School of Surveying and Land Information Engineering, Henan Polytechnic University, Jiaozuo 454000, China.
Key Laboratory of Land Surface Pattern and Simulation, Institute of Geographic Sciences and Natural Resources Research, Chinese Academy of Sciences, 11A Datun Rd., Beijing 100101, China.
Sci Total Environ. 2020 Jul 10;725:138342. doi: 10.1016/j.scitotenv.2020.138342. Epub 2020 Apr 1.
Spring green-up date (GUD) is a sensitive indicator of climate change, and of great significance to winter wheat production. However, our knowledge of the chain relationships among them is relatively weak. In this study, based on 8-day Enhanced Vegetation Index (EVI) data from Moderate Resolution Imaging Spectroradiometer (MODIS) from 2001 to 2015, we first assessed the performance of four algorithms for extracting winter wheat GUD in the North China Plain (NCP). A multiple linear regression model was then established to quantitatively determine the contributions of the time lag effects of hydrothermal variation on GUD. We further investigated the interactions between GUD and gross primary production (GPP) comprehensively. Our results showed that the rate of change in curvature algorithm (RCCmax) had better performance in capturing the spatiotemporal variation of winter wheat GUD relative to the other three methods (Kmax, CRmax, and cumCRmax). Regarding the non-identical lag time effects of hydrothermal factors, hydrothermal variations could explain winter wheat GUD variations for 82.05% of all pixels, 36.78% higher than that without considering the time lag effects. Variation in GUD negatively correlated with winter wheat GPP after green up in most parts of the NCP, significantly in 35.75% of all pixels with a mean rate of 1.89 g C m yr day. Meanwhile, winter wheat GPP exerted a strongly positive feedback on GUD in >82.42% of all pixels (significant in 28.01% of all pixels), characterized by a humped-shape pattern along the long-term average plant productivity. This finding highlights the complex interaction between spring phenology and plant productivity, and also suggests the importance of preseason climate factors on spring phenology.
春季物候期(GUD)是气候变化的敏感指标,对冬小麦生产具有重要意义。然而,我们对它们之间的链关系的了解相对较弱。在这项研究中,基于 2001 年至 2015 年中分辨率成像光谱仪(MODIS)的 8 天增强植被指数(EVI)数据,我们首先评估了四种算法在华北平原(NCP)提取冬小麦 GUD 的性能。然后建立了一个多元线性回归模型,定量确定水热变化对 GUD 的时滞效应的贡献。我们进一步全面研究了 GUD 与总初级生产力(GPP)之间的相互作用。结果表明,曲率变化率算法(RCCmax)在捕捉冬小麦 GUD 的时空变化方面相对于其他三种方法(Kmax、CRmax 和 cumCRmax)表现更好。关于水热因子的非相同滞后时间效应,水热变化可以解释所有像素中 82.05%的冬小麦 GUD 变化,比不考虑时滞效应时高 36.78%。GUD 的变化与华北平原大部分地区冬小麦 GPP 在返青后呈负相关,在所有像素中有 35.75%的显著相关,平均速率为 1.89 g C m yr day。同时,冬小麦 GPP 在所有像素中有>82.42%的区域对 GUD 产生强烈的正反馈(在所有像素中有 28.01%的区域显著),其特征是沿着长期平均植物生产力呈驼峰形模式。这一发现突出了春季物候与植物生产力之间的复杂相互作用,也表明 preseason 气候因素对春季物候的重要性。