Tropical altitudinal gradient soil organic carbon and nitrogen estimation using Specim IQ portable imaging spectrometer

Petri Pellikka, Markku Ilkka Juhana Luotamo, Niklas Sädekoski, Jesse Hietanen, Ilja Vuorinne, Matti Räsänen, Janne Heiskanen, Mika Siljander, Kristiina Karhu, Arto Klami

Research output: Contribution to journalArticleScientificpeer-review

Abstract

The largest actively cycling terrestrial carbon pool, soil, has been disturbed during latest centuries by human actions through reduction of woody land cover. Soil organic carbon (SOC) content can reliably be estimated in laboratory conditions, but more cost-efficient and mobile techniques are needed for large-scale monitoring of SOC e.g. in remote areas. We demonstrate the capability of a mobile hyperspectral camera operating in the visible-near infrared wave-length range for practical estimation of soil organic carbon (SOC) and nitrogen content, to support efficient monitoring of soil properties. The 191 soil samples were collected in Taita Taveta County, Kenya representing an altitudinal gradient comprising five typical land use types: agroforestry, cropland, forest, shrubland and sisal estate. The soil samples were imaged using a Specim IQ hyperspectral camera under controlled laboratory conditions, and their carbon and nitrogen content was determined with a combustion analyzer. We use machine learning for estimating SOC and N content based on the spectral images, studying also automatic selection of informative wavelengths and quantification of prediction uncertainty. Five alternative methods were all found to perform well with a cross-validated R-2 of approximately 0.8 and an RMSE of one percentage point, demonstrating feasibility of the proposed imaging setup and computational pipeline.
Original languageFinnish
JournalScience of the Total Environment
Volume883
Number of pages14
ISSN0048-9697
DOIs
Publication statusPublished - 20 Jul 2023
MoE publication typeA1 Journal article-refereed

Fields of Science

  • Altitudinal transect
  • Band selection
  • Close-range indoor remote sensing
  • Cnn
  • Gpr
  • Imaging spectroscopy
  • Land use
  • Lasso
  • Plsr
  • Random Forest
  • Regression
  • Soil nitrogen
  • Soil organic carbon
  • Specim IQ
  • Uncertaintyquantification
  • Vis-nir
  • 1172 Environmental sciences

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