Volume 15 (2024)
Volume 14 (2023)
Volume 13 (2022)
Volume 12 (2021)
Volume 11 (2020)
Volume 10 (2019)
Volume 9 (2018)
Volume 8 (2017)
Volume 7 (2016)
Volume 6 (2015)
Volume 5 (2014)
Volume 4 (2013)
Volume 3 (2012)
Volume 2 (2011)
Volume 1 (2010)
Exploitation
Detection of Ore Type in Drilling Cores Using Machine Vision Algorithm

Pouya Nobahar; Yashar Pourrahimian; Roohollah Shirani Faradonbeh; Fereydoun Mollaei Koshki

Articles in Press, Accepted Manuscript, Available Online from 30 August 2024

https://doi.org/10.22044/jme.2024.14538.2739

Abstract
  Mineral reserve evaluation and ore type detection using data from exploratory boreholes are critical in mine design and extraction. However, preparing core samples and conducting chemical and physical tests is a time-consuming and costly procedure, slowing down the modeling process. This paper presents ...  Read More

Environment
Revitalizing Mining Heritage Tourism: A Machine Learning Approach to Tourism Management

Aditi Nag; Smriti Mishra

Volume 15, Issue 4 , October 2024, , Pages 1193-1225

https://doi.org/10.22044/jme.2024.13770.2554

Abstract
  The convergence of Mining Heritage Tourism (MHT) and Artificial Intelligence (AI) presents a transformative paradigm, reshaping heritage preservation, visitor engagement, and sustainable growth. This paper investigates the dynamic synergy between these realms, probing how AI-driven technologies can augment ...  Read More

Exploitation
Intelligent Borehole Simulation with python Programming

Hassanreza Ghasemitabar; Andisheh Alimoradi; Hamidreza Hemati Ahooi; Mahdi Fathi

Volume 15, Issue 2 , April 2024, , Pages 707-730

https://doi.org/10.22044/jme.2023.13610.2527

Abstract
  Drilling of exploratory boreholes is one of the most important and costly steps in mineral exploration, which can provide us with accurate and appropriate information to continue the mining process. There are limitations on drilling the target boreholes, such as high costs, topographical problems in ...  Read More

Mine Economic and Management
Tourism Management with AI Integration for Mining Heritage: a Literature Review Approach

Aditi Nag; Smriti Mishra

Volume 15, Issue 1 , January 2024, , Pages 115-149

https://doi.org/10.22044/jme.2023.13473.2490

Abstract
  Integrating Artificial Intelligence (AI) into heritage tourism has opened new avenues for transforming visitors’ engagement with historical sites. This research paper delves into a novel paradigm, focusing on AI integration in inter- and intra-regional mining heritage site planning and design. ...  Read More

Investigating Correlation of Physico-Mechanical Parameters and P-Wave Velocity of Rocks: a Comparative Intelligent Study

H. Fattahi; M. Hasanipanah; N. Zandy Ilghani

Volume 12, Issue 3 , July 2021, , Pages 863-875

https://doi.org/10.22044/jme.2021.11121.2092

Abstract
  The mechanical characteristics of rocks and rock masses are considered as the determining factors in making plans in the mining and civil engineering projects. Two factors that determine how rocks responds in varying stress conditions are P-wave velocity (PWV) and its isotropic properties. Therefore, ...  Read More

Optimizing Extreme Learning Machine Algorithm using Particle Swarm Optimization to Estimate Iron Ore Grade

M. Fathi; A. Alimoradi; H.R. Hemati Ahooi

Volume 12, Issue 2 , April 2021, , Pages 397-411

https://doi.org/10.22044/jme.2021.10368.1984

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 ...  Read More