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Stochastic precipitation generator with hidden state covariates

机译:具有隐藏状态协变量的随机降水产生器

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Time series of daily weather such as precipitation, minimum temperature and maximum temperature are commonly required for various fields. Stochastic weather generators constitute one of the techniques to produce synthetic daily weather. The recently introduced approach for stochastic weather generators is based on generalized linear modeling (GLM) with covariates to account for seasonality and teleconnections (e.g., with the El Nio). In general, stochastic weather generators tend to underestimate the observed interannual variance of seasonally aggregated variables. To reduce this overdispersion, we incorporated time series of seasonal dry/wet indicators in the GLM weather generator as covariates. These seasonal time series were local (or global) decodings obtained by a hidden Markov model of seasonal total precipitation and implemented in the weather generator. The proposed method is applied to time series of daily weather from Seoul, Korea and Pergamino, Argentina. This method provides a straightforward translation of the uncertainty of the seasonal forecast to the corresponding conditional daily weather statistics.
机译:各个领域通常需要诸如降水,最低温度和最高温度等每日天气的时间序列。随机天气生成器是产生合成日常天气的技术之一。最近引入的随机天气生成器方法基于广义线性建模(GLM),具有协变量以考虑季节和遥相关性(例如,与厄尔尼诺现象有关)。一般而言,随机天气产生器往往会低估所观察到的季节性汇总变量的年际变化。为了减少这种过度分散,我们在GLM天气生成器中加入了季节性干/湿指标的时间序列作为协变量。这些季节时间序列是通过季节总降水量的隐马尔可夫模型获得的局部(或全局)解码,并在天气生成器中实现。该方法适用于韩国首尔和阿根廷Pergamino的每日天气时间序列。该方法将季节预报的不确定性直接转换为相应的有条件的每日天气统计数据。

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