1. Introduction
Drought is the main natural disaster that causes global grain production reduction. It also causes ecological disasters such as forest fires and vegetation degradation, as well as basic livelihood problems such as water storage for people in ecologically fragile areas. What’s more, it has caused millions of deaths throughout human history [
1]. Human activities’ impact on the global climate has resulted in an increase in severe drought events, and changes in climatic parameters are expected to escalate the severity of droughts. Being influenced by climate change, it is projected that the severity, duration, and affected area of drought may increase continuously in the future [
2,
3].
Droughts are generalized water deficit phenomenon that can be characterized quantitatively by different indices. Reasonably, the precipitation anomaly percentage (Pa) (Henry, 1906) [
4] was initiated and used widely to assess the degree of drought for several decades. After the Standardized Precipitation Index (SPI) was developed by McKee et al. [
5], it was demonstrated to be suitable for drought comparison at different spatial and temporal scales. In addition to precipitation factors, temperature, evapotranspiration, vegetation, soil moisture, etc., are also significant factors reflecting drought. Thus, drought indices considering multiple factors were developed one after another, such as Relative Moisture Index (MI) [
6], Palmer Drought Severity Index (PDSI) [
7], Standard Precipitation Evapotranspiration Index (SPEI) [
8], Multivariate Standard Drought Index (MSDI) [
9]. With the development of remote sensing technology, drought indices based on remotely sensed data are mushrooming [
10,
11]. These drought indices have been developed for drought monitoring throughout the world or regions [
12,
13]. However, the applicability of the indices varies across regions for reflecting the real drought impact [
14]. Therefore, it is necessary to assess drought events for one designated study area based on the optimal drought index, which shows a higher link with actual drought impact [
15].
To a certain extent, the drought index only reflects the severity of the drought. To properly evaluate or compare any changes in drought events, additional characteristics of droughts are required. Due to the need to incorporate these characteristics into any modeling, an analysis based on drought frequency alone is not enough if it is not quantitatively related to other information such as duration, severity, and areal extent [
16]. Assessing the risk of drought events by integrating different drought characteristics is relevant. The Copula joint probability function can establish a dependence model for multidimensional random variables and is widely used in the study of multidimensional drought characteristics. Due to the dynamic nature of the spatial and temporal evolution of drought impact areas, previous research often used the run theory to identify the drought duration and severity at the site scale and then conducted bivariate drought return period analysis using the Copula [
17,
18,
19]. Although site-based drought return period analysis can provide useful local information, these results seem to embed with high uncertainty in drought management or drought risk assessment in a wide area. During the development progress for one drought event, the timing and location of the drought both influence its consequences. Droughts are considered regional when the spatial extent exceeds a certain threshold [
20], so it is crucial to include the affected area of drought with duration and severity in the drought risk studies [
21,
22,
23].
Droughts can occur in both arid and humid areas across the world. Despite being located in the humid climate zone, the region of Southwest China has frequently been hit by exceptional and sustained droughts in recent years, with the summer of 2006, the autumn of 2009 to the spring of 2010, the summer of 2011, and the winter of 2019 to the spring of 2020 [
24,
25,
26]. As one of the five regions that make up Southwest China, Yunnan Province (YP) suffered from frequent and the most severe drought disaster since 2006 [
22,
27,
28]. The drought disaster record in YP indicated that the crop area affected by droughts reached a total of 308,349 km
2 during 1972–2020 [
26]. Wang and Yuan [
29] indicate that anthropogenic climate change increased the risk of hot and dry extremes in 2019 over YP by 123–157% and 13–23%, respectively. Many researchers have paid attention to the drought evolution in YP. For instance, Li et al. [
30] analyzed the drought trend and drought coverage area at various timescales over YP, and the results showed that droughts in YP occurred frequently, and the change point was detected in 2002. Wang et al. [
31] used Copulas to analyze the joint return period of drought events by considering two-dimensional drought characteristics: duration and severity. Due to the impact of climate change, extreme events occur frequently in different regions, and it is particularly important to combine multiple characteristics to evaluate the extremity of drought events. However, the joint return period of three-dimensional drought characteristics that include the drought duration, severity, and affected area has been few explorations in YP.
Therefore, this study addresses the spatiotemporal variations of drought duration, severity, and affected areas, using the regional drought characteristics extraction method, and discusses the drought extremeness of YP based on the return periods analysis. The objectives of this study are (1) to select the optimal drought index for the assessment of drought events in YP, (2) to identify the spatiotemporal characteristics of drought events and verify by the actual records of drought events, and (3) to discuss the joint return periods of droughts using Copulas, as well as the differences of return period combining drought characteristics in different dimensions.
3. Results
3.1. Optimal Drought Index Selection
The rank correlation coefficients between drought indices and drought impact data in 16 cities of YP are shown in
Figure 4. It can be seen that SPI, SPEI, Pa, MI, and VSWI drought indices show a negative correlation with drought impact data, and CDD shows a positive relationship. This phenomenon is consistent in 13 out of 16 cities in YP, while the three cities of Nujiang, Dehong, and Xishuangbanna are not consistent. The topography of YP is complex, with an area of 1000–3500 m accounting for more than 90% of the total area, showing large change in elevation. For example, the area of Nujiang with elevation above 2000–3500 m accounts for ~66% (weaker correlation results shown in Nujiang), and the area of Baoshan with elevation below 2000 m accounts for ~66% (higher correlation results shown in Baoshan); agricultural drought in high altitude areas is not easily assessed by drought index. The proverb says that the weather varies within 10 miles of YP, which is the main result of topographic influence, and coupled with the different drought resistance for different cities, synthetically leading to different drought impacts in adjacent cities even under the influence of the same drought degree.
It is worth noting that for drought indices at longer time scales such as SPI, SPEI indices at 3-, 6-, and 12-month time scales, and VSWI, their negative correlation with drought impact data is more significant with the time scale increasing. While for the drought impact data of CA_ED and WMA_P, the VSWI shows a weaker correlation in the 16 cities compared with SPI and SPEI. For drought indices at shorter time scales, such as SPI and SPEI at a one-month time scale, CDD, Pa, and MI indices, the correlations are weaker, which indicates that using the current month drought index does not fully reflect the actual cumulative damage effect by drought. Although a remotely sensed-based drought index VSWI could indicate a drought situation at a relatively high spatial resolution, sometimes the lower values of VSWI are usually not only affected by drought but may also be affected by a combination of other factors, such as pest disease, forest fire, and human logging. Moreover, the remotely sensed data still have the problem of missing data due to the weather; this will result in drought events not being fully identified.
Based on the coefficient of variation (Cv) of the rank correlation coefficients for 16 cities (
Table 5), we could see that the absolute Cv values of SPI and SPEI indices at a 6-month time scale (SPI6 and SPEI6) for different drought impact data are smaller than other drought indices, especially for the drought impact of CA_ED, CA_SD, P_D, and WMA_P (the Cv values are −0.53, −0.54, −0.48, −0.84, and −0.55, −0.55, −0.48, −0.75, respectively), indicating that SPI6 and SPEI6 can generally reflect the drought spatial distribution in YP. We initially suggested to select SPI6 or SPEI6 as the appropriate index to assess the drought situations in YP. Considering that the SPI index has only precipitation data as input, while the SPEI index takes into account the effect of temperature. Therefore, the following study will analyze the drought return period based on SPEI6.
3.2. Drought Events and Drought Characteristics in YP
Based on the method in
Section 2.3.2, we extracted 41 drought events in YP during 1961–2020 (
Table A1). Averagely, a drought event in YP generally lasts 5 months; cumulative
S is almost 4.2,
A is about 60% of the total stations, and drought starts mostly in February or December and ceases in March (
Figure 5d). Since the turning point of climate change in China is thought to have occurred around 1990 [
44], we compared the difference of drought characteristics before and after No. 20 drought event (~the year of 1990). Before 1990, the average
D of drought in YP was 4 months, with an average
S of 2.7 and an average
A of 59%; while after 1990, the average
D increased to 6 months, the average
S increased to 5.6, and the average
A was 61% (
Figure 5a–c), this is main caused by the drought No. 35 and No. 36, which shows higher
D and
S than other events. However, the affected areas of these two droughts do not stand out among other events. This well illustrates the multidimensional spatiotemporal nature of drought events. Therefore, in order to facilitate comparison and assessment of the extremeness of a drought event among multiple events, it is necessary to analyze a drought event by jointing different drought characteristics.
3.3. Optimal Marginal Distribution and Joint Distribution for Different Drought Characteristics
The statistical results of the K–S test of marginal distributions for drought characteristics
D,
S, and
A are shown in
Table 6. We can see that the marginal distribution to fit the one-dimensional drought characteristic was not unique, so the optimal distribution based on the minimum statistical value of K–S (D) was selected. The optimal marginal distributions for
D,
S, and
A in YP were WBL, LOGN, and LOGN, respectively (
Table 6).
For the joint distribution of multidimensional drought characteristics, the statistical results are shown in
Table 7. Based on the minimum statistical values of AIC and BIC, the optimal joint distributions for
D and
S,
D and
A,
S and
A, and
D and
S and
A in YP were Frank, Frank, Gumbel-Hougaard, and Frank Copula, respectively (
Table 7).
3.4. Return Period of Drought Events in YP
According to the optimal distribution for different dimensional drought characteristics (
Table 6 and
Table 7) and Equations (6)–(8), we calculated the return periods (RP) for the 41 drought events. We can see that from
Figure 6, although the fluctuation of RP assessed by one-dimensional drought characteristics is consistent with those assessed by three-dimensional characteristics, the results based on
D are different from those based on
S or
A, and the assessment results for specific events are significantly different. For drought events with relatively small RPs, the assessment results based on three-dimensional drought characteristics are similar to those considering only one-dimensional characteristics. For example, the four drought events (No. 12–15) that occurred during 1982–1985, which lasted 1–3 months, with severity between 0.52 and 1.82, and affected areas less than 60%, all of which were lower than the average drought characteristics of YP.
Since the significant correlation between D and S, the drought RPs assessed based on D or S are very close, but the results of RPs based on A differ significantly from D or S. For example, the No. 4 (March 1969–July 1969) drought event’s RP assessed only by A was 117 yr, while the RPs of these two drought events of No. 35 (May 2009–November 2010) and No. 36 (July 2011–November 2013) were only 19 yr and 27 yr. However, the actual impacts of the latter two drought events were more severe according to the relevant records of the China Water and Drought Disaster Bulletin. As for extreme drought events, only using one-dimensional drought characteristics to assess the RP has a large discrepancy for each other; and for the common drought events, the RP based on three-dimensional characteristics was larger than those based on one-dimensional. This indicates that there is an overestimation or underestimation of the extremeness of a drought event if the characteristics are not fully considered.
When considering a combination of two drought characteristics to assess the RP for a given drought, we found that the assessment results were more consistent with the results by considering three-dimensional drought characteristics for the drought events where the magnitude of drought characteristics was small (
Figure 7). For example, the RPs assessed by two-dimensional drought characteristics for the No. 11 to No. 25 drought events were more consistent with the results assessed by three-dimensional characteristics, but there were still differences for certain drought events with larger drought features. The No. 4 drought event lasted for 5 months, with a severity of 5.78 and a drought-affected area of 82.77%. The RP of this event was 7 yr assessed based on the combination of
D and
S, but after considering the drought-affected area, the RPs based on
D and
A, and
S and
A were assessed to be 119 yr.
Similarly, the D, S, and A of the No. 40 drought event (April 2019–March 2020) were 12 months, 13.06, and 75.91%. Although A was smaller than the No. 4 drought event, it was larger in D, and S. The RP assessed by D and S was 32 yr, while the RPs assessed by D and A, and S and A was 101 yr and 49 yr, respectively, which were larger than the RP assessed by D and S and A. This suggested that drought characteristic A was an important factor for assessing the extremeness of one drought event since it is associated with the impact degree of drought disaster, such as cropland areas affected by different severity of drought, population with drinking water difficulties due to drought. As we can see that when we combined other drought characteristics with variable A, the RP assessed by two-dimensional characteristics for the 41 drought events was most consistent with RP assessed by three-dimensional characteristics, especially for the common drought events (No. 11–25). The RP assessed by D and A were all higher than RP assessed by three-dimensional characteristics. If RP assessed by D and S or D and A was used to assess the extremeness of the No. 36 drought event, the result was higher than 1000 yr; it might be overestimated since the A was the same as the event of No. 35.
The above joint RP analysis indicates that extreme drought events do not imply that all features are large in magnitude; it is possible that they are the combined result of multiple features with different magnitudes. The identified drought events also show that it is rare for different drought characteristics to reach the maximum magnitude at the same time. In a word, a comprehensive assessment of the extremeness of a drought event using the joint RP based on spatial and temporal multidimensional characteristics is more reasonable.
3.5. Case Validation
In order to prove the credibility of the RP assessed by three-dimensional drought characteristics, we verified the results based on the actual drought-affected area, grain loss rate, and the textual description of the drought events in YP.
The change of RPs was consistent with the grain loss rate, and the correlation coefficient was 0.74, which indicates that RP could reflect the real damage caused by droughts, especially by the extreme drought in 2009–2010, 2011–2013, and 2019–2020 (
Figure A1). There were night years the crop area affected by drought exceeded 1 million hectares since 1961, which were all reflected in the theoretical drought events extracted in this study (
Table 8). With the exception of the drought event in 2005, for which the RP was less than 10 yr, the RPs of all other high-impact drought events were greater than 10 yr, and the actual textual description of drought events is also consistent with the expression of RP size.
For the three drought events (No. 4, 35, 36) with more controversial RP results (in
Figure 6 and
Figure 7), No. 4 was recorded as few major drought spells since 1949; it was more reasonable to assess this event with RP of 40 yr rather than 10 yr or 100 yr (RPs assessed by one- or two-dimensional characters).
The No. 35 drought occurred during 2009–2010 and was recorded as the most harmful extreme drought since meteorological records began. Not only did the textual material show how serious this drought was at that time, but the research published afterward may also indicate the severity of the drought’s impact on society. The ratio of actual drought-affected area to total sown area was 44%, which were highest during 1972–2020. Therefore, the RP of 96 yr was reasonable to describe the extremeness of this drought event.
The No. 36 drought extracted from this study showed that the drought event lasted for nearly three years (July 2011–November 2013). The actual drought process had interruptions during the three years, so the final impact extent was not as severe as the drought in 2010, but the actual drought-affected area exceeded 1 million hectares each year, which indicates the cumulative damage effect formed by the three-year drought. Similar to the drought in 2009–2010, the RP of No. 36 drought in 2011–2013 should also be on the century scale rather than the millennium scale.