Acquiring Diagnostic Assembly Knowledge from Documents - For the Domain of Assembly of Aircraft Structures

Madhusudanan N., Gurumoorthy B., Amaresh Chakrabarti

2013

Abstract

The research being proposed in this paper is knowledge acquisition from documents for diagnosis of potential issues. The application domain is that of manual assembly of aircraft structures. The research challenge is to understand and acquire the necessary knowledge from natural language texts. The first step is the segregation of relevant portions of text from documents, possibly using ontologies. The next task is to acquire necessary pieces of knowledge and translate them into a knowledge based system. The final step is to validate the acquired knowledge on example assemblies.

References

  1. Aydin, S., Kahraman, C., and Kaya, I?. (2012). A new fuzzy multicriteria decision making approach: An application for european quality award assessment. Knowledge-Based Systems, 32:37-46.
  2. Baena-Garcia, M. and Morales-Bueno, R. (2012). Mining interestingness measures for string pattern mining. Knowledge-Based Systems, 25(1):45-50.
  3. Dawari, A., B, S., Venkatayogi, C., Chakrabarti, A., Sen, D., Gurumoorthy, B., and Appelman, H. (2011). Developing a virtual environment for aiding assessment and improvement of assemblability of aerospace structures. In Research into Design Supporting Sustainable Product Development.
  4. Dehuri, S. and Cho, S. (2010). Theoretical foundations of knowledge mining and intelligent agent. Knowledge Mining Using Intelligent Agents, 6:1.
  5. Fayyad, U., Piatetsky-Shapiro, G., and Smyth, P. (1996). From data mining to knowledge discovery in databases. AI magazine, 17(3):37.
  6. Frawley, W. J., Piatetsky-Shapiro, G., and Matheus, C. J. (1992). Knowledge discovery in databases: An overview. AI magazine, 13(3):57.
  7. Gomez, F. and Segami, C. (2007). Semantic interpretation and knowledge extraction. Knowledge-Based Systems, 20(1):51-60.
  8. Han, X. and Sun, L. (2012). An entity-topic model for entity linking. In Proceedings of the 2012 Joint Conference on Empirical Methods in Natural Language Processing and Computational Natural Language Learning, pages 105-115. Association for Computational Linguistics.
  9. Iwanska, L., Mata, N., and Kruger, K. (2000). Fully automatic acquisition of taxonomic knowledge from large corpora of texts: Limited-syntax knowledge representation system based on natural language. In In LM Iwanksa and SC Shapiro, editors, Natural Language Processing and Knowledge Processing. Citeseer.
  10. Jun, Y., Liu, J., Ning, R., and Zhang, Y. (2005). Assembly process modeling for virtual assembly process planning. International Journal of Computer Integrated Manufacturing, 18(6):442-451.
  11. Khashei, M., Zeinal Hamadani, A., and Bijari, M. (2012). A fuzzy intelligent approach to the classification problem in gene expression data analysis. KnowledgeBased Systems, 27:465-474.
  12. Madhusudanan, N. and Chakrabarti, A. (2011a). An interactive questioning based method to acquire knowledge for knowledge-based systems. In International conference on trends in product life cycle, modeling, simulation and synthesis- PLMSS.
  13. Madhusudanan, N. and Chakrabarti, A. (2011b). A model for visualizing mechanical assembly situations. Research into Design-Supporting Sustainable Product Development (ICoRD'11), pages 238-246.
  14. Madhusudanan, N. and Chakrabarti, A. (2013). Implementation and initial validation of a knowledge acquisition system for mechanical assembly. In CIRP Design 2012, pages 267-277. Springer.
  15. Patwardhan, S. and Pedersen, T. (2006). Using wordnetbased context vectors to estimate the semantic relatedness of concepts. In Proceedings of the EACL 2006 Workshop Making Sense of Sense-Bringing Computational Linguistics and Psycholinguistics Together, volume 1501, pages 1-8.
  16. Sánchez-Pi, N., Carbó, J., and Molina, J. M. (2012). A knowledge-based system approach for a contextaware system. Knowledge-based Systems, 27:1-17.
  17. Zhang, J., Wei, Q., and Chen, G. (2012). An efficient incremental method for generating equivalence groups of search results in information retrieval and queries. Knowledge-Based Systems, 32:91-100.
Download


Paper Citation


in Harvard Style

N. M., B. G. and Chakrabarti A. (2013). Acquiring Diagnostic Assembly Knowledge from Documents - For the Domain of Assembly of Aircraft Structures . In Doctoral Consortium - Doctoral Consortium, (IC3K 2013) ISBN Not Available, pages 37-41


in Bibtex Style

@conference{doctoral consortium13,
author={Madhusudanan N. and Gurumoorthy B. and Amaresh Chakrabarti},
title={Acquiring Diagnostic Assembly Knowledge from Documents - For the Domain of Assembly of Aircraft Structures},
booktitle={Doctoral Consortium - Doctoral Consortium, (IC3K 2013)},
year={2013},
pages={37-41},
publisher={SciTePress},
organization={INSTICC},
doi={},
isbn={Not Available},
}


in EndNote Style

TY - CONF
JO - Doctoral Consortium - Doctoral Consortium, (IC3K 2013)
TI - Acquiring Diagnostic Assembly Knowledge from Documents - For the Domain of Assembly of Aircraft Structures
SN - Not Available
AU - N. M.
AU - B. G.
AU - Chakrabarti A.
PY - 2013
SP - 37
EP - 41
DO -