Ontology Re-Engineering: A Case Study from the Automotive Industry

Authors

  • Nestor Rychtyckyj Ford Motor Company
  • Venkatesh Rama Ford Motor Company
  • Baskaran Sankaranarayanan Indian Institute of Technology Madras
  • P Sreenivasa Kumar Indian Institute of Technology Madras
  • Deepak Khemani Indian Institute of Technology Madras

DOI:

https://doi.org/10.1609/aaai.v30i2.19071

Abstract

For over twenty five years Ford has been utilizing an AI-based system to manage process planning for vehicle assembly at our assembly plants around the world. The scope of the AI system, known originally as the Direct Labor Management System and now as the Global Study Process Allocation System (GSPAS), has increased over the years to include additional functionality on Ergonomics and Powertrain Assembly (Engines and Transmission plants). The knowledge about Ford’s manufacturing processes is contained in an ontology originally developed using the KL-ONE representation language and methodology. To preserve the viability of the GSPAS ontology and to make it easily usable for other applications within Ford, we needed to re-engineer and convert the KL-ONE ontology into a semantic web OWL/RDF format. In this paper, we will discuss the process by which we re-engineered the existing GSPAS KL-ONE ontology and deployed Semantic Web technology in our application.

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Published

2016-02-18

How to Cite

Rychtyckyj, N., Rama, V., Sankaranarayanan, B., Kumar, P. S., & Khemani, D. (2016). Ontology Re-Engineering: A Case Study from the Automotive Industry. Proceedings of the AAAI Conference on Artificial Intelligence, 30(2), 3974-3981. https://doi.org/10.1609/aaai.v30i2.19071