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NWP Model Revisions Using Polynomial Similarity Solutions of the General Partial Differential Equation

机译:NWP模型修订方法,使用一般局部微分方程的多项式相似解

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Global weather models solve systems of differential equations to forecast large-scale weather patterns, which do not perfectly represent atmospheric processes near the ground. Statistical corrections were developed to adapt numerical weather prognoses for specific local conditions. These techniques combine complex long-term forecasts, based on the physics of the atmosphere, with surface observations using regression in post-processing to clarify surface weather details. Differential polynomial neural network is a new neural network type, which generates series of relative derivative terms to substitute for the general linear partial differential equation, being able to describe the local weather dynamics. The general derivative formula is expanded by means of the network backward structure into a convergent sum combination of selected composite polynomial fraction terms. Their equality derivative changes can model actual relations of local weather data, which are too complex to be represented by standard computing techniques. The derivative models can process numerical forecasts of the trained data variables to refine the target 24-h prognosis of relative humidity or temperature and improve the statistical corrections. Overnight weather changes break the similarity of trained and forecast patterns so that the models are improper and fail in actual revisions but these intermittent days only follow a sort of settled longer periods.
机译:全球天气模型解决微分方程系统,以预测大规模的天气模式,这在地面附近没有完全代表大气过程。开发统计校正以适应特定局部条件的数值天气预报。这些技术将基于大气的物理学的复杂的长期预测结合在后处理后的表面观察,以阐明表面天气细节。差分多项式神经网络是一种新的神经网络类型,其产生一系列相对衍生术语来替代通用线性部分微分方程,能够描述当地的天气动态。一般衍生公式通过网络向后结构扩展到所选复合多项式分数术语的会聚和组合中。它们的平等衍生改变可以模拟局部天气数据的实际关系,这太复杂,无法由标准计算技术代表。衍生模型可以处理培训的数据变量的数值预测,以优化相对湿度或温度的目标24-H预后,提高统计校正。隔夜天气变化破坏了训练有素和预测模式的相似性,使模型在实际修订中是不正确的并且失败,但这些间歇性日子仅遵循某种结算的更长的时间。

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