...
首页> 外文期刊>ISPRS International Journal of Geo-Information >Direct Impacts of Climate Change and Indirect Impacts of Non-Climate Change on Land Surface Phenology Variation across Northern China
【24h】

Direct Impacts of Climate Change and Indirect Impacts of Non-Climate Change on Land Surface Phenology Variation across Northern China

机译:中国北方气候变化的直接影响和非气候变化的间接影响对地表物候变化的影响

获取原文
   

获取外文期刊封面封底 >>

       

摘要

Land surface phenology (LSP) is a sensitive indicator of climate change. Understanding the variation in LSP under various impacts can improve our knowledge on ecosystem dynamics and biosphere-atmosphere interactions. Over recent decades, LSP derived from remote sensing data and climate change-related variation of LSP have been widely reported at the regional and global scales. However, the smoothing methods of the vegetation index (i.e., NDVI) are diverse, and discrepancies among methods may result in different results. Additionally, LSP is affected by climate change and non-climate change simultaneously. However, few studies have focused on the isolated impacts of climate change and the impacts of non-climate change on LSP variation. In this study, four methods were applied to reconstruct the MODIS enhanced vegetation index (EVI) dataset to choose the best smoothing result to estimate LSP. Subsequently, the variation in the start of season (SOS) and end of season (EOS) under isolated impacts of climate change were analyzed. Furthermore, the indirect effects of isolated impacts of non-climate change were conducted based on the differences between the combined impact (the impacts of both climate change and non-climate change) and isolated impacts of climate change. Our results indicated that the Savitzky-Golay method is the best method of the four for smoothing EVI in Northern China. Additionally, SOS displayed an advanced trend under the impacts of both climate change and non-climate change (hereafter called the combined impact), isolated impacts of climate change, and isolated impacts of non-climate change, with mean values of ?0.26, ?0.07, and ?0.17 days per year, respectively. Moreover, the trend of SOS continued after 2000, but the magnitudes of changes in SOS after 2000 were lower than those that were estimated over the last two decades of the twentieth century (previous studies). EOS showed a delayed trend under the combined impact and isolated impacts of non-climate change, with mean values of 0.41 and 0.43 days per year, respectively. However, EOS advanced with a mean value of ?0.16 days per year under the isolated impacts of climate change. Furthermore, the absolute mean values of SOS and EOS trends under the isolated impacts of non-climate change were larger than that of the isolated impacts of climate change, indicating that the effect of non-climate change on LSP variation was larger than that of climate change. With regard to the relative contribution of climatic factors to the variation in SOS and EOS, the proportion of solar radiation was the largest for both SOS and EOS, followed by precipitation and temperature.
机译:地表物候学(LSP)是气候变化的敏感指标。了解LSP在各种影响下的变化可以提高我们对生态系统动力学和生物圈-大气相互作用的了解。在最近的几十年中,从遥感数据和与气候变化有关的LSP变异衍生的LSP已在区域和全球范围广泛报道。但是,植被指数(即NDVI)的平滑方法是多种多样的,并且方法之间的差异可能导致不同的结果。此外,LSP同时受到气候变化和非气候变化的影响。但是,很少有研究关注气候变化的孤立影响和非气候变化对LSP变化的影响。在这项研究中,应用了四种方法来重建MODIS增强植被指数(EVI)数据集,以选择最佳平滑结果来估计LSP。随后,分析了在孤立的气候变化影响下季节开始(SOS)和季节结束(EOS)的变化。此外,基于综合影响(气候变化和非气候变化的影响)与气候变化的孤立影响之间的差异,进行了非气候变化孤立影响的间接影响。我们的结果表明,Savitzky-Golay方法是在中国北方平滑EVI的四种方法中最好的方法。另外,在气候变化和非气候变化的影响(以下称为综合影响),气候变化的孤立影响和非气候变化的孤立影响的影响下,SOS表现出先进的趋势,平均值为0.26,?每年分别为0.07和0.17天。此外,SOS的趋势在2000年后仍持续,但2000年后SOS的变化幅度低于20世纪后二十年的估计值(先前的研究)。在非气候变化的综合影响和孤立影响下,EOS呈现出延迟趋势,平均值分别为每年0.41天和0.43天。然而,在孤立的气候变化影响下,EOS的年平均值为0.16天。此外,在非气候变化的孤立影响下,SOS和EOS趋势的绝对平均值大于气候变化孤立的影响,表明非气候变化对LSP变化的影响大于气候的影响。更改。关于气候因素对SOS和EOS变化的相对贡献,SOS和EOS的太阳辐射比例最大,其次是降水和温度。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号