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Moving Target Defense for In-Vehicle Software-Defined Networking: IP Shuffling in Network Slicing with Multiagent Deep Reinforcement Learning

机译:车载软件定义网络的移动目标防御:利用多主体深度强化学习的网络切片中的IP改组

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Moving target defense (MTD) is an emerging defense principle that aims to dynamically change attack surface to confuse attackers. By dynamic reconfiguration, MTD intends to invalidate the attacker's intelligence or information collection during reconnaissance, resulting in wasted resources and high attack cost/complexity for the attacker. One of the key merits of MTD is its capability to offer 'affordable defense,' by working with legacy defense mechanisms, such as intrusion detection systems (IDS) or other cryptographic mechanisms. On the other hand, a well-known drawback of MTD is the additional overhead, such as reconfiguration cost and/or potential interruptions of service availability to normal users. In this work, we aim to develop a highly secure, resilient, and affordable MTD-based proactive defense mechanism, which achieves multiple objectives of minimizing system security vulnerabilities and defense cost while maximizing service availability. To this end, we propose a multi-agent Deep Reinforcement Learning (mDRL)-based network slicing technique that can help determine two key resource management decisions: (1) link bandwidth allocation to meet Quality-of-Service requirements and (2) the frequency of triggering IP shuffling as an MTD operation not to hinder service availability by maintaining normal system operations. Specifically, we apply this strategy in an in-vehicle network that uses software-defined networking (SDN) technology to deploy the IP shuffling-based MTD, which dynamically changes IP addresses assigned to electronic control unit (ECU) nodes to introduce uncertainty or confusion for attackers.
机译:移动目标防御(MTD)是一种新兴的防御原理,旨在动态改变攻击面以使攻击者感到困惑。通过动态重新配置,MTD打算使侦察过程中的攻击者的情报或信息收集无效,从而导致资源浪费和攻击者较高的攻击成本/复杂性。 MTD的主要优点之一是通过与传统防御机制(例如入侵检测系统(IDS)或其他密码机制)合作提供“负担得起的防御”的能力。另一方面,MTD的一个众所周知的缺点是额外的开销,例如重新配置成本和/或对正常用户的服务可用性的潜在中断。在这项工作中,我们旨在开发一种高度安全,有弹性且价格合理的基于MTD的主动防御机制,该机制可实现多个目标,即最小化系统安全漏洞和防御成本,同时最大化服务可用性。为此,我们提出了一种基于多代理深度强化学习(mDRL)的网络切片技术,该技术可帮助确定两个关键的资源管理决策:(1)链路带宽分配以满足服务质量要求,以及(2)作为MTD操作触发IP改组的频率不会通过维持正常的系统操作而妨碍服务可用性。具体来说,我们将此策略应用在车载网络中,该网络使用软件定义的网络(SDN)技术来部署基于IP改组的MTD,该MTD可动态更改分配给电子控制单元(ECU)节点的IP地址,从而带来不确定性或混乱对于攻击者。

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