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A Bayesian stochastic generator to complement existing climate change scenarios: supporting uncertainty quantification in marine and coastal ecosystems

机译:贝叶斯随机发电机补充现有的气候变化情景:在海洋和沿海生态系统中支持不确定性量化

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摘要

Available climate change projections, which can be used for quantifying future changes in marine and coastal ecosystems, usually consist of a few scenarios. Studies addressing ecological impacts of climate change often make use of a low- (RCP2.6), moderate- (RCP4.5) or high climate scenario (RCP8.5), without taking into account further uncertainties in these scenarios. In this research a methodology is proposed to generate further synthetic scenarios, based on existing datasets, for a better representation of climate change induced uncertainties. The methodology builds on Regional Climate Model scenarios provided by the EURO-CORDEX experiment. In order to generate new realizations of climate variables, such as radiation or temperature, a hierarchical Bayesian model is developed. In addition, a parameterized time series model is introduced, which includes a linear trend component, a seasonal shape with varying amplitude and time shift, and an additive residual term. The seasonal shape is derived with the non-parametric locally weighted scatterplot smoothing, and the residual term includes the smoothed variance of residuals and independent and identically distributed noise. The distributions of the time series model parameters are estimated through Bayesian parameter inference with Markov chain Monte Carlo sampling (Gibbs sampler). By sampling from the predictive distribution numerous new statistically representative synthetic scenarios can be generated including uncertainty estimates. As a demonstration case, utilizing these generated synthetic scenarios and a physically based ecological model (Delft3D-WAQ) that relates climate variables to ecosystem variables, a probabilistic simulation is conducted to further propagate the climate change induced uncertainties to marine and coastal ecosystem indicators.
机译:可用的气候变化预测,可用于量化海洋和沿海生态系统的未来变化,通常包括一些情景。解决气候变化的生态影响的研究通常利用低(RCP2.6),中等 - (RCP4.5)或高气候情景(RCP8.5),而不考虑在这些情况下进一步的不确定性。在本研究中,提出了一种基于现有数据集产生进一步的合成情景,以更好地表示气候变化诱导的不确定性。该方法在欧洲驯料实验提供的区域气候模型情景上建立。为了产生新的气候变量的实现,例如辐射或温度,开发了分层贝叶斯模型。另外,引入了参数化时间序列模型,其包括线性趋势分量,具有不同幅度和时移的季节形状,以及添加剂残留项。季节性形状与非参数局部加权散点图平滑导出,并且残差项包括残差和独立且相同分布的噪声的平滑方差。时间序列模型参数的分布通过贝叶斯参数推断估算了Markov Chain Monte Carlo采样(Gibbs采样器)。通过从预测分布中抽样,可以生成许多新的统计学上代表性的综合情景,包括不确定性估计。作为示范案例,利用这些生成的综合情景和与物理上基于生态模型(Delft3D-Waq)相关的,将气候变量与生态系统变量相关联,进行了概率模拟,以进一步传播到海洋和沿海生态系统指标的气候变化诱导的不确定性。

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