Random forests to detect subsoiling and subsurface drainage effects on corn plant height and water table depth

Soil and Tillage Research - Tập 192 - Trang 240-249 - 2019
Anicet Djiemon1, Marc-Olivier Gasser1, Jacques Gallichand2
1Agri-environmental Research and Development Institute, 2700, Einstein Street, Québec, Québec, G1P 3W8, Canada
2Soil Science and Agri-Food Engineering Department, Laval University, Québec, Québec, G1V 0A6, Canada

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