Home > Resource Center > Application Notes > VNIR Diffuse Reflectance Spectroscopy for Agricultural Soil Property Determination Based on Regressi
 

ASD

  • Our blog
  • Contact Us
  • facebook
  • linked in
  • youtube
  • Products
    • FieldSpec

      • FieldSpec 4

        • FieldSpec 4 Standard-Res Spectroradiometer
        • FieldSpec 4 Hi-Res Spectroradiometer
        • FieldSpec 4 Wide-Res Spectroradiometer
      • FieldSpec 3

        • FieldSpec 3 Portable Spectroradiometer
        • FieldSpec 3 Hi-Res Portable Spectroradiometer
        • FieldSpec 3 Max Portable Spectroradiometer
        • HandHeld 2 Portable Spectroradiometer
    • TerraSpec

        • TerraSpec 4 Standard-Res Mineral Analyzer
        • TerraSpec 4 Hi-Res Mineral Spectrometer
    • QualitySpec

        • QualitySpec 7000
    • LabSpec

        • LabSpec 4 Standard-Res Lab Analyzer
        • LabSpec 4 Hi-Res Analytical Instrument
        • LabSpec 4 Bench Benchtop Analyzer
    • Software

      • ASD Software

        • Indico Pro Spectral Acquisition Software
        • RS3 Spectral Acquisition Software
      • Third-party Software

        • GRAMS Suite
        • KaleidaGraph
        • TSG Pro
        • TSG Pro Add-On Packages
        • Spectral Analysis Processing Program
        • The Unscrambler
      • Accessories

        Products
      • Applications
        • Remote Sensing

            • Field Spectroscopy
            • Ground Truthing
            • Spectral Remote Sensing
            • Crops and Soils Research
            • Ice Research and Snow Research
            • Landscape Ecology and Ecology Research
            • See more Remote Sensing
        • Mining

            • Mining Exploration
            • Mining Production
            • Extractive Metallurgy
            • See more Mining
        • Additional

            • Agriculture and Soil Analysis
            • Raw Material Inspection and Analysis
            • Forest Products
            • Pharmaceutical
            • Optics and Photonics
            • See more Additional
        Applications
      • Service and Support
        • SummitCAL
        • Instrument Service
        • Training
        • Technical Support
        • Goetz Instrument Program
         
        Service and Support
      • Events
        • ASD Events
        • Partner Events
        • Training
        Events
      • Resource Center
        • FAQs
        • Application Notes
        • Documents
         
        Resource Center
      • About Us
        • News
        • Careers
        • About Our Experts
        • Milestones
        • History of ASD
        • Management Team
        • Corporate Citizenship
        • Partners and Memberships
        • Why NIR
         
        About Us
      Resource Center
      Resource Center
        • FAQs
        • Application Notes
        • Documents
          • Accessories
          • FieldSpec
          • SummitCAL
          • TerraSpec
          • FieldSpec Advisor Newsletter

      Related Applications

      • Soil Analysis for Agriculture and Soils

      Application Notes

      VNIR Diffuse Reflectance Spectroscopy for Agricultural Soil Property Determination Based on Regression-Kriging
      In this article, the regression-kriging method was used to account for spatial dependence among soil samples and aid in prediction model development.

      Published by the American Society of Agricultural and Biological Engineers, St. Joseph, Michigan www.asabe.org
      Citation: Transactions of the ASABE. 50(3): 1081-1092. @2007
      Authors: Y. Ge, J. A. Thomasson, C. L. Morgan, S. W. Searcy

      Abstract

      Visible and near-infrared diffuse reflectance spectroscopy has been widely applied in precision agriculture to develop soil property prediction models. This method assumes that residuals of prediction are independently and identically distributed. However, this assumption is violated by spatial dependence common in soil samples collected from agricultural fields, and subsequent prediction models are usually sub-optimal. In this article, the regression-kriging method was used to account for spatial dependence among soil samples and aid in prediction model development. A total of 273 soil samples were collected from an agricultural field in Quitman County, Mississippi. Particle size distribution (clay and sand) and chemical analysis (Ca, K, Mg, Na, P, and Zn) were performed in the laboratory. Soil reflectance spectra were measured with a spectroradiometer (250 to 2500 nm). Soil samples were divided into two groups: 245 samples in the calibration set, and 28 samples in the validation set. The calibration set was first used to develop the principal component regression (PCR) models for each soil property. Semivariance analysis of prediction residuals from PCR revealed strong spatial dependence in Na; medium spatial dependence in Ca, Mg, and sand; weak spatial dependence in K and P; and a pure nugget effect in Zn and clay. Fitted theoretical semivariograms were then used to develop the regression-kriging models. Both the PCR and regression-kriging models were tested with the validation set, and their prediction capability was evaluated by R2 and RMSE (root mean squared error). The results showed that the only two soil properties that could be predicted by the PCR models were Mg (R2 = 0.4 and RMSE = 25.4%) and Ca (R2 = 0.33 and RMSE = 16.6%). On the other hand, the regression-kriging models were able to predict most soil properties with reasonably high R2 (reaching 0.65) and low RMSE. Most impressively, substantial increases of R2 and decreases of RMSE were achieved by the regression-kriging models for Na (R2 = 0.65 and RMSE = 29.0%, compared to R2 = 0.10 and RMSE = 44.4% in the PCR model) and sand (R2 = 0.49 and RMSE = 19.8%, compared to R2 = 0.06 and RMSE = 26.0% in the PCR model). It is anticipated that the proposed method could be integrated into GIS packages for various precision agriculture applications, such as digital soil mapping based on remotely sensed hyperspectral images.

      VNIR Diffuse Reflectance Spectroscopy for Agricultural Soil Property Determination Based on Regression-Kriging (full article)

      full article
    • Remote Sensing
    • Mining
    • Additional
    • NIR Community Blog

      • The Future of Field Spectroscopy: ASD is Born Out of Innovation and Advancements in Technology (Part 3 of 4)

        May 29, 2012

      • SummitCAL Solutions Group Lead Kicks Off SpectroscopyNOW Series: Multivariate Modeling Solutions for Mineral Analysis in Mining

        May 22, 2012

      • ASD Chemometrics and Instrumentation Training

        May 15, 2012

      Read All

      • Contact Us
      • Find a Representative
      • Join our NIR Community

      Products

      • FieldSpec
      • TerraSpec
      • QualitySpec
      • LabSpec
      • Software
      • Spectroscopy Accessories

      Applications

      • Remote Sensing
      • Mining
      • Additional

      Service and Support

      • SummitCAL
      • Instrument Service
      • Training
      • Technical Support
      • Goetz Instrument Program

      Events

      Resource Center

      • FAQs
      • Application Notes
      • Documents

      About Us

      • News
      • Careers
      • About Our Experts
      • Milestones
      • History of ASD
      • Management Team
      • Corporate Citizenship
      • Partners and Memberships
      • Why NIR

      Copyright 2011 by ASD Inc. Terms & Conditions | Privacy Policy | Site Map | Support

      Connect with ASD Inc.: www.facebook.com www.youtube.com