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Control, organization and management of production
Название Industrial data mining in the steel industry.
Автор H. Peters, A. Ebel, M. Holzknecht, N. Link, J. Häckmann, T. Heckenthaler, F. Lücking, M. Pander.
Реферат

The continuous improvement of all steel production processes regarding the avoidance of quality deficiencies and the related improvement of production yield is an essential task of each steel producer. Therefore and within the frame work of the Zero-Defect strategy popular today, several quality assurance techniques are used. The present report explains in this context the method of Data Mining and describes its application in the industrial environment and here especially in the steel industry. Beside a description of the general procedure different approaches for the realization of the necessary software tools are presented. The parts of knowledge discovery in different databases are displayed and construction of necessary data table is shown. Some pre-processing steps including training (70 %) and validation (30 %) are analyzed. Analytical interface for the results of the first data exploration is observed, as well as User interface and the results of DataDiagnose. Principal technical solutions for development of proper software are discussed. Operating technique for using wizard-guided data mining tool is presented. User interface of the Nico Miner software tool is considered. Combination of data mining and knowledge usage is illustrated.

Ключевые слова Data mining, steel industry, Zero-Defect strategy, quality assurance, software tools, knowledge discovery, databases, user interface, training, validation
Библиографический список

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Language of full-text русский
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