Robotic Agentic Platform for Intelligent Electric Vehicle Disassembly
Zachary Allen, Max Conway, Lyle Antieau, Allen Ponraj, and Nikolaus Correll

TL;DR
This paper introduces RAPID, a robotic platform for intelligent EV battery disassembly, combining perception, automation, and AI to improve efficiency and flexibility in recycling processes.
Contribution
It presents a novel open-source robotic disassembly platform with integrated perception, AI specifications, and evaluation of fastener removal strategies, advancing scalable EV battery recycling.
Findings
High detection accuracy with 0.9757 mAP50 for components
Fastener removal success rates: taught-in poses 97%, vision 57%, servoing 83%
Tool-based interfaces achieve 100% task completion
Abstract
Electric vehicles (EV) create an urgent need for scalable battery recycling, yet disassembly of EV battery packs remains largely manual due to high design variability. We present our Robotic Agentic Platform for Intelligent Disassembly (RAPID), designed to investigate perception-driven manipulation, flexible automation, and AI-assisted robot programming in realistic recycling scenarios. The system integrates a gantry-mounted industrial manipulator, RGB-D perception, and an automated nut-running tool for fastener removal on a full-scale EV battery pack. An open-vocabulary object detection pipeline achieves 0.9757 mAP50, enabling reliable identification of screws, nuts, busbars, and other components. We experimentally evaluate (n=204) three one-shot fastener removal strategies: taught-in poses (97% success rate, 24 min duration), one-shot vision execution (57%, 29 min), and visual…
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Taxonomy
TopicsRobot Manipulation and Learning · Manufacturing Process and Optimization · Robotic Path Planning Algorithms
