Disassembly, a process of separating the end of life (EOL) product into discrete components for re-utilizing their associated residual values, is an important enabler for the sustainable manufacturing. This work focuses on the modeling of the disassembly planning related information and develops a disassembly information model (DIM) based on an extensive investigation of various informational aspects in the domain of disassembly planning. The developed DIM, which represents an appropriate systematization and classification of the products, processes, uncertainties, and degradations related information, follows a layered modeling methodology in which DIM is subdivided into layers with the intent to separate general knowledge into different levels of abstractions and reach a balance between information reusability and information usability. Two prototype disassembly planning related applications have been incorporated to validate the usability and reusability of the developed DIM.
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June 2018
Research-Article
Modeling and Validation of a Web Ontology Language Based Disassembly Planning Information Model
Bicheng Zhu,
Bicheng Zhu
Department of Mechanical Engineering,
Syracuse University,
900 South Crouse Ave.,
Syracuse, NY 13244
e-mail: bizhu@syr.edu
Syracuse University,
900 South Crouse Ave.,
Syracuse, NY 13244
e-mail: bizhu@syr.edu
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Utpal Roy
Utpal Roy
Department of Mechanical Engineering,
Syracuse University,
900 South Crouse Ave.,
Syracuse, NY 13244
e-mail: uroy@syr.edu
Syracuse University,
900 South Crouse Ave.,
Syracuse, NY 13244
e-mail: uroy@syr.edu
Search for other works by this author on:
Bicheng Zhu
Department of Mechanical Engineering,
Syracuse University,
900 South Crouse Ave.,
Syracuse, NY 13244
e-mail: bizhu@syr.edu
Syracuse University,
900 South Crouse Ave.,
Syracuse, NY 13244
e-mail: bizhu@syr.edu
Utpal Roy
Department of Mechanical Engineering,
Syracuse University,
900 South Crouse Ave.,
Syracuse, NY 13244
e-mail: uroy@syr.edu
Syracuse University,
900 South Crouse Ave.,
Syracuse, NY 13244
e-mail: uroy@syr.edu
1Corresponding author.
Contributed by the Computers and Information Division of ASME for publication in the JOURNAL OF COMPUTING AND INFORMATION SCIENCE IN ENGINEERING. Manuscript received September 23, 2017; final manuscript received March 25, 2018; published online April 30, 2018. Editor: Satyandra K. Gupta.
J. Comput. Inf. Sci. Eng. Jun 2018, 18(2): 021015 (11 pages)
Published Online: April 30, 2018
Article history
Received:
September 23, 2017
Revised:
March 25, 2018
Citation
Zhu, B., and Roy, U. (April 30, 2018). "Modeling and Validation of a Web Ontology Language Based Disassembly Planning Information Model." ASME. J. Comput. Inf. Sci. Eng. June 2018; 18(2): 021015. https://doi.org/10.1115/1.4039849
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