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Open AccessJournal ArticleDOI

Prediction of Precipitation Based on Recurrent Neural Networks in Jingdezhen, Jiangxi Province, China

Jinle Kang, +5 more
- 29 Feb 2020 - 
- Vol. 11, Iss: 3, pp 246
TLDR
The experimental results show that the LSTM is suitable for precipitation prediction and the RNN models, combined with meteorological variables, could predict the precipitation accurately in Jingdezhen City and provide sufficient time to prepare strategies against potential related disasters.
Abstract
Precipitation is a critical input for hydrologic simulation and prediction, and is widely used for agriculture, water resources management, and prediction of flood and drought, among other activities. Traditional precipitation prediction researches often established one or more probability models of historical data based on the statistical prediction methods and machine learning techniques. However, few studies have been attempted deep learning methods such as the state-of-the-art for Recurrent Neural Networks (RNNs) networks in meteorological sequence time series predictions. We deployed Long Short-Term Memory (LSTM) network models for predicting the precipitation based on meteorological data from 2008 to 2018 in Jingdezhen City. After identifying the correlation between meteorological variables and the precipitation, nine significant input variables were selected to construct the LSTM model. Then, the selected meteorological variables were refined by the relative importance of input variables to reconstruct the LSTM model. Finally, the LSTM model with final selected input variables is used to predict the precipitation and the performance is compared with other classical statistical algorithms and the machine learning algorithms. The experimental results show that the LSTM is suitable for precipitation prediction. The RNN models, combined with meteorological variables, could predict the precipitation accurately in Jingdezhen City and provide sufficient time to prepare strategies against potential related disasters.

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Citations
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The Development of a Hybrid Wavelet-ARIMA-LSTM Model for Precipitation Amounts and Drought Analysis

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Adjusting prediction of ozone concentration based on CMAQ model and machine learning methods in Sichuan-Chongqing region, China

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Monthly Rainfall Anomalies Forecasting for Southwestern Colombia Using Artificial Neural Networks Approaches

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Integrated Flood Forecasting and Warning System against Flash Rainfall in the Small-Scaled Urban Stream

TL;DR: In this article, an integrated flood forecasting and warning system combined inland-river that systematized technology to quantify flood risk and flood forecasting in urban areas was developed, where LSTM was used to predict the stream depth in the short-term inundation prediction and rainfall prediction by radar data, a rainfall-runoff model combined inland river by coupled SWMM and HEC-RAS, automatic simplification module of drainage networks, automatic calibration module of SWMM parameter by Dynamically Dimensioned Search (DDS) algorithm, and 2-dimension inundation database were used in
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Short-term daily precipitation forecasting with seasonally-integrated autoencoder

TL;DR: Wang et al. as discussed by the authors proposed a seasonally integrated autoencoder (SSAE) consisting of two long short-term memory (LSTM) autoencoders: one for learning shortterm dynamics, and the other for learning the seasonality in the time series.
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Posted Content

Convolutional LSTM Network: A Machine Learning Approach for Precipitation Nowcasting

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