CrowdQuake+: Data-driven Earthquake Early Warning via IoT and Deep Learning

Author(s):  
Aming Wu ◽  
Jangsoo Lee ◽  
Irshad Khan ◽  
Young-Woo Kwon
Water ◽  
2019 ◽  
Vol 11 (9) ◽  
pp. 1808 ◽  
Author(s):  
Alberto de la Fuente ◽  
Viviana Meruane ◽  
Carolina Meruane

The intensification of the hydrological cycle because of global warming raises concerns about future floods and their impact on large cities where exposure to these events has also increased. The development of adequate adaptation solutions such as early warning systems is crucial. Here, we used deep learning (DL) for weather-runoff forecasting in región Metropolitana of Chile, a large urban area in a valley at the foot of the Andes Mountains, with more than 7 million inhabitants. The final goal of this research is to develop an effective forecasting system to provide timely information and support in real-time decision making. For this purpose, we implemented a coupled model of a near-future global meteorological forecast with a short-range runoff forecasting system. Starting from a traditional hydrological conceptual model, we defined the hydro-meteorological and geomorphological variables that were used in the data-driven weather-runoff forecast models. The meteorological variables were obtained through statistical scaling of the Global Forecast System (GFS), thus enabling near-future prediction, and two data-driven approaches were implemented for predicting the entire hourly flow time-series in the near future (3 days), a simple Artificial Neural Networks (ANN) and a Deep Learning (DL) approach based on Long-Short Term Memory (LSTM) cells. We show that the coupling between meteorological forecasts and data-driven weather-runoff forecast models are able to satisfy two basic requirements that any early warning system should have: The forecast should be given in advance, and it should be accurate and reliable. In this context, DL significantly improves runoff forecast when compared with a traditional data-driven approach such as ANN, being accurate in predicting time-evolution of output variables, with an error of 5% for DL, measured in terms of the root mean square error (RMSE) for predicting the peak flow, compared to 15.5% error for ANN, which is adequate to warn communities at risk and initiate disaster response operations.


2021 ◽  
Vol 20 (2) ◽  
pp. 391-402
Author(s):  
Wang Yanwei ◽  
Li Xiaojun ◽  
Wang Zifa ◽  
Shi Jianping ◽  
Bao Enhe

2021 ◽  
Vol 13 (17) ◽  
pp. 3426
Author(s):  
Daoye Zhu ◽  
Yi Yang ◽  
Fuhu Ren ◽  
Shunji Murai ◽  
Chengqi Cheng ◽  
...  

The integration analysis of multi-type geospatial information poses challenges to existing spatiotemporal data organization models and analysis models based on deep learning. For earthquake early warning, this study proposes a novel intelligent spatiotemporal grid model based on GeoSOT (SGMG-EEW) for feature fusion of multi-type geospatial data. This model includes a seismic grid sample model (SGSM) and a spatiotemporal grid model based on a three-dimensional group convolution neural network (3DGCNN-SGM). The SGSM solves the problem concerning that the layers of different data types cannot form an ensemble with a consistent data structure and transforms the grid representation of data into grid samples for deep learning. The 3DGCNN-SGM is the first application of group convolution in the deep learning of multi-source geographic information data. It avoids direct superposition calculation of data between different layers, which may negatively affect the deep learning analysis model results. In this study, taking the atmospheric temperature anomaly and historical earthquake precursory data from Japan as an example, an earthquake early warning verification experiment was conducted based on the proposed SGMG-EEW. Five groups of control experiments were designed, namely with the use of atmospheric temperature anomaly data only, use of historical earthquake data only, a non-group convolution control group, a support vector machine control group, and a seismic statistical analysis control group. The results showed that the proposed SGSM is not only compatible with the expression of a single type of spatiotemporal data but can also support multiple types of spatiotemporal data, forming a deep-learning-oriented data structure. Compared with the traditional deep learning model, the proposed 3DGCNN-SGM is more suitable for the integration analysis of multiple types of spatiotemporal data.


2021 ◽  
Vol 25 (2) ◽  
pp. 71-81
Author(s):  
JeongBeom Seo ◽  
◽  
JinKoo Lee ◽  
Woodong Lee ◽  
SeokTae Lee ◽  
...  

Author(s):  
Mohamed S. Abdalzaher ◽  
M. Sami Soliman ◽  
Sherif M. El-Hady ◽  
Abderrahim Benslimane ◽  
Mohamed Elwekeil

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