基于神经网络和人工智能的焦煤关键品质参数实时预测

IF 1.2 Q3 GEOSCIENCES, MULTIDISCIPLINARY
A. Dyczko
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引用次数: 2

摘要

优质焦炭是冶金工业的关键原料。煤的特性对焦炭的生产参数有很大的影响,从而对煤矿的估价和采矿项目的经济评价也有很大的影响。预测焦煤的质量可以优化生产过程,包括对操作的规划和管理以及对质量问题的早期发现。本研究运用智能矿山原理,提出了结合矿区开采地质条件及其质量指标确定煤炭质量的方法。已经确定了矿床中煤的质量与最终产品的特性之间可能存在的相互关系。利用神经网络确定对焦煤质量有重要影响的各个指标的优先级。研究的一个重要部分是其在Jastrzębska Spółka Węglowa SA条件下的实际实施。通过对该地区各矿炼焦煤的变质程度、厚度、挥发性物质偏差、含磷量、灰分等数据的抽样统计处理,获得了该地区各矿炼焦煤的定性和定量参数。为了对其进行评价,采用分组数据处理方法,根据对炼焦煤最终特性的影响优先级对质量指标的因素进行比较。结果表明,并非所有煤质指标对最终产品质量都有显著影响。研究表明,基于大量的煤质参数,利用神经网络可以预测焦炭质量的主要指标(CRI—焦炭反应性指数,CSR—反应后焦炭强度),并可以剔除对最终产品价值几乎没有影响的参数。该方法还可用于提高矿床的经济评价结果,更好地规划勘探和采矿作业。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
REAL-TIME FORECASTING OF KEY COKING COAL QUALITY PARAMETERS USING NEURAL NETWORKS AND ARTIFICIAL INTELLIGENCE
High quality coke is a key raw material for the metallurgical industry. The characteristics of the coal have a significant influence on the parameters of the coke produced and, consequently, on the valuation of coal deposits and the economic assessment of mining projects. Predicting the quality of coking coal allows for the optimisation of production processes, including the planning and management of operations and the early detection of quality problems. In this study, using the principles of a smart mine, it is proposed to determine the quality of coal based on the combination of mining and geological conditions of mineral deposits and its quality indicators. Possible interrelationships between the quality of the coal in the deposit and the characteristics of the final product have been identified. A neural network is used to determine the priority of individual indicators that have a significant impact on the quality of coking coal. An important part of the research is its practical implementation in the conditions of the Jastrzębska Spółka Węglowa SA. Qualitative and quantitative parameters of coking coals were obtained for each mine of the region by the method of sampling and statistical processing of data such as: degree of metamorphism, thickness, deviation of volatile substances, presence of phosphorus, ash content, etc. For their evaluation, the Group Method of Data Handling was used to compare the factors of quality indicators depending on the priority of influence on the final characteristics of the coking coal. Based on the results obtained, it is shown that not all coal quality indicators have a significant impact on the quality of the final product. The study shows that it is possible to predict the main indicators (CRI – Coke Reactivity Index, CSR – Coke Strength after Reaction) of coke quality using neural networks based on a larger number of coal quality parameters and to eliminate parameters that have virtually no influence on the value of the final product. This method can also be used to improve the results of economic valuation of a deposit and to better plan exploration and mining operations.
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来源期刊
CiteScore
2.50
自引率
15.40%
发文量
50
审稿时长
12 weeks
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