Abstract
The offshore region of East Asia has a crucial role in recycling precipitation, especially in the current context of a warming climate. This is because the atmospheric feedback from the sea offshore East Asia directly impacts and modifies precipitation patterns by influencing the seasonal cycles of the surface energy and water budgets. We used a regional climate model incorporating sea–air coupling to investigate and better understand these climate feedback mechanisms in East Asia. We identified a reduction in precipitation caused by sea-air coupling over East Asia during the time period 1991 − 2014 under present day conditions. Specifically, we observed an average decrease in precipitation of about 0.1 ± 0.40 mm day−1 during June–July–August. This decrease in precipitation can be attributed to a combination of factors, including the effects of upward solar radiation, the asymmetry of the thermal contrast between the land and the sea, decreased evaporation in the southeastern ocean and the weakened transport of water vapor from the sea to the land. Our research suggests that the decrease triggered by sea–air coupling will be partially alleviated under future conditions, although not completely reversed, in terms of its impact on precipitation in eastern China. Although some relief is anticipated, the overall influence of sea–air coupling on patterns of precipitation in East Asia will persist, especially south of the Yellow River in eastern China.
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Introduction
East Asia, a densely populated region that is currently undergoing rapid economic development, is increasingly vulnerable to water resource challenges1. The region’s susceptibility to changing precipitation patterns presents significant hurdles, including threats to food security and environmental degradation2. It is therefore crucial to both understand and forecast the impact of the natural climate system on East Asia’s climate and hydrological cycle3,4 and, in particular, to understand the underlying physical and dynamic mechanisms driving these changes5. Incorporating these mechanisms into the models used for qualitative assessments and projections across various timescales, ranging from seasonal to multi-annual, is essential for effective planning and decision-making processes6,7.
The hydrological cycle in East Asia is influenced by two dominant monsoon systems: the East Asian summer monsoon and the East Asian winter monsoon8,9. The summer monsoon has a crucial role in determining the region’s annual precipitation patterns10,11. The East Asian summer monsoon is characterized by two distinct systems of rain belts that contribute the majority of the seasonal rainfall across a wide latitudinal span. One of these rain belts stretches from East China to Japan and usually covers China, Korea and Japan. The other rain belt is located over the tropical western Pacific8. These rain belt systems are integral to the distribution of precipitation in East Asia and have a significant impact on the region’s water resources and ecosystems12,13.
A dominant southwesterly flow prevails during the boreal summer, carrying abundant moisture and warmth from the tropical western Pacific14,15. There is increasing recognition among researchers of the crucial impact of sea–air interactions on precipitation patterns in East Asia10. Sea–air interactions have a pivotal role in our understanding of various climate phenomena in East Asia. In the Pacific Ocean, they contribute to the El Niño–Southern Oscillation and the Pacific Decadal Oscillation, whereas in the North Atlantic they influence the North Atlantic Oscillation and the Atlantic Multidecadal Oscillation13,16,17,18,19,20. These climate patterns have significant impacts on the East Asian monsoon and the recycling of precipitation. There is a noticeable decrease in precipitation in both South and North China during the warm phase of the El Niño–Southern Oscillation and the Pacific Decadal Oscillation, whereas an increase in precipitation is observed around the Yangtze River area21,22,23. These sea–air interactions and teleconnections underscore the significant influence of the ocean in facilitating the transport of moisture and the shaping of precipitation patterns in East Asia.
The importance of ocean coupling in regional Earth system models, particularly in the context of East Asia, has gained widespread recognition24,25. Sensitivity analyses consistently highlight the significance of sea–air coupling in the accurate simulation of the East Asian summer monsoon in regional models26,27. The superiority of regional sea-coupled simulations over uncoupled simulations in capturing the climatological characteristics and the interannual variability of precipitation has been demonstrated in a number of studies28,29.
The advantages of coupling a regional climate model with the ocean component have been emphasized30. This coupling approach has led to substantial improvements in the correlation between rainfall and sea surface temperatures (SSTs) in the tropical western North Pacific (WNP), particularly near the Philippines and the surrounding seas adjacent to the Korean Peninsula. These studies collectively underscore the benefits of incorporating ocean coupling in regional models. By doing so, these models can provide a more precise representation of rainfall patterns and the associated climate features in East Asia, enhancing our understanding of the region’s climate dynamics.
Seasonal sea–air interactions provide valuable insights into the performance of atmospheric general circulation models driven by the observed SSTs31. These interactions underscore the significance of ocean coupling because simulations lacking this coupling tend to exhibit a lower performance. The lack of ocean coupling in regional climate models, which traditionally prioritise land-atmosphere interactions, has been associated with suboptimal precipitation simulations in East Asia, thereby limiting our understanding of atmosphere-ocean dynamics4,32. To address this limitation, we used a fully coupled regional climate model (RCM) encompassing air, land and sea components to investigate changes in precipitation. Our primary objective was to gain insights into the intricate dynamics following ocean coupling and their impact on precipitation anomalies in East Asia (Fig. 1). We analyzed both present (1991−2014) and future (2016−2039) scenarios after incorporating sea–air coupling.
Results
Sea–air coupling leads to weakened precipitation and circulation over land in East Asia
We used simulations UNC and CPL to estimate the precipitation during the time period 1991–2014 under present day conditions. We specifically selected this time frame to ensure the comparability of our results with the dataset provided by the Tropical Rainfall Measuring Mission (TRMM) (Supplementary Fig. 1), TRMM Multi-satellite Precipitation Analysis daily datasets in 0.25° spatial resolution from 1998–2014. It’s important to note that the correlations in Supplementary Fig. 1 are spatial correlations and cover the entire region shaded in Fig. 1, including both land and ocean. Our investigation showed that incorporating ocean–atmosphere coupling yielded more precise precipitation during JJA estimates than the control simulation. Our analysis showed that the standardized deviations of simulation CPL under present day conditions showed lower mean values during JJA than simulation UNC. The decrease in mean values was approximately 0.02 mm day−1.
In addition, supplementary Figs. 2 and S2 show the spatial distribution of original precipitation, correlations and root mean square error (RMSE) for both UNC and CPL simulations compared to observations. From the spatial distribution, the correlation of CPL with observations is equal to that of UNC with observations during summer by 0.6 (Fig. 2e, f). In addition, the simulation RMSE decreases slightly from 6.2 mm day−1 for simulation UNC to 6.1 mm day−1 for simulation CPL. In winter the correlations are quite similar and the simulation errors remain the same (Supplementary Fig. 2e–f).
Supplementary Fig. 3 shows the pattern in the precipitation anomalies after ocean coupling. The mean average annual precipitation for the whole domain was reduced by 0.008 ± 0.10 mm day−1 from 1991 to 2014 compared with the control experiment. The decrease in the mean JJA precipitation of East Asia of −0.13 ± 0.28 mm day−1 was greater than that of the ocean of −0.03 ± 0.77 mm day−1 (Fig. 3a). Conversely, a slight decrease in the average precipitation anomalies over land in JJA was estimated as +0.014 ± 0.25 mm day−1 under the future conditions from 2016 to 2039. The increase in ocean precipitation during 2016 − 2039 was even greater at 0.09 ± 0.61 mm day−1.
Our study showed a distinct spatial pattern of changes in precipitation following the introduction of ocean coupling (Fig. 3 and Supplementary Table 1). We observed a reduction in both summer (JJA) and winter (DJF) precipitation over the land surfaces, with a high consistency between present and future conditions. Specifically, East China and South China experienced the steepest decrease in JJA precipitation, with a reduction of 0.19 mm day−1. However, East Asia experiences the local winter during DJF and the precipitation anomalies are obscure. From a seasonal perspective, these precipitation anomalies coincide with seasonal wet and dry variations.
Our analysis showed that, among the ocean regions, the center of reduction in JJA was located in the South China Sea under both present and future conditions (Fig. 3a, c). By contrast, the center of increase was seen in north South China Sea and the region of Pacific western boundary currents. The largest changes in winter precipitation resulting from sea–air coupling are mainly located over the Indochina Peninsula and southern China, while its influence over eastern China is relatively weaker compared to the summer season.
Atmosphere feedback to the ocean drives radiative anomalies
Atmosphere feedback to the ocean modifies the upward solar radiation (SWU) and the net solar surface radiative fluxes (SWN) under present day conditions (Supplementary Figs. 3–4). Relative to simulation UNC, the mean changes in the SWU and SWN in JJA for the whole domain were +0.82 ± 0.32 and −1.49 ± 1.70 W m−2, respectively, in simulation CPL during the time period 1991–2014 (Fig. 4, Supplementary Figs. 3–4). Over land, the mean SWU and SWN in JJA changed by 1.46 ± 0.67 and −2.91 ± 2.18 W m−2, respectively, after sea–air coupling. Over the ocean, the mean SWU in JJA changed by 0.20 ± 0.18 W m−2 and the SWN at the surface changed by −0.11 ± 2.12 W m−2.
Under present day conditions, the radiative forcing anomalies in JJA were predominantly influenced by changes in the land surface net longwave radiation (LWN) (Fig. 4 and Supplementary Fig. 4). The overall LWN over the entire domain showed a positive anomaly of +2.74 W m−2, primarily driven by the positive change in the land LWN (+5.75 W m−2). However, this positive effect was partially counteracted by the impact of cooling resulting from the change in the ocean LWN (−0.19 ± 0.77 W m−2). The negative land longwave upward radiation (LWU) (−6.74 ± 2.86 W m−2) contributed mainly to the opposite sign of the LWN. During DJF, the proportion of the land LWU contribution to the entire domain was less than in JJA. In JJA, the total radiative fluxes (the net surface solar flux plus the net surface longwave flux) at the surface averaged over land and over the ocean were estimated to be 2.84 ± 1.04 and −0.30 ± 1.75 W m−2, respectively, and in DJF the total radiative fluxes were simulated as 1.11 ± 0.63 W m−2 over land and −0.09 ± W m−2 over the ocean.
Under future conditions, the impact of sea–air coupling on the long-term changes in the radiation components in East Asia was examined. The future JJA SWU anomalies showed a spatial pattern similar to the present day, with an increase over the whole domain from 2016 to 2039. The averaged anomalies were estimated to be 0.33 ± 0.54 W m−2 over land and −0.24 ± 0.16 W m−2 over the ocean (Fig. 4c). By contrast, the LWU anomalies showed a decrease after 2016, with changes of −1.93 ± 1.81 W m−2 over land and −2.17 ± 1.23 W m−2 over the ocean (Fig. 4f). It is important to note that both the SWU and LWU anomalies derived from simulations for the future period were weaker than those observed under present day conditions.
Ocean–atmosphere coupling modifies the net radiation
The annual net radiation anomalies (−0.61 ± 3.90 W m−2) were primarily offset by the latent and sensible heat flux anomalies during JJA (Fig. 4h−i and Supplementary Fig. 4e−f). There was a substantial increase in the JJA latent heat flux (3.69 ± 3.64 W m−2) throughout the entire domain, which can be attributed to consistent anomalies over both the land (6.91 ± 3.31 W−2) and ocean (0.57 ± 5.84 W−2). As a consequence, the average JJA latent heat anomalies showed a noticeable increase from Northeast China (43–54° N and 110–135° E) to the South-Central Peninsula. An increase in the latent heat fluxes was seen in the offshore region of eastern China (15–35° N).
Under present day conditions, the changes in the sensible heat fluxes in JJA had an important role in regulating the net radiation anomalies (Fig. 4h). These changes were primarily manifested as negative sensible heat fluxes for whole domain (−1.84 ± 1.00 W m−2), which were determined by a decrease in the land-based fluxes (−4.46 ± 2.15 W m−2) during JJA, partially offset by an increase in the oceanic fluxes (+0.71 ± 0.47 W m−2). By contrast, both the land (+0.44 ± 0.44 W m−2) and ocean (+1.30 ± 0.82 W m−2) showed positive sensible heat fluxes during DJF, contributing to flux anomalies of the opposite sign. The sign of the sensible heat flux anomalies remained consistent in both JJA and DJF over land under future conditions. However, these anomalies were projected to be lower than those simulated under present day conditions.
Ocean–atmosphere coupling regulates the thermal asymmetry between the ocean and land
The land regions showed stronger cooling than the ocean. The annual mean T2 changed by −1.02 ± 1.17°C over land and by −0.23 ± 0.38°C in the ocean (Fig. 5 and Supplementary Table 1). These findings indicate an asymmetry in the changes in T2 between the ocean and land after sea–air coupling.
Spatially, the influence of ocean coupling under present day conditions resulted in significant cooling, primarily observed in the northern and eastern regions of China between the lower reaches of the Yellow River and the lower reaches of the Yangtze River (Fig. 5a). A remarkable cooling trend >3 °C was identified between 30 and 35° N during JJA. However, the intensity of the cooling effect decreased substantially in the areas located south of 30° N. In DJF, the temperature anomalies were lower, but there was a distinct cooling center with negative temperature anomalies in the eastern South-Central Peninsula.
The average temperature anomalies were relatively modest under future conditions, showing cooling predominantly over land (Fig. 5c). In particular, the most significant cooling due to sea–air coupling in JJA was observed north of 30° N. The area with the highest impact was located between the Korean Peninsula and the Japanese islands, where the cooling effect attributed to sea–air coupling was the strongest (less than −0.3 °C) for both present and future conditions. However, the impact of sea–air coupling under future conditions was noticeably weaker than that under present day conditions. The influence of sea–air coupling was weaker during DJF than during JJA.
Sea–air coupling has induced latitudinal asymmetric changes in land–sea near-surface temperatures. During the historical period, south of 30°N latitude, land cooling in summer was higher than over the ocean (Fig. 6), leading to a reduction of the land-sea temperature contrast by 0.6 ± 0.3 °C (s6). In the future period, the cooling of the land in summer remains slightly higher than over the ocean, leading to a reduction of the land-sea temperature contrast by 0.1 ± 0.2 °C. In winter, the land-sea temperature contrast decreased by 0.5 ± 0.2 °C in the historical period, while the land-sea temperature contrast increases slightly by 0.01 ± 0.2 °C in the future period.
Discussion
Sea–air coupling primarily influences water circulation processes in a region by altering the surface temperature and energy dynamics of the ocean4,24,25. However, quantitative assessments of the specific impacts of sea–air coupling have been limited25. We conducted simulations to investigate the changes in precipitation and circulation patterns across East Asia. Sea−air coupling in some regions of eastern and southern China resulted in a decrease in average precipitation during JJA by approximately 1.0 mm/day. This reduction accounts for approximately 13% of the total summer rainfall in these specific areas. A decrease in the land–sea land thermal contrast of 0.6 ± 0.3 °C were seen. There is also a decrease in latent heat in the southeast ocean within the domain, which is the source of moisture transport from the northwest Pacific to East Asia33. During JJA, fluctuations in the land–sea temperature contrast dynamically influence monsoon systems and then precipitation in East Asia. In addition, changes in the sea surface latent heat flux are a broad reflection of changes in sea surface evaporation. These shifts can affect the amount of moisture transported from the ocean to the land.
Recent studies have shown that ocean–atmosphere coupling has the potential to change the atmospheric heat contrast between land and ocean34,35. Such changes in the heat contrast can induce shifts in circulation patterns and affect precipitation patterns over land. This phenomenon may be related to the land–ocean temperature contrast (Figs. 5 and S6), where warmer land relative to the ocean can stimulate enhanced atmospheric convergence over land, potentially resulting in additional precipitation34. However, variations in the heat contrast driven by ocean-atmosphere coupling in the East Asia and Northwest Pacific regions remain relatively unexplored. Therefore, one of the main objectives is to assess whether ocean-atmosphere coupling in East Asia has indeed altered the land-sea heat contrast and, if so, to investigate the relationship between this change and land precipitation in East Asia. This study uses a regional climate model to investigate how ocean–atmosphere interactions control these processes.
Sea–air coupling has a crucial role in modulating the latent heat fluxes of the southeast ocean within the domain located in the WNP. Southern winds carry warm, moisture-laden air from the WNP3,25, facilitating the transportation of water toward East Asia. As a result, variations in precipitation across East Asia are closely linked to the prevailing supply of water vapor over the WNP36. Upward latent heat fluxes result in the release of latent heat of evaporation over the ocean surface37,38. Sea–air coupling led to a change in the latent heat fluxes of −3.76 ± 8.56 W m−2 (−0.13 ± 0.30 mm day−1 evaporation) in the WNP, excluding offshore eastern China, during the time period 1991–2014 (Supplementary Fig. 7). The main sources of moisture are from the northwest Pacific to East Asia, with a moisture contribution rate of 30%, highlighting the role of evaporation in the northwest Pacific for precipitation in East Asia13,33. Reduced evaporation in the northwest Pacific will reduce the amount of oceanic water vapor transported to East Asia, leading to reduced precipitation in East Asia39,40.
Sea–air coupling weakened the thermal contrast between the land and sea, resulting in reduced precipitation in East Asia in JJA. During the JJA, the land cooled more than the ocean due to sea-air coupling. As a result, the temperature difference between land and ocean decreased. The changes in temperature asymmetry following sea–air coupling weakened the land–sea thermal contrast and reduced the latitudinal pressure gradient (Fig. 7). The reduced latitudinal pressure gradient attenuated the sea breeze from the eastern Pacific to the East Asian land area41,42,43. As a consequence, there was a decrease in the low-level East Asian monsoon flow (Fig. 7a), which contributed to a reduction in the Asian summer monsoon. In the future, ocean coupling is expected to cause a continued decrease in the sea–land pressure gradient (Fig. 7b). However, it is anticipated that changes in the strength of this gradient will be weaker than at the present day.
The southeast circulation from the northwest Pacific brings abundant water vapor into the South China Sea, which then affects eastern China via southern flows25. However, as shown in Fig. 7, during the historical period, resulting from sea–air coupling, an anomalous anticyclone was located over the northwest Pacific, centered at about 20°N and 128°E. Anomalous north flows prevailed in the northeastern, northern, eastern and southern regions of China, which hindered the transport of water vapor from the northwest Pacific to eastern China. As a result, there was a decrease in precipitation in East Asia during the historical period. In contrast, in the future period, the anomalous anticyclone over the northwest Pacific weakens and the anomalous northern flows decrease. This reduces the hindrance to water vapor transport from the northwest Pacific to East Asia. Therefore, the intensity of precipitation reduction in East Asia is expected to decrease in the future compared to the historical period.
The simulated stronger cooling over land can be primarily attributed to changes in the latent heat fluxes and SWU (Figs. S4 and S7). According to the Stefan–Boltzman law, the greater increase in the SWU over land than over the ocean could lead to stronger cooling (Supplementary Fig. 4). The increase in latent heat fluxes or intensified evapotranspiration over land (Supplementary Table 1), which requires energy, exerts a cooling influence44,45. These anomalies in surface radiation amplify the negative feedback of sea–air coupling on land temperatures during JJA, although its influence is diminished during DJF. Changes in land SWU and latent heat fluxes will continue to play an important role in influencing land surface temperatures during JJA under future conditions (Fig. 5).
When comparing the simulation after sea–air coupling with the control simulation, we observed an impact on the cloud fraction, particularly during JJA. The coupling between the sea and the atmosphere led to an increase in cloud cover (Supplementary Fig. 4), resulting in a reduction in the amount of solar radiation reaching the land surface (Fig. 5c). This change in the cloud fraction induced by sea–air coupling subsequently caused a decrease in the LWU from the surface (Fig. 4j). Oceanic clouds tend to contain higher levels of water vapor than those over land, making them potent GHGs that effectively absorb and re-emit the longwave radiation emitted by the Earth’s surface back into the atmosphere. This process contributes to additional warming of the oceans. As a consequence, the cooling effect over the ocean is less pronounced than that over land (Fig. 5a).
Usually, internal climate variations lead to pronounced fluctuations in precipitation, covering a range from interannual to decadal time scales. In fact, precipitation variability exceeds mean precipitation. Global coupled models have also shown that precipitation variability exceeds its mean46,47. Sun and Ding48 found that only about 15% of models can accurately capture decadal variations in precipitation. Presently, climate models continue to face challenges in simulating variations in East Asian precipitation49,50. Uncertainty arising from atmospheric-ocean coupling is one of the inevitable primary sources51. The influence of ocean-atmosphere coupling on the variability of precipitation (Supplementary Fig. 3) suggests that uncertainties remain in the simulation of precipitation variability by regional models. It needs a further investigation in the future.
Our study has certain limitations in capturing the actual impact of ocean–atmosphere coupling on East Asia. Over the past few decades, there has been an increase in GHG emissions, which has resulted in the overwhelming majority (>90%) of the excess energy in the climate system being absorbed by the world’s oceans52. This trend underscores the need for a more realistic consideration of this increase and its implications. The increase in GHG emissions has contributed to a heightened thermal contrast between the land surface and the oceans53, resulting in increased monsoon rainfall in Asia54. Although the absence of explicit GHG dynamics may affect the intensity of temperature and precipitation in East Asia12,55,56,57, it is important to note that our focus is specifically on ocean–atmosphere coupling under natural conditions. The impact of GHG emissions is a separate topic which will be considered in future research.
Certain Earth system models struggle to accurately reproduce the magnitude and intensity of the East Asian monsoon system58,59. However, it is well known that high-resolution RCM simulations of the monsoon system can improve the agreement with observations60,61, thereby enhancing the accuracy of simulation results in the Asian monsoon region. The RCM indicates that ocean–atmosphere coupling modifies the monsoon intensity and precipitation by asymmetrically altering the thermal contrast between the ocean and land. The apparent decrease in monsoon precipitation in East Asia in JJA underscores the need to consider the role of sea–air coupling in this region because it has the potential to improve the accuracy of RCM projections and predictions.
Our analysis has shown that ocean coupling exerts an indirect influence on both the latent heat fluxes in the southeastern ocean and the atmospheric circulation in East Asia. This hinders the inflow of moisture from the WNP, which has a vital role in shaping the patterns of precipitation across East Asia. The estimated change in the latent heat fluxes in the southeastern ocean is about −3.76 ± 8.56 W m−2. The gradual decrease in the thermal contrast between the land and ocean, attributed to sea–air coupling during JJA, weakens the near-surface pressure gradient between the sea and land (Fig. 8). This weakening, in turn, adversely impacts the transport of water vapor from the ocean to the land surface. It is important to note that the intensity of this slowdown in the land–sea thermal contrast is projected to decrease in the future. The sea-air coupling, especially concentrated in northern and eastern China, is a major contributor to the decrease in precipitation in East Asia.
Methods
Regional ocean–atmosphere coupled model
We used the Advanced Research Weather Research and Forecasting (ARW) Version 4.0 modeling system62. The WRF model has been widely applied in atmospheric research across various spatial and temporal scales63,64,65 and was used here as an independent regional atmospheric model. The parameterization schemes for major atmospheric processes included the Rapid Radiative Transfer Model for General Circulation Models (RRTMG) shortwave and longwave radiation schemes66, the Yonsei University Scheme for the Planetary Boundary Layer (YSU PBL)67, the Purdue Lin Scheme for microphysics parameterization68, the Kain–Fritsch cumulus convective parameterization scheme69 and the Noah land surface model with multi-parameterization options (Noah-MP)70,71 for land surface processes. Table 1 gives further details of the parameterization options for the land surface processes.
The WRF model did not include an ocean component. However, for the purposes of this study, the ocean component was coupled into the WRF model using LICOM. This coupled regional ocean–atmosphere model system (WRF-LICOM) consists of regional atmosphere and ocean components. LICOM is a regional version of the quasi-global eddy ocean general circulation model, which is based on LICOM Version 2.0 and is also known as the North Pacific model (LICOM_np)72. LICOM_np covers the region (10° S–66.0° N, 98° E–74.9° W) with a horizontal resolution of 0.1° and 55 vertical layers. The coupling between the atmospheric and oceanic models was achieved through the Ocean Atmosphere Sea Ice Soil Coupler Version 3 (OASIS3)73 at 60-min intervals. This coupling enabled the atmospheric model to receive updated SSTs, sea ice thickness and surface currents from the ocean component through a grid area-weighted interpolation scheme, while the surface wind stresses, water and heat fluxes from the atmosphere were interpolated to the ocean in a similar manner74,75.
The regional atmospheric and ocean model was both forced with data from a bias-corrected global dataset. This dataset was constructed using 18 models from the Coupled Model Intercomparison Project Phase 6 (CMIP6) and has been bias-corrected using the European Centre for Medium-Range Weather Forecasts Reanalysis 5 (ERA5) dataset76. The bias-corrected dataset has a reanalysis bias climatological mean and interannual variance, but with a long-term trend from ensemble mean of 18 CMIP6 models. The dataset has a horizontal grid spacing of 1.25° and covers the historical period 1979–2014 and the future period 2015–2100 at 6-h intervals.
For the future period, the shared socioeconomic pathway (SSP) 2–4.5 scenario was used, which represents an intermediate greenhouse gas (GHG) emission scenario with CO2 emissions around current levels until 2050, followed by a gradual decline without reaching net zero by 210077. The initial conditions for the atmospheric model were provided by the combined and bias-corrected dataset whereas the initial conditions for the ocean model were obtained from an offline multi-year LICOM run that was also forced with a bias-corrected global dataset. The bias-corrected dataset were generated using an empirical quintile mapping method78,79,80,81,82,83,84,85. Here, we also employed an ensemble mean long-term trend derived from CMIP6 models similar to the bias-corrected data used to drive atmospheric model.
Simulations
An uncoupled simulation of the RCM forced by prescribed SSTs was performed as a control run (UNC). In addition, a simulation was conducted using the coupled model of the RCM (CPL) to investigate the effects of ocean–atmosphere coupling. These two long-term regional simulations were conducted using the same bias-corrected global datasets. Simulation UNC included an individual atmospheric component, whereas simulation CPL consisted of both atmospheric and ocean coupling components. For both UNC and CPL simulations, we used the MODIS-based land use classification dataset with 30-second resolution and 21 categories, horizontally interpolated to 15-km resolution grids.
It is important to note that the GHG concentrations in the two simulations remained constant (e.g., the volume-mixing ratio for CO2 was 379.0 ppm). This means that the external forcing from GHGs was only represented in the lateral boundary fields of the atmospheric model.
The simulations were conducted to investigate the present day conditions from 1990 to 2014 and the future conditions under the SSP2–4.5 scenario from 2016 to 2039. For our future projections, we have used a bias-corrected global dataset derived from GCM models within the CMIP6 framework. The CMIP6 projections begin in 2015. The first year, 2015, was referred to as the spin-up period, followed by an analysis of the subsequent 24-year simulations covering the near future period from 2016 to 2039. This period corresponds to the 24-year historical simulations from 1991 to 2014.
The atmospheric components in the two simulations were configured with a horizontal resolution of 15 km and 35 vertical layers, with the model top at 50 hPa. The individual atmosphere domain of simulation UNC and the ocean–atmosphere interactive domain of simulation CPL were centered at (32° N, 120° E) and covered East Asia and the adjacent oceans with a grid size of (346 × 311). The ocean component of simulation CPL covered the entire Pacific Ocean in the northern hemisphere with a horizontal resolution 1/10° and a vertical resolution 55 layers, respectively (Fig. 1). It was also forced by the bias-corrected global dataset, but with different forcing fields.
A pair of 24-year simulations were run, one for historical periods and one for future periods, each with a different spin-up period. The spin-up years were chosen to be 1990 for the historical simulation and 2015 for the future simulation. Consequently, simulations were performed for the historical period from 1991 to 2014 and for the future period from 2016 to 2039. The ocean component from the simulation CPL was initialized using offline LICOM_np final outputs at 00:00 UTC on January 1, 1990, and this offline LICOM_np simulation is conducted from 00:00 UTC on January 1, 1985 to 00:00 UTC on January 1, 1990. The atmospheric component in simulation UNC obtained the SST from the forcing field, which was updated every 6 h, whereas the atmosphere component in simulation CPL updated the SST from the ocean model LICOM every hour.
The model configurations and lateral boundary fields for the atmospheric component of simulations UNC and CPL were the same, with the only difference being the simulations with and without ocean–atmosphere interactions, respectively. The influence of regional ocean–atmosphere interactions were derived from simulations UNC and CPL.
Used methods
Precipitation patterns are influenced by the interplay of the ocean–land thermal contrast (LOTC) and energy transport86. To investigate the impact of sea–air coupling, we examined the changes in the LOTC before and after its implementation. The LOTC is determined by calculating the difference in 2-m air temperature (T2) between the land (0°–30°N) and ocean (0°–30°N) within the study domain using the formula:
where \({T2}_{{land}}^{0-30^\circ N}\) is the area-weighted mean T2 of the land between 0°–30°N and \({T2}_{{ocean}}^{0-30^\circ N}\) is the area-weighted mean T2 of the ocean surface between 0°–30°N within the domain. The LOTC is positive during the June–July–August (JJA) because the land is warmer than the ocean. A negative change in the LOTC indicates a decrease in the thermal contrast between the land and ocean, whereas a positive change signifies an increase in the contrast.
Data availability
The authors declare that the simulation results that support the findings of this study are available upon request from Jing Peng or Kai Li. The input data for the regional climate model simulations are available on https://www.scidb.cn/en/detail?dataSetId=791587189614968832.
Code availability
The source codes for the analysis of this study are available from the corresponding author upon reasonable request.
Change history
15 December 2023
A Correction to this paper has been published: https://doi.org/10.1038/s41612-023-00545-6
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Acknowledgements
We thank National Key Research and Development Program of China (Grant No. 2018YFA0606004), the National Natural Science Foundation of China (Grant Nos. 41975112, 42175142, 42175013, 42141017), Key Laboratory of Meteorological Disaster (KLME), Ministry of Education & Collaborative Innovation Center on Forecast and Evaluation of Meteorological Disasters(CIC-FEMD), Nanjing University of Information Science & Technology, Nanjing, China (Grant No. KLME202204) and the National Key Scientific and Technological Infrastructure project “Earth System Science Numerical Simulator Facility” for supporting our study.
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J.P. designed this study and wrote the manuscript. K.L. performed the simulations and data analyses. Both J.P. and K.L. contributed equally to this work. L.D., X.T., Z.X., L.Z., H.Z., and T.Z. contributed to the analysis of the results. All authors made significant contributions to the discussion of content and interpretation of findings.
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Peng, J., Li, K., Dan, L. et al. Sea–air coupling leads to a decrease in precipitation in East Asia under present day conditions that is partially alleviated in future simulations. npj Clim Atmos Sci 6, 174 (2023). https://doi.org/10.1038/s41612-023-00498-w
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DOI: https://doi.org/10.1038/s41612-023-00498-w
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