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  • SME
    Using Near‑Miss Events to Create Training Videos - Mining, Metallurgy & Exploration (2023)

    By Brendan Demich, Brendan Macdonald, Timothy J. Orr, Jonathan K. Hrica, CASSANDRA L. HOEBBEL, Jason Navoyski, Jennica L. Bellanca

    Haul truck fatal accidents and injuries continue to be a significant concern for the mining industry. However, the availability of high-quality training materials continues to be limited. Near-miss in

    Jun 1, 2023

  • SME
    Contribution of Mechanical Activation for Obtaining Potassium Chloride from Microcline - Mining, Metallurgy & Exploration (2023)

    By Bahaa Alyosif, Murat Erdemoğlu, Muhammet Kürşat Aydemir, Turan Uysal

    The effect of intensive milling on the conversion of microcline ( KAlSi3O8) to potassium chloride (KCl) occurred during the chlorination roasting process for artificial KCl production was investigated

    May 31, 2023

  • SME
    Influence of material composition on post‑failure behavior of overburden dumps in opencast coal mines - Mining, Metallurgy & Exploration (2023)

    By Anup Tiwari, Khanindra Pathak, BIBHUTI BHUSAN MANDAL

    Failure of in-pit overburden dumps in open-pit coal mines causes debris to flow toward the active working face, threatening the safety of people and equipment. The evaluation of the potential mobility

    May 29, 2023

  • SME
    Investigations on the Influence of Applied Thrust on Rock Penetration Rate by a Raise Boring Machine Using Numerical Simulation and Experimental Trials - Mining, Metallurgy & Exploration (2023)

    By Amar Prakash, V. M. S. R. Murthy, VIVEK KUMAR HIMANSHU, Sufal Mehrotra, Ashish Kumar Vishwakarma

    Raises are vertical or inclined openings made to connect two levels of an underground metalliferous mine. They are developed using drilling and blasting-based technique or by mechanical means. Raise b

    May 29, 2023

  • AUSIMM
    ML and AI for resource estimation – what could possibly go wrong? Nothing! Everything!

    By M J. Nimmo

    extremely powerful tools for building predictive and generative models. ML can be used for building highly accurate regression and classification models. But without careful data science and statistic

    May 24, 2023

  • AUSIMM
    Risk assessment of iron mineral resources using conditional simulations

    By W Patton

    Investment decisions in the mineral resources sector are made on the basis of an assessment of the economic potential for a mineral deposit. Given the supporting information for the location, scale, a

    May 24, 2023

  • AUSIMM
    Overcoming implicit modelling software limitations using Python scripting – an innovative geological modelling workflow for George Fisher Mine, Queensland, Australia

    By L Bertoss, D Carvalho

    In the last decade, the use of advanced implicit modelling software/algorithms in mineral resource workflows has become a best practice in the mining industry. In most cases, these workflows can easil

    May 24, 2023

  • AUSIMM
    A guide to reporting Mineral Resource exclusive of Mineral Reserve

    By H Arvidson, V Chamberlain, R Marinho, B Parsons, T Rowl, M Noppé, M Mattera

    With the introduction of CRIRSCO (2019) based mineral asset disclosure, Regulation S-K part 1300, 2019 (S-K1300) by the United States (US) Securities and Exchange Commission (SEC), applicable to compa

    May 24, 2023

  • AUSIMM
    Introducing deep learning and interpreting the patterns – a mineral deposit perspective

    By I Sucholutsky, D M. First, D Mogilny, F Yusufali

    Machine learning is creating value in all facets of the mining industry, from exploration to production. The authors provide an accessible, high-level introduction to artificial intelligence (AI), mac

    May 24, 2023

  • AUSIMM
    Maximising the value of a drilling program – case study in a challenging environment

    By A A. Latscha, D O’Connor

    Increasing orebody complexity, restrictions in ground access, and longer lead times for disturbance approvals, have generated the need for the Resource Development Team within Rio Tinto Iron Ore (RTIO

    May 24, 2023

  • AUSIMM
    SBRE framework – application to Olympic Dam deposit

    By D Clarke, I Minniakhmetov

    This paper describes the application of the SBRE framework to model the Olympic Dam deposit, one of the largest copper and uranium deposits in the world. Geostatistical simulations are the best practi

    May 24, 2023

  • AUSIMM
    Comparison of two quantitative mineral resource classification methods – a case study from a large copper porphyry-skarn deposit

    By C Artica

    Two quantitative methods for Mineral Resource classification have been applied to a copper skarn deposit beneath a large open pit that is mining a world-class porphyry complex. A drill hole spacing st

    May 24, 2023

  • AUSIMM
    Environmental, social and governance considerations in public mineral reporting

    By H Arvidson, V Chamberlain, J Joughin, N Pollock, F Cessford, T Flitton, T Rowl

    Environmental, social and governance issues (ESG) have become a defining feature in the marketplace to differentiate preferred investments. With the sustainability commitment and reporting landscape a

    May 24, 2023

  • AUSIMM
    Why I don’t believe in reconciliation

    By S Dunham

    For decades we’ve been focusing on reconciliation as a tool to validate mineral resource estimates. And for decades we’ve been misleading ourselves. The concept of reconciliation is simple. Predict, m

    May 24, 2023

  • AUSIMM
    Resource and Reserve category inflation – known rewards, hidden risks

    By M Bond, R R. Hargreaves, G W. Booth

    There are numerous causes of speculative mineral resource and reserve inflation. Traditionally, these are linked to issues of data accuracy or misinterpretation, the use of overly optimistic estimatio

    May 24, 2023

  • AUSIMM
    Schrödinger’s kittens – lifting the lid on resource drill hole data after mining

    By D Corley, J Moore, M Grant, A, W R

    Resource estimates are the corner stone of technical and investment decision-making. Prior to mining, resource estimation uncertainty has the greatest potential to lead to poor investment decisions, d

    May 24, 2023

  • AUSIMM
    Modelling metal recovery by co-kriging the feed and concentrate masses of metal

    By P Dowd, A Adeli, C Xu, X Emery

    Geometallurgical modelling is increasingly being incorporated into mineral resource modelling and estimation as a means of increasing efficiency, decreasing operating costs and reducing risk in mining

    May 24, 2023

  • AUSIMM
    Drill hole spacing analysis for classification and cost optimisation – a critical review of techniques

    By J Levett, O Rondon, I Glacken

    Reporting Codes are not prescriptive on methodologies to report or classify Mineral Resource Estimation results, but the assessment of risk and uncertainty is required, and is likely to be increasingl

    May 24, 2023

  • AUSIMM
    An evolution of drill hole spacing studies at Newmont Corporation

    By A Jewbali, L Allen

    At Newmont Corporation drill hole spacing studies are done to support the business in understanding the cost of collecting additional information (with a specific focus on drill hole sampling density)

    May 24, 2023

  • AUSIMM
    Benchmarking and cross validation of the multivariate conditional simulation model of the Olympic Dam deposit

    By D Clarke, I Minniakhmetov

    The Olympic Dam deposit is truly a world-class IOCG-Ag deposit, the world’s fourth largest deposit of copper and the world’s largest known single uranium deposit. Traditional and non-traditional metho

    May 24, 2023