TY - JOUR
T1 - Integrating Wavelet Analysis and BPANN to Simulate the Annual Runoff With Regional Climate Change
T2 - A Case Study of Yarkand River, Northwest China
AU - Xu, Jianhua
AU - Chen, Yaning
AU - Li, Weihong
AU - Nie, Qin
AU - Song, Chunan
AU - Wei, Chunmeng
PY - 2014/6
Y1 - 2014/6
N2 - Selecting the Yarkand River as a typical representative of an inland river in northwest China, We identified the variation pattern of hydro-climatic process based on the hydrological and meteorological data during the period of 1957 ~ 2008, and constructed an integrated model to simulate the change of annual runoff (AR) with annual average temperature (AAT) and annual precipitation (AP) by combining wavelet analysis (WA) and artificial neural network (ANN) at different time scale. The results showed that the pattern of hydro-climatic process is scale-dependent in time. At 16-year and 32-year time scale, AR presents a monotonically increasing trend with the similar trend of AAT and AP. But at 2-year, 4-year, and 8-year time scale, AR exhibits a nonlinear variation with fluctuations of AAT and AP. The back propagation artificial neural network based on wavelet decomposition (BPANNBWD) well simulated the change of AR with AAT and AP at the all five time scales. Compared to the traditional statistics model, the simulation effect of BPANNBWD is better than that of multiple linear regression (MLR) at every time scale. The results also revealed the fact that the simulation effect at a larger time scale (e.g. 16-year or 32-year scale) is better than that at a smaller time scale (e.g. 2-year or 4-year scale).
AB - Selecting the Yarkand River as a typical representative of an inland river in northwest China, We identified the variation pattern of hydro-climatic process based on the hydrological and meteorological data during the period of 1957 ~ 2008, and constructed an integrated model to simulate the change of annual runoff (AR) with annual average temperature (AAT) and annual precipitation (AP) by combining wavelet analysis (WA) and artificial neural network (ANN) at different time scale. The results showed that the pattern of hydro-climatic process is scale-dependent in time. At 16-year and 32-year time scale, AR presents a monotonically increasing trend with the similar trend of AAT and AP. But at 2-year, 4-year, and 8-year time scale, AR exhibits a nonlinear variation with fluctuations of AAT and AP. The back propagation artificial neural network based on wavelet decomposition (BPANNBWD) well simulated the change of AR with AAT and AP at the all five time scales. Compared to the traditional statistics model, the simulation effect of BPANNBWD is better than that of multiple linear regression (MLR) at every time scale. The results also revealed the fact that the simulation effect at a larger time scale (e.g. 16-year or 32-year scale) is better than that at a smaller time scale (e.g. 2-year or 4-year scale).
KW - Annual runoff
KW - Back-propagation artificial neural network
KW - Inland river
KW - Regional climate change
KW - Wavelet decomposition
UR - https://www.scopus.com/pages/publications/84902330428
U2 - 10.1007/s11269-014-0625-z
DO - 10.1007/s11269-014-0625-z
M3 - 文章
AN - SCOPUS:84902330428
SN - 0920-4741
VL - 28
SP - 2523
EP - 2537
JO - Water Resources Management
JF - Water Resources Management
IS - 9
ER -