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The Linkage between Two Types of El Niño Events and Summer Streamflow over the Yellow and Yangtze River Basins

Fund Project:

Key Project of the Ministry of Science and Technology of China (Grant No. 2016YFA0602401) and the National Natural Science Foundation of China (Grant No. 41875106)


doi: 10.1007/s00376-019-9049-2

  • It is generally agreed that El Niño can be classified into East Pacific (EP) and Central Pacific (CP) types. Nevertheless, little is known about the relationship between these two types of El Niño and land surface climate elements. This study investigates the linkage between EP/CP El Niño and summer streamflow over the Yellow and Yangtze River basins and their possible mechanisms. Over the Yellow River basin, the anomalous streamflow always manifests as positive (negative) in EP (CP) years, with a correlation coefficient of 0.39 (−0.37); while over the Yangtze River basin, the anomalous streamflow shows as positive in both EP and CP years, with correlation coefficients of 0.72 and 0.48, respectively. Analyses of the surface hydrological cycle indicate that the streamflow is more influenced by local evapotranspiration (ET) than precipitation over the Yellow River basin, while it is dominantly affected by precipitation over the Yangtze River basin. The different features over these two river basins can be explained by the anomalous atmospheric circulation, which is cyclonic (anticyclonic) north (south) of 30°N over East Asia. EP years are dominated by two anticyclones, which bring strong water vapor convergence and induce more precipitation but less ET, and subsequently increase streamflow and flooding risks. In CP years, especially over the Yellow River basin, two cyclones dominate and lead to water vapor divergence and reduce moisture arriving. Meanwhile, the ET enhances mainly due to local high surface air temperature, which further evaporates water from the soil. As a result, the streamflow decreases, which will then increase the drought risk.
    摘要: 本文研究分析了EP/CP El Niño对长江、黄河流域的夏季径流的影响及其可能机制. 在黄河流域地区,夏季径流的异常值在EP(CP)年表现为正(负)值,相关系数为0.39(-0.37);长江流域夏季径流的异常值在EP和CP年中均呈正值,相关系数分别为0.72和0.48. 分析表明,在黄河流域地区,径流量受到蒸发的影响大于降水影响,而长江流域地区主要受降水影响. 这两片流域不同的陆表水文循环特征可以从东亚上空30°N以北(南)的气旋(反气旋)的异常环流变化来解释. EP年间,东亚上空30°N以南的反气旋增强且出现两个反气旋中心,使得该地区有强烈的水汽辐合,导致降水增加、蒸散发减少,进而增加了径流量、增大了洪涝灾害风险. CP年间,30°N以北的气旋增强且出现两个气旋中心,导致东亚上空水汽辐散、水汽输送减弱,降水减少,同时蒸散发增强,尤其是在黄河流域,这进一步减少了局地水汽,使该流域的径流量减少、干旱灾害风险增大.
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  • Figure 1.  Locations of the Yellow and Yangtze River basins and the 23 hydrological stations (black spots), among which the black triangle symbols denote the hydrological stations of Huayuankou and Hankou. Blue lines denote the main river network.

    Figure 2.  The winter time-series of (a) EP index and (b) EP index, and composite SSTAs in (c) EP and (d) CP El Niño years (units: ℃) for 1980−2008. The dash-dotted line in (a, b) denotes the corresponding 0.8 STD, and the areas of the black solid boxes in (c, d) are used to define the EP and CP El Niño index, respectively.

    Figure 3.  Annual summer streamflow anomalies in the two river basins during 1980−2008: (a) Huayuankou hydrological station; (b) Hankou hydrological station. The right-most part in the plots shows the composite volume of the streamflow in EP and CP years (units: m3 s−1). The red (blue) asterisks indicate the EP (CP) El Niño years. Note that the streamflow data at Huayuankou hydrological station are missing for 2008.

    Figure 4.  The mean and percentiles of summer streamflow over the Yellow and Yangtze river basins for EP, CP and normal years. The top (bottom) of the whiskers represents the 90th (10th) percentile; the top (bottom) of the boxes represents the 75th (25th) percentile; the middle line represents the 50th percentile; and the black dot in the boxes represents the mean volume of streamflow.

    Figure 5.  Normalized EP index values plotted against the normalized summer streamflow anomaly at (a) Huayuankou hydrological station (over the Yellow River basin) and (b) Hankou hydrological station (over Yangtze River basin). (c, d) As in (a, b) but for the CP index. Square symbols denote the EP or CP years’ streamflow anomalies. The lines of best fit for positive and negative Niño index (EP and CP index, respectively) values (Slope) and the correlation coefficients (R) are shown at the bottom of each plot. The correlation coefficients all pass the significance test at the 90% confidence level.

    Figure 6.  (a, b) Correlation of anomalous summer precipitation with (a) EP index and (b) CP index. Dotted regions are significant at the 90% confidence levels. Black (inverted) triangles denotes (Hankou) Huayuankou hydrological station. The red curves surrounding regions are the ranges of the two river basins. (c, d) Composite maps of anomalous summer precipitation in (c) EP and (d) CP years, but with the lower anomalies (−0.3 to 0.3 mm d−1) left blank (units: mm d−1).

    Figure 7.  As in Fig. 6. but for ET (units: mm d−1).

    Figure 8.  Regression of the summer vertically integrated WVTF anomalies (from the surface to 300 hPa) (vector arrows) and the convergence of WVTF (contours) with positive (a) EP and (c) CP index values, and the composite patterns in (b) EP and (d) CP years. Only those results that surpass the 80% confidence level in the regression of convergence are drawn in the maps. The letter “A” represents “anticyclone” and the letter “C” represents “cyclone”. The red curves surrounding regions indicate the ranges of the two river basins.

    Figure 9.  Similar to Fig. 8. but for the GPH (contours; units: gpm) and omega (shading; units: m s−1) 500-hPa anomalies. Dashed lines represent negative values, solid lines represent positive values. In regression maps [(a) and (c)], only regions passing the 90% confidence level are plotted (shading) and overlaid by black lines (contour).

    Figure 10.  Vertical−horizontal cross-section regression patterns averaged along 100°−115°E for summer vertical wind anomalies with (a) EP and (c) CP index values, and the composite patterns of vertical wind averaged along 100°−115°E in (b) EP and (d) CP years. Only regions passing the 90% confidence level are plotted.

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Manuscript received: 11 March 2019
Manuscript revised: 06 October 2019
Manuscript accepted: 31 October 2019
通讯作者: 陈斌, bchen63@163.com
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The Linkage between Two Types of El Niño Events and Summer Streamflow over the Yellow and Yangtze River Basins

    Corresponding author: Aihui WANG, wangaihui@mail.iap.ac.cn
  • 1. Nansen-Zhu International Research Center, Institute of Atmospheric Physics, Chinese Academy of Sciences, Beijing 100029, China
  • 2. University of Chinese Academy of Sciences, Beijing 100029, China

Abstract: It is generally agreed that El Niño can be classified into East Pacific (EP) and Central Pacific (CP) types. Nevertheless, little is known about the relationship between these two types of El Niño and land surface climate elements. This study investigates the linkage between EP/CP El Niño and summer streamflow over the Yellow and Yangtze River basins and their possible mechanisms. Over the Yellow River basin, the anomalous streamflow always manifests as positive (negative) in EP (CP) years, with a correlation coefficient of 0.39 (−0.37); while over the Yangtze River basin, the anomalous streamflow shows as positive in both EP and CP years, with correlation coefficients of 0.72 and 0.48, respectively. Analyses of the surface hydrological cycle indicate that the streamflow is more influenced by local evapotranspiration (ET) than precipitation over the Yellow River basin, while it is dominantly affected by precipitation over the Yangtze River basin. The different features over these two river basins can be explained by the anomalous atmospheric circulation, which is cyclonic (anticyclonic) north (south) of 30°N over East Asia. EP years are dominated by two anticyclones, which bring strong water vapor convergence and induce more precipitation but less ET, and subsequently increase streamflow and flooding risks. In CP years, especially over the Yellow River basin, two cyclones dominate and lead to water vapor divergence and reduce moisture arriving. Meanwhile, the ET enhances mainly due to local high surface air temperature, which further evaporates water from the soil. As a result, the streamflow decreases, which will then increase the drought risk.

摘要: 本文研究分析了EP/CP El Niño对长江、黄河流域的夏季径流的影响及其可能机制. 在黄河流域地区,夏季径流的异常值在EP(CP)年表现为正(负)值,相关系数为0.39(-0.37);长江流域夏季径流的异常值在EP和CP年中均呈正值,相关系数分别为0.72和0.48. 分析表明,在黄河流域地区,径流量受到蒸发的影响大于降水影响,而长江流域地区主要受降水影响. 这两片流域不同的陆表水文循环特征可以从东亚上空30°N以北(南)的气旋(反气旋)的异常环流变化来解释. EP年间,东亚上空30°N以南的反气旋增强且出现两个反气旋中心,使得该地区有强烈的水汽辐合,导致降水增加、蒸散发减少,进而增加了径流量、增大了洪涝灾害风险. CP年间,30°N以北的气旋增强且出现两个气旋中心,导致东亚上空水汽辐散、水汽输送减弱,降水减少,同时蒸散发增强,尤其是在黄河流域,这进一步减少了局地水汽,使该流域的径流量减少、干旱灾害风险增大.

1.   Introduction
  • China has many rivers that provide rich water resources, but it is also experiencing water shortages and surpluses due to both anthropogenic and natural factors, inducing many hydroclimatological disasters. The rational utilization and management of these water resources is of great concern. In general, river basin streamflow is affected by local human activities and natural climate variabilities. For example, the construction of dams/reservoirs and irrigation systems can alter both the river flow amount and direction, while changes in climate variables will induce positive or negative feedbacks to terrestrial evaporation and runoff processes (Li and Li, 2008; Cong et al., 2009; Gardner, 2009; Huang et al., 2016; Zhou et al., 2018). Over the past several decades, natural climate variability has played a predominant role in the impact of water resources compared to local human activities. Liu et al. (2012) concluded that climate change was the dominant factor in the interannual variations of streamflow over all major river basins in East China over the past 45 years. Li et al. (2016) demonstrated that the heavy rainfall in summer over the Huaihe River valley is mainly influenced by the variation of tropical sea surface temperature.

    El Niño−Southern Oscillation (ENSO) is one of the prominent teleconnection patterns in the atmosphere−ocean system (Neelin et al., 1998). It is an essential factor associated with sea surface temperature anomalies (SSTAs) and has significantly influenced land climate variabilities (Qian et al., 2013; Hu et al., 2016; Tian et al., 2016). For instance, Cayan et al. (1999) found that both daily precipitation and streamflow in winter exhibit strong and systematic responses to the two phases of ENSO in the western United States. The effects of El Niño on streamflow have also been extensively investigated (Zhang et al., 2007; Ouyang et al., 2014). Zhang et al. (2007) indicated there is a high possibility that convective precipitation will escalate, potentially causing massive flooding in the lower reaches of the Yangtze River basin during El Niño years. Furthermore, the possible physical mechanisms involved in the effect of equatorial Pacific SSTAs on the terrestrial climate have been discussed as well. Wang et al. (2000) indicated that the large-scale western North Pacific (WNP) anomalous anticyclone is the key system that has bridged the equatorial central Pacific (CP) warming and weakened the East Asian winter monsoon. Lin and Lu (2009) demonstrated that the ENSO-related WNP anticyclonic anomaly in the lower troposphere may bring about increased precipitation over the Yangtze River basin, and a southward shift of the Asian jet stream in the upper troposphere may lead to decreased precipitation over the Huaihe and Yellow river basins.

    Recent studies have argued that another type of El Niño exists, in which the maximum SSTAs appear over the central equatorial Pacific instead of over the eastern equatorial Pacific as with traditional El Niño (Ashok et al., 2007; Kug et al., 2009; Ren and Jin, 2011). This type is referred to as CP El Niño, and the traditional El Niño is referred to as eastern Pacific (EP) El Niño. Since the 1970s, CP El Niño has occurred more frequently than EP El Niño (Ashok et al., 2007). In addition, the ratio of CP El Niño to EP El Niño events may continue to increase along with global warming, based on climate model projections (Yeh et al., 2009). To date, there have been several studies that have investigated the impacts of these two types of El Niño on different climate elements, such as atmospheric convection, global mean temperature, and tropical cyclones (Weng et al., 2009; Wang et al., 2013; Banholzer and Donner, 2014; Yeh et al., 2014). Previous research has also addressed the variations in streamflow under these two types of El Niño. In the Mississippi River basin, Liang et al. (2014) showed that EP and CP El Niño have opposite impacts on spring soil moisture and the soil water table. Liang et al. (2016) analyzed rivers globally and found that the streamflow in Asian rivers exhibits more complex responses to these different types of El Niño, and the regional precipitation is the determining factor of changes in river discharge. Yuan et al. (2016) also pointed out that CP SST shows statistically significant negative influences on the entire Yellow River basin. The above studies indicate that El Niño is a pivotal factor that influences the variability of streamflow.

    However, little is still known about the separate responses of streamflow in different river basins of East China to EP and CP El Niño, as well as the possible physical mechanisms behind those relationships. To address these issues, analyses of the relationships between the two types of El Niño and long-term observed streamflow over the Yellow and Yangtze river basins (the major river basins of East China) were carried out, and the possible physical mechanisms behind the relationships were investigated by analyzing the large-scale atmosphere−ocean circulation patterns during EP and CP El Niño years. The results of this study contribute to our understanding of land surface hydrological changes, which occur under different large-scale circulation patterns in the earth system, and therefore to improving the accuracy of land surface hydrological predictions.

    This paper is organized as follows. Section 2 describes the data and methods used in this study. Section 3 analyzes the observed streamflow and El Niño indices, and the relationship between summer streamflow over the Yellow and Yangtze river basins and the two types of El Niño events. Section 4 discusses the possible mechanisms behind the abovementioned relationships. Finally, conclusions are drawn in section 5.

2.   Data and methods
  • The observed daily streamflow dataset used in this study was from the Ministry of Water Resources of China. The data were from 23 hydrological stations, which covered all China’s major river basins (e.g., the Yellow River, Yangtze River; Fig. 1), and the period of coverage was 1980−2008. This dataset was used to investigate the changes in China’s streamflow on both spatial and temporal scales (e.g., Zhang et al., 2011). Monthly observed precipitation and air temperature data were obtained from the CN05.1 dataset, with a 0.5° × 0.5° resolution (Wu and Gao, 2013). It was based on daily observations at more than 2400 meteorological stations from the National Meteorological Information Center. Two daily evapotranspiration (ET) datasets were used in this study. One was from NASA’s Collection6 MODIS product, retrieved by the Penman−Monteith algorithm (Mu et al., 2007), hereafter referred to as PM-MOD. The other was from the WCRP’s GEWEX LandFlux project, which was a multi-year, global, merged benchmark synthesis ET product, produced by merging satellite data, in-situ observations, and land-surface datasets over the period 1989−2005 (Mueller et al., 2013), hereafter referred to as LandFlux-EVAL. The latter was used to support the results from the MODIS dataset. Monthly SST data were derived from NOAA’s ERSST.v4 dataset (Huang et al., 2015). In addition, to explore the possible physical mechanisms underlying the relationship between the two types of El Niño and streamflow, we obtained atmospheric circulation data, including monthly wind, vertical velocity, geopotential height (GPH), and surface pressure, from the NCEP-2 reanalysis products (Kanamitsu et al., 2002). Monthly specific humidity data were obtained from the NCEP-1 reanalysis products (Kalnay et al., 1996).

    Figure 1.  Locations of the Yellow and Yangtze River basins and the 23 hydrological stations (black spots), among which the black triangle symbols denote the hydrological stations of Huayuankou and Hankou. Blue lines denote the main river network.

    Several Niño indices (e.g., Niño3, and Niño3.4 and Niño4) have been defined based on sea surface temperature in different regions of the equatorial Pacific, and widely used in research (e.g., Ashok et al., 2007; Kug et al., 2009; Ren and Jin, 2011). In order to express the two different types of El Niño, i.e., EP and CP El Niño, we used the Niño3 index (hereafter referred to as the EP index) to represent EP El Niño (Trenberth, 1997) and the El Niño Modoki index (hereafter referred to as the CP index) to represent CP El Niño (Ashok et al., 2007). The EP index was obtained from NOAA’s Climate Prediction Center (http://www.cpc.ncep.noaa.gov/data/indices/ersst4.nino.mth.81-10.ascii), which was computed as the regional SSTA average over (5°S−5°N, 150°−90°W):

    The CP index was defined according to the method of Ashok et al. (2007):

    where [SSTA]C, [SSTA]W and [SSTA]E are the regionally averaged SSTA values over (10°S−10°N, 165°E−140°W), (15°S−5°N, 110°−70°W) and (10°S−20°N, 125°−145°E), respectively. Both the EP and CP indices were calculated from the ERSST.v4 dataset, and the relevant regions are denoted in Figs. 2c and d. To define the two types of El Niño, we defined typical EP (CP) El Niño events when the amplitude of the anomalous EP (CP) index was equal to or greater than 0.8 times its standard deviation (0.8 STD). Based on this approach, there were three EP El Niño years (1983, 1998 and 2007) and five CP El Niño years (1991, 1992, 1995, 2003 and 2005) from 1980 to 2008. These EP and CP El Niño years were in accordance with previous results (e.g., Ashok et al., 2007; Wang et al., 2013). Aside from the chosen EP and CP years, the remaining years are referred to as “normal” years.

    Figure 2.  The winter time-series of (a) EP index and (b) EP index, and composite SSTAs in (c) EP and (d) CP El Niño years (units: ℃) for 1980−2008. The dash-dotted line in (a, b) denotes the corresponding 0.8 STD, and the areas of the black solid boxes in (c, d) are used to define the EP and CP El Niño index, respectively.

    The Yellow and Yangtze river basins are two major river basins in East China, and two hydrological stations (e.g., Huayuankou and Hankou) are located in the lower reaches of each river basin, respectively. Therefore, these hydrological stations were selected to represent the two abovementioned river basins. The methods of linear correlation and regression analysis were used to explore the relationship between streamflow and the two types of El Niño years (positive index years). Composite analysis was applied to reinforce our results. All statistical significance tests for correlation and regression were performed using a two-tailed Student’s t-test. The seasonal anomalies were the departures from their respective climatic states for the study period (i.e., 1980−2008), and linear trends were extracted before analysis. For simplicity, the terms “winter” and “summer” are used to represent December−January−February (DJF) and the following June−July−August, respectively.

3.   Results
  • To illustrate the evolution of streamflow, Fig. 3 shows the time series of summer streamflow anomalies for the two major river basins of East China from 1980−2008 in EP and CP El Niño years. The majority of the river basins’ streamflow anomalies display above-normal streamflow in EP years, but complicated variabilities in CP years, in which the streamflow varies in different river basins. Specifically, the anomalous streamflow displays as positive in EP years over the two river basins (based on the Huayuankou and Hankou hydrological stations). In contrast, in all CP years except 2005, the anomalous streamflow shows as negative at Huayuankou hydrological station, whereas it does not display such clear change at Hankou hydrological station (slightly positive). The composite anomalous streamflow in both EP and CP years is also presented in Fig. 3. It is clear that, over the Yellow River basin, the anomalous streamflow is above (below) the multi-year average, with a mean volume of 642.84 m3 s−1 (−276.48 m3 s−1) in EP (CP) years. Meanwhile, over the Yangtze River basin, the anomalous streamflow is positive in EP years, with a mean volume of 8207.96 m3 s−1, and in CP years it also shows as slightly positive, with a volume of 1111.86 m3 s−1.

    Figure 3.  Annual summer streamflow anomalies in the two river basins during 1980−2008: (a) Huayuankou hydrological station; (b) Hankou hydrological station. The right-most part in the plots shows the composite volume of the streamflow in EP and CP years (units: m3 s−1). The red (blue) asterisks indicate the EP (CP) El Niño years. Note that the streamflow data at Huayuankou hydrological station are missing for 2008.

    Figure 4.  The mean and percentiles of summer streamflow over the Yellow and Yangtze river basins for EP, CP and normal years. The top (bottom) of the whiskers represents the 90th (10th) percentile; the top (bottom) of the boxes represents the 75th (25th) percentile; the middle line represents the 50th percentile; and the black dot in the boxes represents the mean volume of streamflow.

    Figure 4 shows the mean and percentiles of summer streamflow over the Yellow and Yangtze river basins for EP, CP and normal years. Consistent with Fig. 3, the amplitude of the streamflow volume at Huayuankou hydrological station is far smaller than that at Hankou hydrological station. At Huayuankou hydrological station (Fig. 4a), the mean volume is lowest in CP years, highest in EP years, and in-between in normal years. Moreover, the 90th percentile of the volume of streamflow (1488.74 m3 s−1) in CP years is even lower than the median volume (1953.08 m3 s−1) in EP years and the 75th percentile of the volume (1547.29 m3 s−1) in normal years, indicating that during CP years the streamflow is smallest and there might be a high probability of hydrological drought. At Hankou hydrological station (Fig. 4b), the mean streamflow volume in EP years is abundant and far greater than that in CP and normal years, and its amplitude range spans widely. The mean volume (45675.1 m3 s−1) is less than the median volume (49893.0 m3 s−1), implying that more than 50% of samples are higher than the average, and the 90th percentile of the volume reaches 57055.3 m3 s−1. Large volumes of streamflow are likely to cause riverbanks to collapse and cause flooding over the related river basin.

    Figure 5 is a scatterplot of the normalized summer streamflow anomaly against the EP and CP indices, with the lines of best fit (determined by the least-squares method) shown for the warm and cold phases of the EP and CP indices, respectively. It can be seen from Fig. 5 that changes in streamflow are asymmetrical in (both EP and CP) La Niña and El Niño years over the Yellow River basin, but symmetrical over the Yangtze River basin. The negative Niño index is slightly correlated with the streamflow. The following discussions mainly focus on the warm phases. At Huayuankou hydrological station (Figs. 5a and c), the correlation coefficient of the streamflow anomaly with the EP index is 0.39, and that with the CP index is −0.37. At Hankou hydrological station (Figs. 5b and d), the correlation coefficients of the streamflow anomaly with the EP and CP indices are 0.72 and 0.48, respectively. All the correlation coefficients are statistically significant at the 90% confidence level.

    Figure 5.  Normalized EP index values plotted against the normalized summer streamflow anomaly at (a) Huayuankou hydrological station (over the Yellow River basin) and (b) Hankou hydrological station (over Yangtze River basin). (c, d) As in (a, b) but for the CP index. Square symbols denote the EP or CP years’ streamflow anomalies. The lines of best fit for positive and negative Niño index (EP and CP index, respectively) values (Slope) and the correlation coefficients (R) are shown at the bottom of each plot. The correlation coefficients all pass the significance test at the 90% confidence level.

    Consequently, Figs. 3-5 all show that the anomalous summer streamflow over the Yellow River basin is positive in EP years but negative in CP years, while over the Yangtze River basin it is positive in both EP and CP years, despite the composite streamflow anomaly in CP years being only slightly positive during 1980−2008.

  • The above analyses show distinctly different changes of observational streamflow in EP and CP years over the Yellow and Yangtze river basins, respectively. In this subsection, we further analyze the connection between these two types of El Niño and the changes in surface hydrology elements, especially summer streamflow.

    Streamflow at a downstream station mainly depends on the rainfall over the entire upstream area in the river basin, which is triggered by evaporation, soil moisture, human activities, and so on (Gardner, 2009). Precipitation is an essential water source of streamflow and it is necessary for it to be taken into account when analyzing the variations of streamflow. Figure 6 shows the correlation between the two Niño indices and anomalous precipitation and the distributions of the composite anomalous precipitation in EP and CP years. Significant positive correlations between precipitation and the EP index are found primarily in the middle of mainland China between 25°N and 35°N, where the Yangtze River basin is located. The basin-average correlation coefficient is significantly positive (0.52) over the Yangtze River basin, whereas it is non-significantly negative over the Yellow River basin. The correlation coefficients between the CP index and streamflow (Fig. 6b) show that the Yellow River basin is dominated by negative correlation and the basin-average correlation coefficient is −0.31, while most of the Yangtze River basin shows non-significant positive correlation. Figures 6c and d display the distributions of composite anomalous precipitation. They are consistent with the correlation maps. During EP years, the Yangtze River basin is dominated by positive anomalous precipitation (basin average: 0.69 mm d−1), whereas slightly negative anomalous precipitation appears in the middle reaches of the Yellow River basin (0.08 mm d−1). In CP years, clear negative anomalies appear in southern China, with some of them in the region south of the Yangtze River basin. The basin-average precipitation anomaly is –0.14 mm d−1 over the Yangtze River basin and 0.06 mm d−1 over the Yellow River basin, which are similar to those in EP years.

    Figure 6.  (a, b) Correlation of anomalous summer precipitation with (a) EP index and (b) CP index. Dotted regions are significant at the 90% confidence levels. Black (inverted) triangles denotes (Hankou) Huayuankou hydrological station. The red curves surrounding regions are the ranges of the two river basins. (c, d) Composite maps of anomalous summer precipitation in (c) EP and (d) CP years, but with the lower anomalies (−0.3 to 0.3 mm d−1) left blank (units: mm d−1).

    Apparently, over the Yellow River basin in both EP and CP years, the area-average precipitation anomalies are very small and nearly the same, indicating that precipitation is not the only factor affecting streamflow over this basin. Actually, in arid and semiarid areas, the contributions of ET to streamflow are similarly, if not more, important than those of precipitation (Sun et al., 2017). Thus, we further discuss the changes in ET over these two river basins. Figure 7 shows the same distribution maps as Fig. 6, but based on the PM-MOD ET dataset. On the whole, the correlations between ET and the EP index are negative, but between ET and the CP index they are positive over the mainland. The correlation centers all appear in Northeast China. The Yellow River basin, which can mainly be classed as arid/semiarid, displays negative correlation with the EP index (Fig. 7a; basin-average correlation: −0.22), indicating that in EP years the ET will be reduced and more soil water will be retained. In CP years, most parts of the Yellow River basin display non-significant negative correlation (Fig. 7b). Likewise, the composite distributions of ET are also in accordance with the distribution patterns of correlation. The Yellow River basin shows negative ET anomalies (basin average: −0.05 mm d−1) in EP years, and positive ET anomalies (basin average: 0.02 mm d−1) in CP years. The characteristic changes in ET over the Yangtze River basin show similar features as those over the Yellow River basin, but the area-average values are higher than those over the Yellow River basin (the anomalous ET average value is −0.18 mm d−1 in EP years and 0.07 mm d−1 in CP years). However, it should be noted that there are no ground observations of ET over a large area, and model-simulated ET usually contains large uncertainties (e.g., Wang et al., 2016). Thus, we also used LandFlux-EVAL to verify the results from the PM-MOD dataset. It was found that both ET datasets have consistent characteristics of variation, but the magnitude of LandFlux-EVAL is higher than that of PM-MOD in China. A more detailed comparison of the two ET datasets is provided in the supplemental material [Fig. S1 and Table S1 in the electronic supplementary material (ESM)].

    Figure 7.  As in Fig. 6. but for ET (units: mm d−1).

    Moreover, we also analyzed the surface air temperature as compared with the ET (Fig. S2 in ESM). Over the humid regions, ET is more dependent on temperature than precipitation, while over the arid and semiarid regions precipitation and temperature are of equal importance for ET and other soil hydrological variables (Wang and Zeng, 2011). As a typical humid region, the Yangtze River basin usually has enough soil water for evaporation. The ET and temperature exhibit consistent changes and higher temperature would induce more ET. The Yellow River basin belongs to the arid/semiarid region and soil is usually dry and contains less moisture, which limits ET. Rising temperature would increase the atmospheric moisture demand, and then further enhance the process of ET. From our analyses, compared to normal years, the Yellow River basin displays less precipitation, lower temperatures and reduced ET in EP years, while there is less precipitation and higher temperatures and ET in CP years.

    The above results indicate that the streamflow in the lower reaches is affected by precipitation, ET and temperature in the entire river basin. Over the Yellow River basin, both precipitation and ET play equal roles in the streamflow, and negative anomalous precipitation, ET and temperature will induce positive streamflow anomalies in EP years. Similar results have been obtained in a previous study (e.g., Liu and Cui, 2011). In CP years, negative streamflow anomalies appear in the lower reaches of the Yellow River basin because of low precipitation and large ET. A positive CP index is accompanied by negative precipitation anomalies and positive ET and temperature anomalies. Over the Yangtze River basin, the streamflow in the lower reaches will increase when a positive EP index occurs with positive precipitation anomalies and negative ET anomalies, due to the river basin having a larger water input and smaller water output. Similarly, the changes of the positive CP index values usually accompany positive precipitation anomalies and negative ET anomalies, leading to positive streamflow anomalies.

4.   Possible mechanisms
  • Based on the above results, it is apparent that the different characteristics of surface hydrological variables over different river basins in the two types of El Niño years lead to different features of streamflow. It is vital, therefore, to detect the atmospheric physical mechanisms of impact on river flows that occur during these different types of El Niño. The expectation is that doing so will improve our understanding of the changes in land surface hydrology with large-scale circulation patterns and assist with land surface hydrological predictions. In the following subsection, we analyze the atmospheric circulation pattern anomalies during EP and CP years, and endeavor to identify the dominant factors impacting on summer streamflow, precipitation, ET and temperature over the two river basins. More specifically, the atmospheric dynamic and thermal variations are examined through analyses of the water vapor transport, lower- to mid-tropospheric circulation patterns, and atmospheric vertical motions during the two types of El Niño years.

  • Moisture transport is an essential factor for precipitation and subsequently for streamflow. To examine the moisture transport during EP and CP years, we performed a correlation analysis of the vertically integrated water vapor transport flux (WVTF) anomalies from the surface to 300 hPa with the two Niño indices (Fig. 8). It is obvious that, in both EP and CP years (Figs. 8a-d), there are two clear moisture transport belts, located north (transport towards the east) and south (transport towards the west) of 20°N, respectively. In the mid-latitudes (50°−60°N), there is a transport belt towards the west. As a result, near 20°N (south of 30°N) is mainly occupied by an anticyclone, and near 40°N (north of 30°N) by a cyclone.

    Figure 8.  Regression of the summer vertically integrated WVTF anomalies (from the surface to 300 hPa) (vector arrows) and the convergence of WVTF (contours) with positive (a) EP and (c) CP index values, and the composite patterns in (b) EP and (d) CP years. Only those results that surpass the 80% confidence level in the regression of convergence are drawn in the maps. The letter “A” represents “anticyclone” and the letter “C” represents “cyclone”. The red curves surrounding regions indicate the ranges of the two river basins.

    In EP years, the anticyclone south of 30°N becomes strong and presents two anticyclonic centers (Figs. 8a and b): one over South China, and the other over the northern Bay of Bengal. Meanwhile, north of 30°N, a cyclonic center lies over the Japan Sea. Such a pattern exists clearly in both the composite and regression maps. The anomalous anticyclone is able to bring abundant water vapor through the Indochina Peninsula (bypassing the South China Sea) to southeastern Asia, which will then be transported to the land area of South China. Meanwhile, the anomalous cyclone over the Japan Sea shows a significant WVTF channel from the Northwest Pacific to the Mongolian Plateau, and finally arrives in the Yellow River basin. Moreover, there is significant moisture convergence over the Yangtze River basin, while over the Yellow River basin there is only a small area that shows significant moisture divergence, with other areas characterized by slight moisture convergence. Therefore, such a pattern is favorable for WVTF from the low- to midlatitude sea to the Yangtze River basin, but it is unremarkable for the Yellow River basin. In CP years, the cyclone located north of 30°N becomes robust and shows two cyclonic centers, over the west of the Japan Sea and east of the Kamchatka Peninsula, respectively (Figs. 8c and d). Also, the anticyclone appears over the West Philippines. Such a pattern would suppress the water vapor transport from low latitudes to the land area of East China. The moisture divergence is apparent over the Yellow River basin and southeast coastal area. Figure 8 also shows that there is good consistency with the distribution of both precipitation and the convergence/divergence of water vapor in the two types of El Niño years. For instance, in EP years, the precipitation displays a positive anomaly over the Yangtze River basin and North China, where the water vapor significantly converges (Figs. 8a and b). In CP years, the area with profound increasing precipitation is mainly located over the Huaihe River basin, where water vapor is significantly converging (Figs. 8c and d). It is worth noting that, over the Yellow River basin, there is a distinct WVTF from the Mongolian Plateau and strong water vapor divergence. The above patterns reduce the precipitation over the Yellow River basin in CP years. Similarly, over South China, the water vapor anomaly shows as significantly positive and the precipitation anomaly is negative, in accordance with the obvious water vapor divergence. Furthermore, we analyzed the characteristics of vertical and horizontal motions of the atmosphere, to investigate the possible reasons of such a phenomenon.

  • The spatial distributions of the regressed and composite GPH and omega anomalies are plotted for both EP and CP El Niño years in Fig. 9. The same patterns as those in Fig. 8 are also apparent in the GPH anomaly fields. These GPH patterns present as an anomalous high-pressure center around 20°N and an anomalous low-pressure center around 40°−50°N. The anomalous low-pressure center corresponds with ascending motion and the anomalous high-pressure center indicates sinking motion. Moreover, in the mid-latitudes the anomalous westerlies are also closely associated with ascending motion. Specifically, in EP years, the anomalous westerlies are located east of 90°E, where the Yangtze and Yellow River basins are (Figs. 9a and b); whereas, in CP years, the westerlies shift east and become narrow and weakened, resulting in the convective activity only being evident over the Huaihe River basin (Figs. 9c and d). Moreover, in the low latitudes in EP years (Figs. 9a and b), South China is dominated by sinking motion, and a high-pressure center is apparent from the anomalous GPH map, which is closely associated with the western Pacific subtropical high (WPSH). The composite WPSH (Fig. S3 in ESM) shifts westward to 115°E in EP years, as compared with CP years (130°E) and normal years (135°E). It prevails over the South China Sea and part of South China, where descending motion is dominant, and southwesterly flow prevails in the north of the WPSH. Such characteristics are consistent with the precipitation changes in South China and the water vapor transport path and its divergence process. Therefore, the changes in local precipitation are affected by both water vapor and the vertical movement.

    Figure 9.  Similar to Fig. 8. but for the GPH (contours; units: gpm) and omega (shading; units: m s−1) 500-hPa anomalies. Dashed lines represent negative values, solid lines represent positive values. In regression maps [(a) and (c)], only regions passing the 90% confidence level are plotted (shading) and overlaid by black lines (contour).

    Combined analyses of the distributions of ET, temperature and vertical movement illustrate that they have a good and consistent relationship over land. In general, the area with rising motion corresponds to the strong convective zone, which is a favorable condition for the generation of clouds. Clouds can prevent radiation reaching the Earth’s surface, subsequently reducing the surface radiation heating. Thus, there is always negative anomalous ET and temperature where rising motion dominates; whereas, areas of sinking motion correspond to clear-sky and cloudless weather, with more solar radiation reaching the surface and the induction of positive anomalous ET and temperature. Figure 10 displays the average meridional (100°−115°E) latitude−pressure/height distribution of the rising/sinking motion over the two river basins. The area between 25°N and 35°N approximately corresponds to the location of the Yangtze River basin, and the area between 35°N and 45°N is roughly the Yellow River basin. Apparently, in EP years, the Yangtze River basin is dominated by deep rising motion, while the Yellow River basin is dominated by shallow rising motion under 500 hPa and sinking motion above 500 hPa. Accordingly, the anomalous ET and temperature over both the Yangtze and Yellow river basins are obviously negative. In CP years, the deep sinking center is over the Yellow River basin, and a shallow rising center occurs over the Yangtze River basin, corresponding to the positive ET and temperature anomalies over the Yellow River basin but slightly negative ET and temperature anomalies over the Yangtze River basin.

    Figure 10.  Vertical−horizontal cross-section regression patterns averaged along 100°−115°E for summer vertical wind anomalies with (a) EP and (c) CP index values, and the composite patterns of vertical wind averaged along 100°−115°E in (b) EP and (d) CP years. Only regions passing the 90% confidence level are plotted.

    Therefore, we find that EP and CP El Niño influence the lower reaches of both river basins’ streamflow through influencing the summer climate (e.g., precipitation, ET and temperature). Both the moisture conditions and the dynamic conditions are vitally important to the above relationships.

5.   Summary
  • In this study, to investigate the variations in summer streamflow over the Yellow and Yangtze river basins during different types (EP and CP) of El Niño, we analyzed streamflow observations, precipitation, ET and large-scale atmospheric circulations based on reanalysis datasets for the period 1980−2008. We then explored the possible atmospheric physical mechanisms of the above relationships through a set of statistical analyses.

    The summer streamflow in the Yellow and Yangtze river basins shows different characteristics in the two types of El Niño years. Generally, the linkage of EP El Niño events is more evident than that of CP El Niño; streamflow shows a positive anomaly during EP years, but changes diversely in CP years across different river basins. For example, the streamflow anomaly appears as dramatically negative over the Yellow River basin, whereas it is slightly positive over the Yangtze River basin, in CP years. Analyses of precipitation and ET show different weights of the effects on the streamflow over the two river basins. Over the Yellow River basin, the changes in ET are more important than precipitation, while over the Yangtze river basin the change in precipitation is the main reason for streamflow changes.

    The large-scale anomalous atmospheric circulation shows obviously different characteristics in EP and CP El Niño years. Overall, the anomalous atmospheric circulation shows a significant cyclone north of 30°N and an anticyclone south of 30°N. Such a spatial distribution may affect the water vapor transport path and modify the distribution of sinking/ascending motion, as well as the dynamic conditions of precipitation. In EP years, the anticyclone reinforces and emerges as two anticyclonic centers: one over South China, and the other over the northern Bay of Bengal. Meanwhile, the cyclone north of 30°N lies over the Japan Sea. Such a pattern is in accordance with a special atmospheric circulation in which the water vapor transported to the Yangtze River basin is enhanced, but does not arrive at the Yellow River basin. Meanwhile, the WPSH extends to 110°E and occupies South China, leading to negative precipitation anomalies but positive ET and temperature anomalies. The westerlies at 500 hPa shift southward and the distribution of vertical movement shows ascent over the Yangtze and Yellow river basins, which is favorable for convective movement, inducing the decreasing ET and temperature. However, in CP years, the cyclone becomes robust and shows two cyclonic centers over the western Japan Sea and east of the Kamchatka Peninsula, respectively. Accordingly, the atmospheric circulation shows less water vapor entering East China, and westerlies become narrow and weakened. At the same time, the vertical movement is one of sinking motion over two river basins, especially the Yangtze River basin. The above situation will cause a decrease in precipitation but an increase in ET and temperature. Such a phenomenon is more pronounced over the Yellow River basin, which will then induce the streamflow to diminish obviously.

    In this paper, we present detailed analyses of the relationship between summer streamflow and two types of El Niño over the Yellow and Yangtze River basins. However, it should be pointed out that, due to the limitation of the streamflow data length, during the study period of 1980−2008, EP El Niño occurred only three times and CP El Niño only five. One might therefore be concerned that the results could be biased in terms of distinguishing the impacts from the background climatology. To make the results more robust, when we performed the correlation/regression analyses, we selected years with positive EP or CP indices, and the composite analyses were from the pre-selected cases based on the thresholds described in section 2. Therefore, we are confident that our results are sufficiently convincing. Wu et al. (2016) mentioned that hydrometeorological hazards (especially flooding) will always be a concern because of the huge economic losses and damage to property that they cause. Therefore, it is crucial to enhance our ability to predict such hazards. With this in mind, the results presented here might help us to better understand the influence of different types of El Niño events on land surface hydrological processes, and subsequently lead to advancements in the potential to forecast El Niño-related hydrometeorological disasters.

    Acknowledgements. This work was supported by the Key Project of the Ministry of Science and Technology of China (Grant No. 2016YFA0602401) and the National Natural Science Foundation of China (Grant No. 41875106). The authors would like to acknowledge the Data Center for Resources and Environmental Sciences, Chinese Academy of Sciences, for providing the China River Valley datasets, which are available for free at their website (http://www.resdc.cn). Other datasets used in this study have been acknowledged in the paper.

    Electronic supplementary material: Supplementary material is available in the online version of this article at https://doi.org/10.1007/s00376-019-9049-2.

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