TY - JOUR
T1 - Predict typhoon-induced storm surge deviation in a principal component back-propagation neural network model
AU - Guo, Zhongyang
AU - Dai, Xiaoyan
AU - Li, Xiaodong
AU - Ye, Shufeng
PY - 2013/1
Y1 - 2013/1
N2 - To reduce typhoon-caused damages, numerical and empirical methods are often used to forecast typhoon storm surge. However, typhoon surge is a complex nonlinear process that is difficult to forecast accurately. We applied a principal component back-propagation neural network (PCBPNN) to predict the deviation in typhoon storm surge, in which data of the typhoon, upstream flood, and historical case studies were involved. With principal component analysis, 15 input factors were reduced to five principal components, and the application of the model was improved. Observation data from Huangpu Park in Shanghai, China were used to test the feasibility of the model. The results indicate that the model is capable of predicting a 12-hour warning before a typhoon surge.
AB - To reduce typhoon-caused damages, numerical and empirical methods are often used to forecast typhoon storm surge. However, typhoon surge is a complex nonlinear process that is difficult to forecast accurately. We applied a principal component back-propagation neural network (PCBPNN) to predict the deviation in typhoon storm surge, in which data of the typhoon, upstream flood, and historical case studies were involved. With principal component analysis, 15 input factors were reduced to five principal components, and the application of the model was improved. Observation data from Huangpu Park in Shanghai, China were used to test the feasibility of the model. The results indicate that the model is capable of predicting a 12-hour warning before a typhoon surge.
KW - Changjiang (Yangtze) River estuary
KW - principal component back-propagation neural networks (PCBPNN)
KW - storm surges forecasts
KW - typhoon
UR - https://www.scopus.com/pages/publications/84872582348
U2 - 10.1007/s00343-013-2048-8
DO - 10.1007/s00343-013-2048-8
M3 - 文章
AN - SCOPUS:84872582348
SN - 0254-4059
VL - 31
SP - 219
EP - 226
JO - Chinese Journal of Oceanology and Limnology
JF - Chinese Journal of Oceanology and Limnology
IS - 1
ER -