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——————————
Gridding Report
——————————
Sun Nov 13 23:22:49 2016
Elapsed time for gridding: 0.01 seconds
Data Source
Source Data File Name: C:UsersDianaDesktopgeoquimica aplicada.dat
X Column: C
Y Column: D
Z Column: E
Filtered Data Counts
Active Data: 98
Original Data: 98
Excluded Data: 0
Deleted Duplicates: 0
Retained Duplicates: 0
Artificial Data: 0
Superseded Data: 0
Exclusion Filtering
Exclusion Filter String: Not In Use
Duplicate Filtering
Duplicate Points to Keep: First
X Duplicate Tolerance: 0.00031
Y Duplicate Tolerance: 0.91
No duplicate data were found.
Breakline Filtering
Breakline Filtering: Not In Use
Z Data Transform
Transformation method: Linear (use Z values directly)
No untransformable data were found.
Data Counts
Active Data: 98
Univariate Statistics
———————————————————————————————————————————
—
X Y Z
———————————————————————————————————————————
—
Count: 98 98 98
1%-tile: 398815 853582 0.2
5%-tile: 399670 8533467 0.2
10%-tile: 399764 8534002 0.2
25%-tile: 399940 8534276 0.2
50%-tile: 400470 8534761 0.5
75%-tile: 400720 8535154 0.5
90%-tile: 401054 8535325 3
95%-tile: 401333 8535479 7.7
99%-tile: 401428 8536225 9.9
Minimum: 398815 853582 0.2
Maximum: 401449 8536260 27
Mean: 400399.397959 8456341.72449 1.33979591837
Median: 400471 8534777 0.5
Geometric Mean: 400399.024038 8336539.28371 0.520964529403
Harmonic Mean: 400398.64997 7816941.04177 0.363193596363
Root Mean Square: 400399.771734 8491502.34885 3.57883517705
Trim Mean (10%): 400404.213483 8534696.20225 0.734831460674
Interquartile Mean: 400420.204082 8534740.65306 0.434693877551
Midrange: 400132 4694921 13.6
Winsorized Mean: 400410.112245 8534715.56122 0.735714285714
TriMean: 400400 8534738 0.425
Variance: 302404.675047 602040044954 11.1265442878
Standard Deviation: 549.913334124 775912.395154 3.33564750653
Interquartile Range: 780 878 0.3
Range: 2634 7682678 26.8
Mean Difference: 616.446244477 157398.847254 1.88872291185
Median Abs. Deviation: 384.5 412 0.3
Average Abs. Deviation: 434.193877551 78833.4387755 1.05204081633
Quartile Dispersion: 0.000974196288062 5.14369841289e-005 0.428571428571
Relative Mean Diff.: 0.00153957835007 0.0186131133748 1.40970940869
Standard Error: 55.5496353749 78378.9880314 0.336951281645
Coef. of Variation: 0.00137341199044 0.0917550898998 2.48966835979
Skewness: -0.419471699664 -9.59850253333 5.32670896946
Kurtosis: 3.25056226367 94.0608075088 37.3930048049
Sum: 39239141 828721489 131.3
Sum Absolute: 39239141 828721489 131.3
Sum Squares: 1.57113577661e+013 7.06634998977e+015 1255.19
Mean Square: 160319977205 7.21056121405e+013 12.8080612245
———————————————————————————————————————————
—
Inter-Variable Covariance
————————————————————————————————
X Y Z
————————————————————————————————
X: 302404.68 14561503 169.00359
Y: 14561503 6.0204004e+011 -606182.77
Z: 169.00359 -606182.77 11.126544
————————————————————————————————
Inter-Variable Correlation
————————————————————————————————
X Y Z
————————————————————————————————
X: 1.000 0.034 0.092
Y: 0.034 1.000 -0.234
Z: 0.092 -0.234 1.000
————————————————————————————————
Inter-Variable Rank Correlation
————————————————————————————————
X Y Z
————————————————————————————————
X: 1.000 -0.666 -0.202
Y: -0.666 1.000 0.254
Z: -0.202 0.254 1.000
————————————————————————————————
Principal Component Analysis
————————————————————————————————————————
PC1 PC2 PC3
————————————————————————————————————————
X: 0.999999814828 0.999999814828 -0.000608078386196
Y: -2.41863293243e-005 -2.41863293243e-005 1.02158851841e-006
Z: 0.000608078410727 0.000608078410727 1.02158851841e-006
Lambda: 602040045306 302052.588448 10.4045073633
————————————————————————————————————————
Planar Regression: Z = AX+BY+C
Fitted Parameters
————————————————————————————————————————
A B C
————————————————————————————————————————
Parameter Value: 0.000608057552729 -1.02158820065e-006 -233.487183193
Standard Error: 0.000602154363576 4.26765593383e-007 241.006299201
————————————————————————————————————————
Inter-Parameter Correlations
————————————————————————————
A B C
————————————————————————————
A: 1.000 -0.034 -1.000
B: -0.034 1.000 0.019
C: -1.000 0.019 1.000
————————————————————————————
ANOVA Table
———————————————————————————————————————————
—————————
Source df Sum of Squares Mean Square F
———————————————————————————————————————————
—————————
Regression: 2 70.0372085169 35.0186042585
3.29631738461
Residual: 95 1009.2375874 10.6235535516
Total: 97 1079.27479592
———————————————————————————————————————————
—————————
Coefficient of Multiple Determination (R^2): 0.064892841732
Nearest Neighbor Statistics
—————————————————————————————————
Separation |Delta Z|
—————————————————————————————————
1%-tile: 3.60555127546 0
5%-tile: 10.7703296143 0
10%-tile: 15.1327459504 0
25%-tile: 30.4138126515 0
50%-tile: 54.4058820349 0.3
75%-tile: 87.1148666991 0.4
90%-tile: 150.119952038 4
95%-tile: 210.950231097 7.5
99%-tile: 498.534853345 17.3
Minimum: 3.60555127546 0
Maximum: 7679821.06025 17.3
Mean: 78440.4212836 1.25918367347
Median: 54.4058820349 0.3
Geometric Mean: 57.6653806874 N/A
Harmonic Mean: 31.8260833726 N/A
Root Mean Square: 775779.086103 3.27342421975
Trim Mean (10%): 65.3653118323 0.716853932584
Interquartile Mean: 55.6131660768 0.191836734694
Midrange: 3839912.3329 8.65
Winsorized Mean: 65.9003483394 0.782653061224
TriMean: 56.5851108551 0.25
Variance: 601821324669 9.22388386282
Standard Deviation: 775771.43842 3.03708476385
Interquartile Range: 56.7010540476 0.4
Range: 7679817.4547 17.3
Mean Difference: 156798.186293 2.08887018725
Median Abs. Deviation: 26.5599411491 0.3
Average Abs. Deviation: 78409.940228 1.21836734694
Quartile Dispersion: 0.482444407279 N/A
Relative Mean Diff.: 1.99894625408 1.65890825244
Standard Error: 78364.7492511 0.306791890223
Coef. of Variation: 9.88994482342 2.41194738134
Skewness: 9.59851056059 3.57988973788
Kurtosis: 94.0609102204 17.2183162582
Sum: 7687161.28579 123.4
Sum Absolute: 7687161.28579 123.4
Sum Squares: 5.89796526626e+013 1050.1
Mean Square: 601833190435 10.7153061224
—————————————————————————————————
Complete Spatial Randomness
Lambda: 4.84281271335e-009
Clark and Evans: 10.9173881214
Skellam: 1794649.95679
Gridding Rules
Gridding Method: Kriging
Kriging Type: Point
Polynomial Drift Order: 0
Kriging std. deviation grid: no
Semi-Variogram Model
Component Type: Linear
Anisotropy Angle: 0
Anisotropy Ratio: 1
Variogram Slope: 1
Search Parameters
No Search (use all data): true
Output Grid
Grid File Name: C:UsersDianaDesktopgeoquimica aplicada.grd
Grid Size: 100 rows x 4 columns
Total Nodes: 400
Filled Nodes: 400
Blanked Nodes: 0
Blank Value: 1.70141E+038
Grid Geometry
X Minimum: 283727.7879
X Maximum: 516536.2121
X Spacing: 77602.808066667
Y Minimum: 853582
Y Maximum: 8536260
Y Spacing: 77602.808080808
Univariate Grid Statistics
——————————————————————————————
Z
——————————————————————————————
Count: 400
1%-tile: 1.21397489778
5%-tile: 2.43164123465
10%-tile: 3.03402437438
25%-tile: 4.00398336376
50%-tile: 5.65098101417
75%-tile: 7.35354537243
90%-tile: 8.38384141373
95%-tile: 8.72542401552
99%-tile: 9.00847394863
Minimum: 0.937792504281
Maximum: 17.4005165725
Mean: 5.69778703973
Median: 5.65549478794
Geometric Mean: 5.25011109912
Harmonic Mean: 4.71981898767
Root Mean Square: 6.09361386903
Trim Mean (10%): 5.67765427245
Interquartile Mean: 5.65986851209
Midrange: 9.16915453839
Winsorized Mean: 5.69165711185
TriMean: 5.66487269113
Variance: 4.67905046088
Standard Deviation: 2.16311129184
Interquartile Range: 3.34956200868
Range: 16.4627240682
Mean Difference: 2.39935137682
Median Abs. Deviation: 1.66791623156
Average Abs. Deviation: 1.75554185641
Quartile Dispersion: 0.294919967757
Relative Mean Diff.: 0.421102326235
Standard Error: 0.108155564592
Coef. of Variation: 0.379640600246
Skewness: 0.639766996168
Kurtosis: 5.73978156864
Sum: 2279.11481589
Sum Absolute: 2279.11481589
Sum Squares: 14852.851994
Mean Square: 37.1321299849
——————————————————————————————

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Grid datareport geoquimica aplicadaff

  • 1. —————————— Gridding Report —————————— Sun Nov 13 23:22:49 2016 Elapsed time for gridding: 0.01 seconds Data Source Source Data File Name: C:UsersDianaDesktopgeoquimica aplicada.dat X Column: C Y Column: D Z Column: E Filtered Data Counts Active Data: 98 Original Data: 98 Excluded Data: 0 Deleted Duplicates: 0 Retained Duplicates: 0 Artificial Data: 0 Superseded Data: 0 Exclusion Filtering Exclusion Filter String: Not In Use Duplicate Filtering Duplicate Points to Keep: First X Duplicate Tolerance: 0.00031 Y Duplicate Tolerance: 0.91 No duplicate data were found. Breakline Filtering Breakline Filtering: Not In Use
  • 2. Z Data Transform Transformation method: Linear (use Z values directly) No untransformable data were found. Data Counts Active Data: 98 Univariate Statistics ——————————————————————————————————————————— — X Y Z ——————————————————————————————————————————— — Count: 98 98 98 1%-tile: 398815 853582 0.2 5%-tile: 399670 8533467 0.2 10%-tile: 399764 8534002 0.2 25%-tile: 399940 8534276 0.2 50%-tile: 400470 8534761 0.5 75%-tile: 400720 8535154 0.5 90%-tile: 401054 8535325 3 95%-tile: 401333 8535479 7.7 99%-tile: 401428 8536225 9.9 Minimum: 398815 853582 0.2 Maximum: 401449 8536260 27 Mean: 400399.397959 8456341.72449 1.33979591837 Median: 400471 8534777 0.5 Geometric Mean: 400399.024038 8336539.28371 0.520964529403 Harmonic Mean: 400398.64997 7816941.04177 0.363193596363 Root Mean Square: 400399.771734 8491502.34885 3.57883517705 Trim Mean (10%): 400404.213483 8534696.20225 0.734831460674 Interquartile Mean: 400420.204082 8534740.65306 0.434693877551 Midrange: 400132 4694921 13.6 Winsorized Mean: 400410.112245 8534715.56122 0.735714285714 TriMean: 400400 8534738 0.425 Variance: 302404.675047 602040044954 11.1265442878 Standard Deviation: 549.913334124 775912.395154 3.33564750653 Interquartile Range: 780 878 0.3 Range: 2634 7682678 26.8 Mean Difference: 616.446244477 157398.847254 1.88872291185 Median Abs. Deviation: 384.5 412 0.3 Average Abs. Deviation: 434.193877551 78833.4387755 1.05204081633
  • 3. Quartile Dispersion: 0.000974196288062 5.14369841289e-005 0.428571428571 Relative Mean Diff.: 0.00153957835007 0.0186131133748 1.40970940869 Standard Error: 55.5496353749 78378.9880314 0.336951281645 Coef. of Variation: 0.00137341199044 0.0917550898998 2.48966835979 Skewness: -0.419471699664 -9.59850253333 5.32670896946 Kurtosis: 3.25056226367 94.0608075088 37.3930048049 Sum: 39239141 828721489 131.3 Sum Absolute: 39239141 828721489 131.3 Sum Squares: 1.57113577661e+013 7.06634998977e+015 1255.19 Mean Square: 160319977205 7.21056121405e+013 12.8080612245 ——————————————————————————————————————————— — Inter-Variable Covariance ———————————————————————————————— X Y Z ———————————————————————————————— X: 302404.68 14561503 169.00359 Y: 14561503 6.0204004e+011 -606182.77 Z: 169.00359 -606182.77 11.126544 ———————————————————————————————— Inter-Variable Correlation ———————————————————————————————— X Y Z ———————————————————————————————— X: 1.000 0.034 0.092 Y: 0.034 1.000 -0.234 Z: 0.092 -0.234 1.000 ———————————————————————————————— Inter-Variable Rank Correlation ———————————————————————————————— X Y Z ———————————————————————————————— X: 1.000 -0.666 -0.202 Y: -0.666 1.000 0.254 Z: -0.202 0.254 1.000 ———————————————————————————————— Principal Component Analysis
  • 4. ———————————————————————————————————————— PC1 PC2 PC3 ———————————————————————————————————————— X: 0.999999814828 0.999999814828 -0.000608078386196 Y: -2.41863293243e-005 -2.41863293243e-005 1.02158851841e-006 Z: 0.000608078410727 0.000608078410727 1.02158851841e-006 Lambda: 602040045306 302052.588448 10.4045073633 ———————————————————————————————————————— Planar Regression: Z = AX+BY+C Fitted Parameters ———————————————————————————————————————— A B C ———————————————————————————————————————— Parameter Value: 0.000608057552729 -1.02158820065e-006 -233.487183193 Standard Error: 0.000602154363576 4.26765593383e-007 241.006299201 ———————————————————————————————————————— Inter-Parameter Correlations ———————————————————————————— A B C ———————————————————————————— A: 1.000 -0.034 -1.000 B: -0.034 1.000 0.019 C: -1.000 0.019 1.000 ———————————————————————————— ANOVA Table ——————————————————————————————————————————— ————————— Source df Sum of Squares Mean Square F ——————————————————————————————————————————— ————————— Regression: 2 70.0372085169 35.0186042585 3.29631738461 Residual: 95 1009.2375874 10.6235535516 Total: 97 1079.27479592 ——————————————————————————————————————————— ————————— Coefficient of Multiple Determination (R^2): 0.064892841732 Nearest Neighbor Statistics ————————————————————————————————— Separation |Delta Z| ————————————————————————————————— 1%-tile: 3.60555127546 0 5%-tile: 10.7703296143 0
  • 5. 10%-tile: 15.1327459504 0 25%-tile: 30.4138126515 0 50%-tile: 54.4058820349 0.3 75%-tile: 87.1148666991 0.4 90%-tile: 150.119952038 4 95%-tile: 210.950231097 7.5 99%-tile: 498.534853345 17.3 Minimum: 3.60555127546 0 Maximum: 7679821.06025 17.3 Mean: 78440.4212836 1.25918367347 Median: 54.4058820349 0.3 Geometric Mean: 57.6653806874 N/A Harmonic Mean: 31.8260833726 N/A Root Mean Square: 775779.086103 3.27342421975 Trim Mean (10%): 65.3653118323 0.716853932584 Interquartile Mean: 55.6131660768 0.191836734694 Midrange: 3839912.3329 8.65 Winsorized Mean: 65.9003483394 0.782653061224 TriMean: 56.5851108551 0.25 Variance: 601821324669 9.22388386282 Standard Deviation: 775771.43842 3.03708476385 Interquartile Range: 56.7010540476 0.4 Range: 7679817.4547 17.3 Mean Difference: 156798.186293 2.08887018725 Median Abs. Deviation: 26.5599411491 0.3 Average Abs. Deviation: 78409.940228 1.21836734694 Quartile Dispersion: 0.482444407279 N/A Relative Mean Diff.: 1.99894625408 1.65890825244 Standard Error: 78364.7492511 0.306791890223 Coef. of Variation: 9.88994482342 2.41194738134 Skewness: 9.59851056059 3.57988973788 Kurtosis: 94.0609102204 17.2183162582 Sum: 7687161.28579 123.4 Sum Absolute: 7687161.28579 123.4 Sum Squares: 5.89796526626e+013 1050.1 Mean Square: 601833190435 10.7153061224 ————————————————————————————————— Complete Spatial Randomness Lambda: 4.84281271335e-009 Clark and Evans: 10.9173881214 Skellam: 1794649.95679 Gridding Rules Gridding Method: Kriging
  • 6. Kriging Type: Point Polynomial Drift Order: 0 Kriging std. deviation grid: no Semi-Variogram Model Component Type: Linear Anisotropy Angle: 0 Anisotropy Ratio: 1 Variogram Slope: 1 Search Parameters No Search (use all data): true Output Grid Grid File Name: C:UsersDianaDesktopgeoquimica aplicada.grd Grid Size: 100 rows x 4 columns Total Nodes: 400 Filled Nodes: 400 Blanked Nodes: 0 Blank Value: 1.70141E+038 Grid Geometry X Minimum: 283727.7879 X Maximum: 516536.2121 X Spacing: 77602.808066667 Y Minimum: 853582 Y Maximum: 8536260 Y Spacing: 77602.808080808 Univariate Grid Statistics —————————————————————————————— Z —————————————————————————————— Count: 400 1%-tile: 1.21397489778 5%-tile: 2.43164123465 10%-tile: 3.03402437438 25%-tile: 4.00398336376 50%-tile: 5.65098101417 75%-tile: 7.35354537243 90%-tile: 8.38384141373 95%-tile: 8.72542401552 99%-tile: 9.00847394863 Minimum: 0.937792504281
  • 7. Maximum: 17.4005165725 Mean: 5.69778703973 Median: 5.65549478794 Geometric Mean: 5.25011109912 Harmonic Mean: 4.71981898767 Root Mean Square: 6.09361386903 Trim Mean (10%): 5.67765427245 Interquartile Mean: 5.65986851209 Midrange: 9.16915453839 Winsorized Mean: 5.69165711185 TriMean: 5.66487269113 Variance: 4.67905046088 Standard Deviation: 2.16311129184 Interquartile Range: 3.34956200868 Range: 16.4627240682 Mean Difference: 2.39935137682 Median Abs. Deviation: 1.66791623156 Average Abs. Deviation: 1.75554185641 Quartile Dispersion: 0.294919967757 Relative Mean Diff.: 0.421102326235 Standard Error: 0.108155564592 Coef. of Variation: 0.379640600246 Skewness: 0.639766996168 Kurtosis: 5.73978156864 Sum: 2279.11481589 Sum Absolute: 2279.11481589 Sum Squares: 14852.851994 Mean Square: 37.1321299849 ——————————————————————————————