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[中国西南地区不同植被类型净初级生产力的时空变化及其影响因素探究]

[Spatio-temporal Variation in Net Primary Productivity of Different Vegetation Types and Its Influencing Factors Exploration in Southwest China].

作者信息

Xu Yong, Zheng Zhi-Wei, Meng Yu-Chi, Pan Yu-Chun, Guo Zhen-Dong, Zhang Yan

机构信息

College of Geomatics and Geoinformation, Guilin University of Technology, Guilin 541006, China.

Department of Spatial Planning, Technical University of Dortmund, Dortmund 44135, Germany.

出版信息

Huan Jing Ke Xue. 2024 Jan 8;45(1):262-274. doi: 10.13227/j.hjkx.202302121.

DOI:10.13227/j.hjkx.202302121
PMID:38216477
Abstract

Studying the spatiotemporal variation in vegetation net primary productivity (NPP) and exploring its influencing factors are of considerable practical significance for understanding the spatiotemporal variation in vegetation and for guiding ecological restoration and management projects based on local conditions. Based on MODIS NPP data, combined with in situ meteorological data, land use data, and vegetation type data, this study explores the spatiotemporal variation in different types of vegetation NPP in southwest China via the Mann-Kendall significance test and Theil-Sen Median slope estimator. It reveals the influencing factors of spatial differentiation of different types of vegetation NPP and the interaction between influencing factors in combination with stability analysis and Geo Detectors. The results revealed that on the temporal scale, from 2000 to 2021, vegetation NPP, NPP (vegetation NPP exclusively under the influence of climate change), and NPPRes (vegetation NPP exclusively under the influence of human activities) in southwest China showed a fluctuating upward trend. Among different vegetation types, NPP, NPP, and NPP exhibited an upward trend, except for a minor decline in NPPRes of tree vegetation at a rate of -0.183 g·(m·a). Among them, NPP, NPP, and NPP of economic vegetation showed the most significant upward rates, 5.96, 3.09, and 2.94 g·(m·a), respectively. On the spatial scale, the tree vegetation NPP with the most significant downward trend was mainly distributed in Tibet and southern Yunnan, while the economic vegetation NPP with the highest upward trend was primarily distributed in eastern Sichuan Province. The stability of vegetation NPP in southwest China presented a spatial distribution pattern of "low in the south and high in the north," and the average value of the correlation coefficient increased in the ascending order of arbor vegetation (0.101), shrub vegetation (0.105), herb vegetation (0.110), and economic vegetation (0.114). The interaction between surface temperature and relative humidity was the main influencing factor for spatial differentiation of vegetation NPP, while the interaction between sunshine duration and warmth index had the most significant impact on vegetation in southwest China, with an increasing percentage of 30.91%. Different types of vegetation had different requirements for different climatic factors, but their requirements for surface temperature and warmth index were significantly consistent. When the surface temperature was 21.03-28.49℃, and the warmth index was 106.46-167.2, the NPP of different vegetation types peaked. Under natural succession, the impact of climate change on vegetation was inversely proportional to the stability of the vegetation community. The arbor vegetation community with high stability was less affected, while the herb vegetation community with low stability was highly affected by climate. In contrast, the stability of economic vegetation was directly proportional to the impact of climate due to the influence of human activities. This study establishes a theoretical foundation for evaluating the impact of regional climate on the growth of different vegetation types and can be crucial for formulating ecological restoration and management strategies in southwest China that are adapted to the local conditions.

摘要

研究植被净初级生产力(NPP)的时空变化并探究其影响因素,对于理解植被的时空变化以及指导因地制宜的生态恢复和管理项目具有重要的现实意义。基于MODIS NPP数据,结合实地气象数据、土地利用数据和植被类型数据,本研究通过Mann-Kendall显著性检验和Theil-Sen中位数斜率估计器,探究中国西南地区不同类型植被NPP的时空变化。结合稳定性分析和地理探测器,揭示不同类型植被NPP空间分异的影响因素以及影响因素之间的相互作用。结果表明,在时间尺度上,2000—2021年中国西南地区植被NPP、NPP(仅受气候变化影响的植被NPP)和NPPRes(仅受人类活动影响的植被NPP)呈波动上升趋势。在不同植被类型中,NPP、NPP和NPP呈上升趋势,但乔木植被的NPPRes以-0.183 g·(m·a)的速率略有下降。其中,经济植被的NPP、NPP和NPP上升速率最为显著,分别为5.96、3.09和2.94 g·(m·a)。在空间尺度上,下降趋势最显著的乔木植被NPP主要分布在西藏和云南南部,而上升趋势最高的经济植被NPP主要分布在四川省东部。中国西南地区植被NPP的稳定性呈现出“南高北低”的空间分布格局,相关系数平均值按乔木植被(0.101)、灌木植被(0.105)、草本植被(0.110)和经济植被(0.114)的升序排列而增加。地表温度和相对湿度之间的相互作用是植被NPP空间分异的主要影响因素,而日照时数和温暖指数之间的相互作用对中国西南地区植被的影响最为显著,增加百分比为30.91%。不同类型植被对不同气候因子的需求不同,但它们对地表温度和温暖指数的需求显著一致。当地表温度为21.03—28.49℃,温暖指数为106.46—167.2时,不同植被类型的NPP达到峰值。在自然演替过程中,气候变化对植被的影响与植被群落的稳定性成反比。稳定性高的乔木植被群落受影响较小,而稳定性低的草本植被群落受气候影响较大。相比之下,由于人类活动的影响,经济植被的稳定性与气候影响成正比。本研究为评估区域气候对不同植被类型生长的影响奠定了理论基础,对于制定适合中国西南地区当地条件的生态恢复和管理策略至关重要。

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