
Smarter Robot Planning with LLMs
Decomposed planning improves efficiency and feasibility for long-term robot tasks
DELTA introduces a novel decomposed planning approach that leverages Large Language Models to make robot task planning more effective and efficient.
- Addresses LLM hallucination issues by decomposing complex long-term tasks into manageable subtasks
- Significantly improves plan feasibility in robotics applications
- Enhances computational efficiency through targeted replanning strategies
- Validates effectiveness through experiments in both simulated and real-world factory environments
This research advances engineering capabilities for industrial automation by enabling robots to handle complex, long-term tasks with greater reliability and contextual awareness, potentially reducing implementation costs and expanding automation possibilities.
DELTA: Decomposed Efficient Long-Term Robot Task Planning using Large Language Models