1. Introduction
Land salinization has significant implications for the ecological environment at a worldwide scale [
1,
2]. Over 1 billion hectares or approximately 10% of the world’s total land resources are at risk of salinization [
3,
4]. In China, the area of land resources affected by salinization is more than 36.3 million hectares [
5], mainly distributed in arid and semi-arid areas [
6] and coastal areas (e.g., the Yellow River Delta) [
7,
8]. By incorporating the management and planning of saline land resources into the national food security strategic system, China has designated such lands as future reserve cultivated land resources [
9]. Precise identification and mastery of the spatial distribution characteristics of saline land, as well as a quantitative description and spatial analysis of land salinization levels, are crucial for optimizing land resource allocation, maintaining ecosystem health, and promoting regional sustainable development.
The causes of land salinization can be categorized into two types: natural salinization and anthropogenic salinization [
10]. Capillary action or evapotranspiration may lead to the rise of groundwater and the accumulation of soluble salts on the soil surface, resulting in varying degrees of salinity [
11]. Land salinization typically occurs in regions characterized by arid climates, high rates of evapotranspiration, shallow water tables, and elevated levels of soluble salts. This phenomenon can lead to a significant reduction in soil productivity and biodiversity, as well as an imbalance in the soil’s acid–base equilibrium and deterioration of regional ecosystems [
12,
13], which has become a major environmental issue that hinders social and economic development and threatens the ecological environment. As a complex and dynamic system, soil changes over time and space [
14,
15]. Therefore, it is crucial to develop effective methods for monitoring the extent of regional land salinization and uncovering its distribution patterns.
The conventional approaches to land salinity measurement contain field surveys and electrical conductivity measurements, which are theoretically accurate but require significant time and labor resources [
16,
17]. Moreover, this method does not allow for the monitoring of spatial distribution patterns in land salinity content. The introduction of satellite remote-sensing technology enables a broad detection range and high acquisition efficiency, thereby facilitating the provision of spectral information on land salinization at short intervals [
18]. By establishing predictive models that correlate remotely sensed soil salt data with ground monitoring, relatively small sample-size verification data are required for assessing land salinization on the ground, which helps reduce monitoring costs. Scholars therefore have utilized RS images and corresponding indexes to investigate and monitor land salinity. For instance, Azabdaftari et al. (2016) computed vegetation indexes to retrieve land salinity in Turkey using Landsat multi-spectral images from four different intervals [
19]. Morgan et al. (2018) forecasted land salinity in Cairo, Egypt, using Sentinel-2 multi-spectral data and neural network classification methods [
20]. Wang et al. (2021) combined Sentinel-2 and three machine-learning methods to estimate and map the land salinity in arid areas of China [
21]. Ge et al. (2022) used Sentinel-2 image, environmental covariates, and hybrid machine-learning approaches to update land salinity with fine spatial resolution and high accuracy [
22]. Kaplan et al. (2023) predicted land salinity using machine learning and Sentinel-2 data in hyper-arid areas [
23]. Alamda et al. (2023) detected land salinity using Lansat-8 OLI image and machine-learning algorithms [
24]. All the studies found that it could be possible to estimate soil salinity to an excellent extent by satellite data. However, the accurate monitoring of soil salinization is constrained by the spatial resolution limitations of satellite remote-sensing images (10–50 m), necessitating the urgent acquisition of high-resolution imagery to provide enhanced support.
Different from satellite RS means, unmanned aerial vehicle (UAV) spectral sensors are highly maneuverable and have been used as an essential data source to monitor land salinity since the 2010s. Ivushkin et al. (2019) investigated the plot-scale assessment of land salinity using three different UAV-mounted sensors [
25]. Zhao et al. (2021) developed and optimized an inversion monitoring model for monitoring soil salt content using UAV multi-spectral remote-sensing data and a backpropagation neural network in northwest Oasis China [
26]. Yang et al. (2021) examined the effect of spring irrigation on land salinity monitoring with a UAV multi-spectral sensor, and found that accurate regional salinity maps could be plotted based on the spectral indices selected by a genetic algorithm [
27]. Yu et al. (2022) proposed a soil salinity retrieval index to investigate the feasibility of the UAV sensor of Sequoria to inverse soil salinity [
28]. Studies have indicated that the index in the visible-to-infrared spectrum may better measure land salinity, which can increase the accuracy of land salinity retrieval. However, UAVs alone cannot detect and monitor land salinity at a regional scale. To boost the spectral resolution to retrieve land salinity, Xie et al. combined Sentinel-2A and UAV multi-spectral images to increase the spectral resolution to retrieve regional land salinity [
29]. Qi et al. (2021) retrieved land salinity in coastal corn planting areas using the Sentinel-2A satellite–UAV–ground integration approach, and found that the use of satellite and UAV images can improve the retrieval accuracy of land salinity [
30]. Even though scholars have tested the ability of land salinity monitoring using Sentinel-2A satellite and UAV images, an in-depth study is essential for the construction of a reliable land salinity retrieval index based on Landsat-9 OLI and UAV images due to the longer time coverage and stability provided by Landsat imagery.
This study selected Kenli District in the Yellow River Delta as the case study area. The aims are to (1) construct monitoring models of the land salinity content based on UAV imagery and field-measured data, (2) construct the relationship between the reflectance of UAV and Landsat-9 OLI satellite images to normalize the reflectance of satellite image, (3) apply the optimal monitoring model to the normalized satellite imagery to achieve scaled-up land salinity monitoring method, and (4) explore the spatial distribution patterns of various grades of salinity soil at a regional scale.
2. Study Area
The study was conducted in the representative cultivated land region of the Kenli district, YRD (37°35′6″~37°35′14″ N, 118°20′31″~118°20′46″ E). The study area contains 9 towns, i.e., Dongying Demonstration Zone (DDZ hereinafter), Dongji Town (DJ), Haojia (HJ), Huanghekou (HHK), Kendong (KD), Kenli (KL), Shengtuo (ST), Xinglong (XL), and Yong’an (YA) with a total area of 1246.51 km2, in which cultivated land covers 894.34 km2. The terrain in the study area is gently sloping with typical alluvial plain landforms. The study area features a temperate continental monsoon climate that is characterized by dry and windy conditions during spring. The potential evapotranspiration–precipitation ratio in the study area is higher than 7, resulting in limited vegetation coverage and severe salt deposition in the soil. The main soil types in the study area are coastal saline alkaline soil and fluvo-aquic soils. The groundwater table has a shallow depth and high mineral content. The cultivated lands in the study area cover 894.34 km2, which is the predominant land-use type.
5. Discussion
This study proposed an index-based method to accurately estimate land salinity content using UAV and the Landsat-9 multi-spectral image framework. Results found that the proposed method can accurately estimate land salinity content with the modeling R2 and RMSE of 0.73 and 1.76 and the validation R2, RMSE, and RPD of 0.75, 1.89, and 2.11, respectively. The salinization degree of most of the cultivated land was at the moderate or below levels (55.76%), while the severely saline soil grade (with a salinity content of 6–8 g/kg) covered 38.41% of the total cultivated land area and was widely distributed throughout the study area. The distribution of saline land has positive spatial autocorrelation (0.311, p = 0.000). High–high cluster types occurred mainly in the Kendong and Huanghekou towns (80%), and the low–low cluster type was found mainly in the Dongji, Haojia, Kenli, and Shengtuo towns (88.46%). The spatial characteristics of different salinity grades varied significantly, so conducting separate spatial analyses is recommended for subsequent studies.
According to the results of the spectral screening analysis, significant correlation links were observed between soil salinity and visible (G, R) as well as NIR bands. The study found that the primary minerals responsible for land salinization in the study area are rock salt and gypsum, with Cl
− and SO
42− being the main anions and Na
+ and Ca
2+ being the main cations [
40]. Another research demonstrated that gypsum exhibits molecular vibration absorption spectrum characteristics in the NIR range, and that both visible and NIR bands can be utilized to collect spectral information on SO
42− [
41]. Additionally, studies have indicated that saline soil displays higher reflectance in the visible and NIR ranges compared to non-saline land [
42]. Therefore, the proposed index is reliable for predicting land salinity content.
Compared to existing studies, this study found a weak correlation between the reflectance of the red-edge band and land salinity content. Since its launch in 2015, Sentinel-2 imagery has been utilized for regional land salinization analysis due to its relatively higher spatial resolution (10 m) compared to Landsat-8/9 (15 m after fusion). Furthermore, with three red-edge bands available, Sentinel-2 imagery can better utilize vegetation information for retrieving land salinization content. In this study, it is found that a high-precision land salinization monitoring model can be constructed without considering the red-edge band. Considering the wider temporal coverage of Landsat images (from 1972 to the present), the Landsat series image has the potential to be used as the main data source for land salinization monitoring. Further studies can use Landsat images and the proposed method in this study to monitor the evolution of land salinization in the study area in the recent 50 years.
Based on the spatial analysis results of land salinization obtained in this study, low degrees of land salinity were found in HJ, KL, and ST in the southwest of the study area, and saline land areas were distributed in the study area and prevailed in coastal towns, e.g., HHK and YA. HJ, KL, and ST are relatively far from the sea, and the freshwater resources of the Yellow River, crop planting, and drainage practices jointly mitigate land salinization [
43]. This also explains why HHK and KD also contained low-salinity areas. Conversely, the northeast coastal area (KD and HHK) is plagued by severe and extreme salinization, which is in line with previous research findings [
44]. These regions were primarily influenced by factors such as low elevation, intrusion of seawater, and facile accumulation of salt on the soil surface. Due to inadequate conditions for agricultural development, it is recommended to plan rationally for fishery and aquaculture activities [
45].
The spatial distribution analysis found that 93.12% of the cultivated land in the study area was affected by land salinization, and the severely saline soil grade covered 38.41% of the total cultivated land area and was widely distributed throughout the study area. Therefore, targeted improvement and treatment measures should be implemented to combat land salinity. In areas affected by seawater intrusion, it is imperative to reinforce drainage systems to prevent or mitigate the upward migration of salinity [
46]. In areas with high land salinity, proper soil management is crucial. Field organization and timely deep loosening and smoothing of the soil are recommended. Additionally, covering the surface of cultivated land with straw can reduce evaporation by creating a residual layer that improves land salinization [
47,
48]. In the course of agricultural production, it is imperative to conserve water resources and adopt rational irrigation practices. To mitigate cultivated land salinization, micro-irrigation systems, agricultural channel laying, and concealed pipe alkali drainage should be considered [
49]. For areas in the east of the study area, the extremely saline land can be planed for fishery and aquaculture activities [
45].
This study proposed a scale-up method to retrieve land salinity in China’s typical coastal area. However, it has limitations. Due to the limited spectral penetration ability, soil samples were only collected from the surface layer (0–10 cm). For the purpose of agriculture and food security, more attention should be given to indirect approaches for assessing root-zone salinization (0–100 cm) [
50]. Moreover, this study estimated land salinity in the Kenli district. Considering the current severe land salinity situation in the Yellow River Delta, future research will focus on the estimation and modeling of land salinity in the entire Yellow River Delta to provide theoretical and methodological support for the formulation and implementation of regional governance policies.