应用元启发式Bat算法反演各种矿石和矿物模型的重力数据

IF 2.1 3区 地球科学 Q2 GEOCHEMISTRY & GEOPHYSICS
Khalid S. Essa, Zein E. Diab
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引用次数: 8

摘要

地球物理方法,特别是重力方法,在矿石和矿物勘探中非常有用。这里,地下地质结构的重力建模和解释通常假设目标源岩和周围结构内的密度均匀或空间变化。因此,使用简单的几何体有助于验证地下矿石和矿物目标。Bat优化算法是最近开发的一种元启发式算法,用于各种地球物理应用,以探索和解释埋藏矿石和矿物目标的参数。使用Bat优化算法,我们对矿石和矿物的重力异常剖面进行了说明。为了进行全局优化,蝙蝠优化算法基于蝙蝠的回声定位行为。Bat优化算法中的全局最优解达到了目标函数的建议最小值。Bat优化算法应用于重力数据,以估计目标参数(例如,振幅系数、深度、原点位置和几何形状)。在使用两种不同噪声的球形模型和无限水平圆柱体模型表示的两个合成模型上,检验了所引入的优化算法的稳定性和有效性。此外,还介绍了所提出的算法在加拿大、古巴和印度发现矿石和矿物方面的成功应用。该结果与现有的地质和钻孔信息以及已发表文献中的其他结果非常吻合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gravity data inversion applying a metaheuristic Bat algorithm for various ore and mineral models

Geophysical methods, especially the gravity method, are very helpful in ore and mineral explorations. Here, gravity modeling and interpretation for the subsurface geologic structures generally assumes either homogenous or spatially varying densities within target source rocks and surrounding structures. Therefore, the use of simple-geometric bodies helps in the validation of the subsurface ore and mineral targets. A Bat optimization algorithm is a recently developed metaheuristic algorithm that is used in various geophysical applications to explore and explain the parameters of buried ore and mineral targets. Using the Bat optimization algorithm, we were elucidating gravity anomaly profiles for ore and mineral cases. To perform global optimization, the Bat optimization algorithm is based on the echolocation behavior of bats. The global optimum solution in the Bat optimization algorithm reached the suggested minimum value of the objective function. The Bat optimization algorithm is applied to gravity data to estimate the target parameters (e.g., amplitude coefficient, depth, origin location, and geometric shape). The stability and efficiency of the introduced optimizing algorithm have been checked on two synthetic models represented in a spherical model and an infinitely horizontal cylinder model using two different kinds of noise. Furthermore, successful applications of the proposed algorithm for discovering the ore and minerals in Canada, Cuba, and India were presented. The results match well with the available geological and borehole information and other results from the published literature.

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来源期刊
Journal of Geodynamics
Journal of Geodynamics 地学-地球化学与地球物理
CiteScore
4.60
自引率
0.00%
发文量
21
审稿时长
6-12 weeks
期刊介绍: The Journal of Geodynamics is an international and interdisciplinary forum for the publication of results and discussions of solid earth research in geodetic, geophysical, geological and geochemical geodynamics, with special emphasis on the large scale processes involved.
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