Heat state judgment for calcium carbide furnaces based on heat index calculation and furnace temperature prediction
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摘要: 鑒于爐熱狀態判斷對電石冶煉的重要性,在對電石爐冶煉過程特點分析的基礎上,提出爐熱指數的基本概念.建立了基于兩段式熱平衡分析的爐熱指數計算模型,在此基礎上建立了基于BP神經網絡的電石液溫度預測模型.采用這兩種模型可以更有效地對電石爐熱狀態進行判斷.模型仿真研究表明,電石液溫度與高溫區熱盈余線性相關,用爐熱指數判斷電石爐熱狀態是可行的.電石液溫度預測模型的命中率達到86.7%.Abstract: In view of the importance of heat state judgment for calcium carbide smelting, the concept of furnace heat index was presented by analyzing the smelting features. A calculation model of furnace heat index was established based on the two-stage thermal equilibrium, and a prediction model of hot calcium carbide temperature was constructed by using a BP neural network. Both the models can effectively judge the furnace heat state. Simulation results show that there is a significant linear correlation between hot calcium carbide temperature and heat surplus, and it is feasible to consider furnace heat index as a heat state's sign. The hit rate to hot calcium carbide temperature predicted by the prediction model reaches 86.7%.
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Key words:
- calcium carbide /
- smelting /
- neural networks /
- temperature /
- prediction
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