Above burden temperature data probes interpretation to prevent malfunction of blast furnaces. Intelligent information preprocesing
Autor: | Martín, R., Mochón Muñoz, J., Jiménez, J., Verdeja, L. F., Rusek, P., Ayala, J. Nancy |
---|---|
Rok vydání: | 2009 |
Zdroj: | Digital.CSIC. Repositorio Institucional del CSIC instname |
Popis: | In the last few years, the use of computers has made it possible to achieve a better image of blast furnace performance, allowing the establishment of models, the comparison of variables and the construction of powerful databases to store the variables and their evolution during the process. Nevertheless, part of the investment made in blast furnace equipment is not properly utilized and a considerable part of the information collected could be put to much better use. The application of modern data mining techniques has overcome these problems. This work shows ways to apply these techniques to data from probes located in the throat or shaft of the blast furnace, as well as how to extract useful information by defining and classifying a set of patterns in classes from temperature profiles that have been linked to the stability of the process in steelworks with blast furnaces. |
Databáze: | OpenAIRE |
Externí odkaz: |