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On the computation of area probabilities based on a spatial stochastic model for precipitation cells and precipitation amounts

机译:基于空间随机模型的降水单元和降水量的面积概率计算

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摘要

A main task of weather services is the issuing of warnings for potentially harmful weather events. Automated warning guidances can be derived, e.g., from statistical post-processing of numerical weather prediction using meteorological observations. These statistical methods commonly estimate the probability of an event (e.g. precipitation) occurring at a fixed location (a point probability). However, there are no operationally applicable techniques for estimating the probability of precipitation occurring anywhere in a geographical region (an area probability). We present an approach to the estimation of area probabilities for the occurrence of precipitation exceeding given thresholds. This approach is based on a spatial stochastic model for precipitation cells and precipitation amounts. The basic modeling component is a non-stationary germ-grain model with circular grains for the representation of precipitation cells. Then, we assign a randomly scaled response function to each precipitation cell and sum these functions up to obtain precipitation amounts. We derive formulas for expectations and variances of point precipitation amounts and use these formulas to compute further model characteristics based on available sequences of point probabilities. Area probabilities for arbitrary areas and thresholds can be estimated by repeated Monte Carlo simulation of the fitted precipitation model. Finally, we verify the proposed model by comparing the generated area probabilities with independent rain gauge adjusted radar data. The novelty of the presented approach is that, for the first time, a widely applicable estimation of area probabilities is possible, which is based solely on predicted point probabilities (i.e., neither precipitation observations nor further input of the forecaster are necessary). Therefore, this method can be applied for operational weather predictions.
机译:气象服务的主要任务是针对潜在有害的天气事件发出警告。可以从例如使用气象观测的数值天气预报的统计后处理中得出自动的警告指导。这些统计方法通常估计在固定位置发生的事件的概率(例如降水)(点概率)。但是,没有可用于估算地理区域中任何地方发生降水的概率(区域概率)的可操作应用的技术。我们提出了一种方法来估计降水超过给定阈值的发生的区域概率。该方法基于降水细胞和降水量的空间随机模型。基本建模组件是具有圆形晶粒的非平稳胚芽模型,用于表示沉淀池。然后,我们为每个降水单元分配一个随机缩放的响应函数,并对这些函数求和以求出降水量。我们得出点降水量的期望值和方差的公式,并使用这些公式根据点概率的可用序列进一步计算模型特征。可以通过对拟合的降水模型进行反复的蒙特卡洛模拟来估计任意面积和阈值的面积概率。最后,我们通过将生成的区域概率与独立的雨量计调整后的雷达数据进行比较,来验证所提出的模型。提出的方法的新颖性是,首次有可能对面积概率进行广泛适用的估计,这仅基于预测的点概率(即既不需要降水观测也不需要预报员的进一步输入)。因此,该方法可用于运行天气预报。

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