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Reg Environ Change (2013) 13:1195–1210 DOI 10.1007/s10113-013-0432-8 ORIGINAL ARTICLE Hydrologic response to climate change and human activities in a subtropical coastal watershed of southeast China Jinliang Huang • Zhenyu Zhang • Yuan Feng Huasheng Hong • Received: 4 August 2012 / Accepted: 23 February 2013 / Published online: 7 March 2013 Ó Springer-Verlag Berlin Heidelberg 2013 Abstract It is essential to investigate hydrologic responses to climate change and human activities across different physiographic regions so as to formulate sound strategies for water resource management. Mann–Kendall, wavelet and geospatial analyses were coupled in this study, associated with ENSO indicators, flashiness index and baseflow index, in order to explore the hydrologic sensitivity to climate change and human activities in the Jiulong River Basin (JRB), a subtropical coastal watershed of southeast China. The results showed that the average annual precipitation presented an increasing trend (Z = 2.263, p = 0.024) and that this tendency has become weaker from estuary to inland in the JRB over the past 50 years. The annual frequency of rainstorm events increased from 3.4 to 5.2 days in the estuary and from 5.1 to 5.6 days in the West River, whereas it decreased from 6.0 to 5.5 days in the North River from 1954 to 2010. The 10-year average streamflow during 2001–2010 in the North River and West River decreased by 9.2 and 6.7 %, respectively, compared to the average annual streamflow during 1967–2000. Annual fluctuations were the most representative signals in streamflow variability for the North River and West River over the period 1967–2010. Human activities including dam construction, land change and socioeconomic development posed increasing influences on hydrologic conditions in the JRB. Seasonal J. Huang (&) Z. Zhang H. Hong Coastal and Ocean Management Institute, Xiamen University, Xiamen 361005, China e-mail: [email protected] J. Huang Z. Zhang Y. Feng H. Hong Fujian Provincial Key Laboratory of Coastal Ecology and Environmental Studies, Xiamen University, Xiamen 361005, China variability of streamflow and sediment discharge changed significantly between the two periods divided by the jumping point (1992), identified when dams were constructed extensively in the North River and West River. This research provided important insights into the hydrologic consequences of climate change and human activities in a subtropical coastal watershed of southeast China. Keywords Climate variability Precipitation Streamflow Human activities Jiulong River Basin Introduction Change in streamflow is the result of complex interactions between climate change and human activities (e.g., occurrence of extreme weather events, dam construction) (Tu 2009; Liu and Cui 2011; Costigan and Daniels 2012). Climate change combined with human activities leads to remarkable changes in the hydrological recycling pattern, which in turn leads to changes in the hydrological processes of watersheds, and these have caused a series of water resource problems all over the world (Zalewski 2000; Zhang et al. 2001; Li et al. 2007; McVicar et al. 2007). Therefore, it is essential to investigate the sensitivity of hydrologic response to climate change and human activities across different physiographic regions so as to formulate sound strategies for water resource management. Many attempts have been made to understand hydrologic sensitivity to climate change and human activities from the local to regional and global scales (Magilligan and Nislow 2005; IPCC 2007; Hao et al. 2008; Jiang 2009; Rossi et al. 2009; Li et al. 2012; Zhang et al. 2012). Streamflow conditions are strongly controlled by climate change (Kling et al. 2012). As a result of climate change, 123 1196 the frequency and intensity of extreme precipitation events and drought related to ENSO events increased in the past few decades (Cruz et al. 2007; Vasiliades et al. 2009; Das et al. 2011). On the other hand, intensive human activities such as dam construction and urbanization play critical roles in hydrologic alteration (Xu et al. 2007; Liu et al. 2008; Bergerot et al. 2011). The construction of large modern dams produces a dramatic change in the magnitude of hydrologic, geomorphologic and ecological impacts on large rivers, which is well documented (Magilligan and Nislow 2005; Shieh et al. 2007; Yang et al. 2008; Rossi et al. 2009; Chen et al. 2010; Costigan and Daniels 2012; Zhao et al. 2012). In addition, land use and land cover changes which reflect underlying human activities also cause streamflow regime change. Land use changes, such as conversion of forest to cropland and conversion of cropland and woodland to suburban and urban land use, also alter streamflow regimes (Baker et al. 2004). With its high population pressure and long-term human disturbances, China is a key vulnerable region of climate change in the world (Ni 2011). In recent years, the effect of climate variability and human activities on runoff has been widely explored in large river basins such as the Yellow River, Yangtze River, Haihe River and Pearl River (Zhang et al. 2008; Xu et al. 2010; Cao et al. 2011; Liu and Cui 2011; Li et al. 2012; Bao et al. 2012; Chen et al. 2010); inland basins such as the TarimRiver, Shiyang River and Lancang River (Xu et al. 2004; Fan et al. 2011; Yang et al. 2012; Huo et al. 2008; Zhao et al. 2012); and lake basins in southeast China such as the Poyang Lake Basin and Taihu Lake Basin (Guo et al. 2008; Liu et al. 2012). Climate variability and human activities have been commonly recognized as two major driving factors interactively influencing the hydrologic cycle in China’s watersheds. Hydro-climate characteristics were significantly altered in the past 50 years in China, but such change exhibited somewhat regional differences. Good relationships between the annual streamflow and precipitation exist in most large river basins where the trend in streamflow dynamics results to a large extent from changes in precipitation, but the change in streamflow is greater than that of precipitation in the arid and semiarid regions of North China and the inland areas of China (Zhang et al. 2011). The increasing use of water from rivers for agricultural irrigation is a main cause for the decreases in observed runoff in the northern part of China (Ren et al. 2002), while dam construction in the southern part of China has greatly altered the natural flow regime conditions (Chen et al. 2010; Zhao et al. 2012). However, few studies on hydroclimate trends in the context of climate change and human activities have been reported in the coastal medium-sized watersheds of southeast China. Given the accelerating process of land transformation in the eastern coastal areas 123 J. Huang et al. of China and that the hydrologic response to climate change and human activities in small- or medium-sized watersheds should be more sensitive to environmental changes involving stronger signals (e.g., streamflow, sediment discharge) (Huang et al. 2012; Tomer and Schilling 2009), it is imperative to understand the hydrologic response to environmental changes in watersheds in such a geographic region. The Jiulong River Basin (JRB), covering 14,700 sq km, is a typical medium-sized subtropical coastal watershed in southeast China and suffers from a high frequency of extreme weather events (e.g., typhoons) and drastic human activities (e.g., extensive dam construction and accelerating land use changes). The objectives of this study were as follows: (1) to characterize the variability in climate and hydrology in terms of precipitation and streamflow over the past 4–5 decades and (2) to explore the hydrologic response in the JRB to climate change and human activities. Materials and methods Site description The JRB covers approximately 14,700 sq km in southeast China (from 116°460 5500 E to 118°020 1700 E and from 24°230 5300 to 25°530 3800 N) and consists mainly of eight counties or districts (Fig. 1). The watershed’s gross domestic product (GDP) accounts for a quarter of Fujian Province’s economic output. Nearly 10 million residents from Xiamen, Zhangzhou and Longyan use the Jiulong River as their source of water for residential, industrial and agricultural use. The watershed includes two river reaches, namely the North River and West River reaches, which meet in Zhangzhou and produce an annual flow of 12 billion cubic meter into the Jiulong River estuary and the XiamenKinmen coast. The JRB plays an extremely important role in the region’s economic and ecological health (Huang et al. 2013). Since 1992, hydropower plants have been extensively established in the JRB, and now there are more than 120 large-scale dams in the river basin. According to the typhoon yearbooks 1968–2006, the JRB was subject to approximately three typhoon events every year. Data sources Hydrologic data In this study, streamflow and sediment discharge data for four hydrologic stations in two river reaches were used, that is, two gauge stations in the upstream (Zhangping and Longshan) and two gauge stations in the downstream Hydrologic response to climate change and human activities 1197 Fig. 1 Study area (Punan and Zhendian) (Fig. 1). Detailed information regarding hydrologic data was available for: (1) Punan and Zhendian: daily streamflow and monthly sediment discharge data during 1967–2010; (2) Zhangping: monthly streamflow and monthly sediment discharge data during 1967–2010; and (3) Longshan: monthly streamflow and monthly sediment discharge data during 1972–2010. estuary, West River and North River, respectively, were obtained from the China Meteorological Administration (http://cdc.cma.gov.cn). Other meteorological data came from the individual hydrologic stations in the region (Fig. 1), including Chuangchang, Baisha, Maiyuan, Longshan, Punan, Zhendian, Zhangping and Longmen during 1985–2005. Meteorological data Socioeconomic data Daily precipitation data during 1954–2010 for three meteorological stations, namely Xiamen, Zhangzhou and Longyan, which were used to delineate climate change in the Socioeconomic data for eight counties or districts in the JRB from 1986 to 2009 (Fig. 1), namely Xinluo, Zhangping, Huaan, Changtai, Zhangzhou, Longhai, Nanjing and 123 1198 Pinghe, were collected from statistical yearbooks. Nine indices with regard to socioeconomic development included GDP (x1), values of primary industry output (x2), values of secondary industry output (x3), total population (x4), nonagricultural population (x5), amount of pigs (x6), amount of livestock (x7), area of orchard plantation (x8) and sown area of grain crop (x9). ENSO indicators The ENSO indicators used in this study were the Multivariate ENSO Index (MEI) and Southern Oscillation Index (SOI). The MEI is an indicator that combines sea-level pressure, zonal and meridional components of the surface wind, sea surface temperature, surface air temperature and total cloudiness fraction of the sky (Wolter 1987). The SOI is defined as the standardized difference in the standardized atmospheric pressures at Tahiti and Darwin, Australia (Ropelewski and Jones 1987). Data for these two indicators were obtained from the NOAA database over the period 1967–2010 (http://www.esrl.noaa.gov). Land use and land cover data Land use and land cover change is one of the important factors influencing the streamflow regime (Baker et al. 2004; Holko et al. 2011). The land use and land cover data in the JRB were interpreted from Landsat TM/ETM? images in 1986, 1996, 2002, 2007 and 2010 using RS and GIS. The land categories were generated using a combination of unsupervised classification and spatial reclassification based on manual on-screen digitizing (Huang et al. 2012). There were six categories, namely built, forest, cropland, water, orchard and barren land. In this study, we used the proportion of builtup and forest area at five time points for further analysis. Methods The nonparametric Mann–Kendall method was employed in this study to detect the long-term trends in the hydrologic and meteorological regimes. Jumping point analysis was used to identify the potential jumping points for alteration in precipitation or hydrology. We also used the Mann–Kendall method to conduct jumping point analysis. Two curves of Mann–Kendall U values for the forward and backward statistical sequences were calculated and plotted against time, and if the intersection occurred within the confidence interval, then this indicated a jumping point. The Mann–Whitney test was used to test the difference between two precipitation time series. Wavelet analysis was performed to identify the main modes of variability and to characterize the possible instationarity of each time series about ENSO indicators and streamflow. In addition, 123 J. Huang et al. principal component analysis (PCA) was performed to identify the potential impact of socioeconomic activities on the hydrologic conditions. Two indices, namely flashiness index (FI) and baseflow index (BFI), were used to delineate the streamflow regime over the period 1967–2010. The streamflow regime of a stream reflects the operation of the hydrologic cycle within its watershed (Baker et al. 2004), and the flashiness variability is attributed to the difference in dominant runoff generation, surface runoff and macropore flow (Holko et al. 2011). Flashiness of streamflow was quantified using the ratio of absolute day-to-day fluctuations of streamflow relative to total flow in a year, which has been proved to be a good index to evaluate the influence of human activities on river basins especially dam construction and land use and land cover change (Baker et al. 2004). The equation for the flashiness index is as follows: Pn jqi qi1 j FI ¼ i¼1Pn i¼1 qi where FI is the flashiness index and qi is the mean daily flow at day i. Streamflow can be separated into direct runoff and baseflow based on the runoff response rate to precipitation. Baseflow is generally defined as that part of the river streamflow coming from groundwater storage and other detention of water (Hall 1968). Baseflow separation was made using a digital filter based on the Lyne–Hollick method. Although the technique has no true physical basis, it is objective and reproducible (Arnold and Allen 1999). The equation is presented as follows: qt ¼ bqt1 þ ð1 þ bÞ=2 ðQt Qt1 Þ where qt is the filtered surface runoff at the time step t (1 day); Qt is the original streamflow at the time step t (1 day); and b is the filter parameter. The BFI was calculated with the following equation: BFI ¼ ðQt qt Þ=Qt : Results Climate variability Interannual variability of precipitation A long-term trend of annual precipitation was detected from estuary to inland using the nonparametric Mann– Kendall test. In general, an increasing tendency of precipitation with a 5 % level of significance was observed (Z = 2.263, p = 0.024 \ 0.05). However, the increasing tendency of precipitation became weaker with a decreasing significance level from estuary to inland (Fig. 2). The Hydrologic response to climate change and human activities increasing tendency of the annual precipitation in the estuary (i.e., Xiamen station) was significant at the 1 % level (Z = 3.010, p = 0.003 \ 0.01) while the precipitation in the inland (i.e., Longyan station) seemed not to have changed in the past 50 years. Based on Mann–Kendall analysis, the jumping points for Xiamen, Zhangzhou and Longyan were 1979, 1976 and 1986, respectively (Fig. 3). Compared with the values between the two periods divided by the identified jumping points, precipitation in the estuary increased by 18 % and in the West River reach by 6 %, while it decreased by 1 % in the North River reach. The result of the Mann–Whiney test further showed that the level of significance between the two time series became lower from estuary to inland. The p value of the Mann–Whiney test in Xiamen, Zhangzhou and Longyan was 0.003, 0.238 and 0.930, respectively. Seasonal variation of precipitation Seasonal variation of precipitation was distinct in the JRB, characterized by a wet season in summer and a dry season in winter, due to the influence of the subtropical maritime monsoon climate. Comparing the values between the two periods divided by the identified jumping points, seasonal variation of precipitation has changed in the past 50 years. That is, the precipitation amount increased during the period from July to September, while there was almost no change in the other months. This trend also became weaker from estuary to inland (Fig. 4). Additionally, the monthly 1199 precipitation changed from a single peak to a double peak in the wet season in the estuary and West River reach. Extreme weather events The increasing trend of annual frequency of rainstorm events was similar with that for precipitation and also became weaker from estuary to inland. Comparing the values between the two periods divided by the jumping points identified, the annual frequency of rainstorm events (24-h rainfall C50 mm) increased from 3.4 to 5.2 day/year in the estuary and from 5.1 to 5.6 day/year in the West River reach, whereas it decreased from 6.0 to 5.5 day/year in the North River reach from 1954 to 2010 (Fig. 5). Correlation analysis further showed that annual frequency of rainstorm events was strongly correlated to annual precipitation in the estuary, West River and North River, with Pearson coefficients of 0.817, 0.780 and 0.710 (p \ 0.01), respectively, indicating that the annual variation in precipitation was strongly related to the annual frequency of rainstorm event variation over the past 50 years. Streamflow variability Long-term trend of annual streamflow change Based on Mann–Kendall analysis, there was no significant increasing trend of annual streamflow in the North River reach (Z = 0.383, p = 0.701 [ 0.05) or West River reach Fig. 2 Variability of annual precipitation in the Jiulong River Basin 123 1200 J. Huang et al. Fig. 3 Jumping point analysis of precipitation in the Jiulong River Basin Fig. 4 Seasonal variability of precipitation between the two periods divided by the jumping points identified (Z = 0.871, p = 0.384 [ 0.05), nor were there any obvious jumping points for the three hydrologic gauge stations. However, the annual streamflow tended to decrease over the past 10 years (Fig. 6). The 10-year average streamflow during 2001–2010 in the North River and West River reaches decreased by 9.2 and 6.7 %, respectively, compared to the average annual streamflow during 1967–2000. in the JRB over the past 40 years. Furthermore, the increasing BFI value suggested that the ratio of runoff in the streamflow and the contribution of precipitation to streamflow both became less, which may be largely due to the influence of human activities. Meanwhile, the mean value and coefficient of variation of the FI in the West River reach were higher than that in the North River reach (Table 1). Streamflow regime change Hydrologic sensitivity to climate variability The decreasing tendency of the FI was significant at the 1 % level while the BFI was significantly increasing at the 1 % level from 1967 to 2010, using the Mann–Kendall test (Fig. 7), indicating that the streamflow regime had changed Influence of precipitation on streamflow 123 Streamflow was more sensitive to precipitation in the upstream than in the downstream for both the North River Hydrologic response to climate change and human activities 1201 Fig. 5 Dynamics of the annual frequency of rainstorm events during 1954–2010 Linkage between streamflow variability and ENSO indicators Fig. 6 Streamflow variability for the North River and West River reaches during 1967–2010 and West River reaches. Pearson coefficient between streamflow and precipitation in the downstream (e.g., Punan and Zhengdian) was lower than that in the upstream (e.g., Zhangping and Longshang) of the North and West River reaches (Table 2), suggesting that climate variability played a more important role upstream, compared to the downstream. Two periodic oscillations (i.e., a 1-year scale and a 5- to 7-year scale) were observed in the monthly streamflow variation in the North River and West River reaches. Similar results were found in ENSO indicators (i.e., 4-year scale and 13-year scale) (Fig. 8). As shown in Fig. 8, the second periodic oscillation concerning monthly streamflow (i.e., a 5- to 7-year scale) was close to the first periodic oscillation for MEI and SOI (i.e., 4-year scale), indicating close relationships between monthly streamflow and ENSO indicators. Such a phenomenon was probably attributable to the ENSO cycle, the regulated quasiperiodic oscillation of ENSO, which occurs across the tropical Pacific Ocean roughly every 5 years. The second 13-year signal of ENSO indicators might also have been related to the occurrence of ENSO events. Figure 9 shows the intensity of the wavelet energy with regard to monthly streamflow and ENSO indicators (MEI and SOI). The intensity at each x–y point represents the magnitude of the wavelet energy. The higher the values of wavelet energy, the higher the values of the monthly streamflow and ENSO indicators. As shown in Fig. 9, annual fluctuations (i.e., 1-year scale) were the most representative signal in monthly streamflow variability over the period 1967–2010 for monthly streamflow in the North River and West River reaches. Additionally, the wavelet 123 1202 J. Huang et al. Fig. 7 Variability of streamflow flashiness index and baseflow index of the North River and West River during 1967–2010 Table 1 Descriptive statistics of flashiness index in the North River and West River reaches during 1967–2010 N Mean SD Coefficient of variation North River 44 0.28 0.033 0.118 West River 44 0.30 0.058 0.193 energy of MEI corresponded well to the wavelet energy of monthly streamflow. For the low frequency (i.e., 4-year scale in Fig. 9), the wavelet energy of monthly streamflow was low, and the wavelet energy of MEI was also low. However, the high frequency (i.e., 13-year scale in Fig. 9) shows the opposite tendency, namely the wavelet energy of the monthly streamflow was high; the wavelet energy of the MEI was low. In order to remove the interference of the seasonal variability of precipitation, the linkage between monthly streamflow and monthly MEI was analyzed in this study using Pearson correlation analysis. The result showed that MEI was strongly positively correlated to the monthly streamflow change during the period from February to April. In contrast, there was no significant relationship between MEI and monthly streamflow in other months, except September (Table 3). Similar results were obtained when analyzing the relationship between SOI and monthly streamflow variability. It can be concluded that the impact of ENSO events on streamflow was greater in the wet seasons than that in the other seasons. Influence of human activities Effect of dam construction Dam construction causes changes to the streamflow regime. The hydropower stations distributed extensively along the Jiulong River (as shown in Fig. 1) caused the natural streamflow regime to change; thus, the FI decreased significantly (Fig. 10). Based on Mann–Kendall analysis, the jumping point, for the North River and West River in which the FI dropped off, was identified as 1992, which was consistent with the fact that hydropower plants had been developed extensively since 1992. With the development of hydropower plants, the hydrologic regime Table 2 Pearson coefficient between monthly streamflow and monthly precipitation during 1985–2005 (n = 252) Rc Chuangchang Longshang Zhengdian Baisha Longmen Maiyuan Zhangping Punan 0.810** 0.815** 0.755** 0.790** 0.810** 0.772** 0.782** 0.744** ** p \ 0.01 123 Hydrologic response to climate change and human activities 1203 Fig. 8 Wavelet variances of the monthly streamflow, Multivariate ENSO Index and Southern Oscillation Index in the North River and West River during 1967–2010 Fig. 9 Wavelet analysis of the monthly streamflow, Multivariate ENSO Index (MEI) and Southern Oscillation Index (SOI) during 1967–2010 changed accordingly. The seasonal variability of monthly streamflow changed over the past 20 years of dam construction, as did the seasonal variability of monthly sediment discharge (Fig. 11). The monthly streamflow extended from a single peak to a double peak in the North River reach either upstream or downstream. In contrast, the peak value of monthly streamflow increased and was delayed in the West River 123 1204 J. Huang et al. Table 3 Pearson coefficient between ENSO indicators and monthly streamflow during 1967–2010 (n = 43) Jan MEIa Feb Mar 0.301* 0.538** 0.645** -0.368* -0.376** -0.528** MEIb 0.319* 0.488** 0.628** SOIb -0.379* a SOI -0.367* -0.536** Apr 0.403** -0.064 0.459** -0.153 May Jun Jul -0.073 -0.065 0.155 0.289 0.143 0.038 0.163 Aug Sep Oct Nov Dec 0.157 -0.343* -0.336* -0.219 -0.034 -0.122 -0.153 0.299* 0.379* 0.242 -0.051 0.129 0.189 -0.347* -0.399** -0.328* 0.145 -0.124 -0.258 0.263 0.374* 0.208 0.153 -0.120 0.177 * p \ 0.05 ** p \ 0.01 a b North River reach West River reach reach as a result of precipitation variability and dam construction (Figs. 5, 11). Monthly sediment discharge was altered obviously due to dam construction over the past 20 years (Fig. 11). The peak of monthly sediment discharge increased significantly in the North River reach, compared with the values between the two periods divided by the jumping point. Conversely, the peak of monthly sediment discharge decreased and was delayed in the West River reach. As a result of the dam construction, the relationship between monthly precipitation and monthly streamflow became weaker (Table 4). The impact of monthly precipitation on monthly streamflow dropped off slightly after 1992, and the Pearson coefficient and Mann–Kendall coefficient were reduced accordingly over the past 20 years. Association between land use change and flashiness index regime Land use change can cause changes in the FI in a stream. Interestingly, the FI rose since 2002, which may be related to the fact that the proportion of forest land decreased and the proportion of built-up land increased. As shown in Fig. 12, the proportion of forest increased during 1986–2002, whereas it decreased after 2002. Meanwhile, the portion of built-up land increased over the past 40 years, from 1.54 % in 1996 to 5.04 % in 2010. Factor analysis of human activities PCA was performed in this study to explore the impact of socioeconomic development on water resources in the JRB. The nine indices mentioned above were normalized to eliminate the influence of difference dimensions. The Kaiser–Meyer–Olkin values and the Barlett test values using PCA (1986–2009) were 0.838 and 0.000, respectively, indicating that the results of the analysis were credible and suitable for PCA. As shown in Fig. 13, the first two components explained 92.4 % of the total variance. Component 1 had a high positive relationship with the independent variables x1, x2, x3, x4, x5, x7 and x8, accounting for approximately 74 %, while component 2 had a good positive relationship with the independent variables x6 and x9, accounting for over 18 % variance. The most important driving force for streamflow regime change in the JRB was the economic factor, which was closely related to population growth and economic development. Agricultural activities including pig breeding and crop practices were identified as the next most important factors influencing the streamflow regime. Discussion Precipitation variability and climate change Fig. 10 Jumping point analysis of flashiness index in the North River and West River reaches over the period 1967–2010 123 Average annual precipitation in the JRB presented an increasing trend (Z = 2.263, p = 0.024 \ 0.05) over the period 1954–2010, and this trend became weaker from estuary to inland. Such an increasing trend in precipitation was similar to the other observations in the southern part of China. Geographically, decreasing trends of interannual Hydrologic response to climate change and human activities 1205 Fig. 11 Seasonal variability of streamflow and sediment discharge between the two periods divided by the jumping points identified Table 4 Pearson coefficient and Mann–Kendall sa/sb between monthly precipitation and monthly streamflow between the two periods divided by the jumping points identified during 1967–2010 Two periods North River reach West River reach Pearson Mann– Kendall Pearson Mann– Kendall 1967–1991 (n = 300) 0.856** 0.641** 0.816** 0.612** 1992–2010 (n = 228) 0.832** 0.591** 0.796** 0.533** ** p \ 0.01 precipitation are concentrated in the northern part of China including the Songliao River, Huai River and Yellow River Basin, while the increasing trends appear primarily in the southern part of China including the Yangtze River, Zhujiang River Basin and Southeastern Region (Xu et al. 2004). Based on the records from 160 meteorological stations in China, precipitation from 1951 to 2000 increased by 2 % in the south but decreased by 4–11 % in the north (Xu et al. 2010). The precipitation variability in the JRB may be attributed to global climate change. The jumping points in the estuary, West River and North River reaches were identified as 1979, 1976 and 1986, respectively. Similar changes are found in the Tarim River Basin (Xu et al. 2004; Zhou et al. 2012), North Xijiang (Yang et al. 2012), Yellow River Basin (Zhao et al. 2008), Japan (Xu et al. 2003), Europe (Franks 2002) and Argentina (Boulanger et al. 2005; Doyle et al. 2012). The significance of the Mann– Fig. 12 Dynamics of land use and flashiness index change in the JRB during 1986–2010 123 1206 J. Huang et al. Whitney test in the estuary, West River and North River reaches between the two periods divided by the jumping points were 0.005, 0.078 and 0.863, respectively. It seemed that the influence of global climate change was becoming weaker from estuary to inland within the JRB. The variability of annual precipitation in the JRB was greatly related to the seasonally increasing intense rainstorm events during the period from July to September. Muttiah and Wurbs (2002) conclude that average precipitation in the USA increased by approximately 5–10 % throughout the twentieth century, mostly due to the increases in intense rainstorms. Because of precipitation variation, the streamflow decreased significantly around September 1990, and this caused the annual average streamflow to change significantly, so that annual variation moved from double peaks to a single peak in the Yellow River (Li et al. 2012). Xu et al. (2010) note that rainfall in summer over the period from June to August accounts for 30 % of the annual precipitation in South China (Guangzhou) with peak rainfall shifting from May to August. and precipitation in the upstream have been decreasing (Fig. 7). Precipitation in the upstream was identified as the major factor influencing streamflow downstream in the JRB. Compared to the variability of precipitation and streamflow between the two periods divided by the jumping points identified in the West River and North River reaches, the annual precipitation for the North River in the later period decreased by 2 %, while the annual streamflow only decreased by 1.5 %. Changes in precipitation were not obviously amplified in the streamflow of the JRB, which may be attributable to the combined impacts of global climate and anthropogenic activities such as dam construction. On the other hand, Chiew et al. (1995) point out that changes in precipitation are amplified in streamflow in southeast Australian rivers. Chen et al. (2007) also find that annual runoff coefficients are in direct proportion to annual precipitation in the Tarim River Basin, and as such, it is easier to detect variability or climate change in streamflow rather than in precipitation or other climate variables. In our study, we found that the occurrence of ENSO events might have brought about a lower frequency of streamflow variability. The streamflow was positively correlated with the MEI and negatively correlated with the SOI from February to April, and the situation was opposite in September, which was greatly influenced by ENSO events. It is well known that an ENSO event is a most important phenomenon in tropical air–sea interactions and one which can influence climate change in China, especially the summer climate change (Huang and Wu 1987). The ENSO events bring about summer climate anomalies in China (Fu and Ye 1988). ENSO has been widely recognized as an important factor influencing regional hydroclimatology in the United States, China and South America (Chavasse and Seoane 2009; Rossi et al. 2009; Lv et al. 2011). However, annual variations in precipitation exert a greater impact on the frequency of streamflow variability in the JRB, compared to the influence of ENSO events. Hydrologic response to climate change Impact of human activities on streamflow regime The annual precipitation has increased while the average annual streamflow has not significantly increased in the JRB in the past 40 years. The runoff generation process can be considered as the conversion of precipitation to runoff (Chen et al. 2007). Lu (2004) notes that the relationships between precipitation and runoff in the 1950s and 1970s seem to be strongly correlated (R2 = 0.897) for both southern and northern large Chinese rivers. In our study, precipitation was positively correlated to streamflow from 1967 to 2010, especially precipitation in the upstream (Table 2). In the past 10 years, both the annual streamflow Human activities including dam construction can alter streamflow regimes. In our study, the FI decreased significantly while the BFI increased significantly, indicating that the streamflow regime in the JRB has been greatly influenced by human activities over the past 40 years. Seasonal variability of streamflow changed significantly between the two periods divided by the jumping point (1992) identified when dams were constructed extensively in the North River and West River reaches. Costigan and Daniels (2012) note a significant increase in the 1- through 90-day minimum discharge and a significant decrease in Fig. 13 Bitplot of PCA in the Jiulong River Basin 123 Hydrologic response to climate change and human activities the 1- through 90-day maximum discharge for dam construction in the Great Plain river regimes. The FI decreased significantly after the construction of a hydropower station in 1989 in the Zborov-Bystrica watershed (Holko et al. 2011). Zhao et al. (2012) note that the degree of hydrologic alteration changed obviously in the midstream area of the Lancang River, and the situation worsened when the river was simultaneously influenced by dam construction and other human activities. Chen et al. (2010) also find six indicators of hydrologic alteration remarkably induced by dam construction in the East River Basin. Above all, the most common changes in the hydrologic regime of a stream are the changes in the baseflow and flashiness of streamflow (Hirsch et al. 1990; Stanford et al. 1996; Poff et al. 1997; Graf 2001). FI and BFI are vital indices for characterizing the influence of human activities on the hydrologic condition. The FI was negatively correlated to the BFI in the JRB, and a similar result is found in Estonia and Norway by Deelstra and Iital (2008). The characteristics of seasonal variability in streamflow have changed since the 1992 dam construction. The monthly streamflow increased in the period from July to September for dam construction in 1992, especially in the North River reach, where there is no obvious change in precipitation but where streamflow increased from July to September. After analyzing streamflow and suspended sediment load with wavelet analysis, Rossi et al. (2009) find a loss of energy in the suspended sediment load signal which can be attributed to anthropogenic changes, principally the construction of a large reservoir on the Missouri River in the 1950s. The FI in the West River reach was higher than that in the North River reach, and this was related to physical characteristics: The area of the North River reach is larger than that of the West River reach, which made the streamflow in the North River reach more stable. A similar result is found in other studies in the USA (Fonger et al. 2007; Baker et al. 2004). After investigating 279 watersheds and 515 watersheds, respectively, both groups find that the FI decreases while the area of watershed increases. Furthermore, Holko et al. (2011) note that the value and variation of FI increase when the watershed becomes smaller. Our study showed a similar result in the North River and West River, as shown in Table 1. The FI in the JRB decreased from 1986 to 2002, partly because the proportion of forest increased in this period. During 2002–2007 the FI decreased, probably because the urbanization process accelerated and the area of forest decreased over this period. During the period from 2007 to 2010, the FI decreased to a low level which might have been related to an apparent slowdown in the urbanization process and a potential increase in forest. Wissmar et al. (2004) note that the discharge rates for all watersheds were 1207 higher in 1991 and 1998 than historically and suggest that the chances for floods increase because of changing land cover in the Cedar River, USA. Dow (2007) analyzes the streamflow regime of nine New Jersey streams and finds both decreasing and increasing trends of flashiness for four rivers and suggests that this is related to an apparent slowdown in urbanization and to potential changes in wetland agricultural practices. More permeable soils in forest areas as compared to open land (Jewitt 2005) lead to a larger portion of subsurface flow and therefore reduce flashiness. Additionally, Holko and Kostka (2008) note good correlations between physiographic catchment attributes and the FI for selected small mountain catchments in Slovakia, and the FI is well correlated with catchment slope and percentage of agricultural land and forest. Human activities have been posing increasing influences on hydrologic conditions in the JRB over the past 40 years. The driving forces of human activities were mainly attributed to socioeconomic factors that are related to urbanization and urban population growth, which is consistent with the result of land use and land change analysis, indicating that the urbanization process and urban planning in the JRB should be given more attention. Urbanization has even been identified as one of the important factors contributing to China’s water scarcity (Jiang 2009). Other studies also demonstrate that human activities can alter surface runoff significantly in watersheds. For example, Xu et al. (2004) find that climate change increases the surface runoff in the headstream of the Tarim River, while human activities decrease the surface runoff in the mainstream. Hao et al. (2008) also note that two principal components are responsible for the influence of human activities on surface runoff, one being economic factor which is highly related to agricultural exploitation, the other being the population factor that resulted in an increase in the area of plantation and changed the crop structure in the Tarim River Basin. Conclusions Our results showed the hydrologic sensitivity to climate change and human activities in a medium-sized subtropical coastal watershed in southeast China. Precipitation in the JRB presented an increasing trend (Z = 2.263, p = 0.024 \ 0.05) over the period 1954–2010 while the trend became weaker from estuary to inland. The variability of annual precipitation was closely related to the seasonally increasing intense rainstorm events and precipitation during the period from July to September. Changes in precipitation were not obviously amplified in streamflow in the JRB. Compared to the variability of precipitation and streamflow between the two periods divided by the 123 1208 jumping points identified in the West River and North River reaches, the annual precipitation for the North River in the later period decreased by 2 %, while the annual streamflow only decreased by 1.5 %. Annual fluctuations were the most representative signals in streamflow variability over the period 1967–2010 for the North River and West River reaches. The second signal of 5- to 7-year fluctuation in streamflow variability corresponded to the ENSO cycle. The hydrological signal of 13-year fluctuation in MEI and SOI variation corresponded to the frequency of ENSO events. The occurrence of ENSO events might have brought about the lower frequency of streamflow variability, but annual variation in precipitation exerted a greater influence on the frequency in streamflow variability in the JRB, compared to the influence of ENSO events. Human activities including dam construction, land change and socioeconomic development are posing increasing influences on hydrologic condition in the JRB. Seasonal variability of streamflow changed significantly between the two periods divided by the jumping point (1992) identified when dams were extensively constructed in the North River and West River reaches. Economic development and land use changes were identified as the important factors contributing to streamflow regime variations in the JRB over the past 40 years. Our study provided important insight into the hydrologic consequences of climate change and human activities in a medium-sized subtropical coastal watershed. 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