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Mechanistic Insights into Temperature-Driven Retention and Speciation Changes of Heavy Metals (hms) in Ash Residues from Co-Combustion of Refuse-Derived Fuel (rdf) and Red Mud

Journal of Environmental Management(2024)

Univ Shanghai Sci & Technol

Cited 1|Views29
Abstract
Red mud is a promising candidate for promoting the incineration of Refuse Derived Fuel (RDF) and stabilizing the resulting incineration ash. The combustion conditions, notably temperature, significantly steers the migration and transformation of harmful metal components during combustion, and ultimately affect their retention and speciation in the ash residue. The study attempted to investigate the effect of co-combustion temperature on the enrichment and stability of Cr, Ni, Cu, Zn, Cd and Pb within bottom ashes, and to reveal the underlined promotion mechanism of red mud addition. As temperature increased, red mud's active components formed a robust matrix, helping the formation, melting, and vitrification of silicates and aluminosilicates in the bottom ashes. The process significantly contributed to the encapsulation and stabilization of heavy metals such as Ni, Cu, Zn, Cd, and Pb, with their residual fractions ascending to 71.37%, 55.75%, 74.78%, 84.24%, and 93.54%, respectively. Conversely, high temperatures led to an increase in the proportion of Cr in the extremely unstable acid-soluble fraction of the bottom ashes, reaching 31.52%, posing a heightened risk of environmental migration. Considering the stability of heavy metals in the bottom ashes and the combustion characteristics, 800 °C is identified as the optimal temperature for the co-combustion of RDF and red mud, balancing efficiency and environmental safety. The findings will provide valuable insights for the co-utilization strategy of RDF and red mud, contributing to more informed decision-making in waste-to-energy processes.
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Key words
Refuse derived fuel (RDF),Red mud,Bottom ash,Heavy metals
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要点】:研究揭示了在废料衍生燃料(RDF)和红泥共燃烧过程中,温度对重金属在灰烬中的保留和形态变化的作用机制,提出800°C是最优燃烧温度。

方法】:通过分析不同温度下灰烬中Cr、Ni、Cu、Zn、Cd和Pb的富集和稳定性,研究红泥添加剂对重金属封装和稳定化的促进作用。

实验】:实验通过在不同温度下共燃烧RDF和红泥,使用底灰作为研究对象,发现随着温度增加,红泥中的活性成分形成稳定的硅酸盐和铝硅酸盐矩阵,有效封装和稳定了重金属,并在800°C时达到最佳平衡。