A 0.25?? ?? 0.25?? Raster Dataset of Effective Accumulated Temperatures in
Sino-Russian Cross Border Region of Heilongjiang River Basin between 2002 and 2020
Zhou, Y.
Z.1,2 Wang, J. L.1,3* Li, K.1,2 Grigorieva, E. A.4
1. State
Key Laboratory of Resources and Environmental Information System,
Institute of Geographic Sciences and Natural Resources Research, Chinese
Academy of Sciences, Beijing 100101, China;
2. College
of Geoscience and Surveying Engineering, China University of Mining &
Technology (Beijing), Beijing 100083, China;
3. Jiangsu
Center for Collaborative Innovation in Geographical Information Resource
Development and Application, Nanjing 210023, China;
4. Institute
for Complex Analysis of Regional Problems, Far-Eastern Branch, Russian Academy
of Sciences, Birobidzhan 679016, Russia;
Abstract:
A
0.25?? ?? 0.25?? Raster Dataset of effective accumulated temperatures (RDEAT) in the
Sino-Russian border region of the Heilongjiang River basin was developed based
on hourly 2-m temperatures from European Center for medium range
weather forecasts (ECMWF)
re-analysis 5 between 2002 and 2020. The base temperatures were 0 ??C, 5 ??C, 10 ??C, and 15 ??C. The results of a correlation analysis between this
dataset and data obtained from observation in situ revealed a positive
correlation with the validation dataset and that their inter-annual fluctuation
were basically the same. The dataset included boundary data about the study
area; the start and end dates of annual effective and effective accumulated
temperatures between 2002 and 2020 of ?? 0?? C, ?? 5 C,
?? 10 ??C, and ?? 15 ??C; and a
validation dataset of effective accumulated temperatures. A dataset of 305
files comprising 19.9 MB of data has been archived in .shp, .tif, and .xlsx
formats and compressed into a single file of 1.69 MB.
Keywords: Heilongjiang River basin; Sino-Russian cross-border area; effective
temperature start and end date; effective accumulated temperature; 2002-2020
DOI: https://doi.org/10.3974/geodp.2022.03.18
CSTR: https://cstr.escience.org.cn/CSTR:20146.14.2022.03.18
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.2022.04.05.V1
or https://cstr.escience.org.cn/CSTR:20146.11.2022.04.05.V1.
1 Introduction
Agricultural
production has long been affected by natural climatic and environmental
conditions, among which temperature is a key factor for crop growth and
development. Any changes in temperature will affect the heating conditions of
regional climatic resources. Air temperature is directly or indirectly related
to variables such as solar radiation, light cycles, and soil temperature and
plays a leading role in crop photosynthesis. It is also an important factor that
affects crop productivity and quality. Temperature changes and their
fluctuating effects play important roles in supporting research on farmland
ecosystems. This is because they affect changes in agricultural resource heat
and can lead to short-term or persistent secondary events, such as fire, frost,
and drought. The occurrence of natural disasters has a greater impact on the
sustainability of the entire ecosystem[1,2].
The cumulative
effects of daily temperatures represent an important indicator of crop growth
and potential productivity[3]. A statistical concept of the amount
of heat storage required for plant growth and development was proposed by de
R??aumur approximately 300 years ago[4]. Thereafter, a
series of temperature-based evaluation indices were produced to support the
scientific management of regional agriculture[5]. These statistical
indices of historical temperature data aimed to help understand differences
among crop growth conditions in various regions. Representative methods include
average growing season temperature, the Huglin index, active accumulated
temperature, and summed effective temperature. Annual average temperatures are
measured during the growing seasons from April to October and from October to
April of the following year in the northern and southern hemispheres,
respectively, to form a macroscopic picture of the suitability of the local
agro-climate[6]. The Huglin index is based on a temperature of 10 ºC to
evaluate the climatic conditions required for viticulture and winemaking[7].
The active cumulative temperature refers to summed annual cumulative
temperatures above zero when the daily average temperature is higher than a
threshold that is usually 10 ºC. This method is of great significance to
agroclimatic analysis and zoning investigations[8,9]. The method of
summed effective temperatures is based on the concept of heat accumulation
during plant growing seasons and describes the annual accumulation of the daily
average temperature suitable for growth on days above biological zero, which
represents the minimum requirements for plant growth and development[10].
Among these methods, that in which the accumulated effective temperature
removes the ??ineffective?? part of regional heat resources (unsuitable for crop
growth) and further corrects linear relationships between the two variations
can be used to monitor the spatiotemporal growth conditions of crops and
predict their future growth periods[11]. A corresponding temperature
range can also be incorporated into the study of regional and even global
thermal potential energy according to the growth temperature threshold of
different crops[12].
The Heilongjiang
River basin is a watershed spanning China, Russia, Mongolia, and North Korea.
The Sino-Russian border area along the Heilongjiang-Usuli River includes
administrative units such as Heilongjiang province, Amur oblast, Jewish autonomous
oblast, and Primorsky Krai (Figure 1). As the main agricultural production area
in the entire basin, the area has abundant natural resource reserves, excellent
geographical and climatic conditions, and profound
potential for the development of agricultural resources. The climate in
Heilongjiang province is a temperate continental monsoon. Since the beginning
of the 21st century, the average temperatures have been approximately 4 ºC, with average precipitation of 530?C760 mm,
and other meteorological conditions with distinctive seasonal characteristics[13].
In terms of geographic conditions, the Songnen and Sanjiang plains are located
on the west and east sides of the province. These plains are fertile enough to
cultivate crops such as soybeans, rice, corn, and potatoes. Planting crops in
the Russian Far East is affected by environmental factors such as cold
temperatures and permafrost. Hence, planting has mainly been concentrated in
the southern and eastern administrative regions with better natural conditions,
such as temperate continental and oceanic monsoon climates. The Zeya-Bureya and
Khanka Lake plains occupy a vast area below an altitude of 500 m, and these are
the key agricultural areas in the Far East. The rain and heat conditions of
these fields are suitable for cultivating soybeans, rice, and cereals (such as
barley, oats, and buckwheat). Fruit planting is also being vigorously developed
in the Jewish autonomous oblast[14]. Judging from the current
cross-border agricultural development in the study area, cooperation to develop
agricultural production has continuously deepened between the two regions.
Agricultural cooperation between Heilongjiang province and Russia includes an
area of more than 9.5 million acres, and over 200 enterprises are engaged in
agricultural development in the Russian Far East. Agricultural technical
exchanges between the research institutes and the import and export of dominant
crop varieties are increasing. The annual amount of soybeans imported into
Heilongjiang province mainly from Amur, has significantly increased annually,
and this has alleviated the demand gap for such crops in China[15].
In the context of climate change, temperature and other factors of
agro-meteorological resources in both countries are constantly changing, and
the frequency and severity of agricultural natural disasters are also
increasing. The consequences of these have significantly affected agricultural
trade cooperation and product safety in cross-border areas. Therefore, the heat
resources required to grow and develop crops in this area requires
investigation. Relevant basic data about disaster prevention and reserve
farmland potential in the study area should be studied from the perspective of
climatic conditions. Furthermore, theoretical references are required to
analyze agricultural production activities.
Figure 1 Geographical status of the study area
2 Metadata of the Dataset
Table 1 shows a metadata summary of the
dataset[16]. It includes the full and abbreviated names of the
dataset, authors, year, temporal and spatial resolution, data format, size,
files, publisher, and sharing policies.
Table 1 Metadata summary of the dataset of summed effective temperatures in
the Sino-Russian cross border region of Heilongjiang River basin between 2002
and 2020
Item
|
Description
|
Dataset full name
|
0.25????0.25?? raster dataset
of effective accumulated temperature in the Sino-Russian cross border region
of Heilongjiang River basin (2002?C2020)
|
Dataset short
name
|
EffecAccTemp_CR_2002-2020
|
Authors
|
Zhou, Y. Z.
0000-0002-6826-151X, Institute of Geographic Sciences and Natural Resources
Research, Chinese Academy of Sciences, zhouyz@lreis.ac.cn
Wang, J. L.
0000-0002-5641-0813, Institute of Geographic Sciences and Natural Resources
Research, Chinese Academy of Sciences, wangjl@igsnrr.ac.cn
Li, K.
0000-0001-6234-6806, Institute of Geographic Sciences and Natural
Resources Research, Chinese Academy of Sciences, lk@lreis.ac.cn
Grigorieva, E. A.
0000-0002-7811-7853, Institute for Complex Analysis of Regional Problems,
Far-Eastern Branch, Russian Academy of Sciences, eagrigor@yandex.ru
|
Geographical
region
|
Including 4
administrative regions located in the Sino-Russia cross-border area among
Heilongjiang River basin (the entire Heilongjiang province and Jewish
autonomous oblast, part of Amur oblast and Primorsky krai )
|
Year
|
2002?C2020
|
Temporal
resolution
|
Yearly
|
Spatial
resolution
|
0.25????0.25??
|
Data format
|
.shp, .tif, .xlsx
|
Data size
|
1.69 MB (after
compression??
|
Dataset files
|
The dataset
includes the four parts below: (1) the boundary data of the study area; (2)
the beginning/end date of annual effective temperature during 2002?C2020 (??0 ºC,
??5 ºC, ??10 ºC
and ??15 ºC); (3) the effective accumulated
temperature during 2002?C2020 (??0 ºC,
??5 ºC, ??10 ºC
and ??15 ºC); (4) the validation dataset of effective
accumulated temperature
|
Foundations
|
Chinese Academy
of Sciences (XDA2003020302); Chinese Academy ofEngineering (CKCEST-2022-1-41)
|
Data computing environment
|
Python, ArcGIS
|
Data publisher
|
Global Change
Research Data Publishing & Repository, http://www.geodoi.ac.cn
|
Address
|
No. 11 A Datun
Road, Chaoyang District, Beijing 100101, China
|
Data sharing
policy
|
Data from the Global
Change Research Data Publishing & Repository includes metadata, datasets (in the Digital Journal of Global Change Data Repository), and
publications (in the Journal of Global Change Data & Discovery). Data sharing policy includes: (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[17]
|
Communication and
searchable system
|
DOI, CSTR, Crossref,
DCI, CSCD, CNKI, SciEngine, WDS/ISC, GEOSS
|
3 Methods
This study was based on global hourly 2 m air temperature data
released by the European Center for medium range weather forecasts (ECMWF) between
2002 and 2020. The validation dataset comprised corresponding accumulated
temperatures in Heilongjiang province between 2002 and 2018 calculated by
Grigorieva et al. from grid data with spatial
resolution
of 0.25?? ?? 0.25?? and Russian data derived from daily temperature data gathered
at meteorological stations between 2002 and 2011.
3.1 Algorithm Principle
The effective accumulated
temperature (EAT) is an evaluation index that is closely associated with plant
growth. It reflects the heat resource reserves required for the growth of
target plants that are likely to thrive by counting the cumulative daily
average temperatures above biological zero (effective temperature). The index
consists of information about time and temperatures affecting plants during the
growing season. Thus, changes in the index will impact the phenology period,
which will lead to changes in regional agricultural production and results. The
specific combination calculation is shown below as Equation 1 and 2. Several
studies have discussed that using hourly temperature data to calculate the
daily average temperature represents more accurate results than daily ones, so
that the computational results of the elements can be more precisely
characterized[18,19]. Therefore, we calculated daily average
temperatures Equation 3 as follows:
(1)
(2)
(3)
where is the daily average temperature (ºC) on day i
calculated by different statistical methods, and Tbase is the
base temperature (ºC) suitable for a target crop to thrive, i = 1, 2, ??, m
is the range of daily average temperatures ?? growth base temperature, Tmax
and Tmin are the highest and lowest temperatures (ºC) of a day, and is hourly temperature data within a day.
3.2 Technical Route
Figure
2 shows the overall flow of this study, which comprised data acquisition and
preprocessing, selection of crop growth limit temperature, determination and
accumulation of effective temperature starting and ending time, and quality
inspection results.
Figure 2 Flowchart of effective accumulated
temperature algorithms
3.2.1 Data Preprocessing
We used Python language and the ArcGIS platform to completely batch crop ERA-5
data throughout the study period based on the vector range of the area to
prepare the original data for this dataset. We then averaged hourly
temperatures throughout a 24-h day to obtain daily average temperatures in the
region between 2002 and 2020. Simultaneous preprocessing included clipping
raster and filtering panel data according to the type of validation data.
3.2.2 Selection of Growth Base Temperature
Plants can adapt to various
temperatures over long periods. They start to develop at surrounding
temperatures that exceed a specific value and will rarely grow below it. Table
2 shows the temperatures that limit the growth of the main economic crops.
Table
2 Base temperatures associated with the
growth stages of several major commercial crops[20]
Crop type
|
Growth base temperature??ºC??Tbase
|
Crop type
|
Growth base temperature??ºC??Tbase
|
Cabbage
|
0
|
Corn
|
10
|
Pea
|
4.5
|
Soybean
|
10
|
Wheat
|
5
|
Rice
|
15
|
Potato
|
7
|
|
|
Notes: Considering
the crops actually planted in the study area, we selected Tbase 0 ºC, 5 ºC, 10 ºC,
and 15 ºC to characterize
baseline effective accumulated temperatures.
3.2.3 Identification of
Start and End Times of Effective Temperatures
We used a 5-day moving average
above the defined limit temperature to determine the start and end dates of the
summed effective temperature in a specific year. The starting (terminating)
range of valid temperatures was quite long. In the first sequence of the
starting range, the first date with Ti above the limit
temperature was selected as the start time. In the last sequence of the ending
range, the last date was taken as when Ti exceeded the
defined temperature limit (end time).
3.2.4 Calculation and
Evaluation of EAT
The maximum upper limit
temperature also affects the growth of
crops. Heatwaves caused by extremely high temperatures can retard and thus
inhibit the growth and development of various
crops[21,22]. Considering experimental data and related literature[11,
20, 23] about various developmental stages of the main crops in the study
area, Ti = 30 ºC was selected as the upper temperature limit of the effective
accumulated temperature statistics in the study area.
When Ti was greater than Tbase,
the difference between Ti ??30 ºC and the four Tbase
values were accumulated to obtain the annual EAT (Figure 3). Thereafter,
correlations between the results and verification data based on measured data
were analyzed to evaluate the quality and effect of this data on the
characterization of heat resources in the study area.
Figure 3 Schematic diagram of the study
4 Data Results and Data
Validation
4.1 Data Composition
The EAT data products in the Sino Russian
cross-border areas of Heilongjiang River basin between 2002 and 2020 are single
band data files. The names of the EAT start time, EAT
end time, and EAT are at Tbase EAT_firstday_0.25??_YYYY.tif,
at TbaseEAT_lastday_0.25??_YYYY.tif,
and at TbaseEAT_0.25??_YYYY.tif, respectively. Among the
names, 0.25 ºC
represents the product spatial resolution of 0.25?? ?? 0.25??, and YYYY is product
time in a specific year. The more information about the product is shown in
Table 3.
Table 3 Product attributes
Number
|
Attribute
|
Value
|
Number
|
Attribute
|
Value
|
1
|
Data type
|
float
|
4
|
Pixel value
|
0-4,000
|
2
|
Row
|
67
|
5
|
Pixel size
|
0.25????0.25??
|
3
|
Column
|
50
|
6
|
Coordinated
system
|
WGS 84
|
4.2 Data Results
4.2.1 Spatio-temporal
EAT Profiles
The annual spatial
distribution and variation trends of the four types of EAT in the study area
were obtained through the previous data processing process. Figure 4 shows the
results at 0 ºC.
Figure 4 Spatial distribution at ??0 ºC EAT (4a?C4s) and trend (4t) variations
between 2002 and 2020
The spatial
profiles at ??0 ºC EAT in the study area generally increases from north to south and
regions with values >3,000 ºC are mainly distributed on the east and west sides of Heilongjiang
province, the southern Amur oblast, and the western Primorsky Krai in the
Russian Far East, which is generally consistent with the distribution of
cultivated land in the study area. The area with low values is located at a
high altitude in the northwest Amur oblast, where the accumulated temperature
is below 1,000 ºC year-round. In terms of trends of accumulated temperature
variations over 19 years, the trends in EAT variations increased in most of the
studied regions. The larger range (>20 ºC; Figure 4a)
appeared in the southern Amur oblast, the northern Jewish autonomous oblast,
and the adjacent areas of Heilongjiang province and Primorsky
Krai. However, the interannual accumulated temperatures in northern
Heilongjiang and at the border of Amur oblast were relatively stable, and the trends
in some areas within the range were slightly downward (5?C10 ºC;
Figure 4a).
Analysis
of distribution and change of start and end times
Figure 5a and 5b
shows that the earliest start and end times and place where the EAT was ??0 ºC were
March and mid-September, respectively, and the corresponding latest times were
May and early November, respectively. The duration of EAT was the shortest in
the northeast region of Amur oblast, relatively longer in southern Heilongjiang
province, and longest in the southwest and east of the province adjacent to
Russia. We compared the two periods over the past 20 years. The results showed
that the duration of the average accumulated temperature in the agricultural
growing areas in the east and west of Heilongjiang province, the Jewish
autonomous prefecture of Russia, and the west of Primorsky Krai was longer
(earlier start and later end times) over the past 10 years than in the previous
period. In contrast, the duration of accumulated temperatures in the south of
Amur oblast was shorter than in the earlier period.
Figure 5 Start (5a, 5c)
and end (5b, 5d) time of ??0 ºC and ??10 ºC annual
EAT between 2011 and 2020
(Black and red dots represent advance or delay compared
with previous stage, respectively; EAT: effective accumulated temperature)
The effective
temperature >10 ºC in the study area in the recent 10 years began and ended in
mid-April at the earliest and early October at the latest, respectively. The
effective temperature starts before May in most flat areas of Heilongjiang
province and approximately 10 days later in high altitude areas from the
northwest to the southeast. The corresponding data in the Russian Far East
began after May, whereas the starting time of the accumulated temperature in
some agricultural growing areas in the south of Amur State and the west of
Primorsky Krai was slightly earlier. In terms of the distribution of the
accumulated temperature end time, the Southern Part of Heilongjiang province,
the Jewish autonomous oblast, and most of Primorsky Krai was generally after
the end of September. The end time of the accumulated temperature was around
the first 10 days of September in the Amur Region except where it was adjacent
to Heilongjiang province. We found that the start and end times of the two
periods over the past 10 years were early. A northern delay accounted for
>90% of the early and delayed accumulated ending temperatures in both
Primorsky Krai and Heilongjiang province. Early occurrence was mainly located
in the east and west of Heilongjiang province and the Sino-Russian border area.
4.2.2 Analysis of Variations in Proportions of EAT Areas
According
to the EAT thermal standard of ??10 ºC, the study area was dynamically divided into
annual intervals corresponding to 10 ºC EAT ranges of >1,400 ºC,
1,400?C1,100 ºC, 1,100?C800 ºC, and < 800 ºC). Figure 6
shows statistical changes in the proportions of areas with these values between
2002 and 2020.
Figure 6 Proportions of areas in zones based on
the EAT standard of ??10 ºC
Figure 6 shows
that the four accumulated temperature zones accounted for approximately 7.5%,
27.5%, 35%, and 30%, respectively, of the study area. The changes in trends
during the first and third intervals were relatively stable, whereas the
interannual changes in the second and fourth accumulated temperature regions
slightly increased and decreased, respectively. Among the time points with obvious
annual fluctuation in each region, the area of high EAT in the first and second
regions exceeded 15% and 35% in 2010, respectively. However, the area of EAT <1,100
ºC accounted for approximately 70% of the entire study area during
2009.
4.3 Data Validation
The
EAT values of Heilongjiang province between 2002 and 2018 were calculated based
on the daily average temperatures in the CN05.1 data produced by the National
Climate Center according to the above processing procedures and compared with
the present results. The CN05.1 data were derived from the information
accumulated at 2,400 national meteorological stations in mainland China between
1961 and 2018 using thin plate spline interpolation. The accumulated
temperatures described in previous reports correlated with the results
generated by the Chinese Ecosystem Research Network. The validation data
comprised four corresponding datasets from the Southern Russian Far East
between 2002 and 2011 based on daily temperature data recorded at
meteorological stations. We extracted grid data products of the study area and
Heilongjiang province based on the location of each meteorological station
using bilinear interpolation during data pre-processing verification. We then
analyzed correlations between these and the results from the Russian Far East
(Figure 7, 8).
Figure 7 Validation at ??
0 ºC EAT (Tmn in Figure 7a means mean temperature)
Figure 8 Validation of EAT ??10 ºC (Tmn in Figure 8a means mean temperature)
These comparison and verification results show
that the calculated EAT values of ??0 ºC and ??10 ºC during
2002?C2020 were basically consistent with the multi-year average values of
corresponding results based on CN05.1 and measured temperature data, except the
data from individual stations that significantly differed (Figure 7a, 8a). The
mean errors between data (Figure 7b, 8b) show that the calculated results at
most stations in Heilongjiang province and the Russian Far East of Russia were
respectively overestimated and underestimated compared with the control data.
The ME values among 37 stations were all within -200 ºC to approximately 200 ºC, whereas Stations 7, 8, 19, and
23 in Heilongjiang province and Stations 3 and 6 in the Russian Far East were
not. The Pearson correlation results (Figure 7c, 8c) of accumulated temperature
data show that correlation coefficients (rho; r) at most stations
were >0.45, which basically reflects inter-annual fluctuation and changes in
the accumulated temperatures in the study area over the past 20 years. The root
mean squared error corresponding to each group was within 50% of the maximum
values at most sites (Figure 7d, 8d) and the maximum deviation in the ranges in
the two datasets did not exceed 500 ºC. These findings indicated that our results fit the accumulated
temperature results calculated based on the measured data. Therefore, our
results can be used as basic data to reflect annual heat resources required by
various crops in this region.
5 Discussion
and Conclusion
We aimed to determine the start and end points
of effective temperatures at the Sino-Russian border area of the Heilongjiang
River basin between 2002 and 2020 and the annual effective accumulated
temperatures of each growth period. We therefore reanalyzed, processed, and
converted 2 m hourly temperature data in ERA5. The daily average temperatures
and the base temperatures of crop growth (0 ºC, 5 ºC, 10 ºC, and 15 ºC) were then calculated. We
systematically analyzed the spatial distribution of these two items from the
perspectives of land surface types and geomorphic conditions and
macroscopically described the dynamic evolution law of the EAT zones at all
levels. The results showed that the EAT was mainly located in the southern
plain of the study area, which was basically consistent with the distribution
of the agricultural land in the study area. Trends in accumulated temperature
changes in most of the study area show a steady increase over the past 20
years, and the corresponding situation in the northwest area was the most
obvious at EATs of 0 ºC, 5 ºC, and 10 ºC. This information could be
combined with other factors to analyze and excavate the reserve potential of
non-farming areas. This will strengthen the ability to guarantee agricultural
development and food security across the border between China and Russia under
uncertainties such as climate change and international issues.
Author Contributions
Wang, J. L. designed the algorithms of dataset. Zhou, Y. Z., Li, K., and Grigorieva, E. A. contributed to the data
processing and analysis. Wang, J. L., Zhou, Y. Z., and Li, K. wrote the data paper.
Acknowledgements
The authors thank
the support of the special talent exchange program of Chinese Academy of
Sciences.
Conflicts
of Interest
The authors
declare no conflicts of interest.
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