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Using the Soar Cognitive Architecture to Remove Screws From Different Laptop Models

机译:使用SOAR认知架构从不同的笔记本电脑模型中卸下螺钉

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摘要

This paper investigates an approach that uses the cognitive architecture Soar to improve the performance of an automated robotic system, which uses a combination of vision and force sensing to remove screws from laptop cases. Soar's long-term memory module, semantic memory, was used to remember pieces of information regarding laptop models and screw holes. The system was trained with multiple laptop models and the method in which Soar was used to facilitate the removal of screws was varied to determine the best performance of the system. In all the cases, Soar could determine the correct laptop model and in what orientation it was placed in the system. Soar was also used to remember what circle locations that were explored contained screws and what circles did not. Remembering the locations of the holes decreased a trial time by over 60%. The system performed the best when the number of training trials used to explore circle locations was limited, as this decreased the total trial time by over 10% for most of the laptop models and orientations.Note to Practitioners-Although the amount of discarded electronic waste in the world is rapidly increasing, efficient methods that can handle this in an automated non-destructive fashion have not been developed. Screws are a common fastener used on electronic products, such as laptops, and must be removed during nondestructive methods. In this paper, we focus on using the cognitive architecture Soar to facilitate the disassembly sequence of removing these screws from the back of laptops. Soar is able to differentiate between different models of laptops and store the locations of screws for these models leading to an improvement of the disassembly time when the same laptop model is used. Currently, this paper only uses one of Soar's long-term memory modules (semantic memory) and a screwdriver tool. However, this paper can be extended to use multiple tools by using different features available in Soar such as other long-term memory modules and substates.
机译:本文调查了一种使用认知架构飙升来提高自动机器人系统的性能的方法,该方法使用视觉和力传感的组合来拆下笔记本电脑案例的螺钉。 SOAR的长期内存模块,语义记忆,用于记住有关笔记本电脑型号和螺孔的信息。系统培训了多个笔记本电脑型号,并且使用SOAR的方法改变了螺钉的去除,以确定系统的最佳性能。在所有情况下,SOAR可以确定正确的笔记本电脑模型,并以其放置在系统中的哪种方向。飙升还用于记住探索螺钉的循环位置以及圆圈没有。记住孔的位置将试验时间减少超过60%。当用于探索圆形位置的培训试验的数量有限时,系统表现了最佳,因为大部分笔记本电脑模型和方向的培训试验的数量降低了超过10%的时间。注意到从业者 - 虽然丢弃的电子废物量在世界上正在迅速增加,可以以自动化的非破坏性方式处理这一点的有效方法尚未开发出来。螺钉是用于电子产品的普通紧固件,如笔记本电脑,并且必须在非破坏性方法中拆除。在本文中,我们专注于使用认知架构飙升,以便于从笔记本电脑背面移除这些螺钉的拆卸顺序。 SOAR能够区分不同型号的笔记本电脑,并将这些模型的螺钉存储螺钉的位置,导致使用相同的笔记本电脑型号时的拆卸时间。目前,本文仅使用SOAR的长期内存模块(语义记忆)和螺丝刀工具之一。但是,通过使用SOAR中可用的不同功能,可以扩展本文以使用多种工具,例如其他长期内存模块和代位。

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