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从不断减少的志愿者观测者那里获取物候信息以及物候信息的变化趋势和温度敏感性地图。

Maps, trends, and temperature sensitivities-phenological information from and for decreasing numbers of volunteer observers.

机构信息

Ecoclimatology, Department of Life Science Systems, TUM School of Life Sciences, Technical University of Munich, Freising, Germany.

School of Biological, Earth and Environmental Sciences, University College Cork, T12K8AF, Cork, Ireland.

出版信息

Int J Biometeorol. 2021 Aug;65(8):1377-1390. doi: 10.1007/s00484-021-02110-3. Epub 2021 Mar 10.

Abstract

Phenology serves as a major indicator of ongoing climate change. Long-term phenological observations are critically important for tracking and communicating these changes. The phenological observation network across Germany is operated by the National Meteorological Service with a major contribution from volunteering activities. However, the number of observers has strongly decreased for the last decades, possibly resulting in increasing uncertainties when extracting reliable phenological information from map interpolation. We studied uncertainties in interpolated maps from decreasing phenological records, by comparing long-term trends based on grid-based interpolated and station-wise observed time series, as well as their correlations with temperature. Interpolated maps in spring were characterized by the largest spatial variabilities across Bavaria, Germany, with respective lowest interpolated uncertainties. Long-term phenological trends for both interpolations and observations exhibited mean advances of -0.2 to -0.3 days year for spring and summer, while late autumn and winter showed a delay of around 0.1 days year. Throughout the year, temperature sensitivities were consistently stronger for interpolated time series than observations. Such a better representation of regional phenology by interpolation was equally supported by satellite-derived phenological indices. Nevertheless, simulation of observer numbers indicated that a decline to less than 40% leads to a strong decrease in interpolation accuracy. To better understand the risk of declining phenological observations and to motivate volunteer observers, a Shiny app is proposed to visualize spatial and temporal phenological patterns across Bavaria and their links to climate change-induced temperature changes.

摘要

物候学是气候变化的主要指标之一。长期的物候观测对于跟踪和交流这些变化至关重要。德国的物候观测网络由国家气象局运营,志愿者活动做出了重要贡献。然而,在过去几十年中,观测者的数量大幅减少,这可能导致从地图插值中提取可靠物候信息时的不确定性增加。我们通过比较基于网格插值和站点观测的时间序列的长期趋势以及它们与温度的相关性,研究了减少的物候记录插值地图中的不确定性。在德国巴伐利亚州,春季插值地图的空间变异性最大,相应的插值不确定性最低。两种插值和观测的长期物候趋势都表现出春季和夏季的平均提前约为 0.2-0.3 天/年,而晚秋和冬季的延迟约为 0.1 天/年。全年的温度敏感性对于插值时间序列始终强于观测值。这种插值更好地表示了区域物候,同样得到了卫星衍生的物候指数的支持。然而,模拟观测者数量的结果表明,下降到不到 40%会导致插值精度的大幅下降。为了更好地了解观测物候减少的风险,并激励志愿者观测者,我们提出了一个闪亮的应用程序,用于可视化巴伐利亚州的时空物候模式及其与气候变化引起的温度变化的联系。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1e51/8346396/5471e7a8fc3c/484_2021_2110_Fig1_HTML.jpg

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