2022
DOI: 10.3390/met12091403
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Dynamic Prediction Model of Silicon Content in Molten Iron Based on Comprehensive Characterization of Furnace Temperature

Abstract: The silicon content of the molten iron is an important indicator of the furnace temperature trend in blast furnace smelting. In view of the multi-scale, non-linear, large time lag and strong coupling characteristics of the blast furnace smelting process, a dynamic prediction model for the silicon content of molten iron is established based on the analysis of comprehensive furnace temperature characterization data. The isolated forest algorithm is used to detect anomalies and analyze the causes of the anomalies… Show more

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Cited by 11 publications
(1 citation statement)
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“…With the development of deep learning algorithms and increase of industrial data, Cui et al 7) . established a dynamic prediction model of silicon content in molten iron based on comprehensive characterization set of furnace temperature, which can accurately predict the silicon content in molten iron and determine the influence degree of different parameters.…”
Section: Introducementioning
confidence: 99%
“…With the development of deep learning algorithms and increase of industrial data, Cui et al 7) . established a dynamic prediction model of silicon content in molten iron based on comprehensive characterization set of furnace temperature, which can accurately predict the silicon content in molten iron and determine the influence degree of different parameters.…”
Section: Introducementioning
confidence: 99%