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Manufacturing project management in the conglomerate enterprises supported by IDSS

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Języki publikacji
PL
Abstrakty
EN
Purpose: of this paper is to summarize the application study of a general framework of intelligent decision support system (IDSS) to collaborative projects in conglomerate enterprises. In some situations, even with the knowledge of how to find right information and which decision making methods to apply, we do not have enough time to make right decisions at the right time. In this paper, the framework of an IDSS system to support real-time collaboration and enable seamless data exchange is presented. Design/methodology/approach: The important roles of facilitation and organization that the IDSS plays are demonstrated. In the case study, examples of manufacturing projects analysis are given with the known methods, including Analytical Hierarchy Process and Bayes’ rule. Findings: It is demonstrated that IDSS systems can help us to manage information flow, clean data, transform data into knowledge, perform analysis and monitor the effectiveness of manufacturing projects during the whole life cycle. Research limitations/implications: The functionality of the developed framework is limited by the willingness of management style and culture changes in companies, as well as the level of interoperability between commercial software components. Only the essential components that influence the success of the manufacturing projects are considered. Practical implications: Project engineers and managers need to adapt to the new IT-based working environment. Originality/value: New information management model and the framework of IDSS system are proposed. The new collaborative decision making system consists of different parts: management of information flow, preparation of data for decision making, and actual decision making and monitoring of manufacturing projects supported by several methods.
Rocznik
Strony
94--102
Opis fizyczny
Bibliogr. 24 poz., rys., tabl.
Twórcy
autor
autor
Bibliografia
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  • [5] M. Dudek- Burlikowska, D. Szewieczek, Quality estimation of sale process with usage of quality methods in chosen company, Journal of Achievements in Materials and Manufacturing Engineering 20 (2007) 531-534.
  • [6] M. Dudek-Burlikowska, Analytical model of technological process correctness and its usage in industrial company, Journal of Achievements in Materials and Manufacturing Engineering 15 (2006) 107-113.
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  • [8] A. F. Guisseppi, N. D. Jatinger, N. D. Manuel, T. Mora, Decision-making Support Systems: foundations, applications and challenges, London, ISBN 1846282314, 2006.
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  • [18] E. Shevtshenko, T. Karaulova, S. Kramerenko, Y. Wang, IDSS used as a framework for collaborative projects in conglomerate enterprises, Journal of Achievements in Materials and Manufacturing Engineering 22/1 (2007) 89-92.
  • [19] V. Singh, V. Tathavadkar, S. Mohan Rao, K.S. Raju, Predicting the performance of submerged arc furnance with varied raw material combinations using artificial neural network, Journal of Materials Processing Technology 183/1 (2007) 111-116.
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  • [24] M. L. Wong, S. Y. Lee, K. S. Leung, Data mining of Bayesian networks using cooperative coevolution, Decision Support Systems 38 (2004) 451-472.
Typ dokumentu
Bibliografia
Identyfikator YADDA
bwmeta1.element.baztech-article-BOS2-0020-0018
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