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山地草原五年物候监测:年际模式及采样方案评估

Five years of phenological monitoring in a mountain grassland: inter-annual patterns and evaluation of the sampling protocol.

作者信息

Filippa Gianluca, Cremonese Edoardo, Galvagno Marta, Migliavacca Mirco, Morra di Cella Umberto, Petey Martina, Siniscalco Consolata

机构信息

Environmental Protection Agency of Aosta Valley, ARPA VdA, Climate Change Unit, Aosta, Italy.

Biogeochemical Integration Department, Max Planck Institute for Biogeochemistry, Jena, Germany.

出版信息

Int J Biometeorol. 2015 Dec;59(12):1927-37. doi: 10.1007/s00484-015-0999-5. Epub 2015 May 3.

Abstract

The increasingly important effect of climate change and extremes on alpine phenology highlights the need to establish accurate monitoring methods to track inter-annual variation (IAV) and long-term trends in plant phenology. We evaluated four different indices of phenological development (two for plant productivity, i.e., green biomass and leaf area index; two for plant greenness, i.e., greenness from visual inspection and from digital images) from a 5-year monitoring of ecosystem phenology, here defined as the seasonal development of the grassland canopy, in a subalpine grassland site (NW Alps). Our aim was to establish an effective observation strategy that enables the detection of shifts in grassland phenology in response to climate trends and meteorological extremes. The seasonal development of the vegetation at this site appears strongly controlled by snowmelt mostly in its first stages and to a lesser extent in the overall development trajectory. All indices were able to detect an anomalous beginning of the growing season in 2011 due to an exceptionally early snowmelt, whereas only some of them revealed a later beginning of the growing season in 2013 due to a late snowmelt. A method is developed to derive the number of samples that maximise the trade-off between sampling effort and accuracy in IAV detection in the context of long-term phenology monitoring programmes. Results show that spring phenology requires a smaller number of samples than autumn phenology to track a given target of IAV. Additionally, productivity indices (leaf area index and green biomass) have a higher sampling requirement than greenness derived from visual estimation and from the analysis of digital images. Of the latter two, the analysis of digital images stands out as the more effective, rapid and objective method to detect IAV in vegetation development.

摘要

气候变化和极端天气对高山物候的影响日益重要,这凸显了建立准确监测方法以追踪植物物候年际变化(IAV)和长期趋势的必要性。我们对一个亚高山草地站点(西北阿尔卑斯山)进行了为期5年的生态系统物候监测,评估了四种不同的物候发育指标(两种用于植物生产力,即绿色生物量和叶面积指数;两种用于植物绿度,即目视检查绿度和数字图像绿度),这里将生态系统物候定义为草地冠层的季节性发育。我们的目标是建立一种有效的观测策略,以便能够检测草地物候随气候趋势和气象极端事件的变化。该站点植被的季节性发育在最初阶段似乎主要受融雪强烈控制,在整体发育轨迹中受融雪控制程度较小。所有指标都能检测到2011年生长季异常开始是由于融雪异常早,而只有其中一些指标显示2013年生长季开始较晚是由于融雪晚。我们开发了一种方法,用于在长期物候监测计划的背景下,得出能在采样工作量和IAV检测准确性之间实现最佳权衡的样本数量。结果表明,在追踪给定的IAV目标时,春季物候所需的样本数量比秋季物候少。此外,生产力指标(叶面积指数和绿色生物量)的采样要求高于目视估计和数字图像分析得出的绿度指标。在后者中,数字图像分析是检测植被发育中IAV更有效、快速和客观的方法。

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