Individually reinforcing the robustness of a single deep learning model only gives limited security guarantees especially when facing adversarial examples. In this paper, we propose DeSVig, a Decentralized Swift Vigilance framework to identify adversarial attacks in an industrial artificial intelligence systems (IAISs), which enables IAISs to correct the mistake in a few seconds. DeSVig is highly decentralized, which improves the effectiveness of recognizing abnormal inputs. We try to overcome the challenges on ultra-low latency caused by dynamics in industries using peculiarly-designated mobile edge computing and generative adversarial networks (GANs). The most important advantage of our work is that it can significantly reduce the failure risks of being deceived by adversarial examples, which is critical for safety-prioritized and delay-sensitive environments.In our experiments, adversarial examples of industrial electronic components are generated by several classical attacking models. Experimental results demonstrate the DeSVig is more robust, efficient, and scalable than some state-of-art defences.
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