2022
DOI: 10.1002/met.2057
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A hybrid statistical‐dynamical prediction scheme for summer monthly precipitation over Northeast China

Abstract: To improve the seasonal prediction of monthly precipitation in summer over Northeast China (NEC), a hybrid prediction scheme is developed to combine the advantages of statistical method with dynamical prediction information from 4 coupled general climate models (CGCMs). As the operational prediction of summer climate is performed in March or earlier, the information of CGCMs employed in this study is from the hindcast/prediction in February for June and July, and March for August. Predictors comprise observati… Show more

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Cited by 6 publications
(4 citation statements)
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References 59 publications
(70 reference statements)
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“…Ravuri et al, 2021;Neri et al, 2019), and geographical domains (from point to street level; from a single river catchment through to global approaches). Hybrid models have been applied to predict a variety of hydrometeorological variables, including extreme heat and precipitation (Najafi et al, 2021;Miao et al, 2019;Ma et al, 2022), seasonal climate variables (Golian et al, 2022;Baker et al, 2020), tropical cyclones/hurricanes (Vecchi et al, 2011;Murakami et al, 2016;Kang and Elsner, 2020;Klotzbach et al, 2020), streamflow (Wood and Schaake, 2008;Mendoza et al, 2017;Rasouli et al, 2012;Duan et al, 2020), flooding (Slater and Villarini, 2018), drought (Madadgar et al, 2016;Wu et al, 2022), sea level (Khouakhi et al, 2019), and reservoir levels (Tian et al, 2022), over a range of timescales (Table 2). Certain other examples discussed in this review are not fully hybrid (e.g.…”
mentioning
confidence: 99%
“…Ravuri et al, 2021;Neri et al, 2019), and geographical domains (from point to street level; from a single river catchment through to global approaches). Hybrid models have been applied to predict a variety of hydrometeorological variables, including extreme heat and precipitation (Najafi et al, 2021;Miao et al, 2019;Ma et al, 2022), seasonal climate variables (Golian et al, 2022;Baker et al, 2020), tropical cyclones/hurricanes (Vecchi et al, 2011;Murakami et al, 2016;Kang and Elsner, 2020;Klotzbach et al, 2020), streamflow (Wood and Schaake, 2008;Mendoza et al, 2017;Rasouli et al, 2012;Duan et al, 2020), flooding (Slater and Villarini, 2018), drought (Madadgar et al, 2016;Wu et al, 2022), sea level (Khouakhi et al, 2019), and reservoir levels (Tian et al, 2022), over a range of timescales (Table 2). Certain other examples discussed in this review are not fully hybrid (e.g.…”
mentioning
confidence: 99%
“…The shortcomings of dynamic model predictions are often made up for by dynamic statistical techniques, not only for seasonal predictions (e.g., Dai & Fan, 2021; Kang et al, 2014; Liu et al, 2021; Liu & Fan, 2014; Liu & Ren, 2015; Ma et al, 2022; Wang et al, 2022; Zhu et al, 2023) but also for subseasonal predictions (Wu et al, 2022). These models primarily rely on the statistical relationships and transfer‐functions between historical observations and model outputs, and then construct hybrid dynamic statistical models by employing the predictors of observed previous external forcings and model‐predicted simultaneous atmospheric factors, which have been shown to generate considerable improvements in precipitation and temperature predictions in China.…”
Section: Introductionmentioning
confidence: 99%
“…On the other hand, various statistical or empirical correction methods have been developed in the past decades, aiming to improve model predictions [41][42][43][44][45][46][47][48][49][50][51]. Model prediction errors are flow-dependent, which can vary with changing climate states, and they have been found to be correlated to physical predictors [52].…”
Section: Introductionmentioning
confidence: 99%