Two Geoscience Applications by Optimal Neural Network Architecture

被引:0
|
作者
Juliana Aparecida Anochi
Reynier Hernández Torres
Haroldo Fraga de Campos Velho
机构
[1] National Institute for Space Research (INPE),Center for Weather Forecasting and Climate Studies (CPTEC)
[2] National Institute for Space Research (INPE),Associated Laboratory for Computing and Applied Mathematics (LABAC)
来源
Pure and Applied Geophysics | 2020年 / 177卷
关键词
Metaheuristics; optimization problem; neural network; data assimilation; climate precipitation prediction; mono-objective problem; multi-objective problem;
D O I
暂无
中图分类号
学科分类号
摘要
Nowadays, artificial neural networks have been successfully applied on several research and application fields. An appropriate configuration for a neural network is a complex task, and it often requires the knowledge of an expert on the application. A technique for automatic configuration for a neural network is formulated as an optimization problem. Two strategies are considered: a mono-objective minimization problem, using multi-particle collision algorithm (MPCA); and a multi-objective minimization problem addressed by the non-dominated sorting genetic algorithm (NSGA-II). The proposed optimization approaches were tested for two application in geosciences: data assimilation for wave evolution equation, and the mesoscale seasonal climate prediction for precipitation. Better results with automatic configuration were obtained for data assimilation than those obtained by network defined by an expert. For climate seasonal precipitation, automatic configuration presented better predictions were presented than ones carried out by an expert. For the worked examples, the NSGA-II presented a superior result for the worked experiments.
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页码:2663 / 2683
页数:20
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