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Published online 17 May 2007
Published in Vadose Zone J 6:423-431 (2007)
DOI: 10.2136/vzj2006.0131
© 2007 Soil Science Society of America
677 S. Segoe Rd., Madison, WI 53711 USA
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Artificial Neural Network Estimation of Saturated Hydraulic Conductivity

W. A. Agyarea,*, S. J. Parkb and P. L. G. Vlekc

a Savanna Agricultural Research Inst. (SARI), CSIR, P.O. Box 52, Tamale, Ghana
b Dep. of Geography, Seoul National Univ., Shilim-Dong, Kwanak-Gu, Seoul, Korea
c Center for Development Research (ZEF), Univ. of Bonn, Walter-Flex-Str. 3, 53113 Bonn, Germany


Figure 1
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FIG. 1. Sensitivity of different soil input parameters for different data forms, (A) raw, (B) normalized, (C) z-scored, and (D) minimum–maximum (0–1) data, for estimating saturated hydraulic conductivity in the artificial neural network. (SABST, subangular blocky structure; GST, granular structure; WKSG, weak structure; MSG, moderately strong structure; SSG, strong structure; FSS, fine structural size; MedSS, medium structural size; CSS, coarse and medium structural size; OC, organic carbon; CEC, cation exchange capacity; BD, bulk density.

 

Figure 2
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FIG. 2. Variation in saturated hydraulic conductivity estimation with increasing number of input parameters for (A) coefficient of determination (R2) and (B) normalized mean square error (NMSE) in the artificial neural network.

 

Figure 3
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FIG. 3. Trend of training data size effect on (A) coefficient of determination (R2) and (B) normalized mean square error (NMSE) for training and testing data in estimating saturated hydraulic conductivity using combined data from Ejura and Tamale sites in the artificial neural network.

 

Figure 4
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FIG. 4. Measured compared to estimated saturated hydraulic conductivity (Ks) for (A) training and (B) testing data for 60 randomly selected Ejura topsoil datasets in the artificial neural network with Ks transformed between 0 and 1.

 

Figure 5
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FIG. 5. Comparison of coefficient of determination (R2) for estimated saturated hydraulic conductivity for different testing data using training data from the same and different sites and indicating their SE bars in the artificial neural network (a, b, c shows Bonferroni mean separation test, with same letter indicating not significantly different at p < 0.05).

 

Figure 6
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FIG. 6. Comparison of normalized mean square error (NMSE) for estimated saturated hydraulic conductivity for different testing data using training data from the same and different sites and indicating their SE bars in the artificial neural network.

 

Figure 7
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FIG. 7. Comparison of measured (Ksm) and estimated (Kse) saturated hydraulic conductivity for Tamale (A and B) and Ejura sites (C and D)– using training data from different site– in the artificial neural network with Ks transformed between 0 and 1.

 





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