基于微装配步骤的智能工厂操作员经验等级分类

Fatemeh Besharati Moghaddam, Angel J. Lopez, Stijn De Vuyst, S. Gautama
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引用次数: 3

摘要

在制造过程中对装配线进行跟踪以提供辅助是智能工业的基本要求之一。然而,在需要时,应向操作人员提供这些协助和指导。否则,在某些情况下,这可能被认为是傲慢的,例如,经验丰富的操作人员可能比初级操作人员需要更少的帮助。因此,为了在装配线上提供有针对性的指导和帮助,应该对操作员的经验水平进行不同的分类。在本文中,我们引入了三种场景来实现一个真实案例研究(来自工厂装配线的微步时间序列数据)中的操作员专家水平分类。我们实现了一个卷积神经网络模型用于时间序列分类,使用5个卷积层,最大池化层和5个带dropout的密集层来避免过拟合。我们将我们的方法的结果与基础事实以及其他分类器(如k近邻、随机森林和朴素贝叶斯分类器)进行比较。结果显示,在考虑的两种情况下,准确率分别为77 - 98%和71 - 88%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Operator's Experience-Level Classification Based on Micro-Assembly Steps for Smart Factories
Tracking assembly lines in manufacturing to provide assistance is one of the essential requirement in Smart Industry. Nevertheless, these given assistance and guidelines should be offered to operators when needed. Otherwise, it can be deemed patronising in some cases, e.g., experienced operators may require less assistance than junior operators. Therefore, to provide tailored guidance and assistance in assembly lines, the operators' experience-level should be classified at different levels. In this paper, we introduce three scenarios to achieve the classification of operators expert levels in a real case study (micro-step time-series data from a factory assembly line). We implement a Convolutional Neural Network model for time-series classification, using 5 convolutional layers, max-pooling layers and 5 dense layers with dropout to avoid overfitting. We compare the results of our approach with the ground truth and also with other classifiers as K-nearest neighbours, Random Forest and Naive Bayes classifier. Results show an accuracy of 77 to 98% and 71 to 88% for two of considered scenarios.
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