Incremental Learning for Improved Decision Support in Knowledge Based Design Systems

Author(s):  
K. Milzner ◽  
A. Harbecke
1995 ◽  
Vol 7 (5) ◽  
pp. 740-750
Author(s):  
Huan Liu ◽  
C.D. Rowles ◽  
W.X. Wen

2021 ◽  
Vol 143 (7) ◽  
Author(s):  
Ru Wang ◽  
Jelena Milisavljevic-Syed ◽  
Lin Guo ◽  
Yu Huang ◽  
Guoxin Wang

Abstract The automation and intelligence highlighted in Industry 4.0 put forward higher requirements for reasonable trade-offs between humans and machines for decision-making governance. However, in the context of Industry 4.0, the vision of decision support for design engineering is still unclear. Additionally, the corresponding methods and system architectures are lacking to support the realization of value-chain-centric complex engineered systems design lifecycles. Hence, we identify decision support demands for complex engineered systems designs in the Industry 4.0 era, representing the integrated design problems at various stages of the product value chain. As a response, in this paper, the architecture of a Knowledge-Based Design Guidance System (KBDGS) for cloud-based decision support (CBDS) is presented that highlights the integrated management of complexity, uncertainty, and knowledge in designing decision workflows, as well as systematic design guidance to find satisfying solutions with the iterative process “formulation-refinement-exploration-improvement” (FREI). The KBDGS facilitates diverse multi-stakeholder collaborative decisions in end-to-end cloud services. Finally, two design case studies are conducted to illustrate the proposed work and the efficacy of the developed KBDGS. The contribution of this paper is to provide design guidance to facilitate knowledge discovery, capturing, and reuse in the context of decision-centric digital design, thus improving the efficiency and effectiveness of decision-making, as well as the evolution of decision support in the field of design engineering for the age of Industry 4.0 innovation paradigm.


Author(s):  
Flávio M. Varejão ◽  
Crediné S. De Menezes ◽  
Ana Cristina B. Garcia ◽  
Clarisse S. De Souza ◽  
Markus P. J. Fromherz

Author(s):  
Ralf Huber ◽  
Hans Grabowski ◽  
Takashi Kiriyama ◽  
Sigeru Yoneda ◽  
Aylmer Johnson ◽  
...  

Abstract Micromachine technology has developed in recent years significantly and become an outstanding research field with remarkable results. In the past, several new products resulted, mainly related with sensors, actuators, and medical apparatus. The characteristics of micromachines are given by the interaction of miniaturised mechanical and electronic components, which are manufactured by methods originally developed for semiconductor production. These characteristics of micromachines are taken as occasion to investigate the possibilities of supporting the micromachine design process with knowledge based systems. After a short introduction into knowledge based design systems and design methodologies, a case study on the micromachine design is presented. We will mainly examine the conceptual design stage based on the methodological design. From the case study, specific requirements for a design environment to support the micromachine design process are derived. These requirements are compared with the capabilities offered by today’s concepts for advanced design systems such as SYSFUND. Then, the necessary enhancement for SYSFUND that was found in the process of knowledge representation is described. Finally an extended concept for a micromachine design environment is discussed.


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