Predicting potential reforestation areas by Quercus ilex (L.) species using machine learning algorithms: case of upper Ziz, southeastern Morocco

The selection of appropriate areas for reforestation remains a complex task because of influence by several factors, which requires the use of new techniques. Based on the accurate outcomes obtained through machine learning in prior investigations, the current study evaluates the capacities of six m...

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Veröffentlicht in:Environmental monitoring and assessment 2023-09, Vol.195 (9), p.1094-1094, Article 1094
Hauptverfasser: Manaouch, Mohamed, Sadiki, Mohamed, Pham, Quoc Bao, Zouagui, Anis, Batchi, Mohcine, Al Karkouri, Jamal
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container_issue 9
container_start_page 1094
container_title Environmental monitoring and assessment
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creator Manaouch, Mohamed
Sadiki, Mohamed
Pham, Quoc Bao
Zouagui, Anis
Batchi, Mohcine
Al Karkouri, Jamal
description The selection of appropriate areas for reforestation remains a complex task because of influence by several factors, which requires the use of new techniques. Based on the accurate outcomes obtained through machine learning in prior investigations, the current study evaluates the capacities of six machine learning techniques (MLT) for delineating optimal areas for reforestation purposes specifically targeting Quercus ilex , an important local species to protect soil and water in upper Ziz, southeast Morocco. In the initial phase, the remaining stands of Q. ilex were identified, and at each site, measurements were taken for a set of 12 geo-environmental parameters including slope, aspect, elevation, geology, distance to stream, rainfall, slope length, plan curvature, profile curvature, erodibility, soil erosion, and land use/land cover. Subsequently, six machine learning algorithms were applied to model optimal areas for reforestation. In terms of models’ performance, the results were compared, and the best were obtained by Bagging (area under the curve (AUC) = 0.98) and Naive Bayes (AUC = 0.97). Extremely favorable areas represent 8% and 17% of the study area according to Bagging and NB respectively, located to the west where geological unit of Bathonian-Bajocian with low erodibility index ( K ) and where rainfall varies between 250 and 300 mm/year. This work provides a roadmap for decision-makers to increase the chances of successful reforestation at lower cost and in less time.
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subjects Algorithms
Atmospheric Protection/Air Quality Control/Air Pollution
Bagging
Curvature
Decision making
Earth and Environmental Science
Ecology
Ecotoxicology
Environment
Environmental factors
Environmental Management
Environmental monitoring
Environmental parameters
Environmental science
Geology
Land cover
Land use
Learning algorithms
Machine learning
Monitoring/Environmental Analysis
Precipitation
Protected species
Quercus ilex
Rainfall
Reforestation
Slopes
Soil erosion
Soil water
title Predicting potential reforestation areas by Quercus ilex (L.) species using machine learning algorithms: case of upper Ziz, southeastern Morocco
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