测异常通信

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Software-defined radios (SDRs) with substantial cognitive (computing) and networking capabilities provide an opportunity for observing radio communications in an area and potentially identifying malicious rogue agents. Assuming a prevalence of encryption methods, a cognitive network of such SDRs can be used as a low-cost and flexible scanner/sensor array for distributed detection of anomalous communications by focusing on their statistical characteristics. Identifying rogue agents based on their wireless communications patterns is not a trivial task, especially when they deliberately try to mask their activities. We address this problem using a novel framework that utilizes adversarial learning, non-linear data transformations to minimize the rogue agent's attempts at masking their activities, and game theory to predict the behavior of rogue agents and take the necessary countermeasures.
机译:具有实质性认知(计算)和联网功能的软件定义无线电(SDR)为观察区域中的无线电通信并潜在地识别恶意流氓代理提供了机会。假设普遍使用加密方法,则此类SDR的认知网络可以通过关注其统计特性,用作低成本,灵活的扫描仪/传感器阵列,用于分布式检测异常通信。根据他们的无线通信模式来识别恶意代理并不是一件容易的事,尤其是当他们故意掩盖其活动时。我们使用一个新颖的框架来解决这个问题,该框架利用对抗性学习,非线性数据转换来最大程度地减少恶意代理掩盖其活动的企图,并使用博弈论来预测恶意代理的行为并采取必要的对策。

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