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Soil Water Retention Characteristics of Black Soils of India and Pedotransfer Functions Using Different Approaches

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Title Soil Water Retention Characteristics of Black Soils of India and Pedotransfer Functions Using Different Approaches
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Creator N. G. Patil; P. Tiwary; D. K. Pal; T. Bhattacharyya; Dipak Sarkar; C. Mandal ; D. K. Mandal ; P. Chandran ; S. K. Ray ; Jagdish Prasad; Mrunmayee Lokhande; and Vishakha Dongre
 
Subject Soil water retention characteristics; Pedotransfer functions; Neural networks; K nearest neighbor; Black soils
 
Description Not Available
Information on soil hydraulic properties is a prerequisite in irrigation management decisions and crop planning. Such information
on soils of the black soil region (BSR) occupying 7.7 × 107 ha of India is sparse. Soil profile information for 49 representative sites
(244 samples) was collected and used for analysis. Ten different functions were evaluated for their efficacy to describe soil water retention
characteristics (SWRC) of the BSR soils. Campbell model fitted to measured SWRC data with relatively lower root mean square error
(RMSE ¼ 0.0214 m3 · m−3), higher degree of agreement (d ¼ 0.9653), and lower absolute error on average (MAE ¼ 0.0165 m3 · m−3).
The next best description was by van Genuchten (VG) function with RMSE (0.0249 m3 · m−3), dð0.9489Þ, and MAE (0.0868 m3 · m−3).
Pedotransfer functions (PTF) were developed to predict field capacity (FC) and permanent wilting point (PWP) using nearest neighbor (kNN)
algorithm and artificial neural networks (ANN). Four levels of input information used for point PTF development include (1) textural data
(data on sand, silt, and clay fraction-SSC), (2) level 1+bulk density data (SSCBD), (3) level 2+organic matter (SSCBDOM), and (4) level 1
+organic matter (SSCOM). The RMSE of predictions by kNN PTFs ranged from 0.0346 to 0.0611 m3 · m−3 with an average of
0.0483 m3 · m−3. The ANN PTFs performed with an average RMSE of 0.0550 m3 · m−3 and a range of 0.0367 to 0.0905 m3 · m−3.
Relatively better estimates of FC=PWP were obtained using SSCBD-based PTF. Accuracy of FC and PWP estimates obtained by using
analytical functions was relatively greater than the estimates by kNN and ANN PTFs. Campbell and VG functions were relatively more
accurate. The study demonstrated the efficacy of kNN technique vis-a-vis neural regression with the additional benefit of appending the
development data as and when desired. The proposed PTFs could be useful in making irrigation management decisions for BSR soils of
India. Identification of the most suitable SWRC function for the study soils will help in crop modeling/water balance studies of the region
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Date 2024-07-01T10:55:43Z
2024-07-01T10:55:43Z
2013-04-01
 
Type Research Paper
 
Identifier N. G. Patil; P. Tiwary; D. K. Pal; T. Bhattacharyya; Dipak Sarkar; C. Mandal ; D. K. Mandal ; P. Chandran ; S. K. Ray ; Jagdish Prasad; Mrunmayee Lokhande; and Vishakha Dongre
Not Available
http://krishi.icar.gov.in/jspui/handle/123456789/83818
 
Language English
 
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Publisher Not Available