1. Introduction
Wildfires, often known as forest fires, are one of the factors contributing to the devastation of forests. Burnt area mapping is essential for taking preventive measures and determining damage assessments for fire management, in order to suppress fire activities in the upcoming fire season [
1]. A thorough evaluation of the damage to the forest throughout the fire season is provided by the satellite-derived Burnt Area Product. Reflectance is significantly altered by the plant damage caused by a fire event, because the composition of forest vegetation and soil qualities differ [
2]. During the fire season, burned area mapping is crucial for planning mitigation measures and reestablishing vegetation regrowth efforts [
3,
4]. Since fire prevention efforts including planned preparation, mitigation measures, and vegetation regrowth activities need to be prepared, burned area mapping should be accurate and quick [
4,
5].
Kazakhstan launched two satellites, known as KazEOsat 1 and KazEOsat 2, for the management of natural resources; the former has a higher resolution (4 m) than the latter (6.5 m). In this study, high-spatial-resolution KazEOsat 1 satellite datasets are utilized to map the burned area in parts of Kazakhstan. With four bands—blue, green, red, and NIR multispectral bands—and a spatial resolution of four meters, the KazEOSat 1 satellite sits in a Sun-synchronous orbit. Panchromatic data have a spatial resolution of one meter. Using KazEOsat1 records, three distinct indices—the Burn Area Index (BAI), the Ashburn Vegetation Index (AVI), and the Global Environmental Monitoring Index (GEMI)—are investigated for the mapping of burned regions.
2. Study Area
Kazakhstan is the largest nation in Central Asia, bordered by China, Russia, Kyrgyzstan, Uzbekistan, and Turkmenistan. It is the ninth largest nation globally, with forests covering 4.6% of its total geographical area. Due to the severe weather, June through September are the months when forest fires occur most frequently in Kazakhstan. Nearly 39 km
2 of forests burn, resulting in a loss of USD 370,802, according to a report from Kazakhstan’s Ministry of Emergency Situations (
www.aips.kz). Since the beginning of 2019, 499 forest fires have been reported in Kazakhstan’s forest regions, with the total damage amounting to USD 5,89,570, according to the country’s vice minister of ecology, geology, and natural resources (
https://kursiv.kz) (accessed on 20 June 2018).
3. Methods
The New AstroSat Optical Modular Instrument (NAOMI-1), a high-resolution pushbroom imager, is part of the KazEOSat 1 satellite. We downloaded KazEOSat-1 photographs from the official website of Gharysh Kazakhstan. The image product includes a tiff image and metadata in a .DIM format. Since KazEOSat-1 has a 12-bit spectral resolution, each image on a given day has DN values ranging from 0 to 4095. These images were first mosaicked to create a seamless output image. The radiometric calibration of these datasets is achieved in two steps: first, the Digital Number (DN) is converted to sensor radiance, and subsequently to TOA reflectance. KazEOsat-1 is equipped with a NAOMI-1 instrument.
Equation (1) was used to convert the DN values to at-sensor radiance (L).
Gain is also known as the gain coefficients for various bands. It was believed that the bias should be set to zero.
Using Equation (2), we determined the spectral reflectance of each band after converting its DN values to radiance.
where
is the solar zenith angle, ‘Esun’ is the mean solar irradiance at the top of the atmosphere, and ‘d’ is the Earth–Sun distance in astronomical units (0.98496).
Equation (3) is used to calculate the solar zenith angle from the sun elevation angle recorded in the satellite metadata file provided with the satellite data.
The Thuillier standard sun solar system, approved by the CEOS (Committee on Earth Observation Satellites), is the source of “Esun” values. Thus, using the aforementioned formulas, DN values are converted into TOA reflectance for every spectral band.
Three spectral indices—the Ashburn Vegetation Index (AVI), the Burn Area Index (BAI), and the Global Environmental Monitoring Index (GEMI)—were selected for this study to generate the burned area, because the KazEOsat 1 satellite image comprises four spectral bands. The Ashburn Vegetation Index (AVI), which is derived from the following Equation (4) [
6], is a straightforward index that is helpful for measuring the green vegetation in photos.
The spectral distance of each pixel to a reference spectral point, where active burned areas have converged using red and NIR reflectance bands, is used to calculate the Burn Area Index (BAI), which shows the charcoal signal in the red to near infrared region of post-fire images [
7].
The following Formula (5) is used to calculate BAI [
8].
A hybrid vegetation index called the Global Environmental Monitoring Index (GEMI) was developed to extract burned areas using red and NIR bands. It is nonlinear in design to minimize atmospheric effects, and its calculation is based on Equation (6) [
9].
As a result, the four KazEOsat 1 reflectance datasets collected on 25 September 2018 and 5 October 2018, following forest fire occurrences, are used to compute the spectral indices AVI, BAI, and GEMI.
4. Results and Discussion
The Moderate Resolution Imaging Spectroradiometer (MODIS) TERRA and AQUA active fire product (MCD14) were utilized to validate the burned area map, which was obtained from the “Fire Information for Resource Management System (FIRMS)” website [
10]. The accuracy of the number of fire events that fell in burned and unburned areas was determined by calculating the percentage of forest fires that fell in burned areas relative to the overall number of fires that occurred, as shown in
Table 1.
Table 1 revealed that the BAI had the highest accuracy (81.48%; 86.58%), followed by the GEMI (74.07%; 76.83%) and then the AVI (66.66%; 71.95%), with the lowest accuracy.
The images of the burned area map based on the BAI are displayed in
Figure 1a,b and overlaid with the corresponding active fires that occurred on 25 September 2018 and 13 October 2018, respectively.
The results show that the BAI exhibits the greatest degree of accuracy when it comes to identifying burned areas from KazEOsat-1 satellite datasets.
5. Conclusions
Because KazEOsat 1 satellite datasets have a greater spatial resolution (4 m), they are used in this study to map the burned area in Kazakhstan’s various regions. This work analyzed four spectral bands—NIR, blue, red, and green—of the KazEOsat 1 satellite datasets to map the burned area using three spectral indices: AVI, BAI, and GEMI. Prior to calculating the aforementioned spectral indices, TOA reflectance was computed from the DN values for each band. Accuracy was determined based on the quantity of forest fire occurrences that occurred in both burned and unburned areas. The results indicate that, of the three, BAI has the highest accuracy and AVI has the lowest accuracy. As a result, while utilizing the datasets from the KazEOsat 1 satellite, the BAI has the best capacity to highlight the burned area. Given that KazEOsat has a three-day revisit interval, this study will be helpful in mapping Kazakhstan’s burned areas and fire progression.
Author Contributions
K.V.S.B. and K.G. designed the study. K.V.S.B. and S.S. wrote the paper and analyzed the data. S.S., G.K. and G.B. contributed to the critical analysis of the paper. All authors contributed to proof-reading and commenting on the manuscript. All authors have read and agreed to the published version of the manuscript.
Funding
The findings reported in this article were obtained as part of the Republican budget program 008 No. BR0533648/EFP “Development of scientific methods for evaluating soil fertility of North Kazakhstan on the basis of the Earth remote sensing data from KazEOSat—1,2 satellites and geoinformation technologies”, Subprogram 1 “Optimization of technical parameters and a methodological approach to the use of remote sensing data of domestic satellite KazEOSat—1,2”.
Institutional Review Board Statement
Not applicable.
Informed Consent Statement
Not applicable.
Data Availability Statement
The satellite datasets can be downloaded from the Gharysh Kazakhstan official website (
http://www.gharysh.kz).
Conflicts of Interest
The authors declare that this study received funding from the Joint Stock Company. The funder was not involved in the study design, collection, analysis, interpretation of data, the writing of this article or the decision to submit it for publication.
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