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Automated detection of frontal systems from numerical model-generated data

机译:从数值模型生成的数据中自动检测正面系统

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Fronts are significant meteorological phenomena of interest. The extraction of frontal systems from observations and model data can greatly benefit many kinds of research and applications in atmospheric sciences. Due to the huge amount of observational and model data available nowadays, automated extraction of front systems is necessary. This paper presents an automated method to detect frontal systems from numerical model-generated data. In this method, a frontal system is characterized by a vector of features, comprised of parameters derived from the model wind field. K-means clustering is applied to the generated sample set of the feature vectors to partition the feature space and to identify clusters representing the fronts. The probability that a model grid belongs to a front is estimated based on its feature vector. The probability image is generated corresponding to the model grids. A hierarchical thresholding technique is applied to the probability image to identify the frontal systems anda Gaussian Bayes classifier is trained to determine the proper threshold value. This is followed by post processing to filter out false signatures. Experiment results from this method are in good agreement with the ones identified by the domain experts.
机译:前沿是重要的气象现象。从观测和模型数据中提取额叶系统可以极大地有益于大气科学中的许多研究和应用。由于当今可获得大量的观测和模型数据,因此有必要对前系统进行自动提取。本文提出了一种从数值模型生成的数据中检测正面系统的自动方法。在这种方法中,额叶系统的特征是特征向量,该特征向量由从模型风场得出的参数组成。将K均值聚类应用于特征向量的生成样本集,以划分特征空间并识别代表前沿的聚类。基于模型网格的特征向量估计模型网格属于前沿的概率。生成与模型网格相对应的概率图像。将分级阈值技术应用于概率图像以识别正面系统,并训练高斯贝叶斯分类器来确定适当的阈值。随后进行后期处理以滤除虚假签名。该方法的实验结果与领域专家确定的结果非常吻合。

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