LLM-Guided Safety Agent for Edge Robotics with an ISO-Compliant Perception-Compute-Control Architecture

arXiv cs.RO / 4/23/2026

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Key Points

  • The paper introduces an LLM-guided safety agent for edge robotics to bridge the gap between probabilistic AI perception and industrial standards that demand deterministic behavior.
  • It uses an ISO-compliant, low-latency perception–compute–control architecture that turns natural-language safety regulations into executable predicates for robot execution.
  • The system is deployed on a redundant heterogeneous edge runtime, using symmetric dual-modular redundancy with parallel independent perception, computation, and control to enable fault-tolerant closed-loop operation.
  • A prototype on a dual-RK3588 edge platform is evaluated in human–robot interaction scenarios, showing a practical route toward ISO 13849 Category 3 and PL d with cost-effective hardware.
  • Overall, the work targets safe deployment of embodied AI in real edge settings by combining LLM guidance with deterministic, standards-oriented control mechanisms.

Abstract

Ensuring functional safety in human-robot interaction is challenging because AI perception is inherently probabilistic, whereas industrial standards require deterministic behavior. We present an LLM-guided safety agent for edge robotics, built on an ISO-compliant low-latency perception-compute-control architecture. Our method translates natural-language safety regulations into executable predicates and deploys them through a redundant heterogeneous edge runtime. For fault-tolerant closed-loop execution under edge constraints, we adopt a symmetric dual-modular redundancy design with parallel independent execution for low-latency perception, computation, and control. We prototype the system on a dual-RK3588 platform and evaluate it in representative human-robot interaction scenarios. The results demonstrate a practical edge implementation path toward ISO 13849 Category 3 and PL d using cost-effective hardware, supporting practical deployment of safety-critical embodied AI.