1. Introduction
Drought is one of the most destructive and urgent natural disasters in the world [
1], as it causes insufficient soil moisture and disrupts crop water balance and reduces yield. Among wholly natural disasters, drought is one of the most serious that endangers agriculture and animal husbandry production [
2]. In the context of global warming, the frequency and duration of drought events also show an upward trend. From 1950 to 2008, the frequency of drought events in arid regions around the world increased by about 1.74% every ten years [
3]. Increasingly, facts prove that the impact of drought is extremely extensive and far-reaching [
4]. For example, drought in 2012 caused severe agricultural disasters throughout North America, leading to a sharp increase in food prices [
5]. From 2001 to 2013, the intensity and frequency of droughts in the north-eastern and southern regions of China showed a clear trend of intensification [
6]. In the summer of 2011, a drought in the upper and middle reaches of the Yangtze River in China affected 30 million people and caused
$2.4 billion in damage [
7]. According to statistics, about 80 million people in the world have been threatened by drought since the 1970s, and the number of direct deaths due to drought will exceed 1 million [
8].
Drought has a high frequency, long duration, a wide range of impacts, and causes economic and environmental consequences. For those reasons, much effort has been devoted to developing techniques for drought analysis and monitoring. Most research on the identification and analysis of drought events use the drought index. Drought indices are the most widely used, but subjectivity in defining drought has made it very difficult to establish a unique and universal drought index [
9]. According to the World Meteorological Organization data, there are 55 drought indices that are commonly used [
1], for example, the Standardized Precipitation Evapotranspiration Index (
SPEI), the Standardized Precipitation Index (SPI) and the Palmer Drought Severity Index (PDSI). Vicente Serrano [
10] et al. evaluated the performance of different drought indices and found that the
SPEI and the SPI have excellent performance and are very sensitive to drought events. Liu [
11] et al. used the PDSI, SPI and the
SPEI to evaluate and monitor drought events in the North China Plain. The study found that the SPI and the
SPEI have similar performance in monitoring drought, while the PDSI has obvious lag. Ajaz [
12] et al. developed a new drought index (Soil Moisture Evapotranspiration Index) to monitor and evaluate the impact of drought on agriculture in Oklahoma. This drought index can effectively monitor agricultural drought in Oklahoma. Dutra [
13] et al. used ECMWF Reanalysis—40 years (ERA-40) data to calculate the SPI, PDSI and the Normalized Soil Moisture (NSM) in Iberia. The results found that the NSM can have a good correlation with the SPI and the PDSI, and the NSM can monitor regional drought very well. Pena [
14] et al. used the PDSI, SPEI, and the SPI to assess the impact of drought on tree growth and other conditions. The results found that compared with the PDSI, the SPI, SPEI, etc. have more advantages in monitoring tree growth and estimating net primary productivity. Wei [
15] et al. used weather station data to calculate the PDSI, the Precipitation Anomaly (PA), and the Surface Wetness Index (SWI) in the northeast and analysed the relationship and differences between the three. The study found that the
SPEI can accurately describe the nature and intensity of drought. Most of these drought indexes are only based on rainfall data, because drought is directly caused by insufficient rainfall, and rainfall data is easier to obtain and process than other data [
16]. However, it also has been reported that many droughts are caused by reduced rainfall and other factors that affect water balance conditions. The drought index also has certain drawbacks. For example, the PDSI index does not consider the impact of human activities on the water balance, and there are many input data, which are difficult to obtain [
3]. The SPI has a strong simulation dependence on precipitation data and its probability distribution, which can easily cause misjudgement of drought conditions [
17]. Studies have found that using precipitation alone to measure regional drought conditions is not appropriate. Drought will first affect the agricultural sector, and soil moisture is more important than precipitation for agricultural drought. Sufficient soil moisture is necessary for crops to grow in different periods [
18], and soil moisture governs the size and change of water and energy flux at the landing site-atmosphere interface, and controls plant growth and biology. Crop production is severely affected by soil moisture [
19]; accurate soil moisture data is, therefore, vital for monitoring and forecasting agricultural drought.
At present, there are three main methods for acquiring soil moisture data: site observation, remote sensing satellite observation, and model simulation methods. Early forms of obtaining soil moisture are mainly observed through site data [
20,
21,
22,
23,
24]. The soil moisture data followed by the site data can be considered accurate and widely used in studying drought events. However, monitoring stations cannot provide long-term series of large-scale soil moisture data currently, and the distribution of soil moisture monitoring stations in China is uneven. The number of stations in southwest China is significantly less than in the northeast, Huaihe, and other regions [
20]. Satellite remote sensing technology itself has the advantage of large-scale simultaneous observation. With the continuous development of remote sensing satellite technology in the past 20 years, related research based on remote sensing observation of soil moisture has gradually increased [
25,
26,
27,
28]. Remote sensing satellite technology can obtain large-scale soil moisture data sets. A multi-band, multi-temporal, and multi-polarized soil moisture observation mode has been formed [
29]. However, the current remote sensing technology can only obtain the soil moisture in the shallow soil layer (1–5 cm) [
26]. In recent years, soil moisture models have developed rapidly. The model can combine the advantages of remote sensing data with site data. The soil moisture data achieved through the model has large-scale, long-term, temporal, and spatial consistency [
30]. In drought research, soil moisture data calculated by the model has also been widely used [
31,
32,
33,
34,
35].
In the past ten years, tremendous drought disasters have repeatedly occurred in southwest China. Frequent drought disasters have caused enormous economic losses in the southwest China region and even threatened the safety of the drinking water supply. Many scholars have carried out research. Feng et al. used precipitation data from stations in southwest China and data from the National Environmental Forecast Center to establish a drought detection equation and analysed the causes of drought events in southwest China [
36]. Wang et al. calculated the relative humidity index (M) using data from weather stations in southwest China. They used the relative humidity index as an indicator to reflect the evolution characteristics of seasonal drought in southwest China from the perspective of the frequency and intensity of drought [
37]. Zhang et al. and others used the Drought Stress Index (DSI) retrieved by the Moderate Resolution Imaging Spectrometer (MODIS) to monitor the duration, intensity, and spatial resolution of extreme droughts in southwest China from 2009 to 2010. The results show that southwest China experienced severe drought from November 2019 to March 2010, and the affected area of crops accounted for 74% of the total area of the study area [
38]. Li et al. and others established a remote sensing monitoring and evaluation method for the drought and its impact in southwest China in the spring of 2010 using the multispectral and thermal infrared data of domestic environmental disaster mitigation stars and the US medium-resolution MODIS [
39]. By calculating the Vegetation Condition Index (VCI) and Temperature Condition Index (TCI), indices that characterize the drought, and through the linear combination model of these two indices, it accurately reflects the comprehensive information such as the range of the drought occurrence area and the degree of drought. Yi et al. used Gravity Recovery and Climate Experiment Follow-On (GRACE-FO) gravity satellite data and GLDAS hydrological model data to study the temporal and spatial changes of water reserves in southwest China and combined precipitation data for analysis [
40].
In the study of drought events in southwest China, soil moisture data mainly come from site observation and satellite remote sensing measurement. Research on drought events in southwest China using soil moisture data obtained through model simulations is relatively rare. The Global Land Data Assimilation System (GLDAS) publishes a global 25 km soil moisture datasets widely used in drought research world-widely. Therefore, this study selected the 25 km monthly soil moisture datasets (0–10 cm) published by GLDAS-Noah as the basis for studying drought in southwest China. The purpose of this experiment is to analyse the potential of GLDAS soil moisture data to identify and characterize drought events with spatio-temporal continuous data (southwest China). We used SSMI to monitor drought in southwest China. The SSMI can measure the severity of global agricultural drought events. The structures of this paper are as follows: In the second part, the work introduces the data used in the research and the calculation process of SSMI. In the third part, we used soil moisture data and the SSMI to study drought events throughout southwest China and we compared the SPEI, PDSI, and the SSMI for drought monitoring in southwest China. The fourth part discusses our research. The final section provides a summary.
4. Discussion
This work calculated the SSMI drought index by GLDAS root zone soil moisture data to monitor the development process, frequency, and intensity of agricultural drought in southwest China from 2000 to 2020. The main purpose of this work is to monitor agricultural drought in the past 20 years and verify that the GLDAS soil moisture data can be applied to the monitoring of drought in small areas. Compared with previous studies on drought in southwest China, the novelty of this paper is that we used soil moisture data from a land surface model and calculated a new agricultural drought index SSMI. We quantitatively evaluated China based on the SSMI results showing the intensity and duration of drought in various regions of southwest China and the temporal and spatial changes of drought. By comparing the changes of different types of droughts in different regions in different months, we revealed the seasonal characteristics of droughts in various regions of southwest China. Finally, the article compared the results of the SSMI, SPEI and PDSI indices and combined the government and related literature records for verification. We found that the SSMI, SPEI and PDSI could capture the historical drought in the southwest China. However, the SSMI was more sensitive to drought monitoring and could describe the occurrence and changes more accurately. Based on the quantitative assessment of the SSMI on drought in southwest China, we can carry out specific work on the prevention of future drought. For example, our research found that Yunnan Province has been prone to drought in spring and winter for the past 20 years; therefore, before the winter and spring seasons come, specific drought prevention can be carried out through water conservancy projects. These works are the new finding with the help of SSMI.
Our research also has certain deficiencies and limitations. First, the spatial resolution of the soil moisture data used to calculate the drought index is low, making it difficult to accurately monitor the details of the drought development process and bring about the precise quantitative evaluation of drought. Although the calculation of the agricultural drought index SSMI is simple, it is a single element (soil moisture) drought index, which is only suitable for monitoring agricultural drought. As only soil moisture is used for calculation, SSMI cannot reflect the multi-scale characteristics of drought events, which will cause specific errors in the results of drought monitoring. Simultaneously, SSMI requires long-term and continuous spatiotemporal soil moisture data. If the regional soil moisture data is missing or the period is too short, this will lead to apparent deviations in the SSMI results, because the SSMI - monitors drought by calculating the degree of deviation of soil moisture. Therefore, the SSMI is not suitable for the situation of missing regional soil data and short time series.
Drought events have occurred frequently in southwest China in the past 20 years. Many studies have pointed out that the increase in the frequency and intensity of drought may be caused by climate change and related human activities [
38]. Global warming has caused abnormal atmospheric circulation and increased surface temperature, which has led to a decrease in regional rainfall and an increase in ground evapotranspiration, which has led to frequent droughts [
1]. Frequent human activities have led to increased water demand, and unreasonable logging has exacerbated drought development [
80]. The frequent occurrence of drought events will cause the loss of grain production and even threaten the safety of the drinking water supply. Therefore, further analysis of the mechanism of drought and improvement of the accuracy of monitoring for the early warning signs of drought are the next focus. This work used the soil moisture obtained by the land surface process model to study the drought in the southwestern region and confirmed the feasibility of the land surface process model to obtain soil moisture data for the study of drought in small areas. Through the quantitative research on the severity, duration and frequency of drought, the occurrence of past drought can be studied in detail. For the next step, we will study the mechanism of drought events in southwest China in conjunction with the land surface process model. Combined with the relevant results of drought severity-duration-frequency occurrence, the relevant quantitative indicators for future drought monitoring and prediction are set.