Section 01
[Introduction] LLM-Enabled Capability-Based Planning System: An Intelligent Assistant for Industrial Automation
This article introduces a hybrid auxiliary system that combines large language models (LLMs) with symbolic planning, aiming to address the interpretability and adaptability issues of capability-based planning in industrial automation scenarios. The system adopts a layered architecture: an SMT solver serves as the underlying layer to ensure planning correctness, while the LLM acts as a natural language interaction layer to handle user intentions and result interpretation. A human-in-the-loop mechanism is also introduced to ensure the controllability of knowledge model adjustments. This system has demonstrated good reliability and adaptability in modular production system tests, providing an intelligent assistant solution for industrial automation planning.