Spatiotemporal variation and response of gross primary productivity to climate factors in forests in Qiannan state from 2000 to 2020

Z. Liao, X. Fei, Bing‐Bing Zhou, Jingyu Zhu, Hongyu Jia, Weiduo Chen, Rui Chen, Peng Xu, Wangjun Li
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Abstract

Accurate estimation of terrestrial gross primary productivity (GPP) is essential for quantifying the carbon exchange between the atmosphere and biosphere. Light use efficiency (LUE) models are widely used to estimate GPP at different spatial scales. However, difficulties in properly determining the maximum LUE (LUEmax) and downregulation of LUEmax into actual LUE result in uncertainties in the LUE-estimated GPP. The recently developed P model, a new LUE model, captures the adaptability of vegetation to the environment and simplifies parameterization. Site-level studies have proven the superior performance of the P model over LUE models. As a representative karst region with significant changes in forest cover in Southwest China, Qiannan is useful for exploring the spatiotemporal variation in forest GPP and its response to climate change for formulating forest management policies to address climate changes, e.g., global warming. Based on remote sensing and meteorological data, this study estimated the forest ecosystem GPP in Qiannan from 2000–2020 via the P model. This study explored the spatiotemporal changes in GPP in the study region over the past 20 years, used the Hurst index to predict future development trends from a time series perspective, and used partial correlation analysis to analyse the spatiotemporal GPP changes over the past 20 years in response to three factors: temperature, precipitation, and vapor pressure deficit (VPD). Our results showed that (1) the total amount of GPP and average GPP in Qiannan over the past 21 years (2000–2020) were 1.9 × 104 ± 2.0 × 103 MgC ha−1 year−1 and 1238.9 ± 107.9 gC m−2 year−1, respectively. The forest GPP generally increased at a rate of 6.1 gC m−2 year−1 from 2000 to 2020 in Qiannan, and this increase mainly occurred in the nongrowing season. (2) From 2000 to 2020, the forest GPP in Qiannan was higher in the southeast and lower in the northwest, indicating significant spatial heterogeneity. In the future, more than 70% of regional forest GPP will experience a weak increase in nonsustainability. (3) In Qiannan, forest GPP was positively correlated with both temperature and precipitation, with partial correlation coefficients of 0.10 and 0.11, respectively. However, the positive response of GPP to precipitation was approximately 70.47%, while that to temperature was 64.05%. Precipitation had a stronger restrictive effect on GPP than did temperature in this region, and GPP exhibited a negative correlation with VPD. The results showed that an increase in VPD inhibits GPP to some extent. Under rapid global change, the P model GPP provides new GPP data for global ecology studies, and the comparison of various stress factors allows for improvement of the GPP model in the future. The results of this study will aid in understanding the dynamic processes of terrestrial carbon. These findings are helpful for estimating and predicting the carbon budget of forest ecosystems in karst regions, clarifying the regional carbon absorption capacity, clarifying the main factors limiting vegetation growth in these regions, promoting sustainable regional forestry development and serving the “dual carbon goal.” This work has important guiding significance for policy formulation to mitigate climate change.
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2000-2020 年黔南州森林总初级生产力时空变化及对气候因子的响应
准确估算陆地总初级生产力(GPP)对于量化大气与生物圈之间的碳交换至关重要。光利用效率(LUE)模型被广泛用于估算不同空间尺度的总初级生产力。然而,由于难以正确确定最大光利用效率(LUEmax)以及将最大光利用效率下调为实际光利用效率,导致光利用效率估算的 GPP 存在不确定性。最近开发的 P 模型是一种新的 LUE 模型,它捕捉到了植被对环境的适应性,并简化了参数设置。现场研究证明,P 模型的性能优于 LUE 模型。黔西南是中国西南地区具有代表性的喀斯特地区,其森林覆盖率变化显著,可用于探索森林 GPP 的时空变化及其对气候变化的响应,从而制定森林管理政策以应对全球变暖等气候变化。本研究基于遥感和气象数据,通过 P 模型估算了 2000-2020 年黔南州森林生态系统 GPP。本研究探讨了研究区域近 20 年来 GPP 的时空变化,利用 Hurst 指数从时间序列的角度预测了未来的发展趋势,并利用偏相关分析方法分析了近 20 年来 GPP 随温度、降水和水汽压差(VPD)三个因子的时空变化。结果表明:(1) 过去 21 年(2000-2020 年)黔南州的 GPP 总量和平均 GPP 分别为 1.9 × 104 ± 2.0 × 103 MgC ha-1 year-1 和 1238.9 ± 107.9 gC m-2 year-1。从 2000 年到 2020 年,黔南的森林 GPP 增长率一般为 6.1 gC m-2 year-1,这种增长主要发生在非生长季。(2)从 2000 年到 2020 年,黔南的森林 GPP 在东南部较高,而在西北部较低,表明空间异质性显著。未来,70%以上的区域森林 GPP 将出现微弱的非持续性增长。(3)在黔南,森林 GPP 与气温和降水均呈正相关,偏相关系数分别为 0.10 和 0.11。但 GPP 对降水的正响应约为 70.47%,而对温度的正响应为 64.05%。在该地区,降水对 GPP 的限制作用比温度更强,GPP 与 VPD 呈负相关。结果表明,VPD 的增加在一定程度上抑制了 GPP。在全球快速变化的情况下,P 模型 GPP 为全球生态学研究提供了新的 GPP 数据,对各种胁迫因子的比较也为未来改进 GPP 模型提供了可能。这项研究的结果将有助于了解陆地碳的动态过程。这些发现有助于估算和预测岩溶地区森林生态系统的碳预算,明确区域碳吸收能力,阐明限制这些地区植被生长的主要因素,促进区域林业可持续发展,服务于 "双碳目标"。这项工作对制定减缓气候变化的政策具有重要的指导意义。
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