Title of article :
Ant colony algorithm as a high-performance method in resource estimation using LVA field; A case study: Choghart Iron ore deposit
Author/Authors :
Mohammad Torab, F Department of Mining and Metallurgical Engineering - Yazd University - Yazd, Iran , Moeini, H
Abstract :
Kriging is an advanced geostatistical procedure that generates an estimated surface or
3D model from a scattered set of points. This method can be used for estimating
resources using a grid of sampled boreholes. However, conventional ordinary kriging
(OK) is unable to take locally varying anisotropy (LVA) into account. A numerical
approach has been presented that generates an LVA field by calculating the anisotropy
parameters (direction and magnitude) in each cell of the estimation grid. After
converting the shortest anisotropic distances to Euclidean distances in the grid, they can
be used in variography and kriging equations (LVAOK). The ant colony optimization
(ACO) algorithm is a nature-inspired metaheuristic method that is applied to extract
image features. A program has been developed based on the application of ACO
algorithm, in which the ants choose their paths based on the LVA parameters and act as
a moving average window on a primary interpolated grid. If the initial parameters of the
ACO algorithm are properly set, the ants would be able to simulate the mineralization
paths along continuities. In this research work, Choghart iron ore deposit with 2,447
composite borehole samples was studied with LVA-kriging and ACO algorithm. The
outputs were cross-validated with the 111,131 blast hole samples and the Jenson-
Shannon (JS) criterion. The obtained results show that the ACO algorithm outperforms
both LVAOK and OK (with a correlation coefficient value of 0.65 and a JS value of
0.025). Setting the parameters by trial-and-error is the main problem of the ACO
algorithm.
Keywords :
Choghart Deposit , Ant Colony Algorithm , Locally Varying Anisotropy , Resource Estimation , Kriging
Journal title :
Astroparticle Physics