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  • CIM
    MAC and the AFN: Taking Up the Corporate Challenge

    Taking Up the AFN Corporate Challenge ?? About MAC ?? ?Towards Sustainable Mining? ??Mining and Aboriginal Peoples Framework ?? AFN-MAC Relationship ?? A New MAC Northern Initiative ??Social and

    May 1, 2009

  • CIM
    Mac porphyry molybdenum prospect, north-central British Columbia

    By G. R. Cope, C. D. Spence

    "The Mac porphyry molybdenum prospect is located 100 km east of Smithers in central British Columbia. The identification of anomalous levels of molybdenum, copper, and silver in three adjacent lakes,

    Jan 1, 1995

  • SME
    Macassa No. 3 Shaft - Deep Shaft Sinking By Conventional Methods ? Introduction

    By F. A. Edwards

    The Macassa Division of Lac Minerals Ltd. is a high grade gold mine that has been operating in Kirkland Lake, Ontario for the past 51 years. It produces approximately 120,000 tonnes of ore per year, a

    Jan 1, 1985

  • SME
    Macassa Number Three Shaft Deep Shaft Sinking By Conventional Methods

    By W. M. Shaver, W. R. Dengler, F. A. Edwards

    INTRODUCTION The Macassa Division of Lac Minerals Ltd. is a high grade gold mine that has been operating in Kirkland Lake, Ontario for the past 51 years. It produces approximately 120,000 tonnes of

    Jan 1, 1985

  • CIM
    Machinability of A356 and A319 Aluminum Alloys

    By J. Kouam

    Al-Si-Cu and Al-Si-Mg alloys are widely used in several applications. Although they can be produced near-net-shapes, products made of these alloys very often require some machining. The purpose of thi

    Jan 1, 2011

  • AIME
    Machinability of Free-cutting Brass Rod

    By Alan Morris

    BRASS rod for use in automatic screw machines is one of the major products of the brass mills. A large tonnage is consumed each year in the manufacture of an endless variety of finished articles and p

    Jan 1, 1932

  • DFI
    Machine Foundation Repair

    By Scott D. Thomson

    The client for this project specializes in the use of state-of-the-art technology to fabricate and assemble composites and metal-bonded structures for commercial and military aircraft programs. One of

    Jan 1, 2003

  • NIOSH
    Machine Injury Prediction by Simulation Using Human Models

    By Dean H. Ambrose

    This paper presents the results of a study using computer human modeling to examine machine appendage speed. The objective was to determine the impact of roof bolter machine appendage speed on the li

    Jan 1, 2003

  • NIOSH
    Machine Injury Prediction by Simulation Using Human Models (0111a15c-4251-44e2-bc90-9d29854de8ad)

    By Dean H. Ambrose

    This paper presents the results of a study using computer human modeling to examine machine appendage speed. The objective was to determine the impact of roof bolter machine appendage speed on the li

    Jan 1, 2003

  • SME
    Machine Learning and Deep Learning Methods in Mining Operations: a Data-Driven SAG Mill Energy Consumption Prediction Application "Mining, Metallurgy & Exploration (2020)"

    By Sebastian Avalos, Julian M. Ortiz, Willy Kracht

    Semi-autogenous grinding mills play a critical role in the processing stage of many mining operations. They are also one of the most intensive energy consumers of the entire process. Current forecasti

    Jun 16, 2020

  • AUSIMM
    Machine learning at a gold-silver mine: a case study from the Ban Houayxai Gold-Silver Operation

    By P Stewart, S Cowie, A Offer, J Carpenter, E Jones

    The Ban Houayxai Gold-Silver Operation is a producing asset for Australian-based copper and gold producer, PanAust Limited. The Operation lies within PanAust’s 2600 square-kilometre Phu Bia Contract A

    Nov 21, 2018

  • SME
    Machine Learning Driven Domain Modeling for Stratigraphic Deposits

    By Carlos Fonseca, Gustavo Usero, Roberto Mentzingen Rolo, Gabriel Moreira, Octavio Rosa de Almeida Guimarães

    Geological domain modeling is an important step in mineral resources evaluation. The procedure can be laborious and time-consuming, especially in multivariate settings. However, estimates are signific

    Jun 25, 2023

  • AUSIMM
    Machine learning for predicting chemical system behaviour of CaO-MgO-SiO2-Al2O3 steelmaking slags case study

    By B Laidens, D Souza, W Bielefeldt

    The CaO-MgO-SiO2-Al2O3 system, characterised by its intricate phases and thermodynamic properties, plays a pivotal role in steel secondary refining processes, encompassing desulfurisation, non-metalli

    Jun 19, 2024

  • SME
    Machine Learning for Slope Failure Prediction Based on Inverse Velocity and Dimensionless Inverse Velocity - Mining, Metallurgy & Exploration (2023)

    By Maral Malekian, Pat Bellett, Eranda Tennakoon, Fernanda Carrea, Moe Momayez

    Slope instabilities in open-pit mines pose a safety risk to workers and a financial burden on production. The direct impact of slope stability on safety and production makes slope failure predictions

    Jul 12, 2023

  • AUSIMM
    Machine learning in resource geology – why data quality is critical

    By P M. Hetherington, F A. Pym, M P. Murphy, K E. Crook

    Consultants in the mining industry have the opportunity to visit interesting deposits all over the world. Each deposit has its own set of challenges to face when it comes to defining and understanding

    Mar 22, 2022

  • AUSIMM
    Machine learning integration of hyperspectral and geophysical data for improved exploration targeting

    By B P. Voutharoj, R A. Dutch, M Paknezhad, T Ostersen

    With the proliferation of new sensor technologies, acquiring multiple data sets over the same ground is becoming cheaper and easier than ever. This new, higher resolution multivariate data provides a

    Sep 1, 2024

  • SME
    Machine Learning Prediction Of The Load Evolution In Three-point Bending Tests Of Marble

    By K. KAKLIS, O. SAUBI, Z. Agioutantis, R. JAMISOLA

    Machine learning in the form of artificial neural networks was applied to investigate whether specimen load evolution can be predicted as a function of acoustic emission (AE) signals in the case of th

    Nov 1, 2022

  • SME
    Machine Learning Prediction of the Load Evolution in Three‑Point Bending Tests of Marble (Mining, Metallurgy & Exploration)

    By K. KAKLIS, O. SAUBI, Z. Agioutantis, R. JAMISOLA

    Three-point bending (TPB) tests were conducted on prismatic Nestos marble (Greece) specimens. The specimens were instrumented with piezoelectric sensors, and comprehensive recordings of acoustic emiss

    Sep 7, 2022

  • AUSIMM
    Machine learning to estimate fines content of tailings using gamma cone penetration testing

    By S McGregor, J Sharp, I Entezari, T Boulter

    The piezocone penetration test (CPTu) is one of the primary screening tools used by the mining industry to evaluate whether tailings are susceptible to liquefaction (static or cyclic). Liquefaction an

    Jul 1, 2021

  • AUSIMM
    Machine Mining

    By Littlewood E

    We offer these notes as a practical contribution. All the arguments we advance have been tested by practical experience.In its preparation we realised that our subject was one of such importance and c

    Jan 1, 1944