EEO: Opportunities Dr Marcin Ziemski September 2011 1 Challenges for the Mining Industry Declining ore grades Average Ore Grades Over Time 8 Copper Grade (%) Lead Grade (%) 7 Increasing complexity Nickel Grade (%) 6 Gold Grade (g/t) Increased world demand Ore Grade 5 4 • • 3 2 • 1 0 1970 1975 1980 1985 1990 Year 1995 2000 2005 2010 • • Social Expectations Environmental Legislation Energy Cost/Availability Water Limitations Carbon Taxes •Driving a significant increase in energy consumption •Mining Multi-Factored Productivity fell by 24.3% between 2001 - 2007* *Australian Government Productivity Commission (2008) 2 Increasing Energy Consumption Growth in mining energy consumption has been particularly strong since 2001/02 • 9.1 per cent a year Research Report 08.15 December 2008. www.Abare.gov.au 3 Reversing the Trend Extend approach from: Doing the same things more (energy) efficiently Alumina 3-6% Process changes* Alumina 1115% Iron/Steel 89% Technology changes* Iron/Steel ~15% *Energetics To: Doing things that are more energy efficient 15% 30%+? 4 ‘Standard’ Energy Mitigation Approach Doing the same things more efficiently Typically energy consumption/costs reduction limited to ~10% • Standard methodology to reduce energy demand in mining operations • Step-by-step methodology includes: – Pumping systems – Motor selection/application/operating regimes – Power factor correction considerations – Energy and waste heat recycling – Alternative energy source options – Automation and control – Energy Contracts Pumping Motors Energy Mitigation Standard Methodology Energy recycling Alternative Energy 5 ‘Standard’ Energy Mitigation Approach Doing the same things more efficiently Case study 1 – Haulage to Kurri Kurri Smelter, Hunter Valley • • Monitoring of fuel usage – Engine upgrades – Revised maintenance regimes Driver benchmarking and re-training Haulage fuel consumption reduced by ~13% 6 ‘Standard’ Energy Mitigation Approach Doing the same things more efficiently Case study 2 – Xstrata North Queensland • • Conversion of waste heat to steam at Xstrata MIM copper smelter (2009) Reduced consumption of natural gas by 1.15 PJ • • Underground Pelton Wheel hydro power generator at the Xstrata MIM copper operations (2009) Reduced consumption of natural gas by 37,500 GJ • • Solar hot water, thickener and cooling pump upgrades, boiler replacement Reduced consumption of natural gas by another 2,000 GJ 7 ‘Standard’ Energy Mitigation Approach Doing the same things more efficiently Case study 3 – Downer EDI Mining Commodore Mine • Haul truck analysis, benchmarking and operations • Improved haulage energy intensity by 18% between 2005-2010 Case study 4 – Rio Tinto Coal Blair Athol mine • Revised operation/control of Coal Handling and Prep Plant (CHPP) • Improved CHPP energy intensity by more than 10% (~2007) 8 Extending Energy Mitigation Approach Doing things that are more energy efficient • Future circuits – – Effective use of (alternative) transport and fragmentation technologies In-circuit sorting/separation: Multiple waste removal points • Integrating optimisation of the whole extraction cycle – Optimising blasting, comminution and further processing in combination – Modelling the end-to-end mine site operations • • • • Insights and new opportunities Understanding up/down-stream effects Optimising one stage may not improve overall operation! Extend to off-site processes??? 9 Future/flexible circuits 98% of milled material is barren (precious and base metals) • Replace mills with alternatives where applicable (eg HPGR) • Remove waste at every opportunity before mill – XRT, colorimetric, density, magnetic, electrostatic sorting (others?) • Identify new waste removal opportunities – Dependent on deposit properties – improve orebody knowledge – Eg Blast/primary crush fragmentation size bias of grade Many of these technologies are being trialled NOW 10 Selective Blasting 0.25 Ore Low Grade 0.2 0.15 Blast Energy Distribution 0.1 0.05 0 0 5 10 15 20 25 30 P50 (x10 mm) Size Upgrading metal content through selective higher fragmentation of high grade material: • Increase the metal content of the ore material (grade up ~20%++) • Reduce waste to be processed (30%+ reduction of waste to mill) • Blasting energy is more cost-effective than crushing and produces low GHG emissions Expected 20%++ energy reduction per ton blasted 11 Selective Blasting: Matching Energy Distribution to Metal Content Standard blast Selective blast 12 Integrated (systems) analysis and optimisation Blending Mine Block Info Reporting Drill & Blast Simulator Reporting Load & Haul Model Flotation Simulator Reporting Full Reporting of: Energy, Water, Emissions and Costs.. Comminution Simulator Reporting Reporting Summary 13 Integrated (systems) analysis and optimisation PF=1.5 TPH=830 Power=30.8kWh/t PF=1 TPH=810 Power=32.1kWh/t 1.0 2.9 1.0 2.8 Result: Throughput Increase of 25% and Energy Reduction of 15% 16.8 18.1 D&B D&B L&H L&H Comminution Comminution Flotation Flotation 78.1 PF=1 TPH=810 Power=33.4kWh/t 79.3 PF=1.5 TPH=990 Power=29.5kWh/t PF=1 TPH=965 Power=31.1kWh/t 1.1 3.0 1.0 2.9 0.9 2.7 26.2 D&B 24.2 D&B L&H L&H Comminution Comminution 69.9 D&B 21.4 Flotation L&H Flotation 71.7 PF=1 TPH=810 Power=32.1kWh/t 1.0 2.8 Comminution 18.1 D&B 75.0 L&H Flotation Comminution PF=2 TPH=1010 Power=28.4kWh/t Flotation 78.1 PF=1 TPH=965 Power=31.1kWh/t 1.0 2.9 3.0 2.8 26.2 D&B L&H Comminution Flotation 69.9 D&B 22 PF=1 TPH=810 Power=32.1kWh/t L&H PF=1.5 TPH=830 Power=30.8kWh/t 1.0 2.8 1.0 2.9 16.8 18.1 Comminution D&B D&B L&H L&H Comminution Comminution Flotation Flotation 78.1 72 PF = Blast Powder Factor TPH = Mill Throughput (t/h) Flotation 79.3 PF=1 TPH=965 Power=31.1kWh/t PF=1.5 TPH=990 Power=29.5kWh/t 1.0 2.9 1.1 3.0 26.2 D&B 24.2 D&B L&H L&H Comminution 69.9 Flotation Comminution 71.7 Flotation 14 Ultra-High Intensity Blasting • Concept: Use ultra-high intensity blasts (PF >>3) to reduce required comminution energy • Preliminary analysis: significant energy reduction and large throughput gains Feasible blast designs already prepared with PF=~4 250 63 60 60.0 58 54 220 48 50.0 Energy and CO2 SMI is partnering with world’s leading blasting companies 64 200 42 134 30.0 20.0 150 161 35 40.0 91 92 98 100 108 26 118 100 50 10.0 Ultra high energy blast (PF ~4) trials expected by mid 2012 0.0 Relative TPH 70.0 Comm energy kWh/t Blast energy kWh/t Total CO2 kg/t 0 0.7 0.9 1.2 1.6 2.1 3.0 4.5 5.7 7.2 Relative TPH % Powder Factor kg/m3 15 Efficiency of New Projects? Minerals & Energy – Major Development Projects - April 2009 (ABARE.gov.au). 16 Energy efficiency Opportunities Summary Project Description Potential Opportunity Flexible circuits: Equipment and Highly dependent on material properties design for multiple waste removal points to minimise processing of barren material Integrated optimisation analysis Energy mapping, operational planning and design for better energy performance Selective blasting: Early removal of ~20%+ energy reduction per ton blasted waste through targeted blast fragmentation energy well beyond typical regimes to reduce comminution energy 250 63 60 58 54 220 48 50.0 Energy and CO2 Ultra-high intensity blasting: Blast 64 60.0 200 42 134 30.0 20.0 150 161 35 40.0 91 92 98 100 108 26 118 100 50 10.0 0.0 Relative TPH 70.0 Comm energy kWh/t Blast energy kWh/t Total CO2 kg /t ~15% energy reduction with ~30% increase in comminution throughput 0 0.7 0.9 1.2 1.6 2.1 3.0 4.5 5.7 7.2 Relative TPH % Powder Factor kg/m3 17 EEO: Indicators Dr Marcin Ziemski September 2011 18 Selecting useful energy performance Indicators • Accept that KPI’s will not always improve – Minimising reduction in good KPI is better than improving a misleading KPI – Prepare management for a dose of reality! • Leverage the available data, capture new data – Collate, analyse, compare, report, repeat – Allocate dedicated energy personnel • Key Energy Indicator: Variability – Short term (1min/10min/1hr intervals) Effect of plant instability – Medium term (shift/weekly/FIFO schedule/monthly) – Long term (seasonal/annual) Effect of operators/teams Effect of externalities – Start up/ Shut down procedure energy profiles Often overlooked 19 Summary: energy performance indicators Compare the right KPIs Average Ore Grades Over Time 8 Copper Grade (%) Embrace weakening KPI values Lead Grade (%) 7 Nickel Grade (%) 6 Gold Grade (g/t) Ore Grade 5 4 3 2 1 0 1970 Start using kWh per product (as well) 1975 1980 1985 1990 1995 2000 2005 2010 Year Dec--04 700 Jan-05 Look carefully at variability 600 Feb-05 500 Mar-05 400 Apr-05 May-05 300 Jun-05 200 Jul-05 100 Aug-05 Sep-05 0 Residential Electricity Usage (KW) Dec-04 to Nov-05 Oct-05 Nov-05 Allocate dedicated energy management personnel 20 Thank you Questions? Dr Marcin Ziemski September 2011 21
© Copyright 2024