Assessing habitat suitability for aoudad (Ammotragus lervia) reintroduction in southeastern morocco to promote ecotourism

IF 2.7 Q2 MULTIDISCIPLINARY SCIENCES
Lahbib Naimi , El Mahi Bouziane , Lamya Benaddi , Abdeslam Jakimi , Mohamed Manaouch
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引用次数: 0

Abstract

The objective of this study is to address the complex task of identifying optimal locations for reintroducing Ammotragus lervia in a semi-arid area in the Eastern High Atlas of Morocco, considering three topographical factors. The study assesses the effectiveness of a commonly used machine learning classifier (MLC) in mapping potential areas for introducing these species, which is crucial for promoting and enhancing local biodiversity. To begin with, an extensive inventory of 88 remaining sites where these Barbary sheep still living was conducted, and precise measurements of three topographical parameters were collected at each site. Subsequently, a machine learning algorithm called Bagging was employed to develop a predictive model. The predictive model demonstrated a high level of performance, as evidenced by an area under the curve (AUC) value of 0.929. Bagging effectively identified favorable areas, encompassing around 13.8 % of the study region, which were predominantly located in the western part. These areas were characterized by mountainous terrain, shorter slopes, and higher altitudes. The research findings provide valuable guidance to decision-makers, offering a roadmap to reintroduce these species for enhancing the local biodiversity in the region.
评估摩洛哥东南部重新引入 Aoudad(Ammotragus lervia)的栖息地适宜性以促进生态旅游
本研究的目的是解决在摩洛哥东高阿特拉斯半干旱地区确定重新引入 Ammotragus lervia 的最佳地点这一复杂任务,其中考虑了三个地形因素。该研究评估了常用机器学习分类器(MLC)在绘制引入这些物种的潜在区域图方面的有效性,这对于促进和提高当地生物多样性至关重要。首先,研究人员对 88 个仍有巴巴利羊生存的地点进行了广泛清查,并在每个地点收集了三个地形参数的精确测量结果。随后,采用了一种名为 "Bagging "的机器学习算法来开发预测模型。预测模型的曲线下面积 (AUC) 值为 0.929,表明该模型具有很高的性能。套袋法有效地确定了有利区域,约占研究区域的 13.8%,主要位于西部地区。这些地区的特点是地形多山、坡度较小、海拔较高。研究结果为决策者提供了宝贵的指导,为重新引入这些物种以提高该地区的生物多样性提供了路线图。
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来源期刊
Scientific African
Scientific African Multidisciplinary-Multidisciplinary
CiteScore
5.60
自引率
3.40%
发文量
332
审稿时长
10 weeks
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