Neuromorphic Mimicry Attacks Exploiting Brain-Inspired Computing for Covert Cyber Intrusions
Journal:
arXiv
Published Date:
May 21, 2025
Abstract
Neuromorphic computing, inspired by the human brain's neural architecture, is
revolutionizing artificial intelligence and edge computing with its low-power,
adaptive, and event-driven designs. However, these unique characteristics
introduce novel cybersecurity risks. This paper proposes Neuromorphic Mimicry
Attacks (NMAs), a groundbreaking class of threats that exploit the
probabilistic and non-deterministic nature of neuromorphic chips to execute
covert intrusions. By mimicking legitimate neural activity through techniques
such as synaptic weight tampering and sensory input poisoning, NMAs evade
traditional intrusion detection systems, posing risks to applications such as
autonomous vehicles, smart medical implants, and IoT networks. This research
develops a theoretical framework for NMAs, evaluates their impact using a
simulated neuromorphic chip dataset, and proposes countermeasures, including
neural-specific anomaly detection and secure synaptic learning protocols. The
findings underscore the critical need for tailored cybersecurity measures to
protect brain-inspired computing, offering a pioneering exploration of this
emerging threat landscape.