Abstract
Increasingly extreme temperature events under global warming can have considerable impacts on sectors such as industrial activities, health, and transportation, suggesting that risk for these kinds of events under climate change and its regional sensitivity should be reassessed. In this study, the observation and multi-model simulations from CMIP6 are comprehensively used to explore the regional differences of the extreme temperature response to climate change from the perspective of return period (RP). The Gumbel model of generalized extremum distribution is applied to estimate the RP for the annual extremum of temperature based on Gaussian distribution of daily temperature. The analysis on the observation in selected three sites indicates that the regional inconsistency of RP variation is not only existed in extreme high temperature (HTx) but also in low temperature (LTn) during the past several decades. The annual amplitude of temperature extremum in the Northeast China is enlarged with summer becoming hotter and winter becoming colder while the opposite situation is detected in Huang-Huai River Basin with cooler summer and relatively stable winter, and South China is characterized by hotter summer and slight warmer winter. From the spatial distribution of the HTx and LTn variations of fix RP, it is found that the Northeast China and Jiang-Huai River Basin is the most sensitive areas, respectively, in the response of extreme low temperature and high temperature to global warming. However, the regional inconsistency of the extreme temperature change is only observed under SSP1-2.6 scenario in the CMIP6 simulation but gradually disappeared from SSP2-4.5 to SSP5-8.5.
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1 Introduction
Warm and cold extremes have been frequently occurred during recent several decades under global warming [4, 15, 23, 28, 32, 40]. Numerous disasters caused by these extreme climate or weather events have been exerting profound influences on the economy, human lives and environmental sustainability, thereby arousing worldwide public awareness and scientific concern [6, 16, 20, 21, 25, 32]. Intuitively, the warming climate could lead to a rise of extreme high temperature events and reduction of the opposite extremes. Both the winter extreme cold events and summer heatwave cases, however, have been increased in the recent two decades [15, 28, 40], implying that the amplitude of the annual extreme temperature is enlarged under the context of global warming. Furthermore, it is found that the asymmetry or inconsistency is not only observed in the seasonal variation of temperature but also existed in its spatial distribution [1, 23, 28], which means that the evolution of the extreme temperature events is very complicated under the comprehensive influences of multiple factors, and therefore, risk assessment based on these kinds of climate events should be reconsidered under climate change.
The return period (RP) or recurrence interval of extreme events refers to the average interval time that is greater than or equal to a certain threshold defined as the reciprocal of the occurrence frequency. Generally, the occurrence probability of extreme events is small but always initiate disasters, so the recurrence period is extensively applied as a design basis in engineering to estimate the potential risk of extreme events [11, 14, 24]. Meanwhile, understanding and predicting extreme events occurrence in the future is helpful for disaster prevention, mitigation measures and risk management. As the occurrence frequency of extreme events has been exhibiting an upward trend and causing increasing loss of economy in recent years, much attention has been paid to focus the potential risk reassessment of extreme events [18, 19, 31, 34]. Therefore, it is crucial to precisely quantify the recurrence interval of the extreme event, which is commonly calculated from the historical data but is comparable to or longer than the available record. Previous related work mostly focused the hydrological extreme events due to its severe impact on economy and human lives, and its RP is critically considered in water resources management [2, 9, 24, 27, 29, 34]. However, the natural disasters are generally a multivariate process instead of one single element event, which means that its occurrence probability should be comprehensively described by a multivariate analysis of various contributed variables [14, 24, 27]. Additionally, the stationary assumption of extreme events to estimate return period and risk may be problematic due to climate change [7, 8, 13, 26, 29, 33, 38], so the temporally changing environment should be explicitly taken into consideration. For many industrial activities, estimation of extreme events in terms of a return level in a non-stationary context becomes necessary. Anthropogenic influence is estimated to prolong the occurrence interval of extreme low temperature events but substantially shorten the RP of extreme high temperature events [17, 42]. Nevertheless, significant regional differences in the changes of extreme temperature events especially the cold events have been detected [4], implying that the reactions of the extreme temperature events in different regions to climate change cannot be considered as a whole. Taking the above into consideration, it is of significance and necessary to further explore the responses of the extreme temperature events and estimate its risk under climate change from the perspective of the recurrence period.
Since the Coupled Model Intercomparison Project in Phase 6 (CMIP6) results are available, the extreme temperature events are widely evaluated and projected based on the multi-model simulations but most work focus on the change of climate extreme indices by the ETCCDI [3, 12, 22, 36]. In this study, we aim to draw a risk map of extreme temperature events under climate change by estimating and comparing annual extreme high and low temperature values based on return level. The rest of the paper is organized as follows. Section 2 describes the data and method. The RP change of the extreme temperature events based on observation is discussed in Sect. 3 and its projection under different scenarios from CMIP6 results is presented in Sect. 4. A summary and discussion are provided in Sect. 5.
2 Data and method
2.1 Data
Two datasets used in this paper are as follows:
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1.
The daily maximum (Tx) and minimum temperature (Tn) in 724 meteorological sites of China with time spanning from 1951 to 2010 are from National Climate Center of China [39]. The 724 sites are spatially distributed in Fig. 1 with black dots. Three selected typical stations of Shuangliao, Kaifeng and Guangzhou, respectively, representing for the North, Center and South of Eastern China are marked with red.
-
2.
The simulated daily maximum and minimum temperature from 2015 to 2100 under different scenarios of SSP1-2.6, SSP2-4.5, SSP3-7.0 and SSP5-8.5 are derived from CMIP6 results. Based on the performance of model in simulating the indices of extreme climate [12, 37, 41], 10 models, which show good adaptability to China climate, are selected and listed in Table 1.
2.2 Method
The RP is commonly calculated by the following formula with the annual maximum value of the specific variable:
where T and P are the RP and exceedance probability, respectively, and F(x) is the cumulative distribution function for the annual extremum of the specific variable. In this study, the annual highest value of daily maximum temperature (HTx) and the lowest value of daily minimum temperature (LTn) are considered for calculating the RP of the extreme temperature. Generally, the generalized extreme value (GEV) model is applied to estimate the probabilities of extreme events (e.g., [12, 35, 36]). The Gumbel model is one simplified form of the GEV that could be used to discuss the extremes of Gauss-distribution variables such as temperature [5, 10, 30]. As the original daily temperature is distributed as Gauss model, the annual extremum of temperature could be fitted with the Gumbel distribution, in which the probability F(x) and probability density function f(x) are listed as follows:
where the x is the random variable of HTx or LTn; \(\alpha\) is the scale parameter and b is the mode of distribution density; both are dependent on the sample distribution.
Meanwhile, as the resolutions of the selected 10 models are different, bilinear interpolation method is used in this study.
3 Results from the observations
3.1 The examination of RP for the three typical stations
The probability density function (PDF) is used to understand the distribution of the Tx and Tn. It should be noted that the raw data is first normalized based on each specific calendar day, and then normalized by all adjacent days. The PDF distributions of the Tx and Tn in the three selected stations accord with Gaussian distribution (Fig. 2), suggesting that the HTx and LTn samples could be fitted with the Gumbel model of the generalized extremum distribution.
To examine the return level under climate change and assure the data sample is effective, two periods are selected: 1951–1990 (P1) and 1971–2010 (P2), which means the same period of 1971–1990 are mutually included in two samples. The fitting Gumbel distribution for three selected stations in two periods is presented in Fig. 3. Obviously, the distribution of HTx in Shuangliao shows slight difference in the two periods, indicating that the extreme high temperature remains stable during the last 60 years. However, the distribution in Kaifeng during the P2 shows a significantly leftward shift comparing to the P1. This suggests that the frequency of extreme high temperature in P2 is obviously lower than that in P1. Meanwhile, the distribution in Guangzhou is opposite to that in Kaifeng with the PDF peak in P2 is somewhat rightward shift in respect to P1, implying the frequency of extreme high temperature in P2 stage is increased in contrast with P1. Thus, the regional difference in the distribution of HTx is significant in the two periods. Particularly, the HTx variation in central region of Eastern China exhibits its unique decline feature.
Different from the HTx, the distribution variation in LTn shows consistent among three stations with the PDF peak during P2 moving rightward in respect to P1 (Fig. 3). It means that the upward trend is dominant in the frequency variation of the extreme low temperature in all regions of Eastern China, which is in accordance with the global warming background.
Based on the fitting distribution of HTx and LTn with Gumbel model, the temperature extremum corresponding to the RPs from 5 to 200 years, respectively, derived from samples of two periods are analyzed as shown in Fig. 4. Compared to the P1, the higher HTx values are found during P2 in Shuangliao and Guangzhou. As the annual highest temperature absolutely occurs in summer season, the summer climate of the two stations in P2 is hotter than P1. The situation in Kaifeng is opposite with the green curve positioning below the black one, signifying that the HTx corresponding to specific RP derived from P2 is lower than that during P1 and the summer climate of this site is cooler than before. According to the LTn, the case in Shuangliao is significantly different from the other two stations. The LTn corresponding to specific RP in Shuangliao in P2 is obviously lower than that in P1 while little differences can be observed in the other two stations. Therefore, the regional inconsistency is not only detected in HTx change but also in LTn variation during the past several decades.
As above mentioned, the typical station in central and north region of the Eastern China exhibits the unique feature, respectively, in the extreme high and low temperature variation. Since the HTx (LTn) occurs in summer (winter), the annual amplitude of extreme temperature is enlarged in the Northeast China. It suggests that hotter summer and colder winter frequently occurred over Northeast China in the past several decades. The opposite situation is detected in Huang-Huai River Basin with cooler summer and relatively stable winter, and the South China is characterized by hotter summer and slightly warmer winter.
3.2 The RP changes over China
Figure 5 shows the spatial difference distributions of the HTx and LTn between two periods corresponding to the RP of 20, 50,100 and 200 years, respectively. The increase (decrease) in the high temperature extremum of the specific RP from P1 to P2 means the summer becoming hotter (cooler) under climate change. Apparently, three regions with negative value are indicated in Fig. 5 as Huang-Huai River Basin, Southwest China and Western Xinjiang, where the extreme summer high temperature has dropped in the past several decades. Especially, the Huang-Huai River Basin, at where the Kaifeng site locates, exhibits the most significant change among the three regions. Except for that, the rest of China are consistently dominated by positive values. The magnitude has increased with the latitude, indicating a severe heating in Northern China in summer. For the LTn, it is mostly covered by positive values except for the part region of northeast China and several small regions east to the Plateau. The significant positive areas are located at the Huang-Huai River Basin and northwest China. As the rise (drop) of the low temperature extremum of the specific RP from P1 to P2 means the winter becoming warmer (colder) under climate change, the majority in China is characterized by the warming winter. The notable negative area is located at the northeast China, where extreme cold events frequently have occurred after 2000, also signifying the inconsistency of the low temperature extremum change in China under the global warming.
4 Projection from CMIP6 simulation under different scenarios
The similar analysis has been performed on the CMIP6 results under different scenarios. As the time of CMIP6 simulation spans from 2015 to 2100, three sub-periods are divided: 2021–2060, 2041–2080, 2061–2100 marked as P3, P4 and P5, respectively. Figure 6 shows the multi-model ensemble mean of HTx changes with RP under different scenarios for the three typical stations. As the grids of models might not be accurately located at the three observed sites, we interpolate the values of neighboring grids into the observed sites after calculating the extreme temperature value of return level in the original model grids. Notice that under the SSP1-2.6 scenario, the HTx in Kaifeng gradually increases from P3 to P5 with larger distance between P5 and P4 but smaller gap between P4 and P3, while in Shuangliao and Guangzhou the difference of HTx between P5 and P4 can be negligible but significant between P4 and P3. The inconsistency also be observed in the HTx change under the scenario of SSP2-4.5. The rise of HTx in Shuangliao from P3 to P4 is far lower than that in the other two stations. Nevertheless, the HTx of three sites under SSP3-7.0 and SSP5-8.5 are characterized by consistently increasing from P3 to P5.
The spatial difference distribution of HTx corresponding to RP of 50 years between two periods under different scenario is demonstrated in Fig. 7. As aforementioned, it should be noted that as the resolutions of the selected 10 models are different and interpolation of extreme values may cause data distortion, we calculate temperature extremum of return level and its difference between two periods based on original data for each grid individually and then bilinearly interpolate the results into the same standard grid of 1° (Longitude) × 1° (latitude) for obtaining ensemble mean. From Fig. 7a under SSP1-2.6, the positive difference between P4 and P3 with magnitude below 0.5 °C dominates the majority of China except for the northern region of Heilongjiang province, signifying that the summer in the mid-period of the next century will be hotter than the present. But the upward trend will not last to the late period as shown in Fig. 7b. More negative difference areas between P5 and P3 can be observed. Taking the same symbol ratio of models into consideration, the uncertainty and inconsistency of the HTx change under this scenario are significant. However, under the other three scenarios from SSP2-4.5 to SSP5-8.5 (Fig. 7c–h), the positive difference areas cover all over the China and the magnitude increase with time and emission intensity, indicating that the inconsistency and uncertainty of HTx change are significantly declined from SSP1-2.6 to SSP5-8.5.
As to the LTn as demonstrated in Figs. 8 and 9, the similar variation as the HTx in Figs. 6 and 7 is observed, namely, the inconsistency is only found under the SSP1-2.6 scenario while it is disappeared from SSP2-4.5 to SSP5-8.5. Meanwhile, the LTn change in eastern China is more sensitive than that in western China.
5 Conclusion and discussion
In this study, the observation in the past several decades and simulation from CMIP6 under different scenarios are used to comprehensively explore the changes of the extreme temperature under climate change from the angle of RP and risk assessment. The Gumbel model of generalized extremum distribution is introduced to estimate the RP for the annual extremum of temperature. The analysis on the observed data in three selected sites indicates that the regional inconsistency of RP variation is not only detected in HTx but also in LTn during the past several decades. The annual amplitude of extreme temperature in Northeast China is enlarged with summer becoming hotter and winter becoming colder while the different situation is detected in Huang-Huai River Basin with cooler summer and relatively stable winter, and South China is characterized by hotter summer and slight warmer winter. From the spatial distribution of the HTx and LTn variations of fix RP, it is found that the Northeast China and Jianghui River Basin is the most sensitive areas, respectively, in the response of extreme low temperature and high temperature to global warming. However, the inconsistency of the extreme temperature change is only observed in the CMIP6 simulation under SSP1-2.6 scenario but disappeared from SSP2-4.5 to SSP5-8.5. Above analysis indicate that risk of extreme temperature events is increased under the global warming but the regional inconsistency should be considered to some extent.
The risk change of extreme temperature events under climate change is estimated only based on temperature in this study. As aforementioned, the natural disaster is a multivariate process which is comprehensively affected by different elements. For example, the summer heatwave is always accompanied with the drought while the extreme cold events in winter occurs involving in snowfall or frozen rain process. The risk estimate or assessment for the extreme temperature events should be taken more elements into consideration instead of one variable. Moreover, the non-stationary series need to be considered due to the warming background. Additionally, the response of the RP of extreme temperature to climate change is anlyzed but its mechanism not discussed in this study which need to be further explored.
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Funding
This work is jointly supported by the National Key R&D Program of China under Grant Nos. 2017YFA0603803 and 2016YFA0600504, and the National Natural Science Foundation of China under Grants Nos. 41775073, 41930969 and 42075020.
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Kuang, X., Huang, D. & Huang, Y. Inconsistent variation of return periods of temperature extremum in China and its projection based on CMIP6 results. SN Appl. Sci. 3, 868 (2021). https://doi.org/10.1007/s42452-021-04863-3
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DOI: https://doi.org/10.1007/s42452-021-04863-3