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首页> 外文期刊>Natural hazards and earth system sciences >Bayesian trend analysis of extreme wind using observed and hindcast series off the Catalan coast, NW Mediterranean Sea
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Bayesian trend analysis of extreme wind using observed and hindcast series off the Catalan coast, NW Mediterranean Sea

机译:使用西北地中海加泰罗尼亚海岸的观测和后预报序列对极端风的贝叶斯趋势分析

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It has been suggested that climate change might modify the occurrence rate and magnitude of large oceanwave and wind storms. The hypothesised reason is the increase of available energy in the atmosphere-ocean system. Forecasting models are commonly used to assess these effects, given that good-quality data series are often too short. However, forecasting systems are often tuned to reproduce the average behaviour, and there are concerns on their relevance for extremal regimes. We present a methodology of simultaneous analysis of observed and hindcast data with the aim of extracting potential time drifts as well as systematic regime discrepancies between the two data sources. The method is based on the peak-over-threshold (POT) approach and the generalized Pareto distribution (GPD) within a Bayesian estimation framework. In this context, storm events are considered points in time, and modelled as a Poisson process. Storm magnitude over a reference threshold is modelled with a GPD, a flexible model that captures the tail behaviour of the magnitude distribution. All model parameters, i.e. shape and location of the magnitude GPD and the Poisson occurrence rate, are affected by a trend in time. Moreover, a systematic difference between parameters of hindcast and observed series is considered. Finally, the posterior joint distribution of all these trend parameters is studied using a conventional Gibbs sampler. This method is applied to compare hindcast and observed series of average wind speed at a deep buoy location off the Catalan coast (NE Spain, western Mediterranean; buoy data from 2001; REMO wind hindcasting from 1958 on). Appropriate scale and domain of attraction are discussed, and the reliability of trends in time is addressed.
机译:已经提出,气候变化可能会改变大浪和风暴的发生率和强度。假设的原因是大气-海洋系统中可用能量的增加。鉴于高质量的数据系列通常太短,通常使用预测模型来评估这些影响。但是,预测系统通常会进行调整以重现平均行为,因此人们担心它们与极端政权的相关性。我们提出了一种同时分析观测和后播数据的方法,目的是提取潜在的时间漂移​​以及两个数据源之间的系统性差异。该方法基于贝叶斯估计框架内的峰值阈值(POT)方法和广义帕累托分布(GPD)。在这种情况下,风暴事件被视为时间点,并被建模为泊松过程。使用GPD对超过参考阈值的风暴强度进行建模,该模型是一种灵活的模型,可捕获强度分布的尾部行为。所有模型参数(即GPD大小的形状和位置以及泊松发生率)均受时间趋势的影响。此外,考虑了后播参数和观测序列参数之间的系统差异。最后,使用常规的吉布斯采样器研究所有这些趋势参数的后关节分布。该方法用于比较加泰罗尼亚海岸外深浮标位置(西班牙东北部,地中海西部; 2001年的浮标数据; 1958年以后的REMO风向)的后预报和观测到的一系列平均风速。讨论了适当的规模和吸引力领域,并探讨了时间趋势的可靠性。

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