Embodied intelligent industrial robotics: Framework and techniques
Chaoran Zhang, Chenhao Zhang, Zhaobo Xu, Qinghongbing Xie, Jinliang Hou, Pingfa Feng, Long Zeng

TL;DR
This paper reviews the evolution of industrial robotics, proposes a new knowledge-driven framework for embodied intelligent industrial robotics (EIIR), and demonstrates its applicability through a real-world assembly case study, highlighting future challenges.
Contribution
It introduces a comprehensive EIIR framework with five modules, integrating recent technological advances for industrial applications, and discusses future research directions.
Findings
The EIIR framework effectively models industrial environments.
Recent progress enables better adaptation of EIIR to real-world tasks.
Case study demonstrates practical applicability of the proposed framework.
Abstract
The combination of embodied intelligence and robots has great prospects and is becoming increasingly common. In order to work more efficiently, accurately, reliably, and safely in industrial scenarios, robots should have at least general knowledge, working-environment knowledge, and operating-object knowledge. These pose significant challenges to existing embodied intelligent robotics (EIR) techniques. Thus, this paper first briefly reviews the history of industrial robotics and analyzes the limitations of mainstream EIR frameworks. Then, a new knowledge-driven technical framework of embodied intelligent industrial robotics (EIIR) is proposed for various industrial environments. It has five modules: a world model, a high-level task planner, a low-level skill controller, a simulator, and a physical system. The development of techniques related to each module are also thoroughly reviewed,…
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Taxonomy
TopicsRobot Manipulation and Learning
