Towards autonomous system: flexible modular production system enhanced with large language model agents

April 28, 2023 ยท Declared Dead ยท ๐Ÿ› IEEE International Conference on Emerging Technologies and Factory Automation

๐Ÿฆด CAUSE OF DEATH: Skeleton Repo
Boilerplate only, no real code

Repo contents: 1min_DemoVideo_GPT4IndustrialAutomation.mp4, 30s_Prompt_GPT4IndustrialAutomation.mp4, LICENSE, README.md, event_based_control.gif, event_log_multi_threads.txt, models_evaluation.png, system_automation_pyramid.png, system_overview.png, test_points.json

Authors Yuchen Xia, Manthan Shenoy, Nasser Jazdi, Michael Weyrich arXiv ID 2304.14721 Category cs.RO: Robotics Cross-listed cs.CL, cs.SE, eess.SY Citations 91 Venue IEEE International Conference on Emerging Technologies and Factory Automation Repository https://github.com/YuchenXia/GPT4IndustrialAutomation โญ 31 Last Checked 1 month ago
Abstract
In this paper, we present a novel framework that combines large language models (LLMs), digital twins and industrial automation system to enable intelligent planning and control of production processes. We retrofit the automation system for a modular production facility and create executable control interfaces of fine-granular functionalities and coarse-granular skills. Low-level functionalities are executed by automation components, and high-level skills are performed by automation modules. Subsequently, a digital twin system is developed, registering these interfaces and containing additional descriptive information about the production system. Based on the retrofitted automation system and the created digital twins, LLM-agents are designed to interpret descriptive information in the digital twins and control the physical system through service interfaces. These LLM-agents serve as intelligent agents on different levels within an automation system, enabling autonomous planning and control of flexible production. Given a task instruction as input, the LLM-agents orchestrate a sequence of atomic functionalities and skills to accomplish the task. We demonstrate how our implemented prototype can handle un-predefined tasks, plan a production process, and execute the operations. This research highlights the potential of integrating LLMs into industrial automation systems in the context of smart factory for more agile, flexible, and adaptive production processes, while it also underscores the critical insights and limitations for future work. Demos at: https://github.com/YuchenXia/GPT4IndustrialAutomation
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