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신경망 모델 기반 조선소 조립공장 작업상태 판별 알고리즘

Neural Network Model-based Algorithm for Identifying Job Status in Block Assembly Shop for Shipbuilding

  • 투고 : 2010.09.10
  • 심사 : 2011.07.28
  • 발행 : 2011.09.01

초록

In the shipbuilding industry, since production processes are so complicated that the data collection for decision making cannot be fully automated, most of production planning and controls are based on the information provided only by field workers. Therefore, without sufficient information it is very difficult to manage the whole production process efficiently. Job status is one of the most important information used for evaluating the remaining processing time in production control, specifically, in block assembly shop. Currently, it is checked by a production manager manually and production planning is modified based on that information, which might cause a delay in production control, resulting in performance degradation. Motivated by these remarks, in this paper we propose an efficient algorithm for identifying job status in block assembly shop for shipbuilding. The algorithm is based on the multi-layer perceptron neural network model using two key factors for input parameters. We showed the superiority of the algorithm by using a numerical experiment, based on real data collected from block assembly shop.

키워드

참고문헌

  1. Arbib, M. A. (1995), The Handbook of Brain Theory and Neural Networks, The MIT Press.
  2. Dayhoffs, J. E. (1990), Neural Network Architecture : An Introduction, New York, Van Nostrand Reinhold.
  3. Hong, S. T. (2011), Efficient Job Progress Control Using Block Type Standardization Based on Neural Network Model, MS Thesis, Ajou University.
  4. Jiawei, H. (2000), Data mining : Concepts and Techniques, Academic press.
  5. Kim, Y. S. and Lee, D. H. (2007), A Study on the Construction of Detail Integrated Scheduling System of Ship Building Process, Journal of the Society of Naval Architects of Korea, 44, 48-54. https://doi.org/10.3744/SNAK.2007.44.1.048
  6. Lee, K. K. et al. (2003), Digital Manufacturing based Modeling and Simulation of Production Process in Subassembly Lines at a Shipyard, The Korea Society for Simulation, 1, 185-192.
  7. Mun, S. H., Doh, Y. C., Park, G. B., Kim, D. K., and Kim, S. H. (2006), A CAD/CAM System for Sub-Assembly Welding Robot System at Shipyards, The Korea Society of Machine Engineer, 6, 440-443.
  8. Noh, H. W., Kim, K..J., Leem, R. S., and Kim, H. K. (2008), A Study on a Development of the Grinding Robot to Remove Welding-bid of Working Pieces, Journal of Ship and Ocean Technology, 136-143.
  9. Stuart, R and Peter, N. (2009), Artificial Intelligence A Modern Approach, Pearson.