UTILIZATION OF SIMULATED DATA FOR DEVELOPMENT OF A DEEP LEARNING FLOOD PREDICTION MODEL AS SUPPORT OF DRAINAGE PUMP OPERATION

Author(s):  
Hiroki MINAKAWA ◽  
Issaku AZECHI ◽  
Masaomi KIMURA ◽  
Naoto OKUMURA ◽  
Nobuaki KIMURA ◽  
...  
2022 ◽  
Author(s):  
Qianqian Zhou ◽  
Shuai Teng ◽  
Xiaoting Liao ◽  
Zuxiang Situ ◽  
Junman Feng ◽  
...  

Abstract. An accurate and rapid urban flood prediction model is essential to support decision-making on flood management, especially under increasing extreme precipitation conditions driven by climate change and urbanization. This study developed a deep learning technique-based data-driven flood prediction model based on an integration of LSTM network and Bayesian optimization. A case study in north China was applied to test the model performance and the results clearly showed that the model can accurately predict flood maps for various hyetograph inputs, meanwhile with substantial improvements in computation time. The model predicted flood maps 19,585 times faster than the physical-based hydrodynamic model and achieved a mean relative error of 9.5 %. For retrieving the spatial patterns of water depths, the degree of similarity of the flood maps was very high. In a best case, the difference between the ground truth and model prediction was only 0.76 % and the spatial distributions of inundated paths and areas were almost identical. The proposed model showed a robust generalizability and high computational efficiency, and can potentially replace and/or complement the conventional hydrodynamic model for urban flood assessment and management, particularly in applications of real time control, optimization and emergency design and plan.


Sensors ◽  
2021 ◽  
Vol 21 (12) ◽  
pp. 4155
Author(s):  
Bulent Ayhan ◽  
Chiman Kwan

Detecting nuclear materials in mixtures is challenging due to low concentration, environmental factors, sensor noise, source-detector distance variations, and others. This paper presents new results on nuclear material identification and relative count contribution (also known as mixing ratio) estimation for mixtures of materials in which there are multiple isotopes present. Conventional and deep-learning-based machine learning algorithms were compared. Realistic simulated data using Gamma Detector Response and Analysis Software (GADRAS) were used in our comparative studies. It was observed that a deep learning approach is highly promising.


2021 ◽  
Vol 32 ◽  
pp. S290
Author(s):  
Daisuke Kotani ◽  
Satoshi Fujii ◽  
Tomoyuki Yamada ◽  
Mizuto Suzuki ◽  
Takayuki Yoshino

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