Soil classification is a method of encoding the most relevant information about a given soil, namely its composition and characteristics, in a single class, to be used in areas like agriculture and forestry. In this paper, we evaluate how confidently we can predict soil classes, following the World Reference Base classification system, based on the physical and chemical characteristics of its layers. The Random Forests classifier was used with data consisting of 6 760 soil profiles composed by 19 464 horizons, collected in Mexico. Four methods of modelling the data were tested (i.e., standard depths, n first layers, thickness, and area weighted thickness). We also fine-tuned the best parameters for the classifier and for a k-NN imputation a...
The United States NRCS has a soil database that has data collected from across the country over the ...
ABSTR ACT: This study focuses on the reclassification of a soil texture system following a hybrid ap...
Predicting taxonomic classes can be challenging with dataset subject to substantial irregularities d...
Soil classification is a method of encoding the most relevant information about a given soil, namely...
ABSTRACT: Different uses of soil legacy data such as training dataset as well as the selection of so...
Fine-resolution soil maps constitute important data for many different environmental studies. Digita...
A system for classifying and arranging information about soil is known as soil classification. This ...
Soil property monitoring is useful for sustainable agricultural production and environmental modelin...
This study focuses on the reclassification of a soil texture system following a hybrid approach in w...
Graduation date: 2016Soil properties may hold the key to improved predictions of soils during digita...
Crop Management System (CMS) was developed in an Ionic framework with a Real-Time Firebase database ...
ABSTRACT: The Random Forest algorithm is a data mining technique used for classifying attributes in ...
ABSTRACT: The Random Forest algorithm is a data mining technique used for classifying attributes in ...
Soil texture is used to determine airflow, heat, instability, water holding capacity, and the shape ...
Soil chemical and physical analyses are the major sources of data for agriculture. However, traditio...
The United States NRCS has a soil database that has data collected from across the country over the ...
ABSTR ACT: This study focuses on the reclassification of a soil texture system following a hybrid ap...
Predicting taxonomic classes can be challenging with dataset subject to substantial irregularities d...
Soil classification is a method of encoding the most relevant information about a given soil, namely...
ABSTRACT: Different uses of soil legacy data such as training dataset as well as the selection of so...
Fine-resolution soil maps constitute important data for many different environmental studies. Digita...
A system for classifying and arranging information about soil is known as soil classification. This ...
Soil property monitoring is useful for sustainable agricultural production and environmental modelin...
This study focuses on the reclassification of a soil texture system following a hybrid approach in w...
Graduation date: 2016Soil properties may hold the key to improved predictions of soils during digita...
Crop Management System (CMS) was developed in an Ionic framework with a Real-Time Firebase database ...
ABSTRACT: The Random Forest algorithm is a data mining technique used for classifying attributes in ...
ABSTRACT: The Random Forest algorithm is a data mining technique used for classifying attributes in ...
Soil texture is used to determine airflow, heat, instability, water holding capacity, and the shape ...
Soil chemical and physical analyses are the major sources of data for agriculture. However, traditio...
The United States NRCS has a soil database that has data collected from across the country over the ...
ABSTR ACT: This study focuses on the reclassification of a soil texture system following a hybrid ap...
Predicting taxonomic classes can be challenging with dataset subject to substantial irregularities d...