Abstract

Nowadays, a large number of intelligent devices involved in the industrial Internet of Things (IIoT) environment lead to unprecedented challenges in security. Due to limited resources with weak security protection, the IIoT devices can be easily compromised to launch distributed denial-of-service (DDoS) attacks, resulting in catastrophic results. Although there are many DDoS mitigations of traditional static schemes, the proactive defense method to resist attacks has not been well studied. Furthermore, existing proactive schemes ignored the delay-sensitive characteristic of applications under the IIoT environments. To address these issues, we first adopt two kinds of moving target defense (MTD) techniques that dynamically control the admission of devices and migrate service replicas to isolate attackers on limited edge clouds and mitigate DDoS attacks early near its source. Then, we formulate a multistage optimization problem of MTD mechanisms deployment and model it as constrained Markov decision processes in order to maximize the available resources of the system under the limitations of the IIoT environments. Besides, we present an MTD optimal strategy algorithm to solve decision problems in a cost-effective manner. In this article, the proposed algorithm can achieve an optimal admission allocation by means of attackers gathering within the same service where the service migration decisions are assisted by means of value iteration. The experimental results verify that the proposed algorithm, compared with existing strategies, can effectively mitigate DDoS attacks with acceptable degradation of the quality of service.

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