Blog
The latest from our team
Explore educational resources on the challenges and solutions in geostatistical and geometallurgical modeling
classification (5)
compositing (1)
estimation (11)
gaussian (1)
geometallurgy (2)
gmm (3)
htpg (1)
imputation (1)
innovation (1)
multivariate (1)
nonlinear (1)
open pit (2)
ppmt (1)
resources (12)
simulation (11)
spacing (1)
training (1)
trends (2)
Clear All
Blog Image
resources
simulation
estimation
open pit
Challenges with the Parker Challenge
Clayton V. Deutsch, November 18, 2024
Competitions can be useful to determine best practices, stress test legacy techniques, investigate new alternatives and determine the circumstances where certain techniques work well. In numerical prediction, perhaps the best-known competitions are hosted by Kaggle where nearly half a million…
Read more
Blog Image
resources
simulation
estimation
open pit
Probabilistic Modeling of Underground Resources
Clayton V. Deutsch, September 5, 2024
Probabilistic modeling of open pit resources is well established; simulate at high resolution, average to a selective mining unit (SMU) size that represents future mining operations and grade control information, then report expected resources. This blog addresses probabilistic modeling of underground resources
Read more
Blog Image
resources
spacing
classification
Use Drill Hole Spacing for Mineral Resource Classification
Clayton V. Deutsch, June 21, 2024
The mining industry is reliant on disclosing mineral resources and reserves to investors to demonstrate value and secure capital to bring new mines into production. Reporting codes have evolved to protect investors. Security exchange commissions require (1) mineral resources to be classified into…
Read more
Blog Image
classification
innovation
Resource Classification Challenges, Insights and Innovations
Sean Horan, June 21, 2024
Clayton's blog post, provides an opportune moment to discuss some of the practical implications of Mineral Resource classification practices. It should be noted that the author fully endorses the use of drill hole (ddh) spacing over other…
Read more
Optimal composite length for estimating block grades Default Image
resources
compositing
estimation
Optimal composite length for estimating block grades
Clayton V. Deutsch, Rose A. Aduko and Jinpyo Kim, March 17, 2024
Mineral resource estimation is based on block models of mineral grades within geological domains, with the block size chosen to reflect site-specific geological factors and mining selectivity. Estimated grades are typically calculated using ordinary kriging with composited drill hole data from the geological domain. Sample lengths are often relatively small for high resolution geological information, but different vintages may exist with varying sample lengths. Compositing is recommended to ensure consistency and improve block estimates. The optimal composite length is a critical decision, as too short or long lengths can increase errors due to high variability or loss of resolution, respectively.
Read more
Note Regarding Modeling Geospatial Uncertainty with Bayesian Models Default Image
simulation
geometallurgy
Note Regarding Modeling Geospatial Uncertainty with Bayesian Models
The Resource Modeling Solutions Team, August 16, 2022
The paper “Modeling Geospatial Uncertainty of Geometallurgical Variables with Bayesian Models and Hilbert–Kriging” by Hoffimann and others draws attention to the important topic of multivariate geostatistical modeling of geological and metallurgical variables. As with all methodologies, there are…
Read more
Blog Image
resources
imputation
multivariate
To Impute or not to Impute
Clayton Deutsch, February 1, 2022
To impute is to put upon something or someone without their acceptance and, perhaps, without just cause. I always think about the trailer on many emails I receive: If you have received this message in error,… The sender imputes responsibility on the recipient without asking for or gaining…
Read more
Blog Image
resources
training
The Importance of Training
Clayton Deutsch, December 7, 2020
Some of the greatest harm to the advancement of geostatistics has been caused by experienced geostatisticians who have stagnated. As an example, and at the extreme, a senior level executive in a mining company told me not long ago that inverse distance to a high power was sufficient for their…
Read more
Blog Image
resources
simulation
estimation
trends
gmm
Scenarios versus Parameter Uncertainty
Clayton Deutsch, October 9, 2020
An important goal of modern resource modeling is accurate and precise assessments of uncertainty for production volumes relevant for technical and economic decision making. Volumes of relevance often relate to weekly, monthly, quarterly or annual production. These volumes are large and, for the…
Read more
Blog Image
simulation
estimation
geometallurgy
nonlinear
Geostatistics with Nonlinear Variables
Clayton Deutsch, September 8, 2020
Many rock properties like mass fractions, volume fractions, thickness, and position average linearly. For rock properties that average nonlinearly, one rock type would have more influence on the effective property. This is common with variables such as recovery and throughput. In special circumstances, the effective property can go outside the range of the two pure components. This would depend on specific chemical reactions or increased efficiency of a mixture relative to a pure component, for example, performance of a semi-autogenous grinding (SAG) mill.
Read more
Blog Image
resources
simulation
estimation
classification
Resource Calculation with Incomplete Information
Clayton Deutsch, August 5, 2020
In most cases, mining will benefit from significantly more data in the future than available at the time of resource calculation. There may be one hundred times more data at the time of mining from blast hole samples or dedicated grade control drilling. The uncertainty will be greatly reduced. The…
Read more
Blog Image
resources
simulation
estimation
trends
gmm
Trends in Geostatistics
Clayton Deutsch, June 30, 2020
A trend in geostatistics could be a general tendency in the direction industry is taking, like toward automation. A trend in geostatistics is also a non-stationary or locally-varying mean in a regionalized variable, particularly for a continuous variable. We would denote such a trend as . This kind…
Read more
Blog Image
resources
simulation
estimation
classification
Resource Modeling as an Essential Service
Clayton Deutsch, June 10, 2020
Mining provides critical resources and products that society needs, but what of resource modeling within the mining sector? A critical analysis of what we do in resource modeling suggests that the cost of a precise and accurate quantification of resource uncertainty is modest with appropriate software and trained professionals. The benefits are far greater than the cost, raw data are turned into support information for important short- and long-term decisions...
Read more
Blog Image
simulation
estimation
gaussian
ppmt
gmm
htpg
The Gaussian Distribution in Geostatistics
Clayton Deutsch, April 13, 2020
Gaussian algorithms have infected virtually all corners of geostatistics: radial basis functions (RBF) for interpolation and implicit modeling, hierarchical truncated pluriGaussian (HTPG) for categorical variable modeling, detrending non-stationary variables with a Gaussian Mixture Model (GMM…
Read more
Blog Image
resources
simulation
estimation
classification
Public Disclosure of Probabilistic Resource Estimates
Clayton Deutsch, March 29, 2020
The state of nature is uncertain. Geological variability at all scales and sparse sampling make resource uncertainty an inevitable reality for mining companies and the concerned public. The workflow for probabilistic resource estimation is established, providing accurate and precise estimates of…
Read more
Blog Image
resources
simulation
estimation
Probabilistic Resource Estimation
Clayton Deutsch, March 27, 2020
Geostatistical simulation of mineral deposits for resource estimates and long-range planning is established. Professionals have access to the methodology, software and training to reliably calculate probabilistic resources. We have come a long way. In the early days, simulation amounted to multiple…
Read more
Talk To Our Experts
White Squares
contact@resmodsol.com
Offices located in:
    Canada:
    • Edmonton, Alberta
    • Calgary, Alberta
    • Toronto, Ontario
    United States of America:
    • Denver, Colorado
    Australia:
    • Brisbane, Queensland
GeologicaAI Logo
Resource ModelingSolutions
Resource Modeling Solutions, a division of GeologicAI, is focused on helping modern mining, environmental, and petroleum companies manage uncertainty and understand geological variability to make the best decisions possible.
Sign up below for our newsletter
Copyright © 2018-2024 Resource Modeling Solutions Ltd. All rights reserved.
Privacy Policy