Dataset Development for Water Vapor Sources of Meiyu Season
Precipitation in the Middle and Lower Reaches of the Yangtze River (26.5??N?C
33.5??N, 104.5??E?C122.5??E, 1991?C2020)
Zhang, C.
Key Laboratory of Land
Surface Pattern and Simulation, Institute of Geographic Sciences and Natural
Resources Research, Chinese Academy of Sciences, Beijing
100101, China
Abstract: Meiyu precipitation has significant impacts on
drought and flood disasters, water resource management, and socioeconomic
decision-making in the middle and lower reaches of the Yangtze River. Studying
the sources of Meiyu precipitation in the middle and lower reaches of Yangtze
River helps to manage and control Meiyu from its origin in the future. An
atmospheric precipitation moisture tracking model was set up to trace the
sources of precipitation in the middle and lower reaches of the Yangtze River
during the Meiyu season (June & July)
from 1991 to 2020, obtaining 30 years of data on the moisture sources for Meiyu
precipitation in this region. The model??s physical mechanisms are rigorous, and
the driving data are based on actual measurements, ensuring the reliability of
the simulation results. Furthermore, the amount of water vapor contribution
from surface evapotranspiration traced through precipitation backtracking is
comparable to the Meiyu precipitation amount. The dataset contents include: (1)
boundary of the study area; (2) yearly precipitation moisture source during the
Meiyu period, with spatial resolution of 1????1??, and the unit is mm; (3) yearly surface precipitation during the Meiyu
period. The dataset is archived in .nc, .shp, and .xlsx formats, consisting of
9 data files, with a total data size of 13.1 MB (compressed into 1 file, 10.7
MB). This dataset provides important data support for exploring the main
moisture source region of precipitation in the Meiyu region, internal
hydrological cycling, differences in sea and land moisture contributions, and
attribution of Meiyu changes, among other applications.
Keywords: Meiyu; precipitation; moisture source; middle and lower
reaches of the Yangtze River
DOI: https://doi.org/10.3974/geodp.2024.02.07
CSTR: https://cstr.escience.org.cn/CSTR:20146.14.2024.02.07
Dataset Availability Statement:
The dataset
supporting this paper was published and is accessible through the Digital Journal of
Global Change Data Repository at: https://doi.org/10.3974/geodb.2024.07.04.V1 or
https://cstr.escience.org.cn/CSTR:20146.11.2024.07.04.V1.
1
Introduction
The
term ??Meiyu?? (plum rain) refers to a period of persistent rainy weather that
occurs in early summer (typically in June
and July) in East Asian regions including eastern China, Japan, and Korea. This
weather pattern is named after the plum ripening season which coincides with
its occurrence[1]. Meiyu has a dual impact on regional ecosystems
and economic development. On the positive side, it provides necessary moisture
for crop growth and serves as an important period for water resource
replenishment in many areas. However, variations in the intensity of Meiyu also
bring significant challenges: excessive precipitation can lead to flooding
disasters, while insufficient rainfall may cause water shortages, potentially
resulting in severe droughts. These fluctuations in rainfall have profound
effects on agricultural production, water resource management, and the overall
socio-economic system[2,3].
It is noteworthy
that the fluctuations in Meiyu precipitation are directly related to the
strength of water input from surface evaporation[4]. By analyzing
the evaporative sources of precipitation and the corresponding changes in water
vapor circulation, we can gain a deeper understanding of the mechanisms behind
Meiyu precipitation fluctuations. This in-depth understanding not only enhances
our knowledge of the Meiyu phenomenon but also provides a theoretical
foundation for potentially managing and regulating Meiyu intensity from the
evaporation source in the future. Based on this, the present study uses
numerical models to trace the water vapor sources of Meiyu season precipitation
in the middle and lower reaches of the Yangtze River over the past 30 years,
providing a spatial distribution dataset of surface moisture contributions to
Meiyu at the grid scale. The application value of this dataset includes, but is
not limited to: (1) identifying the main water vapor source region for Meiyu
precipitation; (2) analyzing the interannual fluctuations of major boundaries;
and (3) exploring the differences in precipitation sources during drought and
wet years.
2 Metadata of the Dataset
Metadata
of the Precipitation moisture source dataset for the middle and lower reaches
of the Yangtze River during the Meiyu Season of 1991?C2020 [5] is
summarized in Table 1.
3 Methods
3.1 Model Driving Data
The
model requires appropriate driving data, which consists of two main categories:
atmospheric data and surface flux data. Atmospheric data uses ERA5[7],
the new generation of reanalysis data from the European Centre for Medium-Range
Weather Forecasts. It includes hourly wind speed and atmospheric humidity for
23 pressure levels from 200?C1,000 hPa globally, as well as hourly surface
atmospheric pressure, precipitable water, and horizontal water vapor flux. The
spatial resolution is 1????1??.
Surface data
includes surface evapotranspiration and precipitation. For land evapotranspiration,
the GLEAM (V3.5a) dataset??s total evapotranspiration is used[8].
This data is based on remote sensing inversion algorithms and has been proven
more accurate than other evapotranspiration products in multiple studies[9,10].
The GLEAM data used is monthly scale data with a spatial resolution of
0.25????0.25??. For precipitation, the CN05.1 product is used[11]. This
is a precipitation product developed by the China Meteorological Administration
based on interpolation of measured station data and is widely used in China.
The CN05.1 data used is monthly scale data with a spatial resolution of
0.25????0.25??.
Table
1 Metadata summary of the dataset
Items
|
Description
|
Dataset full name
|
Precipitation
moisture source dataset for the middle and lower reaches of the Yangtze River
(26.5??N?C33.5??N, 104.5??E?C122.5??E) during the Meiyu season of 1991‒2020
|
Dataset short
name
|
PrecSourceMLYangtzeRiver1991-2020
|
Authors
|
Zhang, C.,
Institute of Geographic Sciences and Natural Resources Research, Chinese
Academy of Sciences, zhangchi@igsnrr.ac.cn
Huang, J. C., Institute of Geographic
Sciences and Natural Resources Research, Chinese Academy of Sciences, huangjc@igsnrr.ac.cn
Tang, Q. H., Institute of Geographic
Sciences and Natural Resources Research, Chinese Academy of Sciences, tangqh@igsnrr.ac.cn
Xu, X. M., Institute
of Geographic Sciences and Natural Resources Research, Chinese Academy of
Sciences, xuxm@igsnrr.ac.cn
Gaffney, P. P.
J., Institute of Geographic Sciences and Natural Resources Research, Chinese
Academy of Sciences, gafppj@igsnrr.ac.cn
Zhou, Y. Y., Institute
of Geographic Sciences and Natural Resources Research, Chinese Academy of
Sciences, zhouyy@igsnrr.ac.cn
|
Geographical
region
|
Middle and lower
reaches of the Yangtze River
|
Year
|
1991?C2020
|
Temporal
resolution
|
Year Spatial
resolution 1????1??
|
Data format
|
.nc, .xlsx, .shp
|
|
|
Data size
|
10.7 MB (after
compression)
|
|
|
Data files
|
boundary of the
middle and lower reaches of the Yangtze River
|
Foundations
|
Ministry of
Science and Technology of P. R. China (2023YFC3206603); China Scholarship
Council (202310490002)
|
Data publisher
|
Global Change Research Data Publishing & Repository,
http://www.geodoi.ac.cn
|
Address
|
No. 11A, Datun
Road, Chaoyang District, Beijing 100101, China
|
Data sharing
policy
|
(1) Data are openly available and can be
free downloaded via the Internet; (2) End users are encouraged to use Data subject to citation; (3) Users,
who are by definition also value-added service providers, are welcome to
redistribute Data subject to
written permission from the GCdataPR Editorial Office and the issuance of a Data redistribution license; and (4)
If Data are used to compile new
datasets, the ??ten per cent principal?? should be followed such that Data records utilized should not
surpass 10% of the new dataset contents, while sources should be clearly
noted in suitable places in the new dataset[6]
|
Communication and searchable system
|
DOI, CSTR, Crossref, DCI, CSCD, CNKI,
SciEngine, WDS, GEOSS, PubScholar, CKRSC
|
Additionally,
ERA5 hourly global precipitation and evaporation data are used. Although this
data has large errors over land surfaces[4], it contains diurnal
variation information. By correcting it with GLEAM and CN05.1 monthly scale
data, surface flux data with high temporal resolution and monthly values
consistent with observational data can be obtained.
3.2 Data Preprocessing
The
WAM2layers model is a two-layer model that divides the original atmosphere into
two layers. According to the model settings[12], the division level
is calculated as:
(1)
where,
the division pressure Pdiv varies dynamically with the
surface atmospheric pressure Psurf. When Psurf
= 1,013.25 hPa, the division pressure is 812.83 hPa. After calculation of the
division pressure for the current grid point, the standard pressure level
closest to this division pressure is selected from the 23 pressure levels. This
level serves as the vertical boundary. The precipitable water and water vapor
flux are then integrated separately from this layer to the top of the
atmosphere and from this layer to the surface.
All data needs to
be converted to the spatial and temporal resolution required for model input,
which is 1????1?? and 15-minute intervals. For hourly instantaneous atmospheric
data, such as precipitable water and water vapor flux, linear interpolation is
used to obtain corresponding 15-minute interval data. For hourly cumulative
flux data, such as evaporation and precipitation, the method of period
averaging is used to obtain 15-minute interval data.
The CN05.1
precipitation and GLEAM evapotranspiration grid sizes are both 0.25????0.25??.
During conversion, spatial resampling is first used to calculate the weighted
average of all 0.25?? grid values falling
within a 1?? grid, thus obtaining precipitation/evaporation values
representative of the 1?? grid. These are then compared with the monthly values
of ERA5 precipitation and evaporation, respectively. For each grid point and
each month, a scaling parameter ?? is obtained. The hourly ERA5 data for that
grid point and month is multiplied by this parameter ??, then averaged to a
15-minute scale, resulting in high temporal resolution data with monthly values
consistent with CN05.1 and GLEAM data after correction.
3.3 Model Algorithm
The
WAM2layers water vapor tracking model is a numerical model based on an Eulerian
coordinate framework. WAM2layers tracks the free movement of tagged water
between upper and lower, inner and neighboring grid cells. The precipitation
source tracing algorithm process is as follows.
Considering the
inverse process of precipitation, the precipitation p0 in a
specific time step in the target area (i.e., the Meiyu area in the middle and
lower reaches of the Yangtze River) is treated as tagged water vapor returning
to the atmosphere, flowing back against the time axis and the direction of
water vapor transport. When p0 enters the atmosphere, there
is an allocation rule: the amount of water vapor distributed to the upper and lower
layers is proportional to the atmospheric precipitable water (Wup
and Wdown) in the upper and lower layers of the grid column. After
entering the atmosphere, like diffusion, the marked water vapor continuously
enters surrounding grid points through horizontal and vertical water vapor
transport, fully mixing with the water vapor in the residing air layer.
At a specific time
point, if there is evaporation e at grid point A, and the proportion of
tagged water vapor to total water vapor in the lower layer is r, this
means that e??r of the evaporated water
vapor e entering the lower layer at point A will ultimately form direct
precipitation in the target area. This part of the water vapor is then
identified as the direct precipitation contribution from grid point A to the
Meiyu area, successfully traced to its source. The tagged water in the lower
layer needs to be reduced by this amount and continue its ??recycling?? process
until almost all tagged water is traced to its source[13,14].
3.4 Data Postprocessing
As
described in the previous algorithm, at any time step, e??r of the
evaporation e will finally form direct precipitation in the target area.
This can be expressed through Equation (2):
(2)
where
Wr_down/Wdown represents the proportion r of
marked water vapor content in the lower atmosphere. By integrating and summing
all e??r, we obtain the water vapor contribution from evaporation
sources at the grid scale to the precipitation in the Meiyu area throughout the
entire Meiyu season:
(3)
3.5 Technical Workflow
In summary, the technical workflow for the development of this
dataset is shown in Figure 1.
Figure 1 Technical workflow for the dataset
development
4 Data Results and Validation
4.1 Data Composition
The dataset
consists of 9 data files, including the location file of the Meiyu region in
the middle and lower reaches of the Yangtze River (in .shp format), the
precipitation amount (in mm, .xlsx format) for each Meiyu season from 1991 to
2020 in this region, and the corresponding moisture sources for Meiyu
precipitation each year (1????1??, in mm, .nc format).
4.2 Data Results
The
Meiyu region in the middle and lower reaches of the Yangtze River, consists of totally
116 grid points of size 1????1??, covering an area of about 1.24??106 km2.
The average precipitation is 413.9??70.0 mm, with the lowest precipitation of
321.2 mm in 2001 and the highest of 636.9 mm in 2020. Figure 2 shows the source
tracing results of Meiyu precipitation for the 1st, 11th, 21st, and 30th years,
presented at approximately ten-year intervals. Simple observation reveals that
the precipitation in the Meiyu region mainly originates from the southwestern
direction towards the Indian Ocean source region and the southeastern direction
towards the tropical Pacific source region, with significant fluctuations
between different years.
4.3 Data Validation
WAM2layers
is constrained by strict physical processes and has been validated through
model comparisons[15], making it highly credible and widely applied
in moisture tracking simulations. For specific applications, on one hand, it is
necessary to consider selecting appropriate driving data to reduce
uncertainties brought by input data; on the other hand, it is essential to
verify whether the model is functioning properly, that is, to confirm if the
precipitation in the study area has been largely traced back to surface
evaporative sources. By accumulating the contributions of each grid source to
Meiyu precipitation and comparing it with the total Meiyu precipitation, the
results are shown in Figure 3. On average, about 98.9% of Meiyu precipitation
was tracked over the 30 years, with 2019 having the lowest tracking ratio of
about 98.5%. This indicates that the vast majority of precipitation has been
effectively identified and attributed to surface evaporative sources.
Figure 2 Moisture contribution maps of the Meiyu
precipitation sources during 1991, 2001, 2011, and 2020, respectively
5 Discussion and Conclusion
Figure
3 Annual Meiyu precipitation and traced
precipitation moisture to the surface by the model from 1991 to 2020
|
This study traced the
moisture sources of precipitation in the middle and lower reaches of the
Yangtze River during the Meiyu season over the past 30 years using the
numerical model WAM2Layers. It provides a spatial
distribution dataset of
surface evaporative sources?? contribution to Meiyu at the grid scale. The
dataset uses multi-source observational data as model inputs, including CN05.1
observational precipitation, GLEAM remote sensing evapotranspiration data, and
atmospheric data of ERA5 reanalysis. The simula-
tion is based on strict
physical processes and water balance equations, calculated at a 15-
minute
time scale, ultimately providing global grid moisture contribution data at
1????1?? spatial resolution, with a high precipitation tracking ratio of 98.9% and
high reliability.
Essentially,
this dataset achieves an innovative data transformation, converting Meiyu
precipitation into moisture contribution from surface evaporative sources,
providing a new perspective for explaining changes in Meiyu precipitation.
Preliminary analysis shows that in the drought year of 2001, precipitation in
the Meiyu region mainly came from the Indian Ocean to its southwest and the
South China Sea region to its south. In contrast, during the strong Meiyu
period in 2020, the tropical Pacific region provided a significant increase in
moisture contribution, becoming an important source of precipitation (Figure
2).
This dataset
provides data support for exploring the main moisture source areas of
precipitation in the Meiyu region, the fluctuation of source area boundaries,
differences in sea and land moisture contributions, and differences and changes
in internal and external moisture cycling in the middle and lower reaches of
the Yangtze River. Future research can further combine data such as land use
changes in terrestrial moisture source areas to deeply analyze the change
mechanisms of terrestrial moisture contribution, thereby more comprehensively
exploring the intrinsic dynamic processes of Meiyu precipitation changes. This
multi-angle, multi-scale research approach will help improve our understanding
of regional water cycle processes and provide scientific basis for water resource
management and disaster prevention and mitigation in the context of climate
change.
Conflicts of Interest
The author declares no conflicts of interest.
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