Capability Indices for Digitized Industries: A Review and Outlook of Machine Learning Applications for Predictive Process Control

被引:1
|
作者
Mayer, Jan [1 ]
Jochem, Roland [1 ]
机构
[1] Tech Univ Berlin, Fac Mech Engn & Transport Syst, Pascsalstr 8-9, D-10587 Berlin, Germany
关键词
predictive process control; statistical process control; machine learning; process management; quality management; PROCESS OPTIMIZATION; QUALITY; MODEL; METHODOLOGY; IMPROVEMENT; MANAGEMENT; ALGORITHMS;
D O I
10.3390/pr12081730
中图分类号
TQ [化学工业];
学科分类号
0817 ;
摘要
Leveraging machine learning applications for predictive process control signifies a decisive advancement in manufacturing quality management, transitioning from traditional descriptive to predictive capability indices. This review highlights the growing importance of predictive process control, essential for quality assurance and the dynamic adaptability of production lines, which is paramount in satisfying stringent quality standards and evolving consumer demands. The investigation into the integration of comprehensive sensor networks and sophisticated algorithmic analytics enriches continuous improvement strategies, markedly enhancing the accuracy and efficiency of production quality monitoring and control mechanisms. By moving beyond the limits of statistical process control to predictive methods enabled by machine learning algorithms, the study presents a transformative leap in manufacturing processes. The presented findings illustrate the critical role of predictive algorithms in navigating the complexities of process variability, thereby ensuring consistent adherence to established quality specifications. This approach not only facilitates immediate and accurate product quality categorization, increasing overall operational efficiency, but also equips manufacturers to swiftly respond to the variable nature of manufacturing requirements. Furthermore, this research delves into the multifaceted impacts of predictive process control on the manufacturing ecosystem. The ability to predict process quality decrease before it occurs, the optimization of resource allocation, and the anticipation of production bottlenecks before they impact output are among the notable benefits of this technological evolution. These developments to predictive process control is instrumental in propelling the manufacturing industry toward a more agile, sustainable, and customer-centric future. This shift not only complements the industry's drive toward comprehensive digitization but also promises significant strides in achieving superior process improvements and maintaining a competitive edge on the global market.
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页数:20
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