Chaotic System Prediction Using Data Assimilation and Machine Learning
Autor: | Yanan Guo, Xiaoqun Cao, Kecheng Peng |
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Jazyk: | English<br />French |
Rok vydání: | 2020 |
Předmět: | |
Zdroj: | E3S Web of Conferences, Vol 185, p 02025 (2020) |
Druh dokumentu: | article |
ISSN: | 2267-1242 20201850 |
DOI: | 10.1051/e3sconf/202018502025 |
Popis: | Atmospheric systems are typically chaotic and their chaotic nature is an important limiting factor for weather forecasting and climate prediction. So far, there have been many studies on the simulation and prediction of chaotic systems using numerical simulation methods. However, there are many intractable problems in predicting chaotic systems using numerical simulation methods, such as initial value sensitivity, error accumulation, and unreasonable parameterization of physical processes, which often lead to forecast failure. With the continuous improvement of observational techniques, data assimilation has gradually become an effective method to improve the numerical simulation prediction. In addition, with the advent of big data and the enhancement of computing resources, machine learning has achieved great success. Studies have shown that deep neural networks are capable of mining and extracting the complex physical relationships behind large amounts of data to build very good forecasting models. Therefore, in this paper, we propose a prediction method for chaotic systems that combines deep neural networks and data assimilation. To test the effectiveness of the method, we use the model to perform forecasting experiments on the Lorenz96 model. The experimental results show that the prediction method that combines neural network and data assimilation is very effective in predicting the amount of state of Lorenz96. However, Lorenz96 is a relatively simple model, and our next step will be to continue the experiments on the complex system model to test the effectiveness of the proposed method in this paper and to further optimize and improve the proposed method. |
Databáze: | Directory of Open Access Journals |
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