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  • 标题:Estimating Near‐Saturated Soil Hydraulic Conductivity Based on Its Scale‐Dependent Relationships with Soil Properties
  • 本地全文:下载
  • 作者:Yang Yang ; Ole Wendroth ; Sleem Kreba
  • 期刊名称:Vadose Zone Journal
  • 电子版ISSN:1539-1663
  • 出版年度:2019
  • 卷号:18
  • 期号:1
  • 页码:1-14
  • DOI:10.2136/vzj2018.12.0217
  • 出版社:Soil Science Society of America, Inc.
  • 摘要:Core Ideas Spatial variability of in situ K s , K −1 , K −5 , and K −10 was decomposed into different scales using NA‐MEMD. Scale‐dependent relationships were observed for each K with six soil properties. Incorporating ANN for small‐scale variability of each K improves the estimation quality. Soil hydraulic conductivity near saturation ( K ns ) is affected by various soil properties operating at different spatial scales. Using noise‐assisted multivariate empirical mode decomposition (NA‐MEMD), our objective was to inspect the scale‐dependent interactions between K ns and various soil properties and to estimate K ns based on such relationships. In a rectangular field evenly across cropland and grassland, a total of 44 sampling points separated by 5 m were selected and measured for K ns at soil water pressure heads of −1, −5 and −10 cm. At each point, the saturated conductivity K s was estimated using Gardner's exponential function, and six soil structural and textural properties were investigated. Decomposed into four intrinsic mode functions (IMFs) and a residue by NA‐MEMD, each K was found to significantly correlate with all six properties at one spatial scale at least. The variations in K were primarily regulated by soil structure, especially at the relatively small scales. Multiple linear regression (MLR) failed to regress either IMF1 or IMF2 of each K from the soil properties of the equivalent scales and only accounted for 13.7 to 43.6% of the total variance in calibration for the remaining half of the IMF1s and IMF2s. An artificial neural network was then adopted to estimate IMF1 and IMF2, and the corresponding results were added to the MLR estimates at other scales for which each K was estimated at the measurement scale. This prediction greatly outperformed the MLR modeling before NA‐MEMD and, on average, accounted for additional 74.4 and 73.4% of the total variance in calibration and validation, respectively. These findings suggest nonlinear correlations between K and the soil properties investigated at the small scales and hold important implications for future estimations of K ns and K s as well as other hydraulic properties.
  • 关键词:ANN; artificial neural network; BD; bulk density; CLAY; clay content; EMD; empirical mode decomposition; IMF; intrinsic mode function; MEMD; multivariate empirical mode decomposition; MLR; multiple linear regression; MWD; mean weight diameter; NA-MEMD; noise-assisted multivariate empirical mode decomposition; PTF; pedotransfer function; SAND; sand content; SOC; soil organic carbon; SWS; soil water storage; WAS; wet aggregate stability; WGN; white Gaussian noise.
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