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Published byHorace Holmes Modified over 9 years ago
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Mining Applications and Chemometrics www.spectralevolution.com
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Incorporated 2004 Full line supplier of UV-VIS-NIR spectrometers for lab, inline process & field portable remote sensing Mfg facility in North Andover, MA OEM manufacturer >100 field portable UV-VIS-NIR instruments in field use worldwide
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Field portable full range UV-VIS-NIR spectrometers & spectroradiometers Laboratory full range UV-VIS-NIR spectrometers & spectroradiometers Single detector InGaAs photodiode array lab spectrometers Single detector Si spectrometers, spectroradiometers & spectrophotometers Light sources & accessories
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Spectrometers for mining exploration, mineral identification, and production oreXpress™ Full range portable spectrometer for mining and mineral identification oreXpress Platinum Also includes a range of FOV lenses, internal battery, membrane control panel for standalone operation, and on-board storage for 1,000 spectra
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oreXpress & oreXpress Platinum True field portability <7 lbs Full range UV/VIS/NIR – 350-2500nm Fast/High Signal to Noise ratio for better reflectance values Unmatched stability & performance through SWIR2 DARWin SP Data Acquisition software saves scans as ASCII files for use with 3 rd party software EZ-ID real-time mineral ID with USGS & SpecMIN libraries
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EZ-ID™ Software with Library Builder Module Real-time mineral identification in the field USGS and SpecMIN libraries Select different spectral regions of interest Compare unknown mineral sample spectra to known library Best match score quickly and automatically displayed
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Qualitative & Quantitative Analysis Use EZ-ID for mineral identification and qualitative analysis What is there Use reflectance spectroscopy and chemometrics for quantitative analysis How much is there
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Widely used in mining exploration and mineral identification Identification of key alteration minerals associated with potential economic deposits Qualitative mineralogy describes the process of using NIR to quickly ID mineral species during exploration
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Usage is typically bound by cost (high) and speed (slow) Available examples: Qemscan/MLA Quantitative X-ray diffraction Better solution – Quantitative Reflectance Spectroscopy Analyze a greater number of samples in less time, at an affordable cost
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Use mineralogical and metallurgical information from a representative set of samples and correlated reflectance spectra to develop statistical calibration models Calibration “trains” the spectrometer to analyze additional unknown samples Leverage the detailed, more costly analysis of a few samples to analyze a much larger set of related samples
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Useful for mining process optimization Real-time or near real-time knowledge of mineralogical and metallurgical properties that impact metal recovery, allows for ▪ Intelligent ore sorting ▪ Optimization of ore processing Useful for gangue minerology to minimize process cost and increase yield Gangue can affect extractability ▪ Talc and hornblende interfere with flotation ▪ Carbonates increase acid costs ▪ Clays can reduce yield due to loss of heap permeability
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www.spectralevolution.com oreXpress Mineral Analysis/ Identification
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www.spectralevolution.com Iron Minerals
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www.spectralevolution.com Calcite Talc Hornblende
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www.spectralevolution.com Clays
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Advantages of reflectance spectroscopy High throughput Hundreds to thousands of samples per day – ideal for rapid blast hole chip analysis Frequent (<1 minute intervals) measurements for in-process sensors Non-contact measurements Simultaneously determine multiple properties
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Create Standards Collect Spectra Predict Concentrations Build, Optimize & Test Model Measure Unknown Access Model
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Prepare Calibration Set Samples should reflect the physical properties and diversity that will be encountered in the field Analyze the properties of interest using appropriate reference analytical methods, such as: Qemscan X-ray diffraction Acid consumption Other metallurgical tests Measure the reflectance spectra
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Things to consider in measuring spectra Features can overlap and may not be from a single component Spectral features in minerals can result from crystal field effects, charge transfer, color centers, and conduction band transitions Spectral features in organic and industrial samples come primarily from CH, NH, OH, and SH bonds Multivariate models can consider all, or a substantial portion of the whole spectrum
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Develop and validate your calibration Match each reflectance spectrum you have collected to the corresponding reference analyses Develop calibration equations using multivariate chemometric techniques like partial least-squares regression Validate the performance of the calibration by using an independent set of samples
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How to select a reference method NIR is a secondary method – the reference needs to be well controlled with the lowest possible error The Standard Error of Laboratory (SEL) should be known and documented If there are changes in the reference method, new reference data may be substantially different from your original data Submission of known samples is a good idea
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Things to consider in collecting spectra Verify your system performance using wavelength standards Control particle size, moisture, temperature, and sample packing, or stabilize your model to resist changes in these parameters Use the same sample preparation as optical geometry can affect your outcome
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Now apply your calibration Prepare unknown samples with the same method used for calibration samples Measure the reflectance spectrum of the unknown using the same set-up used in building the calibration Apply the calibration to the unknown reflectance spectrum to predict mineralogical and metallurgical properties
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How many samples will I need for calibration and test? Reserve 20% of samples for an independent test set 60-90 samples for a feasibility study 120-180 for starting model >180 for a robust production model
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How many samples will I need for calibration and validation? Cover the anticipated range of composition Scan in the form that will be analyzed by the model – make them match Contain a natural combination of minerals - avoid blending as it can cause problems, beware cross correlations
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Ensuring that your model retains its integrity Watch out for samples with high spectral residual and samples that predict at or near the extremes of your model Establish a consistent monitoring program with reference analysis done frequently Implement a plan and schedule for improvement of the model including identifying new samples Establish criteria for revising the model based on time, increased validation error, or similar characteristics
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Examples of chemometric analyses using reflectance spectroscopy
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