基于智能边缘的工业通用强化学习控制框架系统

Kwihoon Kim, Yong-Geun Hong
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引用次数: 1

摘要

本文是针对制造领域解决方案的基于智能边缘的强化学习控制框架技术,其特点是大规模学习、可扩展的边缘分布技术,可应用于各种任务。本文提出了两项特征。首先在制造业中提出了通用强化学习框架(General Reinforcement Learning Framework, GRLF),其次在制造业中提出了基于GRLF的边缘求解技术。我们应用工业解决方案,如网格分拣系统为例。基于工业GRLF的网格分拣系统的结果是,当任何排放者随机接收到总共100件货物进入网格分拣系统时,所有货物都是100%准确的。它还对每一步大约0.5次交付进行分类。假设每秒钟执行一个步骤,这显示了每分钟对大约30个交付进行分类的效率。
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Industrial General Reinforcement Learning Control Framework System based on Intelligent Edge
This paper is about the intelligent edge-based reinforcement learning control framework technology for manufacturing field solution and features large-scale learning, scalable edge distribution technology that can be applied to various task. In this paper, two items are proposed as features. The first proposes the General Reinforcement Learning Framework(GRLF) in manufacturing, and the second proposes the edge solution technology based on the GRLF in manufacturing. We apply the industrial solution such as grid sorter system for example. As a result of the industrial GRLF based grid sorter system, it was confirmed that when a total of 100 deliveries are randomly received into the grid sorter system by any emitter, all shipments are 100% accurate. It also classifies approximately 0.5 deliveries per step. This shows the efficiency of classifying around 30 deliveries per minute, assuming a step is performed per second.
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