Remote Sensing Rao??s Q Index Yearly Forest Dataset of China
(2000-2017)
Jiang, X.1,2 Cai, H. Y.1 Yang, X. H1,2*
1. State Key Laboratory of Resources and Environmental
Information Systems, Institute of Geographic Sciences and Natural Resources
Research, Chinese Academy of Sciences, Beijing 100101, China;
2. University of Chinese Academy of Sciences, Beijing
100049, China
Abstract: The
remote sensing Rao??s Q index can characterize the functional
diversity of macro-forest plants, making it a crucial metric for evaluating
ecological quality and essential to efficiently carry out tasks related to
regional biodiversity protection. According to the traditional definition of
Rao??s Q index, the forest plant features are represented by pixel values in the
spectral difference of the normalized difference vegetation index (NDVI), and
the neighborhood pixel values are used to generate the distance matrix. The
yearly remote sensing Rao??s Q index dataset of forest in China from 2000 to
2017 was calculated on the R language platform. The temporal resolution of the
data was annual, the spatial resolution was 5 km, and the projection was based
on Albers Conical Equal Area with the coordinate system of WGS-84. The dataset
is archived in the .tif format and consists of 72 data files with data
size of 58.2 MB (compressed into one file with 5.17 MB).
Keywords: remote sensing; Rao??s Q index; 2000?C2017
DOI: https://doi.org/10.3974/geodp.2024.01.02
CSTR: https://cstr.escience.org.cn/CSTR:20146.14.2024.01.02
Dataset Availability Statement:
The dataset
supporting this paper was published and is accessible through the Digital Journal of Global Change Repository at:
https://doi.org/10.3974/geodb.2024.03.08.V1 or
https://cstr.escience.org.cn/CSTR:20146.11.2024.03.08.V1.
1 Introduction
Biodiversity
is the core and foundation of ecosystem services. Globally, biodiversity is
undergoing significant changes[1], necessitating the immediate
clarification of its temporal and spatial variations to formulate and implement
effective biodiversity conservation and management decisions. To guide
governments at all levels to strengthen biodiversity protection and curb the
trend of biodiversity loss and ecosystem degradation, the Ministry of Ecology
and Environment recently included biodiversity indicators for the first time
into the comprehensive evaluation indicator framework of ecological quality.
Against this background, remote sensing has emerged as a crucial tool for
biodiversity research due to its ability to provide multiscale, large scale, as
well as precise temporal and spatial heterogeneity data[2].
The spectral
variation hypothesis has emerged as a significant theory in remote sensing
biodiversity research[3?C5]. Building upon this theory, Rocchini
proposed the remote sensing Rao??s Q index in 2017. Specifically, remote sensing
pixel values represent functional traits while also considering the impact
range of ecological processes to effectively identify differences within a
single ecosystem[6, 7]. Its strength lies in monitoring
spatiotemporal changes, compensating for traditional biodiversity research
shortcomings in large scale quantification over a short period. This index has
therefore been extensively employed to investigate the diversity of forest
plants in various climatic zones[8, 9] and can effectively
characterize the spatiotemporal heterogeneity of Hainan??s mangroves[10].
However, comprehensive forest plant diversity datasets covering extensive
regional scales and diverse climatic zones are absent in China. Moreover,
research focusing on macro-scale forest plant diversity remains scarce. In this
context, the remote sensing Rao??s Q index is introduced in this study to
comprehensively analyze the spatial distribution of forest plant diversity in
China and its temporal dynamics[11], with the overall aim to offer
insights for guiding overall biodiversity conservation planning and ecological
quality assessment.
2 Metadata of the Dataset
Table
1 provides the details of yearly remote sensing Rao??s Q index dataset of forest
in China (2000?C2017)[12]. It includes the
dataset full name, short name, authors, year of the dataset, temporal
resolution, spatial resolution, data format, data size, data files, data
publisher, and data sharing policy, etc.
3 Methods
3.1 Algorithm Principle
Rao??s
Q index, also known as Rao??s quadratic entropy index, is a widely used
functional diversity measure in ecological studies, particularly for
characterizing variations in functional traits[14]. In 2017,
Rocchini introduced the remote sensing Rao??s Q index algorithm by integrating
remote sensing data with the conventional Rao??s Q index[6].
Specifically, the pixel value represents the functional trait, and the
proportion of a certain pixel value represents the relative abundance of the
trait. Greater uniformity is indicated by closer relative abundances within the
window. The distance matrix is created using the disparity in adjacent pixel
values; greater discrepancy in pixel values corresponds to greater distance. A
higher Rao??s Q index signifies more pronounced distinctions in functional
traits and greater diversity. The index is calculated as follows:
(1)
(2)
Table 1 Metadata summary of the Yearly
remote sensing Rao??s Q index dataset of forest in China (2000?C2017)
Items
|
Description
|
Dataset full name
|
Yearly
remote sensing Rao??s Q index dataset of forest in China (2000?C2017)
|
Dataset short name
|
ChinaForest_Rao
|
Authors
|
Jiang, X. AAE-1541-2021, State
Key Laboratory of Resources and Environmental Information System, Institute
of Geographic Sciences and Natural Resources Research, Chinese Academy of
Sciences; University of Chinese Academy of Sciences, jiangx.20b@igsnrr.ac.cn
Cai, H.Y. Y-8555-2019, State
Key Laboratory of Resources and Environmental Information System, Institute
of Geographic Sciences and Natural Resources Research, Chinese Academy of
Sciences, caihy@igsnrr.ac.cn
Yang, X. H. AAC-8887-2021,
State Key Laboratory of Resources and Environmental Information System,
Institute of Geographic Sciences and Natural Resources Research, Chinese
Academy of Sciences; University of Chinese Academy of Sciences,
yangxh@igsnrr.ac.cn
|
Geographical region
|
China
|
Year
|
2000‒2017
|
Temporal resolution
|
yearly
Spatial resolution
5 km
|
Data format
|
.tif
|
Data
size
|
5.17
MB (in compression)
|
Data files
|
The dataset contains 1 folder:
??ChinaForest_Rao?? contains the
yearly remote sensing Rao??s Q index dataset of forest in China (2000?C2017) in
.tif format. This dataset comprises 72 data files, with file names containing
time and phase information. For instance, ??ChinaForest_Rao_2000.tif??
represents the remote sensing Rao??s Q index of China forest in 2000, with a
spatial resolution of 5 km. A higher value indicates greater forest diversity
|
Foundations
|
Ministry of Science and
Technology of the People??s Republic of China (2023FY101000??2017YFC0503803)
|
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[13]
|
Communication and searchable
system
|
DOI, CSTR, Crossref, DCI,
CSCD, CNKI, SciEngine, WDS/ISC, GEOSS
|
|
|
|
|
|
|
In these
equations, Q stands for Rao??s Q index, dij represents the difference
in traits i and j, denoted as the dissimilarity between adjacent pixels i and
j, n is the total number of pixels in the sliding window, S is the number of
pixel values in the sliding window, pi, pj are the
relative abundances of traits i and j, expressed as the proportion of pixel
values of i and j in the sliding window. In this study, Rao??s Q index was
calculated using the RStudio platform.
3.2 Methodology
The technical route is shown in
Figure 1. The dataset preparation process involves the following steps: (1)
Preprocessing of NDVI (normalized difference vegetation index) data. Annual
NDVI data were obtained from the Resources and Environmental Science and Data
Center of the Chinese Academy of Sciences. To facilitate the application of
Rao??s Q algorithm, the NDVI range was converted from 0?C1 to 0?C10,000, and the
spatial resolution was resampled to 5 km ?? 5 km. (2) The spatial range of forest was determined. The land
cover data acquired from the Space Information Innovation Institute of the
Chinese Academy of Sciences were employed for forest cover extraction, and the
forest NDVI was obtained by clipping the NDVI. (3) Rao??s Q index calculation.
The forest Rao??s Q index was computed on the RStudio platform using the Rao??s Q
index algorithm. (4) Data verification. Spatial and numerical comparison of the
consistency between Rao??s Q index and gymnosperm species richness was
conducted. (5) Forest Rao??s Q index dataset generation.
Figure 1 Flowchart of dataset generation process
|
4 Data Results and Data Validation
4.1 Dataset Composition
The naming method, data
description, data format, number of files and data size of the constituent
files of yearly remote sensing Rao??s Q index dataset of forest in
China (2000?C2017) are shown in Table 1.
4.2 Spatial Distribution of Rao??s Q Index in
Chinese Forests
Figure 2 shows the spatial
distribution of Rao??s Q index of China??s forests for various years, with values
from 0.25?C2,296. High values were found for the Tianshan Mountains, Luliang
Mountains, south of the Himalayas, the Hengduan Mountains, and the Wuyi
Mountains-Nanling Mountains, whereas lower values are observed for the Lesser
Khingan, Greater Khingan, and Changbai Mountain regions. Consequently, the
high-value regions exhibit great variabilities in forest functional traits and
boast rich forest plant diversity. Conversely, the corresponding forest plant
diversity in the northeastern regions is limited.
Figure 2 Maps of spatial distribution of Rao??s Q
index of forests in China
4.3 Data Validation
Large-scale field surveys of biodiversity
that take into account temporal and spatial changes face enormous challenges. Biodiversity data across the country are
extremely limited, and only spatial distribution data on gymnosperm species
richness based on counties as statistical units were available in 2009[15]. Pinaceae, Cupressaceae and Taxaceae are not only
the main families of evergreen coniferous forests, but also typical
representatives of gymnosperms. The
spectral properties of gymnosperms and evergreen coniferous woods are
remarkably uniform. Therefore, Rao??s Q index of evergreen coniferous forests
was compared with the species richness of gymnosperms from the aspects of
spatial distribution and statistics. In terms of space, to be consistent with
the species richness statistical unit, Rao??s Q index was first calculated and
spatialized at the county level, and subsequently, the two were compared as
shown in Figure 3. Approximately 5,400 valid samples were obtained by randomly
generating sample sites throughout the entire national forest and extracting
the matching Rao??s Q index and species richness. The data are discrete, with a
species richness range of 0?C35. Rao??s Q index is based on continuous data,
ranging from 0.25 to 2,269. There is a range associated with each species´
richness value and the Rao??s Q index value. Table 2 shows the comparison of
some species richness values with the maximum, minimum, and mean values of
Rao??s Q index. Only the mean values are shown as the median, mode, and mean
were close. Rao??s Q algorithm for remote sensing can only accept integers as
input data. In this study, NDVI values between 1 and 10,000 are used as input
data. The disparity in pixel values reflects highly distinct trait features.
Furthermore, inside the 3 ?? 3
sliding window, there are variations from low to high uniformity. Rao??s Q index
for distant sensing, thus, has a larger range of values and more pronounced
functional characteristic differences. Additionally, it has a spatial
resolution of 5 km, and species richness is a county-level statistical unit. As
a result, the minimum and maximum values of Rao??s Q index for n pixels within
the same county unit differ significantly.
The spatial distribution of species richness is essentially
compatible with Rao??s Q index of evergreen coniferous forests. Whilst the
low-value areas are mostly found in the northeast, the high-value areas of both
are concentrated in the Wuyi Mountains-Nanling and the southeast
Himalayas-Hengduan Mountains. In statistical terms, the highest value of Rao??s
Q index fluctuates randomly as species richness rises, and the minimum and mean
values gradually increase. The mean of Rao??s Q index increases dramatically,
especially when the species richness exceeds 15, leading experts to assume that
the mean is more representative. Regression analysis modeling using species
richness as the independent variable and the mean Rao??s Q index as the
dependent variable showed that the two were highly fitted (R2 = 0.66, P
< 0.001). In summary, Rao??s Q index can adequately characterize forest plant
diversity.
Figure 3
Spatial
comparison maps of gymnosperm species richness with Rao??s Q index in evergreen
coniferous forest
Table 2 Comparison of gymnosperm species richness
and Rao??s Q index values of evergreen coniferous forests
gymnosperm species richness
|
Rao??s Q index
|
gymnosperm species richness
|
Rao??s Q index
|
Max
|
Min
|
Mean
|
Max
|
Min
|
Mean
|
1
|
1,797.13
|
0.25
|
290.91
|
19
|
1,948.00
|
56.40
|
525.82
|
3
|
1,901.88
|
17.00
|
326.31
|
21
|
1,390.89
|
17.25
|
484.65
|
5
|
1,405.78
|
6.75
|
286.56
|
23
|
1,259.11
|
18.22
|
420.01
|
7
|
1,640.00
|
35.11
|
296.00
|
25
|
1,211.12
|
95.00
|
460.75
|
9
|
1,948.20
|
21.11
|
318.20
|
27
|
1,135.6
|
114.25
|
510.12
|
11
|
2,095.50
|
78.75
|
315.14
|
29
|
1,481.56
|
25.56
|
482.08
|
13
|
1,477.25
|
59.00
|
281.84
|
31
|
1,481.56
|
166.14
|
456.28
|
15
|
1,225.11
|
23.25
|
295.73
|
??32
|
894.06
|
83.55
|
397.43
|
17
|
1,923.56
|
26.50
|
399.24
|
|
|
|
|
5 Discussion and Conclusion
In this study, the
remote sensing Rao??s Q index is introduced, marking the first application of
this index to characterize the diversity of forest plants in China. The Rao??s Q
index dataset of forest remote sensing in China covers the period from 2000 to
2017, with a spatial resolution of 5 km and a temporal resolution of yearly. It
provides a fresh monitoring indicator for regional ecological quality
assessment, supporting the formulation of relevant policies for forest plant
diversity protection and the enhancement of regional ecological quality. Remote
sensing technology has greatly promoted the study of biodiversity at the macro scale,
and the remote sensing Rao??s Q index algorithm is based on the definition of
Rao??s Q index in ecology. To create a distance matrix that characterizes the
spatial range of ecological processes, it makes use of neighborhood pixels and
a sliding window[16]. This dataset only covers Chinese forests and
uses the NDVI as the data source. However, Rao??s Q index values simulated by
other remote sensing vegetation indices have been applied to tropical,
temperate, and subtropical regions, and this index is not limited to forest
ecosystems[8, 9]. In the early stage of the study, the leaf area
index, the enhanced vegetation index, and the ratio vegetation index were used
as data sources to simulate the LAI-Rao??s Q index, EVI-Rao??Q index, and
RVI-Rao??s Q index of Chinese forests. By comparison, the NDVI-Rao??s Q index had
a higher consistency with species richness, followed by the LAI-Rao??s Q index,
whereas the relationship between the EVI-Rao??s Q index and the RVI-Rao??s Q
index and species richness was not obvious. Notably, the remote sensing Rao??s Q
index is not equivalent to species richness, and here, it only represents the
forest plant diversity at the macro scale. At present, the remote sensing Rao??s
Q index is still in the exploratory stage, and more detailed biodiversity data
are required to verify it and to further explore the ecological information it
represents.
Author Contributions
Jiang,
X. is responsible for the paper writing, the processing of Rao??s Q index data
as well as data analysis; Cai, H. Y. is responsible for overall design for
dataset production, and paper writing; Yang, X. H. carried out for the review
of data processing methods, data quality control and manuscript improvement.
Conflicts of Interest
The
authors report no conflicts of interest.
References
[1]
Pimm, S. L., Russell, G. J.,
Gittleman, J. L., et al. The future
of biodiversity [J]. Science, 1995,
269(5222): 347‒350.
[2]
Guo, Q. H., Hu, T. Y., Jiang,
Y. Q., et al. Advances in remote
sensing application for biodiversity research [J]. Biodiversity Science, 2018, 26(8): 789‒806.
[3]
F??ret, J. B., Asner, G. P. Mapping tropical forest canopy diversity using
high-fidelity imaging spectroscopy [J]. Ecological
Applications, 2014, 24(6): 1289‒1296.
[4]
Wang, R., Gamon, J. A. Remote
sensing of terrestrial plant biodiversity [J]. Remote Sensing of Environment, 2019, 231: 111218.
[5]
Palmer, M. W., Earls, P. G., Hoagland,
B. W., et al. Quantitative tools for
perfecting species lists [J]. Environmetrics,
2002, 13(2): 121‒137.
[6]
Rocchini, D., Marcantonio, M.,
Ricotta, C. Measuring Rao??s Q diversity index from remote sensing: an open
source solution [J]. Ecological Indicators,
2017, 72: 234‒238.
[7]
Rocchini,
D., Marcantonio, M., Re, D. D., et al.
Time-lapsing biodiversity: an open source method for measuring diversity
changes by remote sensing [J]. Remote Sensing of Environment,
2019, 231: 111192.
[8]
Khare,
S., Latifi, H., Rossi, S. A 15-year spatio-temporal analysis of plant
??-diversity using Landsat time series derived Rao??s Q index [J]. Ecological Indicators, 2021, 121: 107105.
[9]
Khare, S., Latifi, H., Rossi,
S. Forest beta-diversity analysis by remote sensing: how scale and sensors
affect the Rao??s Q index [J]. Ecological
Indicators, 2019, 106: 105520.
[10]
Wang, D. Z., Qiu, P. H., Wan,
B., et al. Mapping ??- and ??-diversity
of mangrove forests with multispectral and hyperspectral images [J]. Remote Sensing of Environment, 2022, 275:
113021.
[11]
Jiang, X., Cai, H. Y., Yang, X.
H., et al. Temporal and spatial
evolution of Rao??s Q index of forest in China [J]. Acta Ecologica Sinica, 2023, 43(8): 3045‒3056.
[12]
Jiang, X., Cai, H. Y., Yang, X.
H. Yearly remote sensing Rao??s Q index dataset of forest in China (2000-2017) [J/DB/OL]. Digital
Journal of Global Change Data Repository, 2024.
https://doi.org/10.3974/geodb.2024.03.08.V1.
https://cstr.escience.org.cn/CSTR:20146.11.2024.03.08.V1.
[13]
GCdataPR Editorial Office.
GCdataPR data sharing policy [OL]. https://doi.org/10.3974/dp.policy.2014.05
(Update 2017).
[14]
Petchey, O. L., Gaston, K. J.
Functional diversity (FD), species richness and community composition [J]. Ecology Letters, 2002, 5(3):
402‒411.
[15]
Li, G., Shen, Z. H., Ying, J.
S., et al. The spatial pattern of
species richness and diversity centers of gymnosperm in China [J]. Biodiversity Science, 2009, 17(3): 272‒279.
[16]
Hern??ndez-Stefanoni, J. L.,
Gallardo-Cruz, J. A., Meave, J. A., et al.
Modeling ??- and ??-diversity in a tropical forest from remotely sensed and
spatial data [J]. International Journal
of Applied Earth Observation and Geoinformation, 2012, 19: 359‒368.