基于机器学习的装配线优化研究

Z. Peng, Fan Yadong, Liang Xiaowei, Chen Jingwen
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引用次数: 0

摘要

如何在短时间内对生产线工作进行广泛的问题分析和规范,其工作已成为企业提高工作效率的一大难点。本文以M公司轨道车辆装配为例进行作业优化。利用机器学习中的kmeans算法对作业数据进行聚类分析,识别作业中的共性和异常因素。建立不同的文本词典是为了规范文本的表达,有效地识别和消除非增值工作。机器学习的应用使管理人员更容易识别整条生产线的操作瓶颈,实现标准化操作,提高生产效率。Keywords-K-means算法;文本处理;工作标准化;没有附加值的操作
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Research on Assembly Line Optimization Based on Machine Learning
How to conduct a wide range of problem analysis on production line work in a short time and standardize, its work has become a major difficulty for enterprises to improve work efficiency. This paper takes M company's Rail car assembly as an example to conduct the job optimization. It uses the kmeans algorithm in machine learning to conduct clustering analysis on job data,Identify common and unusual factors in the assignment. Establishing different text dictionaries aims to normalize the expression of texts and help identify as well as remove non value-added work efficiently. Application of machine learning makes it easy for management personnel to identify the operational bottlenecks of the entire production line, achieve standardized operations, and improve production efficiency. Keywords-K-means Algorithm; Text processing; job standardization; Non-value-added Operations
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