1. Introduction
Climate change is the biggest threat to human society in the 21st century. A report of the Intergovernmental Panel on Climate Change (IPCC) has pointed out, based on temperature observations over the past 133 years, that from 1880 to 2012, the global mean surface temperature has increased by 0.85 °C, along with significant regional differences. The rate of temperature increase has quickened significantly over the past 62 years of observations; the rate of temperature increase from 1951 to 2012 was 0.12 °C per ten years. This accelerated warming situation intensifies changes in the global water cycle, giving rise to an upward trend in average global precipitation, evapotranspiration, and surface runoff [
1]. The impact of global warming would not change the mean values of hydrological factors, but would increase the occurrence probability and frequency of extreme events. Among extreme events, droughts are the slowest to develop, but also the longest to last. In addition, among meteorological disasters, extreme droughts are the most predictable [
2].
There are different definitions of drought based on different hydrological, meteorological, and socio-economic factors. Therefore, in studying drought characteristics, an appropriate definition of drought should be determined to match specific research goals [
3]. Common definitions of drought include the following: (1) according to the World Meteorological Organization, drought is a phenomenon caused by a rainfall deficit in terms of duration and persistence [
4]; (2) according to the UN Convention to Combat Desertification, drought is defined as a natural phenomenon that occurs when precipitation is significantly lower than the normally recorded value, causing a hydrological imbalance that affects land resources and the production system [
5]; (3) according to the Food and Agriculture Organization of the UN, drought is defined as the percentage of crops that wither in a year because of insufficient soil water [
6]. Different definitions of drought are selected mainly based on the use of different hydrological and meteorological variables for evaluation. Therefore, types of droughts can be categorized according to hydrological and meteorological variables.
Generally speaking, droughts can be divided into four types according to different hydrological and meteorological variables, and evaluation goals: (1) meteorological drought, referring to the phenomenon associated with deficient precipitation over a certain period in the same region; (2) hydrological drought, referring to deficient surface or subsurface water supply for the water management system; (3) agricultural drought, referring to reduced soil water for a period that results in reduced final crop yield; and (4) socioeconomic drought referring to insufficient water supply in water resource systems because of climate, equipment, or manual operation factors, causing socioeconomic problems [
2]. In order to understand the process of hydrological drought and its impact, many variables need to be analyzed in detail, including the time of occurrence, severity, duration, and spatial distribution using different methods [
2,
7,
8,
9,
10,
11,
12,
13,
14]. Many scholars have proposed drought-monitoring methods in different areas, aiming to explore these factors. Drought-monitoring methods for meteorological drought include the standardized precipitation index (SPI) [
15] and reconnaissance drought index (RDI) [
16]. In addition, methods for analyzing hydrological drought include the Palmer drought severity index (PDSI) [
17], surface water supply index (SWSI) [
18], streamflow drought index (SDI) [
19], and standardized hydrologic indicator (SHI) [
20]. Methods for analyzing agricultural drought include the crop moisture index (CMI) [
21] and agricultural reference index for drought (ARID) [
22].
Among the drought monitoring methods, Nalbantis (2008) proposed the method of SDI, which analyzes drought characteristics based on cumulative streamflow volumes. Advantages of this method include simplicity and high effectiveness. This method has been used to analyze the drought characteristics of many countries such as the United States [
23], India [
24], Iran [
13,
25,
26], Iraq [
13], and Greece [
19,
27,
28]. In this study, the SDI method was employed to study the drought characteristics of Taiwan.
The average annual precipitation in Taiwan is about 2500 mm, which is about 2.6 times that of the world. Although the precipitation is heavy in the Taiwan area, the area has such a small territory with a large population, that the annual precipitation assigned per capita is only 1/7 of the world average [
29]. Taiwan is ranked as the 18th most water-stressed among the 146 countries in the world being assessed by the environment sustainability index (ESI) [
30]. In addition, the spatial and temporal distribution of rainy seasons is extreme in Taiwan, with rainfall mainly concentrated from May to October. A large amount of rainfall flows into the oceans by riverflow down the steep mountain slopes in Taiwan, making effective accumulation of water resources impossible. In recent years, because of climate change and increased temperatures, there has been increased precipitation during the wet season in Taiwan, while precipitation has decreased during the dry season, resulting in more extreme wet and dry seasons [
31]. Because of this, the difference in streamflow volumes between wet and dry seasons has become larger, leading to drought occurrences.
Since northern Taiwan is densely populated, it has a high demand for water. However, in recent years there have been abrupt climate anomalies caused by climate changes, resulting in considerable lack of water during winter and spring, which used to be the rainy seasons [
32]. Therefore, in order to lower the impact of climate change on water usage, effective study and management of the hydrological information in the northern region is necessary. Yeh
et al. [
33] used the Mann-Kendall test, Theil-Sen estimator, Mann-Whitney-Pettit test and the cumulative deviation test to investigate the streamflow trend characteristics in northern Taiwan. The Mann-Kendall test was used to analyze the streamflow trend [
34,
35,
36,
37,
38,
39], and the Theil-Sen estimator was used to calculate the trend slopes to obtain the extent of trend changes [
40,
41,
42,
43,
44].The Mann-Whitney-Pettit test and the cumulative deviation test, two tests commonly used in hydrology analyses, are used to find the change points [
43,
45,
46,
47]. Yeh
et al. [
33] found from long-term streamflow data that the average annual streamflow in the Lanyang River basin had a significant downward trend. Therefore, in this study, SDI was used to study the long-term distribution of drought events in northern Taiwan. In addition, the drought occurrence probabilities were calculated using the Markov chain method.
3. Study Area
In this study, the northern water resource regions listed by the Water Resources Agency of the Ministry of Economic Affairs were selected as the study area. These regions include the following administrative areas: Yilan County, Keelung City, New Taipei City, Taipei City, Taoyuan County, and Hsinchu County. The regions contain five terrain types, namely, plains, hills, highlands, basins, and mountains. Regions featuring plains primarily comprise the Taoyuan alluvial fan, the Hsinchu Plains, and the Eastern Yilan delta; regions containing hills consist of the Keelung Hills and the Zhudong Hills; regions with highlands include the Linkou plateau; regions with basins include the Taipei basin; and regions featuring mountains primarily comprise the northernmost Tatun Mountains and the Central Backbone Range. These regions embody a variety of terrain characteristics; terrains ranging from those less than 100 m in elevation (plains), to less than 500 m in elevation (hills), and to more than 1000 m in elevation (mountains).
Rainfall in the northern regions of Taiwan during the summer and winter seasons primarily comes from typhoons and northeast monsoons, respectively. The northern Taiwan regions receive rainfall all year long. For example, the Yilan region can have up to 350 days of rainfall. The average annual rainfall in the northern regions of Taiwan is 2937 mm, which is higher than that in central, southern, and eastern Taiwan.
The main rivers in the northern Taiwan regions are the Tamsui River, the Lanyang River, the Fengshan River, and the Touqian River, which have drainage basin areas of 2726, 978, 250, and 566 km
2, respectively. The historical overall average annual streamflow is approximately 15.1 × 10
9 m
3, which is lower than those of the central, southern, and eastern regions. Historical data show a significant difference in the Northern Taiwan region streamflow between the dry and wet seasons, where the overall streamflows are approximately 5.62 × 10
9 m
3 and 9.48 × 10
9 m
3 during the dry (November to April) and wet (May to October) seasons, respectively [
53].
Figure 1 shows the distributions of streamflow volumes and precipitation in the northern region. It is shown that the distributions of streamflow and precipitation have similar trends in each month; in months with greater precipitation, there is also an increase in streamflow volume.
Figure 1.
The distributions of streamflow volumes and precipitation in the northern region.
Figure 1.
The distributions of streamflow volumes and precipitation in the northern region.
Yeh
et al. [
33] used the Mann-Kendall test to analyze the streamflow data recorded over 30 years from 12 gauge stations in the northern region, which are not affected by artificial water conservancy facilities, in order to explore the streamflow trend characteristics in the northern region.
Table 2 and
Figure 2 respectively show the details and spatial distribution of these stations. The results showed that only the Ximen bridge station in the Lanyang River basin exhibits a significant downward streamflow trend, with a test value of −3.51.
Figure 2.
Spatial distribution of gauge stations in northern region.
Figure 2.
Spatial distribution of gauge stations in northern region.
Table 2.
Information on gauge stations in northern region.
Table 2.
Information on gauge stations in northern region.
River | Gauging Station | Area (km2) | TMX | TMY | Record Length |
---|
Lanyang River | Niu-Tou | 446.7 | 306,388.4 | 2,726,321 | 1979–2013 |
Chia-Yuang Bridge | 273.5 | 298,984.7 | 2,719,362 | 1974–2012 |
Ximen Bridge | 101.4 | 324,454.8 | 2,739,377 | 1984–2013 |
Tamsui River | Yu-Feng | 335.3 | 279,345.5 | 2,727,961.8 | 1957–2002 |
Leng-Chiad | 107.8 | 288,011.1 | 2,730,327 | 1957–2002 |
Fu-Shan | 160.4 | 298,991.3 | 2,742,949.3 | 1953–2012 |
Xiu-Luan | 115.9 | 278,064.9 | 2,723,555.8 | 1957–2002 |
Gao-Yi | 542.0 | 286,029.3 | 2,734,394.2 | 1957–2002 |
Heng-Chi | 52.9 | 289,452.4 | 2,758,619.3 | 1958–2012 |
Fengshan River | Hsin-Pu | 208.1 | 255,810.3 | 2,746,676 | 1970–2012 |
Touqian River | Nei-Wan | 139.1 | 267,503.3 | 2,733,084 | 1971–2012 |
Shang-Ping | 221.7 | 260,738.5 | 2,729,330 | 1971–2012 |
Figure 3 shows the trend of spatial distribution for each gauge station. They used the Theil-Sen estimator method, and the results showed that the amounts of change in the Tamsui River and Fengshan River basins were lesser than those of the Lanyang River and Touqian River basins, with both less than 17.0%. Among the three gauge stations in the Lanyang River basin, the changes at the Niu-Tou and Ximen bridge stations were significantly greater than that of the Chia-Yuang bridge station; the Niu-Tou station exhibited an increase of 30.3%, and the Ximen bridge station exhibited a decrease of 85.7%. Within the Touqian River basin, the Nei-Wan station exhibited an upward increase of 19.9%, and the Shang-Ping station showed an upward increase of 28.6% (
Table 3).
Table 3.
Information on gauge stations in northern region.
Table 3.
Information on gauge stations in northern region.
River | Gauging Station | Record Length | Mann-Kendall Test Result | Slope Estimator | Relative Change Within the Records |
---|
Lanyang River | Niu-Tou | 1979–2010 | 0.89 | 0.158 | 30.3% |
Chia-Yuang Bridge | 1974–2012 | −0.73 | −0.049 | −9.8% |
Ximen Bridge | 1983–2012 | −3.51
* | −0.294 | −85.7% |
Tamsui River | Yu-Feng | 1957–2002 | −0.04 | −0.004 | −1.0% |
Leng-Chiad | 1957–2002 | 0.83 | 0.002 | 1.3% |
Fu-Shan | 1953–2012 | 1.89 | 0.063 | 16.7% |
Xiu-Luan | 1957–2002 | 0.55 | 0.014 | 10.7% |
Gao-Yi | 1957–2002 | 0.15 | 0.010 | 1.5% |
Heng-Chi | 1958–2012 | 1.02 | 0.010 | 11.2% |
Fengshan River | Hsin-Pu | 1970–2012 | 0.57 | 0.026 | 11.4% |
Touqian River | Nei-Wan | 1971–2012 | 0.93 | 0.047 | 19.9% |
Shang-Ping | 1971–2012 | 1.28 | 0.009 | 28.6% |
Figure 3.
Map showing spatial variation in trends in annual mean flows [
33].
Figure 3.
Map showing spatial variation in trends in annual mean flows [
33].
Table 4 shows the results of the change point test: among the 12 gauge stations within the study area, the change point was detected only at the Ximen bridge station. The change point of the Ximen bridge station occurred in 2001, and the average annual streamflow volumes before and after the change point were 11.8 CMS (cubic meter per second) and 6.6 CMS, respectively; the average annual streamflow volume exhibited a downward trend after 2001, and the magnitude of decrease reached 44.1%, as shown in
Figure 4. According to the data of Hydrological Year Book of Taiwan [
53], the precipitation during 2001 to 2003 was significant decreasing, especially in 2002 and 2003. The precipitation was less than the average precipitation in 2002 and 2003. Due to the decreasing precipitation, the streamflow was not supplied by rainfall which made the streamflow become shortly.
In this study, the Lanyang River basin, which has demonstrated a significant trend, was selected for analysis of drought characteristics. The Niu-Tou station along the Lanyang River mainstream and the Ximen bridge station downstream of the tributary Yilan River were selected as the gauge stations for the study of drought/wet events. The data for Lanyang River and Yilan River sub-basin are shown in
Figure 5.
Table 4.
Change points determined by using the cumulative deviations and Mann-Whiney-Pettitt methods [
33].
Table 4.
Change points determined by using the cumulative deviations and Mann-Whiney-Pettitt methods [33].
River | Gauging Station | Change Points (Year) | Values of (Cumulative Deviations) | Values of
p (Mann-Whiney-Pettitt) | The Annual Mean Flow (CMS) | Relative Change at the Change Point |
---|
Before Change Point | After Change Point |
---|
Lanyang River | Niu-Tou | - | 1.0045 | 0.8640 | - | - | - |
Chia-Yuang Bridge | - | 0.5633 | 0.5493 | - | - | - |
Ximen Bridge | 2001 | 2.0586 | 0.9997 | 11.8 | 6.6 | −44.1% |
Tamsui River | Yu-Feng | - | 0.4505 | 0.3269 | - | - | - |
Leng-Chiad | - | 0.7575 | 0.7285 | - | - | - |
Fu-Shan | - | 0.8910 | 1.0634 | - | - | - |
Xiu-Luan | - | 0.5859 | 0.4132 | - | - | - |
Gao-Yi | - | 0.4496 | 0.3401 | - | - | - |
Heng-Chi | - | 0.8304 | 0.8108 | - | - | - |
Fengshan River | Hsin-Pu | - | 0.6779 | 0.5634 | - | - | - |
Touqian River | Nei-Wan | - | 1.0632 | 0.6614 | - | - | - |
Shang-Ping | - | 0.8907 | 0.7480 | - | - | - |
Figure 4.
The results for the change points at the Ximen Bridge Station [
33].
Figure 4.
The results for the change points at the Ximen Bridge Station [
33].
Figure 5.
Spatial distribution of gauging stations and sub-basins in Lanyang River basin.
Figure 5.
Spatial distribution of gauging stations and sub-basins in Lanyang River basin.