利用深度学习识别最佳气象输入以预测季节性降水

IF 0.6 Q4 WATER RESOURCES
Shingo Zenkoji, T. Tebakari, K. Sakakibara
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引用次数: 0

摘要

使用深度学习来识别气象因素,可以提前两个月对泰国的季节性降水进行最佳预测。测试了地面温度和压力、比湿度和风速(纬向和经向分量)的组合。对气象因素的每一种组合进行检查,为季节性降水预报创造了最佳输入数据。此外,采用贝叶斯优化方法计算了各模型的超参数。当压力权重越高时,预测模型的性能越好,而特定湿度权重越高则会降低预测性能。最后,对第一层所有耦合层的正神经元值进行可视化分析,结果表明,厄尔尼诺现象发生频率最高的区域是“印度洋盆地宽”(IOBW)和“NINO WEST”等El Niño监测区域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Use of deep learning to identify optimal meteorological inputs to forecast seasonal precipitation
: Using deep learning to identify meteorological factors has enabled optimal predictions of Thailand’s seasonal pre‐ cipitation two months in advance. A combination of surface temperature and pressure, specific humidity, and wind speed (zonal and meridional components) was tested. Examining each combination of meteorological factor has created optimal input data for seasonal precipitation fore‐ casts. In addition, the hyperparameters of each model were calculated by Bayesian optimization. Predictive model per‐ formance tended to be better when the weight for pressure was higher, while a higher weight for specific humidity reduced predictive performance. Finally, visualization of the positive neuron values in all the coupled layers of the first layer showed that the regions with the highest fre‐ quency of occurrence were the El Niño monitoring areas such as the “Indian Ocean Basin Wide” (IOBW) and “NINO WEST”.
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来源期刊
CiteScore
1.90
自引率
18.20%
发文量
9
审稿时长
10 weeks
期刊介绍: Hydrological Research Letters (HRL) is an international and trans-disciplinary electronic online journal published jointly by Japan Society of Hydrology and Water Resources (JSHWR), Japanese Association of Groundwater Hydrology (JAGH), Japanese Association of Hydrological Sciences (JAHS), and Japanese Society of Physical Hydrology (JSPH), aiming at rapid exchange and outgoing of information in these fields. The purpose is to disseminate original research findings and develop debates on a wide range of investigations on hydrology and water resources to researchers, students and the public. It also publishes reviews of various fields on hydrology and water resources and other information of interest to scientists to encourage communication and utilization of the published results. The editors welcome contributions from authors throughout the world. The decision on acceptance of a submitted manuscript is made by the journal editors on the basis of suitability of subject matter to the scope of the journal, originality of the contribution, potential impacts on societies and scientific merit. Manuscripts submitted to HRL may cover all aspects of hydrology and water resources, including research on physical and biological sciences, engineering, and social and political sciences from the aspects of hydrology and water resources.
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