Mapping the Mangrove Forest Restoration Potential and Conservation Gaps in China Based on Random Forest Model

Q3 Social Sciences
Zhonghua Yu, Wei Li, Shaowei Zhang, Buqing Zhong, J. Wang, Shi-Young Lee, Jaehyuck Choi, Shulin Deng
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Abstract

Background and objective: The area of mangroves is gradually decreasing globally, and mangroves are already one of the most threatened ecosystems. Despite net growth in the mangrove areas in China, the restoration potential of mangroves is still insufficient. This study proposed the Random forest model as an excellent data mining method to map the restoration potential based on the predicted probability of mangrove habitat suitability.Methods: We demonstrated the vital environmental variables influencing habitat suitability. The de-cisive advantages of RFM were parsimonious (variables selection), cost-effective (us-ing existing open-source data), accurate (training AUC was 0.89, testing AUC was 0.91), highly efficient (fast-training speed); and its results had high explanatory power. Here, we first mapped the conservation gaps using the RFM.Results: The results showed that temperature was the most important environmental factor influencing the habitat suit-ability of mangroves. The northern limit of suitable areas was around 24°44' N. The theoretical suitable habitat area for mangrove was 196,566.6 ha (the highly suitable area was 32,551.4 ha, the medium suitable area was 164,015.2 ha). The potential area for mangrove restoration was 176,264 ha (Guangdong with 104215.4 ha, Guangxi with 65957.5 ha).Conclusion: We proposed 24 sites with conservation gaps for mangrove forests restoration and nine potential sites as examples for the further restoration plan. We took one example site with high restoration potential for further explanation: how the key environmental factors influence the habitat suitability and how to use the infor-mation to guide the restoration strategies. RFM can be used as a data mining algo-rithm for the utmost use of the presence-only ecological data, objectively evaluating the suitability of species distribution, and providing scientifically technical data for species restoration planning.
基于随机森林模型的中国红树林恢复潜力及保护缺口制图
背景和目标:全球红树林面积正在逐渐减少,红树林已经是最受威胁的生态系统之一。尽管中国红树林地区实现了净增长,但红树林的恢复潜力仍然不足。本研究提出随机森林模型作为一种优秀的数据挖掘方法,基于红树林栖息地适宜性的预测概率来绘制恢复潜力图。方法:我们论证了影响栖息地适宜性的重要环境变量。RFM的决策优势是简洁(变量选择)、成本效益高(利用现有开源数据)、准确(训练AUC为0.89,测试AUC为0.91)、高效(训练速度快);其结果具有很高的解释力。结果:温度是影响红树林生境适应能力的最重要环境因素。北部适宜面积约为24°44’N。红树林的理论适宜栖息地面积为196566.6公顷(高度适宜面积为32551.4公顷,中等适宜面积为164015.2公顷)。红树林恢复的潜在面积为176264公顷(广东104215.4公顷,广西65957.5公顷)。我们以一个具有高恢复潜力的地点为例进行进一步解释:关键环境因素如何影响栖息地的适宜性,以及如何利用这些信息来指导恢复策略。RFM可以作为一种数据挖掘算法,最大限度地利用仅存在的生态数据,客观评价物种分布的适宜性,为物种恢复规划提供科学的技术数据。
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来源期刊
Journal of People, Plants, and Environment
Journal of People, Plants, and Environment Social Sciences-Urban Studies
CiteScore
1.10
自引率
0.00%
发文量
42
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