Comprehensive nutrient analysis in agricultural organic amendments through non-destructive assays using machine learning

Author:

Towett Erick K.ORCID,Drake Lee B.,Acquah Gifty E.ORCID,Haefele Stephan M.,McGrath Steve P.,Shepherd Keith D.

Abstract

Portable X-ray fluorescence (pXRF) and Diffuse Reflectance Fourier Transformed Mid-Infrared (DRIFT-MIR) spectroscopy are rapid and cost-effective analytical tools for material characterization. Here, we provide an assessment of these methods for the analysis of total Carbon, Nitrogen and total elemental composition of multiple elements in organic amendments. We developed machine learning methods to rapidly quantify the concentrations of macro- and micronutrient elements present in the samples and propose a novel system for the quality assessment of organic amendments. Two types of machine learning methods, forest regression and extreme gradient boosting, were used with data from both pXRF and DRIFT-MIR spectroscopy. Cross-validation trials were run to evaluate generalizability of models produced on each instrument. Both methods demonstrated similar broad capabilities in estimating nutrients using machine learning, with pXRF being suitable for nutrients and contaminants. The results make portable spectrometry in combination with machine learning a scalable solution to provide comprehensive nutrient analysis for organic amendments.

Funder

Biotechnology and Biological Sciences Research Council

Bill and Melinda Gates Foundation

Publisher

Public Library of Science (PLoS)

Subject

Multidisciplinary

Reference36 articles.

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