Model-based engineering for the integration of manufacturing systems with advanced analytics

David Lechevalier, Anantha Narayanan, Sudarsan Rachuri, Sebti Foufou, Y. Tina Lee

Research output: Chapter in Book/Report/Conference proceedingConference contribution

Abstract

To employ data analytics effectively and efficiently on manufacturing systems, engineers and data scientists need to collaborate closely to bring their domain knowledge together. In this paper, we introduce a domain-specific modeling approach to integrate a manufacturing system model with advanced analytics, in particular neural networks, to model predictions. Our approach combines a set of meta-models and transformation rules based on the domain knowledge of manufacturing engineers and data scientists. Our approach uses a model of a manufacturing process and its associated data as inputs, and generates a trained neural network model as an output to predict a quantity of interest. This paper presents the domain-specific knowledge that the approach should employ, the formal workflow of the approach, and a milling process use case to illustrate the proposed approach. We also discuss potential extensions of the approach.

Original languageEnglish (US)
Title of host publicationProduct Lifecycle Management for Digital Transformation of Industries - 13th IFIP WG 5.1 International Conference, PLM 2016, Revised Selected Papers
PublisherSpringer New York LLC
Pages146-157
Number of pages12
ISBN (Print)9783319546599
DOIs
StatePublished - Jan 1 2016
Event13th IFIP WG 5.1 International Conference on Product Lifecycle Management for Digital Transformation of Industries, PLM 2016 - Columbia, United States
Duration: Jul 11 2016Jul 13 2016

Publication series

NameIFIP Advances in Information and Communication Technology
Volume492
ISSN (Print)1868-4238

Other

Other13th IFIP WG 5.1 International Conference on Product Lifecycle Management for Digital Transformation of Industries, PLM 2016
CountryUnited States
CityColumbia
Period7/11/167/13/16

Fingerprint

Manufacturing systems
Engineers
Domain knowledge
Neural networks
Rule-based
Metamodel
Milling
Manufacturing
Modeling
System model
Prediction model
Network model
Manufacturing process

Keywords

  • Data analytics
  • Manufacturing process
  • Meta-model
  • Neural network
  • Predictive modeling

ASJC Scopus subject areas

  • Information Systems and Management

Cite this

Lechevalier, D., Narayanan, A., Rachuri, S., Foufou, S., & Lee, Y. T. (2016). Model-based engineering for the integration of manufacturing systems with advanced analytics. In Product Lifecycle Management for Digital Transformation of Industries - 13th IFIP WG 5.1 International Conference, PLM 2016, Revised Selected Papers (pp. 146-157). (IFIP Advances in Information and Communication Technology; Vol. 492). Springer New York LLC. https://doi.org/10.1007/978-3-319-54660-5_14

Model-based engineering for the integration of manufacturing systems with advanced analytics. / Lechevalier, David; Narayanan, Anantha; Rachuri, Sudarsan; Foufou, Sebti; Lee, Y. Tina.

Product Lifecycle Management for Digital Transformation of Industries - 13th IFIP WG 5.1 International Conference, PLM 2016, Revised Selected Papers. Springer New York LLC, 2016. p. 146-157 (IFIP Advances in Information and Communication Technology; Vol. 492).

Research output: Chapter in Book/Report/Conference proceedingConference contribution

Lechevalier, D, Narayanan, A, Rachuri, S, Foufou, S & Lee, YT 2016, Model-based engineering for the integration of manufacturing systems with advanced analytics. in Product Lifecycle Management for Digital Transformation of Industries - 13th IFIP WG 5.1 International Conference, PLM 2016, Revised Selected Papers. IFIP Advances in Information and Communication Technology, vol. 492, Springer New York LLC, pp. 146-157, 13th IFIP WG 5.1 International Conference on Product Lifecycle Management for Digital Transformation of Industries, PLM 2016, Columbia, United States, 7/11/16. https://doi.org/10.1007/978-3-319-54660-5_14
Lechevalier D, Narayanan A, Rachuri S, Foufou S, Lee YT. Model-based engineering for the integration of manufacturing systems with advanced analytics. In Product Lifecycle Management for Digital Transformation of Industries - 13th IFIP WG 5.1 International Conference, PLM 2016, Revised Selected Papers. Springer New York LLC. 2016. p. 146-157. (IFIP Advances in Information and Communication Technology). https://doi.org/10.1007/978-3-319-54660-5_14
Lechevalier, David ; Narayanan, Anantha ; Rachuri, Sudarsan ; Foufou, Sebti ; Lee, Y. Tina. / Model-based engineering for the integration of manufacturing systems with advanced analytics. Product Lifecycle Management for Digital Transformation of Industries - 13th IFIP WG 5.1 International Conference, PLM 2016, Revised Selected Papers. Springer New York LLC, 2016. pp. 146-157 (IFIP Advances in Information and Communication Technology).
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