Sun Xue, Long Zexu, Jia Jingbo
College of Wildlife and Protected Area Northeast Forestry University Harbin China.
Ecol Evol. 2022 Feb 14;12(2):e8628. doi: 10.1002/ece3.8628. eCollection 2022 Feb.
Habitat loss and fragmentation are widely acknowledged as the main driver of the decline of giant panda populations. The Chinese government has made great efforts to protect this charming species and has made remarkable achievements, such as population growth and habitat expansion. However, habitat fragmentation has not been reversed. Protecting giant pandas in a large spatial extent needs to identify core habitat patches and corridors connecting them. This study used an equal-sampling multiscale random forest habitat model to predict a habitat suitability map for the giant panda. Then, we applied the resistant kernel method and factorial least-cost path analysis to identify core habitats connected by panda dispersal and corridors among panda occurrences, respectively. Finally, we evaluated the effectiveness of current protected areas in representing core habitats and corridors. Our results showed high scale dependence of giant panda habitat selection. Giant pandas strongly respond to bamboo percentage and elevation at a relatively fine scale (1 km), whereas they respond to anthropogenic factors at a coarse scale (≥2 km). Dispersal ability has significant effects on core habitats extent and population fragmentation evaluation. Under medium and high dispersal ability scenarios (12,000 and 20,000 cost units), most giant panda habitats in the Qionglai mountain are predicted to be well connected by dispersal. The proportion of core habitats covered by protected areas varied between 38% and 43% under different dispersal ability scenarios, highlighting significant gaps in the protected area network. Similarly, only 43% of corridors that connect giant panda occurrences were protected. Our results can provide crucial information for conservation managers to develop wise strategies to safeguard the long-term viability of the giant panda population.
栖息地丧失和破碎化被广泛认为是大熊猫种群数量下降的主要驱动因素。中国政府为保护这一迷人的物种付出了巨大努力,并取得了显著成就,如种群增长和栖息地扩大。然而,栖息地破碎化的状况尚未得到扭转。在大空间范围内保护大熊猫需要识别核心栖息地斑块以及连接这些斑块的廊道。本研究使用等抽样多尺度随机森林栖息地模型来预测大熊猫的栖息地适宜性地图。然后,我们分别应用抗性核方法和因子最小成本路径分析来识别通过大熊猫扩散连接的核心栖息地以及大熊猫分布点之间的廊道。最后,我们评估了当前保护区在代表核心栖息地和廊道方面的有效性。我们的结果表明大熊猫栖息地选择具有高度的尺度依赖性。大熊猫在相对精细的尺度(1公里)上对竹子百分比和海拔高度有强烈反应,而在较粗的尺度(≥2公里)上对人为因素有反应。扩散能力对核心栖息地范围和种群破碎化评估有显著影响。在中等和高扩散能力情景(12000和20000成本单位)下,预计邛崃山的大多数大熊猫栖息地通过扩散能够良好连接。在不同扩散能力情景下,保护区覆盖的核心栖息地比例在38%至43%之间变化,凸显了保护区网络存在显著差距。同样,连接大熊猫分布点的廊道中只有43%得到了保护。我们的结果可以为保护管理者制定明智的策略以保障大熊猫种群的长期生存能力提供关键信息。