首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >Some neural network applications in environmental sciences. Part II: advancing computational efficiency of environmental numerical models.
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Some neural network applications in environmental sciences. Part II: advancing computational efficiency of environmental numerical models.

机译:神经网络在环境科学中的一些应用。第二部分:提高环境数值模型的计算效率。

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A new generic neural network (NN) application-improving computational efficiency of certain processes in numerical environmental models-is considered. This approach can be used to accelerate the calculations and improve the accuracy of the parameterizations of several types of physical processes which generally require computations involving complex mathematical expressions, including differential and integral equations, rules, restrictions and highly nonlinear empirical relations based on physical or statistical models. It is shown that, from a mathematical point of view, such parameterizations can usually be considered as continuous mappings (continuous dependencies between two vectors) and, therefore, NNs can be used to replace primary parameterization algorithms. In addition to fast and accurate approximation of the primary parameterization, NN also provides the entire Jacobian for very little computation cost.Four particular real-life applications of the NN approach are presented here: for oceanicnumerical models, a NN approximation of the UNESCO equation of state of the sea water (NN for the density of the seawater) and an inversion of this equation (NN for the salinity of the seawater); for atmospheric numerical models, a NN approximation for long wave radiative transfer code; and for wave models, a NN approximation for the nonlinear wave-wave interaction. In all considered applications a significant acceleration of numerical computations has been achieved. The first two of these NN applications have already been implemented in the multi-scale ocean forecast system at NCEP.The NN approach introduced in this paper can provide numerically efficient solutions to a wide range of problems in numerical models where lengthy, complicated calculations, which describe physical, chemical and/or biological processes, must be repeated frequently.
机译:考虑了一种新的通用神经网络(NN)应用程序,该应用程序可提高数值环境模型中某些过程的计算效率。这种方法可用于加速计算并提高几种物理过程的参数化的准确性,这些物理过程通常需要涉及复杂数学表达式的计算,包括基于物理或统计的微分和积分方程,规则,约束和高度非线性的经验关系楷模。从数学的角度表明,这种参数化通常可以视为连续映射(两个向量之间的连续依赖性),因此,NN可以用来代替主要的参数化算法。除了快速,准确地近似主参数外,NN还以极少的计算成本提供了整个Jacobian函数。此处介绍了NN方法的四个特定的实际应用:对于海洋数值模型,联合国教科文组织公式的NN近似海水的状态(NN为海水的密度)和该方程的反演(NN为海水的盐度);对于大气数值模型,长波辐射传递代码的NN近似值;对于波浪模型,非线性波-波相互作用的NN近似值。在所有考虑的应用中,已经实现了数值计算的显着加速。这些NN应用中的前两个已经在NCEP的多尺度海洋预报系统中实现了。本文介绍的NN方法可以为数值模型中的大量问题提供数值有效的解决方案,在这些模型中冗长而复杂的计算需要描述物理,化学和/或生物过程的过程,必须经常重复。

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