Title of article :
Optimizing Extreme Learning Machine Algorithm using Particle Swarm Optimization to Estimate Iron Ore Grade
Author/Authors :
Fathi, Mahdi Department of Mining Engineering - Faculty of Engineering - Imam Khomeini International University - Qazvin, Iran , Alimoradi, Andisheh Department of Mining Engineering - Faculty of Engineering - Imam Khomeini International University - Qazvin, Iran , Hemati Ahooi, Hamidreza Department of Mining Engineering - Faculty of Engineering - Imam Khomeini International University - Qazvin, Iran
Abstract :
Scientific uncertainties make the grade estimation very complicated and important
in the metallic ore deposits. This paper introduces a new hybrid method for estimating
the iron ore grade using a combination of two artificial intelligence methods; it is based
on the single layer-extreme learning machine and the particle swarm optimization
approaches, and is designed based on the location of the boreholes, depth of the
boreholes, and drill hole information from an orebody, and applied for the ore grade
estimation on the basis of a block model. In this work, the two algorithms of
optimization clustering and neural networks are used for the iron grade estimation in
the Choghart iron ore north anomaly in the central Iran. The results of the training and
testing the algorithms indicate a significant ability of the optimized neural network
system in the ore grade estimation.
Keywords :
Ore grade estimation , Artificial intelligence , Particle swarm optimization , Single layer-extreme learning machine , Drill hole information
Journal title :
Journal of Mining and Environment