عنوان مقاله فارسی: مدلهای چند مرحلهای پیشبینی سطح مایع در یک خاک فورنیس
عنوان مقاله لاتین: Multistep Forecasting Models of the Liquid Level in a Blast Furnace Hearth
نویسندگان: Flávio S. V. Gomes; Klaus F. Côco; José Leandro Félix Salles
تعداد صفحات: 10
سال انتشار: 2017
زبان: لاتین
Abstract:
The extraction of molten iron and slag in the liquid phase from the lower part of a blast furnace (hearth) is usually accomplished according to operational experience and involves a high degree of uncertainty, mainly because the liquid level cannot be directly measured. This study presents a methodology for obtaining multistep models to forecast the hearth liquid level by measuring a voltage generated on the blast furnace shell, which is strongly correlated with the hearth liquid level. The results show that this electrical signal is a nonstationary and nonlinear time-series that, after appropriate treatment, can be represented by a time-delay neural network (TDNN) model. Some comparisons are made with linear time-series models represented by an autoregressive moving average model and a seasonal autoregressive integrated moving average model, and the results indicate that the TDNN model provides better forecasting performance up to one hour ahead.
multistep forecasting models of the liquid level in a blast furnace hearth_1623225788_48967_4145_1588.zip2.63 MB |