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Qing Na, Qiusong Chen, and Aixiang Wu, Precise and non-destructive approach for identifying the real concentration based on cured cemented paste backfill using hyperspectral imaging, Int. J. Miner. Metall. Mater., 33(2026), No. 1, pp.116-128. https://doi.org/10.1007/s12613-025-3248-x
Qing Na, Qiusong Chen, and Aixiang Wu, Precise and non-destructive approach for identifying the real concentration based on cured cemented paste backfill using hyperspectral imaging, Int. J. Miner. Metall. Mater., 33(2026), No. 1, pp.116-128. https://doi.org/10.1007/s12613-025-3248-x
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基于充填体高光谱响应特征的膏体初始浓度无损检测研究

摘要: 质量浓度是膏体充填技术的核心控制参数。然而,在实际充填过程中,因受地下水渗流、控制参数波动、管输离析沉降等因素影响,采场内膏体实际浓度通常显著偏离设计值,并且难以进行有效检测,是矿山充填质量控制的难点。为此,本文通过高光谱成像技术研究了不同膏体浓度、不同养护龄期条件下充填体的光谱响应特征曲线,结合机器学习算法,创新性提出了一种采场充填体初始浓度的原位无损检测方法。结果表明:随着充填体浓度从61wt%增加到73wt%,光谱反射率逐渐增加;在整个波段范围内,于1407和1917 nm处出现两个明显的吸收峰,其中1407 nm处的反射率与充填体浓度呈强烈的线性关系。KNN算法在 K = 1时过拟合,在K = 3时,准确性和泛化性之间达到最佳平衡,准确率为95.03%;SVM算法在正则化参数C = 200、核系数(Gamma)= 10时表现最优,准确率达到98.24%。因此,高光谱成像技术结合SVM算法对膏体初始浓度检测具有优越的稳定性和准确率,证明了高光谱成像技术在矿山充填领域应用的可行性,为采场内膏体初始实际浓度的原位无损检测提供了有效的解决方案。

 

Precise and non-destructive approach for identifying the real concentration based on cured cemented paste backfill using hyperspectral imaging

Abstract: Cemented paste backfill (CPB) is a technology that achieves safe mining by filling the goaf with waste rocks, tailings, and other materials. It is an inevitable choice to deal with the development of deep and highly difficult mines and meet the requirements of environmental protection and safety regulations. It promotes the development of a circular economy in mines through the development of low-grade resources and the resource utilization of waste, and extends the service life of mines. The mass concentration of solid content (abbreviated as “concentration”) is a critical parameter for CPB. However, discrepancies often arise between the on-site measurements and the pre-designed values due to factors such as groundwater inflow and segregation within the goaf, which cannot be evaluated after the solidification of CPB. This paper innovatively provides an in-situ non-destructive approach to identify the real concentration of CPB after curing for certain days using hyperspectral imaging (HSI) technology. Initially, the spectral variation patterns under different concentration conditions were investigated through hyperspectral scanning experiments on CPB samples. The results demonstrate that as the CPB concentration increases from 61wt% to 73wt%, the overall spectral reflectance gradually increases, with two distinct absorption peaks observed at 1407 and 1917 nm. Notably, the reflectance at 1407 nm exhibited a strong linear relationship with the concentration. Subsequently, the K-nearest neighbors (KNN) and support vector machine (SVM) algorithms were employed to classify and identify different concentrations. The study revealed that, with the KNN algorithm, the highest accuracy was achieved when K (number of nearest neighbors) was 1, although this resulted in overfitting. When K = 3, the model displayed the optimal balance between accuracy and stability, with an accuracy of 95.03%. In the SVM algorithm, the highest accuracy of 98.24% was attained with parameters C (regularization parameter) = 200 and Gamma (kernel coefficient) = 10. A comparative analysis of precision, accuracy, and recall further highlighted that the SVM provided superior stability and precision for identifying CPB concentration. Thus, HSI technology offers an effective solution for the in-situ, non-destructive monitoring of CPB concentration, presenting a promising approach for optimizing and controlling CPB characteristic parameters.

 

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