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A New On-Line Method for Predicting Iron Ore Pellet Quality

机译:一种预测铁矿石颗粒质量的新在线方法

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摘要

The Abrasion Index (AI) describes fines generation from iron ore pellets, and is one of the most common indicators of pellet quality. In a typical pellet plant, dust is generated during the process and then captured. Can the dust be measured and used to predict AI? In this paper, the feasibility of using airborne dust measurements as an indicator of AI is investigated through laboratory tests and using data from a pellet plant. Bentonite clay, polyacrylamide and pregelled cornstarch contents, and induration temperature were adjusted to control the abrasion resistance of laboratory iron ore pellets. AI were observed to range from approximately 1% to 12%. Size distributions of the abrasion progeny were measured and used to estimate quantities of PM10 (particulate matter with aerodynamic diameter less than 10 mu m) produced during abrasion. A very good correlation between AI and PM10 (R-2=0.90) was observed using the laboratory pellets. Similarly, a correlation was observed between AI and PM measured in the screening chimney at a straight-grate pelletization plant in Brazil, with an R-2 value of 0.65. Thus, the laboratory and industry data suggest that measuring dust generation from fired pellets may be an effective on-line measurement of pellet quality. The data also showed that particulate emissions from pelletization plants may be directly affected by AI.
机译:磨耗指数(AI)描述了铁矿石颗粒产生的粉尘,是颗粒质量最常见的指标之一。在典型的颗粒厂中,过程中会产生粉尘,然后将其捕获。灰尘可以测量并用于预测AI吗?在本文中,通过实验室测试和使用制粒厂的数据研究了使用机载粉尘测量值作为AI指标的可行性。调节膨润土,聚丙烯酰胺和预胶化玉米淀粉的含量以及硬结温度,以控制实验室铁矿石球团的耐磨性。观察到AI在约1%至12%的范围内。测量磨损后代的尺寸分布,并将其用于估计磨损期间产生的PM10(空气动力学直径小于10微米的颗粒物)的数量。使用实验室颗粒观察到AI与PM10之间有很好的相关性(R-2 = 0.90)。类似地,在巴西的直磨机造粒厂中,在筛选烟囱中测得的AI和PM之间存在相关性,R-2值为0.65。因此,实验室和行业数据表明,测量煅烧后的颗粒产生的粉尘可能是颗粒质量的有效在线测量方法。数据还显示,制粒厂的颗粒物排放可能直接受到AI的影响。

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