Sponge City Drainage System Prediction Based on Artificial Neural Networks: Taking SCRC System as Example

Author:

Ren Yazheng1,Zhang Huiying2,Gu Yongwan3,Ju Shaohua1,Zhang Miao4,Wang Xinhua2,Hu Chaozhong5,Dan Cang5,Cheng Yang6,Fan Junnan2,Li Xuelong2

Affiliation:

1. School of Metallurgical and Energy Engineering, Kunming University of Science and Technology, Kunming 650399, China

2. School of Water Conservancy, Yunnan Agricultural University, Kunming 650500, China

3. Kunming Institute of Precious Metals, Kunming 650499, China

4. School of Architecture and Engineering, Kunming University of Science and Technology, Kunming 650504, China

5. School of Water Engineering, Yunnan Water Resources and Hydropower Vocational College, Kunming 650106, China

6. School of Hohai, Chongqing Jiaotong University, Chongqing 400074, China

Abstract

The concept of sponge cities is widely recognized, but there is still no research on what a new drainage system for sponge cities should look like. This study proposes a new drainage system for sponge cities, a sponge-type comprehensive pipe corridor rainwater chamber (SCRC) system, which combines a comprehensive pipe corridor with low-impact development measures (LIDs) into one system. The SCRC system is predicted by using a long- and short-term neural network to verify whether the neural network can be applied to the prediction of flooding in sponge cities. The results show that the SCRC system can effectively control sponge city flooding, where the surface runoff coefficient under different rainfall intensities (P = 1–10 yr) is between 0.273 and 0.44, the pipe overload time is between 0.11 and 3.929 h, and the node overflow volume is between 0 and 23.89 Mltr. The neural network has a high reliability in sponge city flood prediction, and the coefficients of determination R2 of the test set of PSO–LSTM prediction models are all above 0.95. This study may provide an idea for predicting flooding in sponge cities.

Funder

Scientific Research Fund Project of Yunnan Provincial Innovative Program

Yunnan Water Conservancy and Hydropower Vocational College Key Laboratory Open Subject Funds

Publisher

MDPI AG

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