Anyang Institute of Technology, Anyang, Henan, People's Republic of China.
AnYang University, Anyang, Henan, People's Republic of China.
Sci Rep. 2023 Apr 17;13(1):6208. doi: 10.1038/s41598-023-33509-0.
Estimation of ore grade is very important for the value evaluation of ore deposits, and it directly affects the development of mineral resources. To improve the accuracy of the inverse distance weighting (IDW) method in ore grade estimation and reduce the smoothing effect of the IDW method in grade estimation, the weight calculation method involved in the IDW method was improved. The length parameter of the ore sample was used to calculate the weight of the IDW method. The length of the ore samples was used as a new factor of the weighting calculation. A new method of IDW integrated with sample length weighting (IDWW) was proposed. The grade estimation of Li, Al, and Fe in porcelain clay ore was used as a case study. A comparative protocol for grade estimation via the IDWW method was designed and implemented. The number of samples involved in the estimation, sample combination, sample grade distribution, and other factors affecting the grade estimation were considered in the experimental scheme. The grade estimation results of the IDWW and the IDW methods were used for comparative analysis of grades of the original and combined samples. The estimated results of the IDWW method were also compared with those of the IDW method. The deviation analysis of the estimated grade mainly included the minimum, maximum, mean, and coefficient of variation of the ore grade. The estimation effect of IDWW method was verified. The minimum deviations of the estimated grade of Li, Al, and Fe were between 9.129% and 59.554%. The maximum deviations were between 4.210 and 22.375%. The mean deviations were between - 1.068 and 7.187%. The deviations in the coefficient of variation were between 3.076 and 36.186%. The deviations in the maximum, minimum, mean, and coefficients of variation of the IDWW were consistent with those of the IDW, demonstrating the accuracy and stability of the IDWW method. The more the samples involved in the estimation, the greater the estimation deviations of IDW and IDWW methods. The estimated deviations of Li, Al, and Fe were affected by the shape of the grade distribution, when the same estimation parameters were used. The grade distribution pattern of the samples significantly influenced the grade estimation results. The IDWW method offers significant theoretical advantages and addresses the adverse effects of uneven sample lengths on the estimates. The IDWW method can effectively reduce the smoothing effect and improves the utilization efficiency of the original samples.
品位估计对于矿床价值评估非常重要,直接影响矿产资源的开发。为了提高反距离加权(IDW)法在品位估计中的精度,降低 IDW 法在品位估计中的平滑效应,改进了 IDW 法中涉及的权重计算方法。使用矿石样本的长度参数来计算 IDW 法的权重。矿石样本的长度被用作加权计算的新因素。提出了一种与样本长度加权(IDWW)相结合的 IDW 新方法。以瓷土矿中 Li、Al 和 Fe 的品位估计为例,进行了研究。设计并实施了 IDWW 方法的品位估计对比方案。实验方案中考虑了估计中涉及的样本数量、样本组合、样本品位分布以及其他影响品位估计的因素。比较了 IDWW 和 IDW 方法的品位估计结果,比较了原始和组合样本的品位。还比较了 IDWW 方法的估计结果与 IDW 方法的估计结果。品位估计值的偏差分析主要包括矿石品位的最小值、最大值、平均值和变异系数。验证了 IDWW 方法的估计效果。Li、Al 和 Fe 的估计等级的最小偏差在 9.129%至 59.554%之间。最大偏差在 4.210%到 22.375%之间。平均偏差在-1.068%到 7.187%之间。变异系数的偏差在 3.076%到 36.186%之间。IDWW 的最大、最小、平均和变异系数偏差与 IDW 的偏差一致,表明 IDWW 方法的准确性和稳定性。估计中涉及的样本越多,IDW 和 IDWW 方法的估计偏差越大。当使用相同的估计参数时,Li、Al 和 Fe 的估计偏差受品位分布形状的影响。样本的品位分布模式对品位估计结果有显著影响。IDWW 方法具有重要的理论优势,可以解决样本长度不均匀对估计的不利影响。IDWW 方法可以有效地降低平滑效应,提高原始样本的利用效率。