1. Introduction
The vegetation growth and biomass development of forest plants and crops are directly related to the capacity of plants to intercept, transmit, and absorb solar energy in the form of incoming photosynthetically active radiation, often known as PAR [
1,
2,
3,
4,
5,
6,
7]. When characterizing the canopy architecture arrangement of plants, vegetation indices such as the leaf area density (LAD), leaf area index (LAI), and fractional vegetation cover (f
c) provide information on the canopy status regarding the assemblage of above-ground plant elements (leaves, stems, branches, etc.) on a spatio-temporal basis [
8]. The LAD index concerns the one-sided green leaf area per unit of canopy volume [
9]. The LAI is often defined as the total area occupied by plant leaves per unit area of the ground surface, while f
c is the fraction of surface land occupied by plant elements [
10]. The LAI is also defined as the integral of the LAD over canopy height [
11].
Canopy architecture variables directly influence environmental biophysics processes associated with crop yield, plant transpiration, and carbon retention [
12,
13,
14]. Understanding canopy architecture has potential benefits for maximally utilizing commercial plants’ or crops’ land area, space, and light energy [
15]. Also, the canopy architecture arrangement has a vital influence on the dynamics regarding the physical processes of water vapor and carbon exchange within the soil–plant–atmosphere continuum [
16,
17,
18,
19]. In the field of environmental biophysics, the LAI and f
c are related to each other through the light attenuation (or “canopy gap fraction”) theory [
20,
21].
The light attenuation concept relies on the assumption that as PAR light reaches a vegetation surface, the interactions between the light beam and the number of plant elements (leaves, stem, branches, etc.) cause light to be transmitted, absorbed, or reflected by the plant elements [
8]. Thus, the PAR flux above the canopy is reduced as the light beam travels through the canopy towards the ground surface, which constitutes the “canopy gap fraction” (f
PAR) between the source of incoming PAR flux above the canopy (φ
o) and the downward short-wave irradiance (light flux) within the canopy (φ
down). Several studies indicate that f
PAR can be explained and modeled using a decaying exponential function based on the Beer–Lambert spectroscopy law for randomly distributed canopy leaves [
22,
23,
24,
25], as indicated by Equations (1) and (2):
where φ
down and φ
o are measured in W/m
2, LAI units are in m
2/m
2, f
PAR is dimensionless (0 to 1), and k
p is the light extinction coefficient (dimensionless). The f
PAR variable indicates the ratio of the incoming PAR flux that is attenuated within the canopy and that reaches the ground surface. Thus, f
c is often defined as “1 − f
PAR”, the fraction of PAR flux absorbed or intercepted by the plant elements, as indicated in [
26].
The k
p parameter has its physical meaning associated with the decay rate of the PAR irradiance within the canopy [
27] and serves as an input for forest and canopy growth modeling [
28,
29], evapotranspiration estimation using surface energy balance approaches [
30,
31,
32,
33], ecosystem flux modeling [
34], and spectral pixel decomposition into soil and vegetation composites [
35]. Furthermore, the parameter k
p depends on the canopy structure elements, the position of the sun relative to the ground surface at a given time of the day, and the multispectral light leaf response [
36,
37,
38,
39]. Typical values of k
p for crops range from 0.30 to 1.50 and are associated with a given canopy species type [
40]. For maize [
41] (
Zea Mays L.), reported k
p values in the literature vary from 0.40 to 0.72 when maize is fully developed at maximum LAI values [
42,
43,
44].
Direct measurements of k
p are not feasible due to a lack of specific instrumentation to obtain on-site data. Thus, on-site k
p values are often retrieved by solving Equations (1) and (2) for k
p with measurements of φ
o, φ
down, and the LAI as inputs [
45]. Measurements of f
PAR are commonly performed using PAR detectors above the canopy and at the ground surface level. LAI measurements are commonly performed using destructive [
46,
47,
48] and non-destructive [
9,
46,
49,
50] techniques. Even though LAI and f
PAR measurements are widely used in environmental studies, they are often tedious, and the data collection is labor intensive [
51]. When it comes to agricultural fields in particular, surface heterogeneity conditions (e.g., soil water status, soil texture, soil salinity, soil compaction, differences in canopy architecture development, cropland field layout) are often present, and they require extensive sampling locations (point-based data) to accurately represent the inherent spatial variability in cropland fields [
52,
53]. Thus, modeling k
p has been used to obtain estimates of the characteristics of light attenuation in vegetated surfaces for the past 44 years [
27,
33,
36,
45,
54,
55,
56,
57,
58,
59].
In Japan, ref. [
58] developed a k
p model for maize and rice using a locally calibrated linear model that had the LAI as a predictor. Ref. [
27] developed a model for k
p that assumes an ellipsoidal inclination angle distribution for plant canopies and uses the leaf geometry ratio between horizontal and vertical projections and the solar zenith angle as predictors. The overall accuracy of [
27] k
p model, in terms of the root mean square error (RMSE), was between 0.004 and 0.01 for data obtained in maize, soybeans, and sunflower canopies in England. Ref. [
36] developed semi-empirical models for f
PAR using different vegetation indices and provided linear models that relate k
p to an equivalent light extinction coefficient derived for a given vegetation index using local data from sugar beet and wheat fields in France and Netherlands. Ref. [
55] linearly modeled k
p using the normalized-difference vegetation index (NDVI) as a predictor for watershed plant growth modeling. Ref. [
55] modeled plant growth using the Soil and Water Assessment Tool (SWAT) and found that k
p had a large spatial variability at a regional scale, with k
p values ranging from 0.03 to 2.90 across a wide range of vegetation cover types (e.g., coniferous trees, broad-leaved forests, shrubs, and others).
Ref. [
56] estimated k
p for apple orchards in Chile through an exponential model using f
c as a predictor and found that the non-linear k
p model improved the estimation of the LAI by 28% compared to a tabulated or constant value of k
p for apple trees. Ref. [
59] used the k
p model from [
36] to estimate k
p for a wide range of urban heterogeneous forest types in Washington, USA, using light detection and ranging (LIDAR) aerial data and found that the “canopy gap fraction” approach based on Beer’s law [
24], which assumes localized surface homogeneity, does not accurately represent urban scenarios where tree heterogeneity is significant. Ref. [
45] used machine-learning regression as a random forest algorithm to predict the LAI and k
p for deciduous forests in India using Landsat-8 multispectral data. They found that the machine-learning algorithm predictions of k
p had a normalized RMSE or NRMSE of 12% and explained 77% of the variability in observed k
p. Ref. [
57] investigated the use of a combined “canopy gap fraction” and NDVI to estimate the LAI for three wheat crop varieties with different leaf angle orientations (e.g., erectophile, planophile, and middle types). They found that k
p and NDVI were inversely and linearly related to the fitted k
p model, explaining 88% to 91% of the variability in observed wheat k
p across the three crop varieties. Ref. [
54] estimated f
PAR for maize fields in Argentina using seven crop genotypes and five different k
p modeling approaches based on non-linear regression and Bayesian models. They found that the five k
p models developed did not perform well when estimating f
PAR since f
PAR values were outside the 0 to 1 range of expected values, and k
p estimation was unrealistic for typical maize values published in the literature. Ref. [
54] indicated that statistical models like Bayesian modeling approaches must be used cautiously when predicting f
PAR and k
p.
Even though several studies provide different modeling approaches to k
p for specific vegetation types, significant issues impede the use of these models in cropland fields. First, most k
p published models are purely empirical and have the limitation of being suitable for conditions that resemble the initial data used to calibrate the model. Second, the spatial heterogeneity of agricultural fields often presents challenges in accurately determining canopy structure and k
p. The complexity of k
p being influenced by different irrigation water management practices and crop row layouts has been the center of discussion in previous publications concerning maize, sorghum, soybean, and sunflower canopies [
43,
60]. A study [
60] indicated that under varying conditions of soil moisture (a surrogate for changing canopy structure), the k
p variable depends on the differences in the spatiotemporal canopy structure (e.g., the LAI or f
c) and might be subject to variability within cropland fields. Ref. [
43] showed a linear decrease in k
p as the crop row layout increased.
To our current knowledge, there has never been a study that attempted to develop a semi-empirical spatial model for maize k
p that incorporates multiple canopy architecture features (e.g., the LAI and f
c) and NDVI composites for soil and vegetation using data from several different multispectral remote sensing platforms. The inherent non-linear nature of light transmission, absorption, and scattering within a surface requires more sophisticated approaches to describe the canopy structure in agricultural fields. For row crops such as maize, partial canopy cover conditions are predominant throughout the growing season, and partitioning the ground surface between soil and plants is critical to enhance environmental physics modeling [
61]. Maize is one of the major commodities in the United States (USA) and around the globe, supporting the food production, energy, and forage sectors of the local and global economy [
62]. With the advent of climate change through global warming scenarios [
63] indicated that a 29% loss in maize yield in the USA would be related to extreme drought events in the next thirty-five years. Thus, finding ways to advance spatial modeling of maize environmental properties, such as k
p, is critical to improving cropland management practices focusing on the sustainable use of water and nutrients, pest infestation detection, and crop yield optimization.
Hence, this study aimed to: (a) develop a novel semi-empirical model for maize k
p estimation using multiple canopy architecture features (i.e., LAI and f
c) and NDVI partitioning into soil and canopy composites derived from multispectral data from several remote sensing (RS) platforms (e.g., spaceborne, airborne, and proximal); (b) independently evaluate the performance of the proposed semi-empirical maize k
p model, comparing it to the most used k
p approach from [
27]; and (c) run a sensitivity analysis to identify the most critical variables that add uncertainty to the semi-empirical maize k
p predictions.
4. Conclusions
In this study, the calibration of the kp model resulted in the development of a robust predictive model for an RS-based spatial kp characterization. The kp model, determined with a regression coefficient of determination R2 value of 0.95, demonstrated a strong statistical linear relationship between kp and kv. The regression coefficients, including the intercept and slope, exhibited 95% confidence intervals and p-values that seem to validate the kp model’s reliability for future predictions. The kp model performance analysis considered maize surface multispectral data from several RS sensors, revealing consistent statistical results across the various sensors investigated. Although slight variations existed in intercept and slope values, for the kp model, among the RS sensors, all platforms exhibited strong R2 values, which emphasizes the novel kp model’s consistent performance.
A model performance comparison with the k
p models by [
27] highlighted the advantages of using the proposed k
p model to considerably improve the spatial k
p estimation accuracy. An overall 44% improvement in accuracy was observed when using the novel k
p model compared to the [
27] models. The novel k
p approach not only outperformed the classic k
p models but also captured temporal variability more effectively, which highlights its applicability in dynamic environmental conditions. A global sensitivity analysis showed the significance of NDVI in predicting k
p across the different remote sensors investigated, with f
c playing a more crucial role in NDVI
soil predictions than in NDVI
c.
While the study provides insights into model performance, future research directions should focus on addressing observed underestimations and variations in specific sensors due to their spectral and spatial differences. Since the importance of sensor-specific characteristics is critical to address the quality of data inputs for modeling environmental variables, the use and application of the calibrated and novel kp model must be interpreted with care, given the nature of the calibration process and data collection used in this research. For a more robust validation, more research must be performed regarding other valuable row crops under different climate zones to evaluate any potential differences in the calibration coefficients. Also, incorporating more RS sensors at a much larger spatial scale might provide the conditions to use the novel kp model for large-scale modeling (e.g., watershed). Therefore, the continuous refinement and validation of the kp model using diverse datasets and additional sensors will further enhance its applicability to different local field conditions and provide the means to expand the use of this novel kp model for a wide range of environmental applications.