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Analysis of the Relationship between Banded Orographic Convection and Atmospheric Properties Using Factorial Discriminant Analysis and Neural Networks

机译:利用因子判别分析和神经网络分析带状地形对流与大气性质的关系。

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The relationship between banded orographic convection and atmospheric properties is investigated for a region in the south of France where the associated rainfall events are thought to represent a significant portion of the hydrologie input. The purpose is to develop a method capable of producing an extensive database of banded orographic convection rainfall events from atmospheric sounding data for this region where insufficient rain gauge data and little or no suitable radar or satellite data are available. Two statistical methods—discriminant factorial analysis (DFA) and neural networks (NNs)—are used to determine 16 so-called elaborated nonlinear variables that best identify rainfall events related to banded orographic convection from atmospheric soundings. The approach takes rainfall information into account indirectly because it "learns" from the results of a previous study that explored meteorological and available rainfall databases, even if incomplete. The new variables include wind shear, low-level moisture fluxes, and gradients of the potential temperature in the lower layers of the atmosphere, and they were used to create an extensive database of banded orographic convection events from the archive of atmospheric soundings. Results of numerical simulations using the nonhydrostatic mesoscale (Meso-NH) meteorological model validate this approach and offer interesting perspectives for the understanding of the physical processes associated with banded orographic convection. DFA proves to be useful to determine the most discriminant factors with a physical meaning. Neural networks provide better results, but they do not allow for physical interpretation. The best solution is therefore to use the two methods together.
机译:研究了法国南部某个地区带状对流与大气特性之间的关系,该地区的相关降雨事件被认为代表了水文学输入的重要部分。目的是开发一种方法,该方法能够从该地区的大气探测数据中产生带状地形对流降雨事件的广泛数据库,该地区的雨量计数据不足,很少或没有合适的雷达或卫星数据。两种统计方法-判别析因分析(DFA)和神经网络(NNs)-用于确定16个所谓的精细非线性变量,这些变量可以最好地识别与大气探测带状对流有关的降雨事件。该方法间接考虑了降雨信息,因为它是从以前的研究结果中“学习”的,该研究探索了气象和可用的降雨数据库,即使数据不完整。新的变量包括风切变,低水平的湿通量和大气底层的潜在温度梯度,这些变量用于从大气探测档案中创建带状对流事件的广泛数据库。使用非静水中尺度(Meso-NH)气象模型的数值模拟结果验证了这种方法,并为理解带状对流相关的物理过程提供了有趣的观点。实践证明,DFA对于确定具有物理意义的最有区别的因素非常有用。神经网络提供了更好的结果,但是它们不允许进行物理解释。因此,最好的解决方案是将两种方法一起使用。

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