网络物理生产系统中抛光过程的建模信息

IF 1.6 4区 计算机科学 Q3 AUTOMATION & CONTROL SYSTEMS International Journal of Applied Mathematics and Computer Science Pub Date : 2022-09-01 DOI:10.34768/amcs-2022-0025
J. Patalas-Maliszewska, Marco Posdzich, Katarzyna Skrzypek
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引用次数: 3

摘要

目前,制造业管理委员会应用的技术符合工业4.0的概念。信息物理生产系统(cps)意味着将计算过程与相应的物理过程相结合,即允许操作层面和战略层面的工作并行运行。本文提出了一个从生产过程(即抛光过程)中收集数据和信息的框架,以便实时监控与正确过程的偏差,从而减少制造过程中不良产品的数量。提出的新解决方案包括(i)从传感器获取的生产过程的数据和信息,(ii)基于生产过程中错误的Hellwig方法的预测模型,依赖于机器状态的指示,以及(iii)信息层系统,将实时获取的过程数据与企业资源规划(ERP)系统中用于预测生产过程中的错误的模型集成,即:业务智能模块。在管理实践中使用研究结果的可能性是通过实际抛光过程的应用来证明的。这个新框架可以被视为一种解决方案,它将帮助管理人员监控生产流程并实时响应中断。
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Modelling Information for the Burnishing Process in a Cyber–Physical Production System
Abstract Currently, the manufacturing management board applies technologies in line with the concept of Industry 4.0. Cyber-physical production systems (CPSs) mean integrating computational processes with the corresponding physical ones, i.e., allowing work at the operational level and at the strategic level to run side by side. This paper proposes a framework to collect data and information from a production process, namely, the burnishing one, in order to monitor real-time deviations from the correct course of the process and thus reduce the number of defective products within the manufacturing process. The proposed new solutions consist of (i) the data and information of the production process, acquired from sensors, (ii) a predictive model, based on the Hellwig method for errors in the production process, relying on indications of a machine status, and (iii) an information layer system, integrating the process data acquired in real time with the model for predicting errors within the production process in an enterprise resource planning (ERP) system, that is, the business intelligence module. The possibilities of using the results of research in managerial practice are demonstrated through the application of an actual burnishing process. This new framework can be treated as a solution which will help managers to monitor the production flow and respond, in real time, to interruptions.
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来源期刊
CiteScore
4.10
自引率
21.10%
发文量
0
审稿时长
4.2 months
期刊介绍: The International Journal of Applied Mathematics and Computer Science is a quarterly published in Poland since 1991 by the University of Zielona Góra in partnership with De Gruyter Poland (Sciendo) and Lubuskie Scientific Society, under the auspices of the Committee on Automatic Control and Robotics of the Polish Academy of Sciences. The journal strives to meet the demand for the presentation of interdisciplinary research in various fields related to control theory, applied mathematics, scientific computing and computer science. In particular, it publishes high quality original research results in the following areas: -modern control theory and practice- artificial intelligence methods and their applications- applied mathematics and mathematical optimisation techniques- mathematical methods in engineering, computer science, and biology.
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