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Predicting daily streamflow with a novel multi-regime switching ARIMA-MS-GARCH model
Study region: Weihe River Basin of China Study focus: In recent decades, changing environments destroyed the natural structure of streamflow, making accurate streamflow prediction challenging. This study develops a multi-regime Markov-switching Generalized Autoregressive Conditional Heteroskedasticity (MS-GARCH) model to predict daily streamflow time series with structural breaks (SB), named ARIMA (Autoregressive Integrated Moving Average)-MS-GARCH model. Consequently, the multi-regime ARIMA-MS-GARCH model is compared with other classical single-regime ARIMA-GARCH models to evaluate whether and to what extent it improves streamflow prediction accuracy. New hydrology insights for the region: There exist structural breaks in the daily streamflow time series, and the number of breakpoints at each station varies. The GARCH model ignores the description of volatility aggregation in the daily streamflow time series (α<β). The ARIMA-MS-GARCH model (R2 and NSE in the range of 0.682–0.984 and 0.582–0.935, respectively) outperforms the ARIMA-GARCH model (R2 and NSE in the range of 0.558–0.935 and 0.077–0.721, respectively) for daily streamflow prediction, and the ARIMA-GARCH model seriously overestimates the peak values. The MS-GARCH model based on the Student's t distribution is more suitable for daily streamflow prediction than that based on the normal distribution, in which MAE and RE reduce by 23.90%− 52.28% and 23.46%− 54.67%, respectively, and R2 and NSE increase by 5.09% − 15.54% and 1.63% − 60.65%.
Predicting daily streamflow with a novel multi-regime switching ARIMA-MS-GARCH model
Study region: Weihe River Basin of China Study focus: In recent decades, changing environments destroyed the natural structure of streamflow, making accurate streamflow prediction challenging. This study develops a multi-regime Markov-switching Generalized Autoregressive Conditional Heteroskedasticity (MS-GARCH) model to predict daily streamflow time series with structural breaks (SB), named ARIMA (Autoregressive Integrated Moving Average)-MS-GARCH model. Consequently, the multi-regime ARIMA-MS-GARCH model is compared with other classical single-regime ARIMA-GARCH models to evaluate whether and to what extent it improves streamflow prediction accuracy. New hydrology insights for the region: There exist structural breaks in the daily streamflow time series, and the number of breakpoints at each station varies. The GARCH model ignores the description of volatility aggregation in the daily streamflow time series (α<β). The ARIMA-MS-GARCH model (R2 and NSE in the range of 0.682–0.984 and 0.582–0.935, respectively) outperforms the ARIMA-GARCH model (R2 and NSE in the range of 0.558–0.935 and 0.077–0.721, respectively) for daily streamflow prediction, and the ARIMA-GARCH model seriously overestimates the peak values. The MS-GARCH model based on the Student's t distribution is more suitable for daily streamflow prediction than that based on the normal distribution, in which MAE and RE reduce by 23.90%− 52.28% and 23.46%− 54.67%, respectively, and R2 and NSE increase by 5.09% − 15.54% and 1.63% − 60.65%.
Predicting daily streamflow with a novel multi-regime switching ARIMA-MS-GARCH model
Huimin Wang (author) / Songbai Song (author) / Gengxi Zhang (author) / Olusola O. Ayantoboc (author)
2023
Article (Journal)
Electronic Resource
Unknown
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Predicting daily streamflow with a novel multi-regime switching ARIMA-MS-GARCH model
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