A System and Architecture for Reusable Abstractions of Manufacturing Processes
Published in 2016 IEEE International Conference on Big Data (Big Data), 2016
Recommended citation: A. Brodsky, M. Krishnamoorthy, W. Z. Bernstein, and M. O. Nachawati, A System and Architecture for Reusable Abstractions of Manufacturing Processes. In Proceedings of the 2016 IEEE International Conference on Big Data, Washington DC. December 2016. https://doi.org/10.1109/BigData.2016.7840823
In this paper we report on the development of a system for managing a repository and conducting analysis and optimization on manufacturing performance models. The repository is designed to contain (1) unit manufacturing process performance models, (2) composite performance models representing production cells, lines, and facilities, (3) domain specific analytical views, and (4) ontologies and taxonomies. Initial implementation includes performance models for milling and drilling as well as a composite performance model for machining. These performance models formally capture (1) the metrics of energy consumption, CO 2 emissions, tool wear, and cost as a function of process controls and parameters, and (2) the process feasibility constraints. The initial scope of the system includes (1) an Integrated Development Environment and its interface, and (2) simulation and deterministic optimization of performance models through the use of Unity Decision Guidance Management System.
Recommended citation: A. Brodsky, M. Krishnamoorthy, W. Z. Bernstein, and M. O. Nachawati, A System and Architecture for Reusable Abstractions of Manufacturing Processes. In Proceedings of the 2016 IEEE International Conference on Big Data, Washington DC. December 2016.