Prior to the comprehensive computation of the IRSEI, it is imperative to explore and calculate the component indices within the IRSEI framework. As critical constituents in the assessment of the ecological environmental quality of farm research areas, these component indices need to be precisely controlled to provide an accurate foundation for the subsequent coupling of component indices. The theoretical underpinnings and specific calculation methods for the five component indices—greenness, humidity, dryness, heat, and salinity—are elaborated upon in detail below.
3.2.2. Calculation of the Humidity Index
The humidity index primarily characterizes the moisture content of vegetation and soil within image coverage. This index is extensively employed across various domains, such as ecological monitoring and evaluation [
41,
42,
43]. The humidity index can be represented using the WET component of the tasseled cap transform (TCT), also known as the K-T transform. The WET component is essentially a feature component generated through the K-T transform [
44]. The K-T transform can be viewed as a specialized form of principal component analysis (PCA). However, a notable distinction is that, unlike conventional PCA, the K-T transform utilizes a fixed transformation matrix. The K-T transform introduces a constant matrix into the digitized original remote sensing image and translates it into a new feature space with which humidity can be aptly transformed to obtain results. The transformed components can enhance image information and effectively represent spatial moisture content. The transformation formula is as follows:
where
represents the image after the K-T transformation,
denotes the matrix coefficients of the transformation, and
signifies the original image. To perform a K-T transformation on remote sensing images, it is necessary to obtain information about the transformation matrix coefficients. The transformation matrix coefficients vary with the different settings of the satellite sensors; thus, the coefficient settings of the WET calculation formula are not identical. Expert experience can guide the humidity calculation formula, corresponding to different Landsat satellite sensors through different parameter settings [
41,
42]. The specific settings of the transformation matrix coefficients for the humidity indices are shown in
Table 1 below.
Through the configuration of different K-T transformation matrix coefficients, various WET index calculation formulas for different sensors can be derived, as shown below:
The
WET index calculation formula for Landsat 5 TM is as follows:
The
WET index calculation formula for Landsat 7 ETM+ is as follows:
The
WET index calculation formula for Landsat 8 OLI is as follows:
In the aforementioned three equations, represents the reflectance in the blue band, denotes the reflectance in the green band, signifies the reflectance in the red band, corresponds to the reflectance in the near-infrared band, is indicative of the reflectance in the shortwave infrared-1 band, and stands for the reflectance in the shortwave infrared-2 band. A higher WET value suggests increased humidity.
3.2.4. Calculation of the Heat Index
This study investigated the use of land surface temperature (LST) as a representation of heat [
48]. The thermal infrared bands of the Landsat satellite series are sensitive to the thermal radiation of surface coverings, allowing them to be extensively utilized in monitoring LST variations [
49]. Regarding LST computations, there are two conventional methodologies: the single-channel algorithm and the multichannel algorithm. The single-channel algorithm encompasses methods such as atmospheric correction (also referred to as the radiative transfer equation), the universal single-channel method, and the single-window algorithm. The multichannel algorithm primarily includes the split-window algorithm and the temperature emissivity separation algorithm. In this chapter, the atmospheric correction method is adopted for LST inversion. The principle of calculating surface temperature using the atmospheric correction method involves initially aggregating the total thermal radiation detected via the satellite sensor. Subsequently, various techniques have been employed to simulate and quantify the influence of the atmosphere on surface thermal radiation. The total thermal radiation is subsequently reduced by the radiation amount consumed by atmospheric effects, yielding the actual thermal radiation at the surface. This genuine surface thermal radiation undergoes mathematical transformation to derive the inverted surface temperature. The process of calculating surface temperature using the atmospheric correction method is illustrated in
Figure 3.
Figure 3 shows that the computation of LST necessitates several intermediary steps, involving the acquisition of remote sensing imagery and some preprocessing routines, as well as the calculation of certain indices and parameter retrieval. The specific intermediary processes and steps are described in detail below.
- (1)
Image preprocessing
This paper divides the preprocessing of remote sensing imagery into two distinct segments. The initial segment pertains to the processing of multispectral data (MTL.txt), with a preprocessing sequence encompassing radiometric calibration, atmospheric correction, image mosaicking, and image cropping. The second segment addresses image preprocessing for thermal infrared data and follows a procedure of radiometric calibration, image mosaicking, and image cropping. These divergent image preprocessing methodologies are tailored to accommodate the disparities in computational approaches for different component indices. For instance, prior to the computation of indices such as greenness, wetness, dryness, and salinity, the first preprocessing method is needed. Conversely, the computation of the thermal index necessitates radiometric calibration information from the thermal infrared band, thereby integrating both preprocessing techniques.
- (2)
NDVI calculation
The calculation of the NDVI is synonymous with the computation of the greenness index, as shown in Formula (1).
- (3)
Vegetation cover calculation
Vegetation cover is primarily calculated by comparing the vertical projection surface of vegetation to the overall study area, including branches, stems, and leaves in the projection. Numerous studies have focused on estimating vegetation cover using remote sensing methods, among which vegetation indices are a frequently applied approach. A commonly used vegetation index is expressed as
. The vegetation cover calculation outlined in this chapter was calculated mainly through
. In the imagery, areas with and without vegetation cover, as well as monotypic vegetated areas, are visible. Vegetation cover was characterized by calculating the ratio of the difference between
and the nonvegetated area to the difference between completely vegetated and nonvegetated areas. The formula can be expressed as follows:
Here,
represents the magnitude of vegetation coverage,
denotes the
value for areas devoid of vegetation coverage, and
signifies the
value for completely vegetated areas. In the experiments of this chapter, based on empirical evidence,
and
were set to 0.05 and 0.7, respectively. This implies that, when the value of
within a pixel exceeded 0.7, the value of
was set to 1; when the value of
within a pixel was less than 0.05, the value of
was set to 0 [
50].
By integrating the formula for vegetation coverage with the set parameters for
and
, the formula can be transformed into a band calculation method. The band calculation formula is as follows:
Herein, is the result of .
- (4)
Calculation of surface emissivity (SE)
Based on prior research, remote sensing images are categorized into three types: water bodies, urban areas, and natural surfaces [
51]. In this chapter, the following methodology is adopted to compute the surface emissivity for the study area: the emissivity value for water body pixels was set to 0.995, while the emissivity estimates for natural surface pixels and urban pixels were represented by
and
, respectively [
50,
51]. The specific formulas are as follows:
Incorporating these parameters allows the equation to be transformed into a band calculation method. The formula for band calculation is as follows:
where
denotes the surface reflectance ratio,
represents the value of
, and
signifies the vegetation cover fraction
.
- (5)
Calculation of blackbody radiance values under identical temperature conditions
The computation of radiance values involves three types of radiative signals received via the detector from the Landsat satellite. The first signal pertains to the atmospheric transmittance in the thermal infrared band, which represents the portion of ground-level radiance that, after being filtered through the atmosphere, is captured via the satellite sensor (
). The second signal is the upward atmospheric radiance (
). The third signal is the energy reflected back after being radiated downward by the atmosphere and received via the detector (
). These three sets of data can be accessed from a website published by NASA (
http://atmcorr.gsfc.nasa.gov/, accessed on 1 January 2024). Upon acquiring the values of
,
, and
, the formula for calculating the brightness value (
L) of thermal infrared radiation received via the satellite can be expressed as follows:
where
represents the true surface temperature,
denotes the surface emissivity,
signifies the atmospheric transmittance under thermal infrared conditions, and
represents the blackbody brightness value of thermal radiation.
From the aforementioned equation, the brightness
of the blackbody radiation in the thermal infrared band at temperature
can be derived, and the formula is presented as follows:
Through the intervention of the inverse function of Planck’s law, the surface temperature can be obtained. The actual surface temperature obtained at this point is expressed in Kelvin (K), not the Celsius (°C) unit commonly used in general contexts. Consequently, a conversion of temperature units is needed. Converting Kelvin to Celsius merely necessitates subtracting 273.15 from the original temperature. Hence, the expression for
LST is as follows:
In this context,
and
represent predefined constants prior to the satellite launch. The settings for
and
for different sensor types of Landsat satellites are presented in
Table 2.
Due to the susceptibility of the 11th band of Landsat 8 TIRS to interference from stray light and other noise, calibration can introduce significant biases. If introduced into calculations, this approach may compromise the accuracy of subsequent results [
52]. Hence, this study utilizes the 10th shortwave band of Landsat 8 TIRS for computation, employing the corresponding
K1 and
K2 values from the table for analysis.
When translated into band calculation format, the formula is as follows:
Within this context, b1 represents the blackbody radiance image under identical temperature conditions.
From this, the Celsius temperature band calculation formula for Landsat 5 TM can be derived as follows:
The Celsius temperature band calculation formula for Landsat 7 ETM+ is as follows:
The Celsius temperature band calculation formula for Landsat 8 TIRS is as follows:
where
b1 are the blackbody radiance brightness images for the same temperature conditions.
3.2.5. Calculation of the Salinity Index
Soil salinity serves as an effective evaluative metric for the degree of soil salinization. Given that the visible and near-infrared spectral bands of remote sensing exhibit certain responses to soil salinity, it is feasible to consider the estimation of soil salinity information via remote sensing techniques. Recently, inversion research on soil salinity indices using remotely sensed spectral information has garnered growing attention. This method holds advantages for large-scale monitoring, offering benefits such as a continuous temporal sequence and the strong timeliness of data. The results of remote sensing inversion estimations can also serve as a reference, providing assistance for subsequent soil environmental remediation and land reclamation efforts [
53]. This paper employs an integrated salinity index (ISI) that integrates three different remote sensing salinity indices to quantify the soil salinity index of the study area. The first method of integration is the
SI-
S method [
54], which utilizes the red, green, blue, and near-infrared spectral bands for the estimation of the soil salinity index. The calculation formula is as follows:
In this context, denotes the reflectance of the near-infrared band, represents the reflectance of the red band, signifies the reflectance of the green band, and corresponds to the reflectance of the blue band.
The second fusion method is the
SI-
W method [
55], which utilizes the red and green bands to estimate the soil salinity index. The calculation formula is presented below:
where
represents the reflectance of the green band, and
denotes the reflectance of the red band.
The third fusion method is the
SI-
K method [
56], which employs the red band and the near-infrared band to estimate the soil salinity index. The calculation formula is as follows:
where
represents the reflectance of the red band, and
denotes the reflectance of the near-infrared band.
Fusion is conducted by adding the values and then calculating the mean. Prior to fusion, the three indices are normalized to constrain the values within the range of 0 to 1. Given that the SI-S index is negatively correlated with the soil salinity index, a positive correlation transformation is performed in advance. The resultant ISI exhibited a positive correlation with the soil salinity conditions in which higher values indicated a greater degree of salinity, and lower values suggested reduced soil salinity. The calculation formula for the
ISI is as follows:
where
represents the normalized value of
after a positive correlation transformation,
denotes the normalized value of
, and
indicates the normalized value of
.