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Norway spruce (Picea abies): Bayesian analysis of the relationship between temperature and bud burst

机译:挪威云杉(Picea abies):温度与芽突关系的贝叶斯分析

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Climate change has already affected the phenology of several species. To be able to assess the impacts of climate change under various climate scenarios, we need superior models of the phenology of different species. Linear regression methods alone are of limited value for the analyses of natural indicators or phenological data because most time series of naturally occurring events in ecosystems do change in a nonlinear way. In this paper, we applied a Bayesian probability approach to investigate time series of the phenological phase of bud burst in Norway spruce (Picea abies (L.) Karst.) and mean monthly/weekly temperatures of corresponding climate stations in Germany. In these temperature and Norway spruce bud burst time series we detected years with the highest probability for discontinuities. We analysed rates of change and the relationship between temperature changes and bud burst of Norway spruce in the 51-year period 1953-2003. We used a Bayesian method for a coherence analysis between phenological onset dates and an effective temperature generated as a weighted average of monthly and weekly means from January to May. Weight coefficients were obtained from an optimization of the coherence factor by simulated annealing. In all investigated cases we found coherence factors that suggested a relationship between temperature and phenological time series. Norway spruce bud burst and mean temperature times series of April and May exhibited abrupt changes, particularly at the beginning of the 1980s. April and May temperature time series revealed an increased warming until 2003, and bud burst events advanced. Norway spruce bud burst, in particular, exhibited responses to temperatures of the previous (April) and current month (May). We suggest that besides commonly used sums of daily mean temperatures, forcing temperatures in phenology models should also include solutions where weighted effective temperatures in a sensitive time span are considered.
机译:气候变化已经影响了几种物种的物候。为了能够评估各种气候情景下气候变化的影响,我们需要不同物种物候的高级模型。仅线性回归方法对于分析自然指标或物候数据的价值有限,因为生态系统中自然发生的事件的大多数时间序列确实以非线性方式变化。在本文中,我们使用贝叶斯概率方法研究了挪威云杉(Picea abies(L.)Karst。)的芽萌芽物候期的时间序列,以及德国相应气候站的平均月/周温度。在这些温度和挪威云杉芽萌发时间序列中,我们检测到不连续概率最高的年份。我们分析了1953-2003年这51年间挪威云杉的变化速率以及温度变化与芽的爆发之间的关系。我们使用贝叶斯方法对物候发作日期和有效温度之间的相关性进行分析,该有效温度是从一月到五月的每月和每周平均值的加权平均值。通过模拟退火优化相干因子获得权重系数。在所有调查的案例中,我们发现了相关因子,这些因子暗示了温度与物候时间序列之间的关系。挪威的云杉芽爆发和4月和5月的平均温度时间序列呈现出突变,特别是在1980年代初。 4月和5月的温度时间序列显示,直到2003年,气温升高了,芽爆发事件提前了。挪威云杉芽的爆发尤其表现出对前一个(4月)和本月(5月)温度的响应。我们建议,除了常用的每日平均温度总和外,物候模型中的强迫温度还应包括考虑敏感时间段内加权有效温度的解决方案。

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