A Semantic Model Framework for the Cyber‐Physical Production System in the Systems Engineering Perspective

Insight ◽  
2021 ◽  
Vol 24 (4) ◽  
pp. 16-17
Author(s):  
Puviyarasu SA ◽  
Catherine da Cunha
2021 ◽  
Author(s):  
Zhongyu Zhang ◽  
Zhenjie Zhu ◽  
Jinsheng Zhang ◽  
Jingkun Wang

Abstract With the drastic development of the globally advanced manufacturing industry, transition of the original production pattern from traditional industries to advanced intelligence is completed with the least delay possible, which are still facing new challenges. Because the timeliness, stability and reliability of them is significantly restricted due to lack of the real-time communication. Therefore, an intelligent workshop manufacturing system model framework based on digital twin is proposed in this paper, driving the deep inform integration among the physical entity, data collection, and information decision-making. The conceptual and obscure of the traditional digital twin is refined, optimized, and upgraded on the basis of the four-dimension collaborative model thinking. A refined nine-layer intelligent digital twin model framework is established. Firstly, the physical evaluation is refined into entity layer, auxiliary layer and interface layer, scientifically managing the physical resources as well as the operation and maintenance of the instrument, and coordinating the overall system. Secondly, dividing the data evaluation into the data layer and the processing layer can greatly improve the flexible response-ability and ensure the synchronization of the real-time data. Finally, the system evaluation is subdivided into information layer, algorithm layer, scheduling layer, and functional layer, developing flexible manufacturing plan more reasonably, shortening production cycle, and reducing logistics cost. Simultaneously, combining SLP and artificial bee colony are applied to investigate the production system optimization of the textile workshop. The results indicate that the production efficiency of the optimized production system is increased by 34.46%.


2015 ◽  
Vol 63 (10) ◽  
Author(s):  
Roman Dumitrescu ◽  
Christian Bremer ◽  
Arno Kühn ◽  
Ansgar Trächtler ◽  
Tanja Frieben

AbstractThis contribution applies methods and languages of Model-Based Systems Engineering to the field of production system engineering. The goal is an integrated modeling of objects, processes and systems. This approach improves knowledge transfer between the stakeholders involved and enables model-based design and verification.


2020 ◽  
Vol 14 (3) ◽  
pp. 360-364
Author(s):  
Viktor Ložar ◽  
Filip Abdulaj ◽  
Tihomir Opetuk ◽  
Neven Hadžić ◽  
Hrvoje Cajner

Production lines can be designed by an analytical, semi-analytical, or numerical approach. This paper gives a brief introduction to the analytical approach of a single buffer line, the aggregation method, and the analytical approach of a multi-buffer line. An automotive paint shop production system will be used as a figurative example to compare the aggregation method and the recently developed analytical approach for a multi-buffer line. A discussion at the end will show the advantages and disadvantages of the analytical approach.


Author(s):  
CHRISTIAN CLEMENTZ ◽  
CLAUDE POURCEL

Production systems engineering is made easier thanks to the potential schematizing of the various processes at work. Monitoring these processes enables to come up to our expectations. In this paper, we are trying to show that an educational establishment functions like any production system as far as processes are concerned. We voluntarily mask the practical working of a class in order to identify more clearly the working of a knowledge and skills pattern. Here we want to put forward a pattern as well as an approach capable of identifying the processes at work in any educational establishment.


2020 ◽  
Vol 43 ◽  
Author(s):  
Valerie F. Reyna ◽  
David A. Broniatowski

Abstract Gilead et al. offer a thoughtful and much-needed treatment of abstraction. However, it fails to build on an extensive literature on abstraction, representational diversity, neurocognition, and psychopathology that provides important constraints and alternative evidence-based conceptions. We draw on conceptions in software engineering, socio-technical systems engineering, and a neurocognitive theory with abstract representations of gist at its core, fuzzy-trace theory.


Sign in / Sign up

Export Citation Format

Share Document