Predicting Spatial Distribution of Plant Functional Traits in a Forest-Steppe Zone

IF 0.4 4区 环境科学与生态学 Q4 ECOLOGY
Shunxiang Fan, Zhidong Zhang
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引用次数: 3

Abstract

ABSTRACT We investigated the response mechanisms of plant functional traits to environmental factors at the community level in order to elucidate the adaptive and survival strategies of plants in different environmental gradients. 184 vegetation sampling plots were laid by stratified random sampling in the Saihanba region of Hebei, China. Three functional traits (leaf nitrogen content, LNC; specific leaf area, SLA; leaf dry matter content, LDMC) were measured and the community-level weighted means of the trait values were calculated by the species coverage values. Climate and terrain data were generated from the climate model ClimateAP and using ArcGIS. Finally, eight environmental factors, including climate, topographical, and soil factor, were recorded and the association with functional traits was analysed using a generalized additive model. Model testing indicated a good predictability for the SLA and LDMC while a relatively poor predictability was seen with LNC. Environmental factors that significantly impacted SLA included elevation, degree-days above 0°C, mean annual precipitation and total soil nitrogen content. In contrast, LDMC was significantly influenced by elevation, total soil nitrogen and phosphorous content while LNC was affected by elevation and degree-days above 0°C. High values of SLA and LNC were found in areas at lower elevations. The distribution of high LDMC values indicated that plant leaves have a relatively high tolerance and resistance to stress, which was better for plant to grow in the adverse environment. At the community level, clarifying plant functional traits distribution and their changes with environmental gradients is useful for the potential vegetation restoration.
森林草原区植物功能性状的空间分布预测
摘要我们在群落水平上研究了植物功能性状对环境因子的反应机制,以阐明植物在不同环境梯度下的适应和生存策略。采用分层随机抽样方法,在河北省塞罕坝地区布设了184个植被采样点。测量了三个功能性状(叶片含氮量,LNC;比叶面积,SLA;叶片干物质含量,LDMC),并根据物种覆盖值计算了性状值的群落水平加权平均值。气候和地形数据是根据气候模型ClimateAP并使用ArcGIS生成的。最后,记录了包括气候、地形和土壤因素在内的八个环境因素,并使用广义加性模型分析了它们与功能性状的关系。模型测试表明,SLA和LDMC的可预测性较好,而LNC的可预见性相对较差。显著影响SLA的环境因素包括海拔、0°C以上的天数、年均降水量和土壤总氮含量。相反,LDMC受海拔、土壤总氮和磷含量的显著影响,而LNC受海拔和0°C以上的天数的影响。在海拔较低的地区,SLA和LNC值较高。高LDMC值的分布表明,植物叶片对胁迫具有较高的耐受性和抗性,有利于植物在不利环境中生长。在群落层面,阐明植物功能性状的分布及其随环境梯度的变化有助于潜在的植被恢复。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Polish Journal of Ecology
Polish Journal of Ecology 环境科学-生态学
CiteScore
1.10
自引率
0.00%
发文量
9
审稿时长
18-36 weeks
期刊介绍: POLISH JOURNAL OF ECOLOGY (formerly Ekologia polska) publishes original scientific research papers dealing with all aspects of ecology: both fundamental and applied, physiological ecology, evolutionary ecology, ecology of population, community, ecosystem, landscape as well as global ecology. There is no bias regarding taxons, ecosystems or geographical regions.
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