Application for manufacturing systems served by collaborative robots monitoring

E. Minca, Otilia Elena Dragomir, Florin Dragomir, V. Stefan
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引用次数: 3

Abstract

The article proposes an improvement tool, Petri Nets type, dedicated to hierarchical recurrent systems modeling. This tool can be implemented in manufacturing systems served by collaborative robots if the recurrent modeling function is structured on hierarchical levels. Each level is similar with previous ones, from superior hierarchical level, but has allocated different time intervals. In low hierarchical levels, those intervals are bigger, decreasing detection accuracy. Hierarchical levels are interfaced by LIFO module and OOPN (Object Oriented Petri Nets). This new approach base on temporal hierarchical structure, refined monitoring function modeling. On each horizontal level is proposed an elementary detection model, but transitions are associated with external events synchronized with fault occurrence, expected specific temporal windows. Not all the external events may occur in the assigned intervals so the model is designed to evolve to the next level, and to preserve / transferring its set of detected external events. The model evolution is made on every horizontal level, until the node where detection is finished, and moves to the next level.
协同机器人监控在制造系统中的应用
本文提出了一种改进工具,Petri网类型,专门用于分层循环系统建模。如果将循环建模功能按层次结构构建,则该工具可以在协作机器人服务的制造系统中实现。每一层都与前一层相似,从更高的层次出发,但分配了不同的时间间隔。在低层次层次中,这些间隔更大,从而降低了检测精度。分层层由LIFO模块和OOPN(面向对象的Petri网)接口。该方法基于时间层次结构,对监控功能建模进行了细化。在每个水平层上提出了一个基本的检测模型,但转换与与故障发生同步的外部事件相关联,期望特定的时间窗口。并非所有外部事件都可能在指定的时间间隔内发生,因此模型被设计为发展到下一个级别,并保留/传输其检测到的外部事件集。模型在每个水平级别上进行演化,直到检测完成的节点,并移动到下一个级别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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