变异函数建模优化使用遗传算法和机器学习线性回归:应用顺序高斯模拟映射

André William Boroh , Alpha Baster Kenfack Fokem , Martin Luther Mfenjou , Firmin Dimitry Hamat , Fritz Mbounja Besseme
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引用次数: 0

摘要

本研究的目的是通过将遗传算法(GA)与基于机器学习的线性回归相结合,开发一种先进的变异函数建模方法,旨在提高地质统计分析的准确性和效率,特别是在矿产勘探方面。该研究结合了遗传算法和机器学习,通过最小化均方根误差(RMSE)和最大化决定系数(R2)来优化变异函数参数,包括范围、基差和块金。使用理论模型对实验变差进行计算和建模,然后通过进化算法进行优化。该方法应用于喀麦隆东部Ngoura-Batouri-Kette矿区的141个数据点的重力数据。采用序贯高斯模拟(SGS)进行预测映射,根据真实值验证模拟结果。结果表明,42代遗传优化后的变异区间为24.71 ~ 49.77 km,优化后的RMSE和R2分别为11.21 mGal2和0.969。使用SGS进行预测映射表明,模拟值与真实值非常匹配,模拟平均值为21.75 mGal,而真实平均值为25.16 mGal,方差分别为465.70 mGal2和555.28 mGal2。结果证实了n170 ~ n210方向的空间变异性和各向异性,与前人的研究结果一致。这项工作提出了一种新的遗传算法和变异函数建模机器学习的集成,提供了一种自动化,有效的参数估计方法。该方法大大增强了预测地质统计模型,有助于推进矿产勘探,提高石油和采矿业决策的精度和速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Variogram modelling optimisation using genetic algorithm and machine learning linear regression: application for Sequential Gaussian Simulations mapping
The objective of this study is to develop an advanced approach to variogram modelling by integrating genetic algorithms (GA) with machine learning-based linear regression, aiming to improve the accuracy and efficiency of geostatistical analysis, particularly in mineral exploration. The study combines GA and machine learning to optimise variogram parameters, including range, sill, and nugget, by minimising the root mean square error (RMSE) and maximising the coefficient of determination (R2). The experimental variograms were computed and modelled using theoretical models, followed by optimisation via evolutionary algorithms. The method was applied to gravity data from the Ngoura-Batouri-Kette mining district in Eastern Cameroon, covering 141 data points. Sequential Gaussian Simulations (SGS) were employed for predictive mapping to validate simulated results against true values. Key findings show variograms with ranges between 24.71 km and 49.77 km, optimised RMSE and R2 values of 11.21 mGal2 and 0.969, respectively, after 42 generations of GA optimisation. Predictive mapping using SGS demonstrated that simulated values closely matched true values, with the simulated mean at 21.75 mGal compared to the true mean of 25.16 mGal, and variances of 465.70 mGal2 and 555.28 mGal2, respectively. The results confirmed spatial variability and anisotropies in the N170-N210 directions, consistent with prior studies. This work presents a novel integration of GA and machine learning for variogram modelling, offering an automated, efficient approach to parameter estimation. The methodology significantly enhances predictive geostatistical models, contributing to the advancement of mineral exploration and improving the precision and speed of decision-making in the petroleum and mining industries.
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