Pulse Brain · Growing Health Evidence Index
Peer-reviewed

African soil properties and nutrients mapped at 30 m spatial resolution using two-scale ensemble machine learning

Tomislav Hengl; Matt Miller; Josip Križan; Keith Shepherd; Andrew Sila; Milan Kilibarda; Ognjen Antonijević; Luka Glušica; Achim Dobermann; Stephan M. Haefele; S. P. McGrath; Gifty Acquah; Jamie Collinson; Leandro Parente; Mohammadreza Sheykhmousa; Kazuki Saito; Jean‐Martial Johnson; Jordan Chamberlin; Francis B.T. Silatsa; Martin Yemefack; John Wendt; R.A. MacMillan; Ichsani Wheeler; Jonathan H. Crouch

Scientific Reports · 2021

Read source ↗ All evidence

Summary

Soil property and class maps for the continent of Africa were so far only available at very generalised scales, with many countries not mapped at all. Thanks to an increasing quantity and availability of soil samples collected at field point locations by various government and/or NGO funded projects, it is now possible to produce detailed pan-African maps of soil nutrients, including micro-nutrients at fine spatial resolutions. In this paper we describe production of a 30 m resolution Soil Information System of the African continent using, to date, the most comprehensive compilation of soil samples ([Formula: see text]) and Earth Observation data. We produced predictions for soil pH, organic carbon (C) and total nitrogen (N), total carbon, effective Cation Exchange Capacity (eCEC), extract

Source type
Peer-reviewed study
DOI
10.1038/s41598-021-85639-y
Catalogue ID
NRmo9rin9c-0ud
Pulse AI · ask about this record

Dig deeper with Pulse AI.

Pulse AI has read the whole catalogue. Ask about this record, its theme, or how the findings apply to UK farming and policy — every answer cites the underlying studies.