Sylvester Kaczmarek (Imperial College London)

Static defenses are brittle against the non-stationary threats common in long-duration space missions. We propose a framework for self-organizing resilience where a Spiking Neural Network (SNN) dynamically adapts its own structure to counter novel adversarial tactics. Governed by an informationtheoretic objective that balances representational fidelity against computational cost, the network autonomously grows or prunes neural populations to specialize against previously unseen threat signatures. We present preliminary results from a cislunar gateway case study where the adaptive SNN is subjected to a low-rate data injection attack designed to evade static detectors. The adaptive model successfully learned the new threat pattern, reducing per-window inference time by over 40% compared to its static counterpart, with no degradation in nominal performance. We provide explicit triggers, a two-stage commit with rollback, and an audit log, treating online adaptation as a security control bounded by runtime envelopes.

View More Papers

Decompiling the Synergy: An Empirical Study of Human–LLM Teaming...

Zion Leonahenahe Basque (Arizona State University), Samuele Doria (University of Padua), Ananta Soneji (Arizona State University), Wil Gibbs (Arizona State University), Adam Doupe (Arizona State University), Yan Shoshitaishvili (Arizona State University), Eleonora Losiouk (University of Padua), Ruoyu “Fish” Wang (Arizona State University), Simone Aonzo (EURECOM)

Read More

Bounded Autonomy in the SOC: Mitigating Hallucinations in Agentic...

Samuel Addington (California State University Long Beach)

Read More

Hiding an Ear in Plain Sight: On the Practicality...

Youqian Zhang (The Hong Kong Polytechnic University), Zheng Fang (The Hong Kong Polytechnic University), Huan Wu (The Hong Kong Polytechnic University & Technological and Higher Education Institute of Hong Kong), Sze Yiu Chau (The Chinese University of Hong Kong), Chao Lu (The Hong Kong Polytechnic University), Xiapu Luo (The Hong Kong Polytechnic University)

Read More