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首页> 外文期刊>Stochastic environmental research and risk assessment >Classifying wave forecasts with model-based Geostatistics and the Aitchison distribution
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Classifying wave forecasts with model-based Geostatistics and the Aitchison distribution

机译:使用基于模型的地统计和Aitchison分布对波浪预报进行分类

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摘要

This paper proposes a non-parametric method of classification of maps (i.e., variable fields such as wave energy maps for the Western Mediterranean Sea) into a set of D typical regimes (calm, E-, SW- or N/NW-wind dominated storms, the 4 synoptic situations more often occurring in this region). Each map in the training set is described by its values at P measurement points and one of these regime classes. A map is thus identified as a labelled point in a P-dimensional feature space, and the problem is to find a discrimination rule that may be used for attaching a classification probability to future unlabelled maps. The discriminant model proposed assumes that some log-contrasts of these classification probabilities form a Gaussian random field on the feature space. Then, available data (labelled maps of the training set) are linked to these latent probabilities through a multinomial model. This model is quite common in model-based Geostatistics and the Gaussian process classification literature. Inference is here approximated numerically using likelihood based techniques. The multinomial likelihood of labelled features is combined in a Bayesian updating with the Gaussian random field, playing the role of prior distribution. The posterior corresponds to an Aitchison distribution. Its maximum posterior estimates are obtained in two steps, exploiting several properties of this family. The first step is to obtain the mode of this distribution for labelled features, by solving a mildly non-linear system of equations. The second step is to propagate these estimates to unlabelled features, with simple kriging of log-contrasts. These inference steps can be extended via Markov-chain Monte Carlo (MCMC) sampling to a hierarchical Bayesian problem. This MCMC sampling can be improved by further exploiting the Aitchison distribution properties, though this is only outlined here. Results for the application case study suggest that E- and N/NW-dominated storms can be successfully discriminated from calm situations, but not so easily distinguished from each other.
机译:本文提出了一种将地图(即可变域,例如西地中海海浪能量图)的非参数方法分类为D种典型风向(平静,E,SW或N / NW风为主)的方法暴风雨,该地区更常发生4种天气情况)。训练集中的每个图都由其在P个测量点的值以及这些状态类别之一描述。因此,将地图标识为P维特征空间中的标记点,并且问题在于找到可用于将分类概率附加到未来未标记地图的判别规则。提出的判别模型假设这些分类概率的某些对数对比在特征空间上形成了高斯随机场。然后,可用数据(标记的训练集图)通过多项式模型链接到这些潜在概率。该模型在基于模型的地统计和高斯过程分类文献中相当普遍。在此使用基于似然的技术在数值上近似推断。标记特征的多项式似然与高斯随机场在贝叶斯更新中组合,起到先验分布的作用。后验对应于Aitchison分布。利用该家族的几个特性,可通过两个步骤获得其最大后验估计。第一步是通过求解一个温和的非线性方程组来获得标记特征的这种分布模式。第二步是使用对数对比度的简单克里金法将这些估计值传播到未标记的特征。可以通过马尔可夫链蒙特卡洛(MCMC)采样将这些推理步骤扩展到分层贝叶斯问题。可以通过进一步利用Aitchison分布属性来改进此MCMC采样,尽管此处仅概述了这一点。应用案例研究的结果表明,以E和N / NW为主的暴风雨可以成功地与平静的情况区分开,但很难如此区分。

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