A Comprehensive Utilization Efficiency Evaluation of Iron Tailings based on the Differential — Benefit Evaluation

Authors

  • Yu-feng LI Hebei Industrial University, North China University of Science and Technology, Tangshan - 063009, Hebei
  • Jing-ling BAO Hebei Industrial University, Tianjin Environmental Protection Bureau, Tianjin - 300191, Hebei

DOI:

https://doi.org/10.18311/jmmf/2022/30802

Keywords:

Benefit Evaluation Correlation Analysis, Grey Group Analytic Hierarchy Process Fuzzy Teaching Differential.

Abstract

At present, in the evaluation of iron tailings resources, the single evaluation of a certain aspect is limited to the qualitative evaluation, and there is no uniform standard in either theory or method. In this paper, based on the grey group analytic hierarchy process and fuzzy mathematics as the analysis tool, the benefit of the iron tailings resources is analyzed, From resource benefit, economic benefit, environmental benefit and social benefit several aspects to build the differential - efficiency index system and established the differential-benefit evaluation model and the influence of iron tailings resource evaluation of the weight of each index distribution, is obtained by correlation analysis and the likelihood of benefit index influencing the size of the order, to a certain extent, verified the rationality of the index weight, provides a theoretical guidance for iron tailings resource utilization.

References

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Published

2022-09-16

How to Cite

LI, Y.- feng, & BAO, J.- ling. (2022). A Comprehensive Utilization Efficiency Evaluation of Iron Tailings based on the Differential — Benefit Evaluation. Journal of Mines, Metals and Fuels, 70(6), 298–305. https://doi.org/10.18311/jmmf/2022/30802

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Section

Articles