Towards Developing Big Data Analytics for Machining Decision-Making

IF 3.3 Q2 ENGINEERING, MANUFACTURING Journal of Manufacturing and Materials Processing Pub Date : 2023-09-02 DOI:10.3390/jmmp7050159
Angkush Kumar Ghosh, Saman Fattahi, Sharifu Ura
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Abstract

This paper presents a systematic approach to developing big data analytics for manufacturing process-relevant decision-making activities from the perspective of smart manufacturing. The proposed analytics consist of five integrated system components: (1) Data Preparation System, (2) Data Exploration System, (3) Data Visualization System, (4) Data Analysis System, and (5) Knowledge Extraction System. The functional requirements of the integrated system components are elucidated. In addition, JAVA™- and spreadsheet-based systems are developed to realize the proposed system components. Finally, the efficacy of the analytics is demonstrated using a case study where the goal is to determine the optimal material removal conditions of a dry Electrical Discharge Machining operation. The analytics identified the variables (among voltage, current, pulse-off time, gas pressure, and rotational speed) that effectively maximize the material removal rate. It also identified the variables that do not contribute to the optimization process. The analytics also quantified the underlying uncertainty. In summary, the proposed approach results in transparent, big-data-inequality-free, and less resource-dependent data analytics, which is desirable for small and medium enterprises—the actual sites where machining is carried out.
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面向加工决策的大数据分析
本文从智能制造的角度提出了一种系统的方法来开发制造过程相关决策活动的大数据分析。所提出的分析由五个集成系统组成:(1)数据准备系统、(2)数据探索系统、(3)数据可视化系统、(4)数据分析系统和(5)知识提取系统。阐述了集成系统组件的功能要求。此外,JAVA™- 并开发了基于电子表格的系统来实现所提出的系统组件。最后,通过案例研究证明了分析的有效性,其中目标是确定干式放电加工操作的最佳材料去除条件。分析确定了有效地最大化材料去除率的变量(电压、电流、脉冲关闭时间、气压和转速)。它还确定了对优化过程没有贡献的变量。分析还量化了潜在的不确定性。总之,所提出的方法实现了透明、无大数据不平等和较少依赖资源的数据分析,这对于中小型企业(进行加工的实际场所)来说是可取的。
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来源期刊
Journal of Manufacturing and Materials Processing
Journal of Manufacturing and Materials Processing Engineering-Industrial and Manufacturing Engineering
CiteScore
5.10
自引率
6.20%
发文量
129
审稿时长
11 weeks
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