Development of spatial models and maps for tree species diversity and biomass in a miombo ecosystem, western Tanzania

IF 2 3区 环境科学与生态学 Q3 ECOLOGY Applied Vegetation Science Pub Date : 2024-11-08 DOI:10.1111/avsc.70002
Adrienne B. Chitayat, Matthew Lewis, Moses Anyelwisye, Gabriel S. Laizer, Fiona A. Stewart, Serge A. Wich, Alex K. Piel
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Abstract

Aim

Miombo, a prominent dry forest formation, holds ecological importance for both humans and wildlife. Trees are a driving force behind miombo dynamics, thus, spatially explicit metrics of tree cover are essential for evaluating habitat characteristics, resource availability, and environmental change. We developed predictive models and maps of tree species diversity and biomass within a previously undescribed landscape.

Location

Mahale Mountains National Park (MMNP), Greater Mahale Ecosystem (GME), Tanzania.

Methods

We created models of tree density, basal area, tree species richness, and tree diversity according to the Shannon Diversity Index. We created a predictive model using an ensemble modeling approach using plot-based data from MMNP and predictor variables derived from satellite data associated with climate, habitat structure, plant productivity, and topography. We assessed predictor importance across models and produced maps based on model predictions and compared them to land cover type and protective status.

Results

Results revealed strong positive correlations between tree metrics (r ≥ 0.70) and substantial overlap in the selection and relative importance of predictors. Canopy height was the most important predictor across models, followed by climate and topography predictors associated with energy. Predictors derived from the soil-adjusted vegetation index were also valuable. Model performances ranged from R2 values of 0.45 to 0.55, with tree density performing best. Maps show high tree species diversity and biomass in protected areas.

Conclusions

This study and the maps it produced provide a baseline for land management and future modeling efforts in the GME. Our results highlight the contribution of a wide variety of environmental predictors and the importance of a select few. We confirmed the importance of the current protected area network where conservation efforts align, and help sustain, an abundance and diversity of trees. Current and historical disturbance-related predictors should be considered to address remaining unexplained variance.

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在坦桑尼亚西部的一个灌木丛生态系统中开发树种多样性和生物量的空间模型和地图
摘要:米隆博是一种突出的干旱森林地貌,对人类和野生动物都具有重要的生态意义。树木是米翁博动态背后的驱动力,因此,明确的树木覆盖空间指标对于评估栖息地特征、资源可用性和环境变化至关重要。我们开发了预测模型,并绘制了以前未曾描述过的地貌中的树种多样性和生物量地图。 地点:坦桑尼亚大马哈雷生态系统马哈雷山国家公园(MMNP)。 方法 我们根据香农多样性指数创建了树木密度、基部面积、树种丰富度和树木多样性模型。我们利用基于 MMNP 小区的数据以及从与气候、栖息地结构、植物生产力和地形相关的卫星数据中得出的预测变量,采用集合建模方法创建了一个预测模型。我们评估了不同模型中预测变量的重要性,并根据模型预测结果绘制了地图,将其与土地覆被类型和保护状况进行了比较。 结果 结果显示,树木指标之间存在很强的正相关性(r ≥ 0.70),在预测因子的选择和相对重要性方面存在大量重叠。树冠高度是各模型中最重要的预测因子,其次是与能量相关的气候和地形预测因子。从土壤调整植被指数中得出的预测因子也很有价值。模型的 R2 值从 0.45 到 0.55 不等,其中树木密度的表现最好。地图显示保护区的树木物种多样性和生物量都很高。 结论 这项研究及其绘制的地图为全球海洋生态系统的土地管理和未来建模工作提供了基准。我们的研究结果凸显了多种环境预测因子的作用以及少数几种预测因子的重要性。我们证实了当前保护区网络的重要性,在保护区内,保护工作协调并帮助维持树木的丰富性和多样性。应考虑当前和历史上与干扰相关的预测因素,以解决剩余的无法解释的差异。
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来源期刊
Applied Vegetation Science
Applied Vegetation Science 环境科学-林学
CiteScore
6.00
自引率
10.70%
发文量
67
审稿时长
3 months
期刊介绍: Applied Vegetation Science focuses on community-level topics relevant to human interaction with vegetation, including global change, nature conservation, nature management, restoration of plant communities and of natural habitats, and the planning of semi-natural and urban landscapes. Vegetation survey, modelling and remote-sensing applications are welcome. Papers on vegetation science which do not fit to this scope (do not have an applied aspect and are not vegetation survey) should be directed to our associate journal, the Journal of Vegetation Science. Both journals publish papers on the ecology of a single species only if it plays a key role in structuring plant communities.
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