Targeting Workflow Report
Workflow Study: G_targeting_V2 | ![]() |
The Targeting Workflow is designed to guide the user through a step-by-step process of combining 3D datasets by different processes to obtain a comprehensive exploration interpretation. The result of the combination is an additional quantitative layer of interpretation that is tied with a multi-disciplinary approach to targeting.
The different combination methods can be based on either subjective empirical models or probabilistic models, referred to as knowledge-driven and data-driven approaches, respectively. Knowledge-driven approaches are based on the experience of domain experts and include processes such as Boolean Logic, Index Overlay, Multi-Class Index Overlay, Dempster-Shafer Belief Theory, and Fuzzy Logic. Data-driven approaches require that known occurrences of what we are looking for exist in the earth model, such as a set of deposits, and include the Prospector Model, Weights-of-Evidence, Weighted Logistic Regression, Likelihood Ratio, and Neural Networks, among others. In addition, hybrid models using combinations of two or more different approaches have proven to be effective in many studies. Harris and Sanborn-Barrie (2006)1 provide a comprehensive overview of the various modeling approaches.
The Targeting Workflow provides functionality to perform Boolean Logic, Index Overlay, Multi-Class Index Overlay, and Weights-of-Evidence prediction models. Each uses a combination of exploration criteria to generate a prediction model which can be used for targeting XYZ drillhole target positions to be further investigated for mineral potential. Each of the processes implemented here is based on documentation from Bonham-Carter (1994)2.
Targeting MethodIndex Overlay involves a combination of weighted binary properties using a simple intersection algorithm where the binary classes (1 or 0) of each property are multiplied by a single weight factor, summed over all properties being combined and normalized by the sum of all weights following the equation:

Weights are defined by the expert and are based on the significance of the evidential property to the exploration model. The result is a weighted score defining favourability of mineral potential. This method allows for a simple ranking of the contributing evidences as a whole.
| Targeting Approach | Knowledge |
| Approach Logic | Weights of Evidence |
Pre-Processing
Evidential Properties| Valid | true |
| Grid/Voxet Name | G_Evidence_Layer |
| Property | Type |
|---|---|
| AOI_Dehua_MINFILE_showings_dist_out | Binary |
| AOI_G_Surf_Mag_highs_dist_out | Binary |
| AOI_G_block_fault_INTERSECTIONS_dist_out | Binary |
| BATHOLITH | Binary |
| CONTACTS_DIKES_ALL | Binary |
| G_detailed_faults_Curve_dist_out | Binary |
| G_sigma_50m_same_origin_sig1 | Binary |
| G_sigma_50m_same_origin_sig2 | Binary |
| JOGS_PINCH_OUTS_VTDATA | Binary |
Prediction Model Volumes| Model Volume Name | Model1 |
| Model Volume Region | model_region_0 |
| Model Volume | 100 |
Evidential Property Settings
AOI_Dehua_MINFILE_showings_dist_out| Output Property Name | AOI_Dehua_MINFILE_showings_dist_out_out |
Evidential Property Reclassification| Use Lower | false |
| Reclassification Method | Manual |
| Manual Cutoff(s) | - |
| Class | Class | Lower Range Value | Upper Range Value |
|---|---|---|---|
| 1 | 1 | 0.9999 | 1.5 |
| 2 | 2 | 1.5 | 2.0001 |
AOI_G_Surf_Mag_highs_dist_out| Output Property Name | AOI_G_Surf_Mag_highs_dist_out_out |
Evidential Property Reclassification| Use Lower | false |
| Reclassification Method | Manual |
| Manual Cutoff(s) | - |
| Class | Class | Lower Range Value | Upper Range Value |
|---|---|---|---|
| 1 | 1 | 0.9999 | 1.5 |
| 2 | 2 | 1.5 | 2.0001 |
AOI_G_block_fault_INTERSECTIONS_dist_out| Output Property Name | AOI_G_block_fault_INTERSECTIONS_dist_out_out |
Evidential Property Reclassification| Use Lower | false |
| Reclassification Method | Manual |
| Manual Cutoff(s) | - |
| Class | Class | Lower Range Value | Upper Range Value |
|---|---|---|---|
| 1 | 1 | 0.9999 | 1.5 |
| 2 | 2 | 1.5 | 2.0001 |
BATHOLITH| Output Property Name | BATHOLITH_out |
Evidential Property Reclassification| Use Lower | false |
| Reclassification Method | Manual |
| Manual Cutoff(s) | - |
| Class | Class | Lower Range Value | Upper Range Value |
|---|---|---|---|
| 1 | 1 | 0.9999 | 1.5 |
| 2 | 2 | 1.5 | 2.0001 |
CONTACTS_DIKES_ALL| Output Property Name | CONTACTS_DIKES_ALL_out |
Evidential Property Reclassification| Use Lower | false |
| Reclassification Method | Manual |
| Manual Cutoff(s) | - |
| Class | Class | Lower Range Value | Upper Range Value |
|---|---|---|---|
| 1 | 1 | 0.9999 | 1.5 |
| 2 | 2 | 1.5 | 2.0001 |
G_detailed_faults_Curve_dist_out| Output Property Name | G_detailed_faults_Curve_dist_out_out |
Evidential Property Reclassification| Use Lower | false |
| Reclassification Method | Manual |
| Manual Cutoff(s) | - |
| Class | Class | Lower Range Value | Upper Range Value |
|---|---|---|---|
| 1 | 1 | 0.9999 | 1.5 |
| 2 | 2 | 1.5 | 2.0001 |
G_sigma_50m_same_origin_sig1| Output Property Name | G_sigma_50m_same_origin_sig1_out |
Evidential Property Reclassification| Use Lower | false |
| Reclassification Method | Manual |
| Manual Cutoff(s) | - |
| Class | Class | Lower Range Value | Upper Range Value |
|---|---|---|---|
| 1 | 1 | -0.0001 | 0.5 |
| 2 | 2 | 0.5 | 1.0001 |
G_sigma_50m_same_origin_sig2| Output Property Name | G_sigma_50m_same_origin_sig2_out |
Evidential Property Reclassification| Use Lower | false |
| Reclassification Method | Manual |
| Manual Cutoff(s) | - |
| Class | Class | Lower Range Value | Upper Range Value |
|---|---|---|---|
| 1 | 1 | -0.0001 | 0.5 |
| 2 | 2 | 0.5 | 1.0001 |
Precombination| Generated | true |
| Perform Data Precombination? | false |
Evidence Weights| Scores_Out | - |
| Property | Weight |
|---|---|
| AOI_Dehua_MINFILE_showings_dist_out_out | 1.5 |
| AOI_G_Surf_Mag_highs_dist_out_out | 1.1 |
| AOI_G_block_fault_INTERSECTIONS_dist_out_out | 1.1 |
| BATHOLITH_out | 1.2 |
| CONTACTS_DIKES_ALL_out | 1.1 |
| G_detailed_faults_Curve_dist_out_out | 1.2 |
| G_sigma_50m_same_origin_sig1_out | 1.15 |
| G_sigma_50m_same_origin_sig2_out | 1.3 |
| JOGS_PINCH_OUTS_VTDATA_out | 1.1 |
Processing
Prediction Model Generation| ModelName | G_Targeting_Model_V2, G_Targeting_Model_Final |
| Model | Prediction Model Properties |
|---|---|
| G_Targeting_Model_V2 | AOI_Dehua_MINFILE_showings_dist_out_out, AOI_G_Surf_Mag_highs_dist_out_out, AOI_G_block_fault_INTERSECTIONS_dist_out_out, BATHOLITH_out, CONTACTS_DIKES_ALL_out, G_detailed_faults_Curve_dist_out_out, G_sigma_50m_same_origin_sig1_out, G_sigma_50m_same_origin_sig2_out, JOGS_PINCH_OUTS_VTDATA_out |
| G_Targeting_Model_Final | AOI_Dehua_MINFILE_showings_dist_out_out, AOI_G_Surf_Mag_highs_dist_out_out, AOI_G_block_fault_INTERSECTIONS_dist_out_out, BATHOLITH_out, CONTACTS_DIKES_ALL_out, G_detailed_faults_Curve_dist_out_out, G_sigma_50m_same_origin_sig1_out, G_sigma_50m_same_origin_sig2_out, JOGS_PINCH_OUTS_VTDATA_out |
Post-Processing
TargetingOnce the prediction model is generated, the workflow allows for an advanced targeting approach by allowing the user to refine and interpret the model down to the drillhole targets level. The prediction model can be refined by looking only at cells within a specific sub-region of the model, for example, in only the undrilled portion of the model, or within the spatial extents of a claim block area, etc.
A target value cutoff should be applied here which will show only the top percentage of the target result. From this top, typically 1-5%, of data, clusters of values can be generated using a connectivity type factor and ranked based on size. The cells of each cluster can be analyzed separately and the top cells within those clusters can be exported as a set of points representing the XYZ values of your drillhole targets.
| Prediction Model Name | G_Targeting_Model_V2 |
| Target Cutoff | 0.860465109348297 (99.9749%) |
| Cluster Connectivity Type | corners |
Target Clusters| Target_Rank | Target_Volume | Target_Cells | Target_Min | Target_Max | Target_Mean | Target_Median |
|---|---|---|---|---|---|---|
| 1 | 0 | 1 | 0.6418605 | 0.6418605 | 0.6418605 | 0.6418605 |
| 2 | 0 | 1 | 0.5767442 | 0.5767442 | 0.5767442 | 0.5767442 |
| 3 | 0 | 1 | 0.5767442 | 0.5767442 | 0.5767442 | 0.5767442 |
| 4 | 0 | 6 | 0.5767442 | 0.5767442 | 0.5767441 | 0.5767442 |
| 5 | 0 | 15 | 0.6744186 | 0.6744186 | 0.6744185 | 0.6744186 |
| 6 | 0 | 1 | 0.6511628 | 0.6511628 | 0.6511628 | 0.6511628 |
| 7 | 0 | 10 | 0.6465116 | 0.6511628 | 0.6488372 | 0.6465116 |
| 8 | 0 | 27 | 0.6465116 | 0.6465116 | 0.6465117 | 0.6465116 |
| 9 | 0 | 22 | 0.6465116 | 0.6465116 | 0.6465118 | 0.6465116 |
| 10 | 0 | 6 | 0.6465116 | 0.6465116 | 0.6465116 | 0.6465116 |
| 11 | 0 | 1 | 0.6465116 | 0.6465116 | 0.6465116 | 0.6465116 |
| 12 | 0 | 7 | 0.6511628 | 0.6511628 | 0.6511628 | 0.6511628 |
| 13 | 0 | 2 | 0.6465116 | 0.6465116 | 0.6465116 | 0.6465116 |
| 14 | 0 | 2 | 0.6511628 | 0.6511628 | 0.6511628 | 0.6511628 |
| 15 | 0 | 250 | 0.6325582 | 0.8604651 | 0.6984743 | 0.6511628 |
| 16 | 0 | 1 | 0.6325582 | 0.6325582 | 0.6325582 | 0.6325582 |
| 17 | 0 | 14 | 0.6465116 | 0.6465116 | 0.6465116 | 0.6465116 |
| 18 | 0 | 20 | 0.6511628 | 0.6511628 | 0.6511629 | 0.6511628 |
| 19 | 0 | 4 | 0.6325582 | 0.6325582 | 0.6325582 | 0.6325582 |
| 20 | 0 | 8 | 0.6325582 | 0.6325582 | 0.6325582 | 0.6325582 |
| 21 | 0 | 6 | 0.6511628 | 0.6511628 | 0.6511628 | 0.6511628 |
| 22 | 0 | 28 | 0.6325582 | 0.6325582 | 0.6325582 | 0.6325582 |
| 23 | 0 | 2 | 0.6511628 | 0.6511628 | 0.6511628 | 0.6511628 |
| 24 | 0 | 1 | 0.6511628 | 0.6511628 | 0.6511628 | 0.6511628 |
| 25 | 0 | 2 | 0.6511628 | 0.6511628 | 0.6511628 | 0.6511628 |
| 26 | 0 | 18 | 0.6511628 | 0.6511628 | 0.6511629 | 0.6511628 |
| 27 | 0 | 13 | 0.6511628 | 0.6511628 | 0.6511627 | 0.6511628 |
| 28 | 0 | 67 | 0.6325582 | 0.6511628 | 0.6358902 | 0.6325582 |
| 29 | 0 | 8 | 0.6511628 | 0.6511628 | 0.6511628 | 0.6511628 |
| 30 | 0 | 9 | 0.6511628 | 0.6511628 | 0.6511628 | 0.6511628 |
Drillhole Target Centroids ListThe following table displays a list of targets within the Gocad pointset object generated by the 'Add to Centroid Target List' command. These points represent the centroid of the selected Target Cluster. They are ranked by the order they were selected in the Target Clusters Table.
| Centroid_Id | Centroid_X | Centroid_Y | Centroid_Z |
|---|---|---|---|
| 0 | 351775 | 6.96692e+06 | 1401 |
| 1 | 352175 | 6.97452e+06 | 1401 |
| 2 | 352075 | 6.97442e+06 | 1401 |
| 3 | 352025 | 6.9743e+06 | 1401 |
| 4 | 351218 | 6.974e+06 | 1401 |
| 5 | 350525 | 6.97138e+06 | 1401 |
| 6 | 351055 | 6.97136e+06 | 1401 |
| 7 | 351803 | 6.97111e+06 | 1401 |
| 8 | 351266 | 6.97109e+06 | 1401 |
| 9 | 349767 | 6.97071e+06 | 1401 |
| 10 | 351275 | 6.97062e+06 | 1401 |
| 11 | 352861 | 6.9706e+06 | 1401 |
| 12 | 351425 | 6.9705e+06 | 1401 |
| 13 | 352200 | 6.9704e+06 | 1401 |
| 14 | 350443 | 6.97086e+06 | 1401 |
| 15 | 352075 | 6.97012e+06 | 1401 |
| 16 | 348661 | 6.97004e+06 | 1401 |
| 17 | 351080 | 6.96984e+06 | 1401 |
| 18 | 352250 | 6.9698e+06 | 1401 |
| 19 | 352000 | 6.96982e+06 | 1401 |
| 20 | 351875 | 6.9696e+06 | 1401 |
| 21 | 352888 | 6.96968e+06 | 1401 |
| 22 | 353375 | 6.9695e+06 | 1401 |
| 23 | 351425 | 6.96948e+06 | 1401 |
| 24 | 352175 | 6.9694e+06 | 1401 |
| 25 | 353719 | 6.96902e+06 | 1401 |
| 26 | 350571 | 6.96886e+06 | 1401 |
| 27 | 351900 | 6.96882e+06 | 1401 |
| 28 | 351588 | 6.96848e+06 | 1401 |
| 29 | 351436 | 6.9678e+06 | 1401 |
Drillhole Target Cells ListThe following table displays a list of targets within the Gocad pointset object generated by the 'Add to Drillhole Target List' command. These points represent the individual cells selected from the target region. They are ranked by the order they were selected in the Property Viewer Table.
References:
1 Harris, J.R., Sanborn-Barrie, M., 2006, Mineral Potential Mapping: Examples from the Red Lake Greenstone Belt, Northwest Ontario, in Harris, J.R., ed., GIS for the Earth Sciences: Geological Association of Canada, Special Publication 44, p. 1-21.
2 Bonham-Carter, G.F., 1994, Geographic Information Systems for Geoscientists: Modeling with GIS: Pergamon, Oxford, 398 p.
3Thiart, C., Bonham-Carter, G.F., Agterberg, F.P., Cheng, Q., and Panahi, A., 2006, An application of the new omnibus test for conditional independence in weights-of-evidence modelling, in Harris, J.R., ed., GIS for the Earth Sciences: Geological Association of Canada, Special Publication 44, p. 131-142.
4 Agterberg, F.P., Bonham-Carter, G.F., Wright, D.F., 1990, Statistical Pattern Integration for Mineral Exploration: in Gaal, G. and Merriam, D.F., ed., Computer Applications in Resource Estimation: Prediction and Assessment for Metals and Petroleum, Pergamon Press, Toronto, p. 1-21.
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