Q-FE: A Quantum-Native 6G Far-Edge Architecture Securing Industrial IoT Digital Twins via CSIDH-PQC and Asynchronous Federated Learning

2026-06-02Cryptography and Security

Cryptography and SecurityEmerging Technologies
AI summary

The authors propose Q-FE, a new design for 6G wireless networks aimed at supporting fast and reliable Industrial IoT devices with strong security against future quantum hackers. They move some digital twin computations closer to the devices to reduce delays, use a special compact quantum-safe key exchange method embedded in network frames, and improve learning of device models with a smart, asynchronous process that protects data and stops attacks. Their simulations show Q-FE lowers network overhead, keeps latency very low, speeds up learning, and is resilient against various security threats. Overall, their approach aims to meet the strict speed, reliability, and security needs of advanced industrial wireless systems.

6G wireless networksIndustrial IoTDigital Twinpost-quantum cryptographyCSIDH-512MAC layerFederated LearningAsynchronous protocolsURLLC latencySybil attacks
Authors
Vincenzo Sammartino
Abstract
Sixth-generation (6G) wireless networks will underpin ultra-dense Industrial IoT (IIoT) ecosystems in which resource-constrained Far-Edge devices -- autonomous mobile robots, industrial actuators, connected vehicles -- must simultaneously satisfy sub-millisecond latency, $10^{-7}$-class reliability, and decades-long cryptographic security. Current architectures delegate Digital Twin (DT) computation to centralised cloud or Mobile Edge Computing (MEC) servers, incurring prohibitive round-trip latency, and rely on classical public-key cryptography vulnerable to quantum attacks under the harvest-now, decrypt-later (HNDL) threat model. We propose Q-FE, a Quantum-Native 6G Far-Edge architecture integrating three co-designed components: (i) Micro-Digital Twins ($μ$DTs) co-located with 6G base stations and high-capability endpoints; (ii) a Cross-Layer Post-Quantum Key Exchange module embedding CSIDH-512 isogeny key material directly within MAC-layer control frames, exploiting the scheme's uniquely compact keys ($\le 64$ bytes) to avoid packet fragmentation; and (iii) an Asynchronous Federated Learning (AFL) protocol governed by lightweight DAG smart contracts at MEC nodes, eliminating straggler bottlenecks and preventing model-poisoning and Sybil attacks without exposing raw data. End-to-end simulations (NS-3 + PySyft) demonstrate that Q-FE reduces MAC-layer overhead by 62% versus ML-KEM/Kyber-1024, maintains P99.9 URLLC latency at 0.78 ms, and accelerates global-model convergence by 31% over synchronous Federated Learning. Protocol complexity analysis confirms $O(N \log R)$ per aggregation round, and $μ$DT handover migration completes in $1.9 \pm 0.3$ ms across $10^4$ simulated events. A formal threat model confirms resilience against quantum eavesdropping, model-poisoning, and Sybil attacks.