Title
An approach for composing predictive models from disparate knowledge sources in smart manufacturing environments
Abstract
This paper describes an approach that can compose predictive models from disparate knowledge sources in smart manufacturing environments. The capability to compose disparate models of individual manufacturing components with disparate knowledge sources is necessary in manufacturing industry, because this capability enables us to understand, monitor, analyze, optimize, and control the performance of the system made up of those components. It is based on the assumption that the component models and component sources used in any particular composition can be represented using the same collection of system ‘viewpoints’. With this assumption, creating this integrated collection is much easier than it would be. This composition capability provides the foundation for the ability to predict the performance of the system from the performances of its components—called compositionality. Compositionality is the key to solve decision-making/optimization problems related to that system-level prediction. For those problems, compositionality can be achieved using a three-tiered, abstraction architecture. The feasibility of this approach is demonstrated in an example in which a multi-criteria decision making method is used to determine the optimal process parameters in an additive manufacturing process.
Year
DOI
Venue
2019
10.1007/s10845-017-1366-7
Journal of Intelligent Manufacturing
Keywords
Field
DocType
Smart manufacturing, Data analytics, Compositionality, Decision making, Additive manufacturing
Principle of compositionality,Smart manufacturing,Architecture,Abstraction,Manufacturing,Data analysis,Viewpoints,Artificial intelligence,Engineering,Optimization problem,Machine learning
Journal
Volume
Issue
ISSN
30.0
4.0
1572-8145
Citations 
PageRank 
References 
1
0.35
6
Authors
1
Name
Order
Citations
PageRank
Duck Bong Kim1113.84