A Self-Adaption Growth Model for the Burden Packing Process in a Bell-Less Blast Furnace

Processes Pub Date : 2024-07-19 DOI:10.3390/pr12071523
Dong-ling Wu, Fengjie Yao, Duoyong Zhang, Enxue Zu, Ping Zhou, Wei Chen
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Abstract

The burden structure directly decides the distribution of gas flow inside a blast furnace (BF). Falling, stacking, and descending bulk materials are the three main processes for burden formation, among which the stacking process plays a decisive role. The Discrete Element Method (DEM) and theoretical modelling were combined to predict stacking behavior in this study. Falling and stacking behaviors were first simulated based on DEM. The repose angle during the stacking process and mass fraction distribution in the radial direction were analyzed. Then, the upper, centroid, and lower trajectory falling lines were determined, and a polynomial relation was found between the angle and the packing height. The influences of three parameters on the repose angle were investigated. Compared with the natural repose angle and chute inclination angle, the effects of the trajectory line depth appeared trivial. The polynomial relation between the repose angle and the packing height was specified to be a function of the natural angle of repose and the chute inclination angle. A three-trajectory falling model and quadratic expression were embedded in the theoretical model, yielding a self-adaption packing model. The model was proved reliable with a low relative error, below 15%.
无料钟高炉包料过程的自适应增长模型
炉料结构直接决定了高炉(BF)内煤气流的分布。落料、堆积和降料是炉料形成的三个主要过程,其中堆积过程起着决定性作用。本研究采用离散元素法(DEM)和理论建模相结合的方法来预测堆积行为。首先根据离散元素法模拟了下落和堆积行为。分析了堆积过程中的重置角和径向的质量分数分布。然后,确定了上轨迹、中心轨迹和下轨迹下落线,并发现了角度与堆积高度之间的多项式关系。研究了三个参数对复位角的影响。与自然倾角和溜槽倾角相比,轨迹线深度的影响显得微不足道。研究表明,自然倾角和滑道倾角是复位角与包装高度之间的多项式函数关系。在理论模型中嵌入了三轨迹下落模型和二次表达式,从而产生了自适应包装模型。该模型证明可靠,相对误差小,低于 15%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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