结合深度神经网络和改进优化算法的混合预测框架,用于水蒸气预测

IF 2.8 4区 地球科学 Q3 METEOROLOGY & ATMOSPHERIC SCIENCES
Wenyu Zhang, Bingyan Li, Xinyu Zhang, Menggang Kou, Linyue Zhang, Shuai Wang
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引用次数: 0

摘要

作为一个全球性问题,水资源短缺备受社会关注。人工增雨(ARE)是开发云水资源、解决水资源短缺问题的有效途径,但人工增雨的运行时机始终是人工增雨面临的关键问题。水汽含量(WVC)的波动特性与作业时机的选择密切相关,因此准确预测水汽含量的变化对确定最佳作业时机至关重要。然而,目前提出的预测方法大多局限于简单的时间序列预测,没有注意到原始数据的复杂特性和单一模型预测的缺陷。因此,预报精度难以满足日益精细化的气象服务要求。针对这一难题,我们结合先进的人工智能理论研究和数据预处理思想,提出了一种新的混合预测模型,包括数据重构策略、基准模型和改进的多目标优化算法。以中国祁连山高海拔地区微波辐射计 WVC 观测数据为例。通过对比 12 个主流模型,可以得出以下结论:本研究建立的模型预测精度最高,三组数据在 2、4、6 和 8 个预测步长下的平均 MAPE 分别为 1.23%、1.33%、1.37% 和 1.52%。这一结果验证了所提模型在复杂地形条件下预测 WVC 的优越性和实用价值,为准确预测 WVC 提供了一个很好的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A hybrid prediction framework combining deep neural network and modified optimization algorithm for water vapor prediction

A hybrid prediction framework combining deep neural network and modified optimization algorithm for water vapor prediction

As a global issue, water shortage has attracted much attention from the society. Artificial rain enhancement (ARE) is an effective way to exploit cloud water resources and solve water shortage, but the timing of operation is always a key problem that ARE is facing. The fluctuating properties of water vapor content (WVC) are intricately tied to the choice of operational timing, so accurately predicting the evolution of WVC holds paramount importance when determining the optimal operational timing. However, most of the proposed forecasting methods are limited to simple time series forecasting, and do not pay attention to the complex characteristics of the original data and the shortcomings of a single model prediction. Therefore, the prediction accuracy is difficult to meet the requirements of increasingly refined meteorological services. To tackle this challenge, a new hybrid prediction model, including data reconstruction strategy, benchmark model and improved multi-objective optimization algorithm, is proposed in our research by combining advanced theoretical research of artificial intelligence and data preprocessing ideas. The microwave radiometer WVC observation data at high altitude of Qilian Mountains in China is taken as a case study. By comparing 12 mainstream models, it can be concluded that: The model developed in this study achieves the highest prediction accuracy, and the mean MAPE of the three data sets at 2, 4, 6 and 8 prediction steps is 1.23%, 1.33%, 1.37% and 1.52%, respectively. This result verifies the superiority and practical value of the proposed model in predicting WVC under complex terrain conditions, and provides an excellent solution for accurate prediction of WVC.

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来源期刊
Theoretical and Applied Climatology
Theoretical and Applied Climatology 地学-气象与大气科学
CiteScore
6.00
自引率
11.80%
发文量
376
审稿时长
4.3 months
期刊介绍: Theoretical and Applied Climatology covers the following topics: - climate modeling, climatic changes and climate forecasting, micro- to mesoclimate, applied meteorology as in agro- and forestmeteorology, biometeorology, building meteorology and atmospheric radiation problems as they relate to the biosphere - effects of anthropogenic and natural aerosols or gaseous trace constituents - hardware and software elements of meteorological measurements, including techniques of remote sensing
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