ROAISep 14, 2025

Embodied Intelligence in Disassembly: Multimodal Perception Cross-validation and Continual Learning in Neuro-Symbolic TAMP

arXiv:2509.11270v11 citationsh-index: 82025 IEEE 21st International Conference on Automation Science and Engineering (CASE)
Originality Highly original
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This addresses the critical challenge of autonomous disassembly in industrial applications like new energy vehicle battery recycling, representing a new paradigm rather than incremental work.

This paper tackles the problem of robotic perception robustness in dynamic unstructured disassembly scenarios for power battery recycling, achieving a task success rate improvement from 81.68% to 100% and reducing perception misjudgments from 3.389 to 1.128.

With the rapid development of the new energy vehicle industry, the efficient disassembly and recycling of power batteries have become a critical challenge for the circular economy. In current unstructured disassembly scenarios, the dynamic nature of the environment severely limits the robustness of robotic perception, posing a significant barrier to autonomous disassembly in industrial applications. This paper proposes a continual learning framework based on Neuro-Symbolic task and motion planning (TAMP) to enhance the adaptability of embodied intelligence systems in dynamic environments. Our approach integrates a multimodal perception cross-validation mechanism into a bidirectional reasoning flow: the forward working flow dynamically refines and optimizes action strategies, while the backward learning flow autonomously collects effective data from historical task executions to facilitate continual system learning, enabling self-optimization. Experimental results show that the proposed framework improves the task success rate in dynamic disassembly scenarios from 81.68% to 100%, while reducing the average number of perception misjudgments from 3.389 to 1.128. This research provides a new paradigm for enhancing the robustness and adaptability of embodied intelligence in complex industrial environments.

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