1. Introduction
Since the 1970s, with the emergence of a series of problems such as global climate change and environmental pollution, the issue of sustainable development has been of worldwide concern. In 2001, Kates et al. proposed that sustainability science is “the science of studying the dynamic relationship between nature and society at the local, regional, and global scales, and it is the science that provides the theoretical basis and technical means for sustainable development” [
1]. In 2013, Wu et al. noted that landscape is the basic spatial unit of sustainable development research and practice as well as the most operational spatial scale for studying sustainable processes and mechanisms. Landscape sustainability is defined as “the capacity of a landscape to consistently provide long-term, landscape-specific ecosystem services to maintain and improve human wellbeing in the region” [
2,
3]. As a comprehensive interdisciplinary science, landscape sustainability science focuses on three core elements—landscape patterns, landscape services, and human wellbeing [
4]—with the ultimate goal of improving and sustaining human wellbeing. Because sustainability is a human-centered concept [
2], there is a difference between landscape sustainability science and landscape ecology. Landscape sustainability science emphasizes the interaction and the influence between humans and nature. The effective assessment of landscape sustainability has become one of the objectives of scholars and governments.
At present, most scholarly evaluations of landscape sustainability in different regions are dominated by single landscapes or urban landscapes. The methods used mainly include the triangle model [
5], the Analytic Hierarchy Process [
6], the Analytic Network Process approach [
7], the element model [
8], principal component analysis [
9], emergy analysis [
10,
11], and information entropy [
12,
13,
14,
15,
16,
17,
18]. Information entropy, also known as Shannon entropy, was ever believed to be a generalization of the concept of entropy in thermodynamics, and the application of information entropy in landscape ecology has been very common. Ulanowicz asserted that the entire social organization is a network, but any node in the network is usually indeterminately linked to subsequent nodes, and information entropy can serve as a measure of the uncertainty. Ulanowicz proposed the classification of information entropy into two agonistic parts (ascendency and overhead) [
19]. Xu et al. combined this concept with Chinese traditional culture and suggested that maintaining the balance of ascendency and overhead can achieve sustainable development [
20]. However, recently, Vranken suggested that Shannon entropy and thermodynamic entropy were only formally parallel, and the thermodynamic basis of their application in landscape ecology was questioned [
21]. Exploring landscape composition and configuration is the core issue of landscape sustainability science [
4], but Gao et al. found that Shannon entropy considers only probability and not configurational information [
22]. For example, as long as two different digital elevation models (DEMs) have the same elevation composition, their Shannon entropy values will be the same even if the spatial distributions are greatly different [
23]. Compared with Shannon entropy, Boltzmann entropy is more naturally related to thermodynamic interpretations and characterizes disorder in terms of composition and configuration [
23].
According to a recent review [
24], there are two mainstream methods for calculating Boltzmann entropy of landscape models as well as an enhancement method: the calculation method for landscape mosaic proposed by Cushman [
25,
26], the calculation method for landscape gradient (DEM) proposed by Gao et al. [
22,
23,
27], and Nowosad’s improved method addressing the boundary effect problem existing in the method of Gao et al. [
28]. The scientific contributions and the novelty of the first two scholars mainly include the following two points: (1) they both linked landscape ecology to the second law of thermodynamics and the entropy concept; (2) they each proposed a solution to calculate the Boltzmann entropy of the landscape model because a good macrostate (the premise of using the Boltzmann equation) is difficult to define, and the number of microstates belonging to a macrostate is difficult to calculate. Nowosad’s scientific contribution is mainly the solution to the problem in which some cells in the landscape gradient may have null values because the boundaries of many actual geographic data are irregular (such as the administrative map of a province). However, the above studies are all theoretical discussions, and there is little work on case studies. Based on the research of Gao et al. and Nowosad, an attempt was made in this paper to link Boltzmann entropy with landscape sustainability through an evaluation matrix, where the landscape sustainability of various landscape types under different natural conditions in the study area was scored, and the Boltzmann entropy values were calculated to reflect the landscape sustainability of the area from a new perspective. The remainder of this article is organized as follows: in
Section 2, the basics of the study area are introduced, and the sources of data and research methods are described. In
Section 3, a case study was conducted in Mizhi County, Shaanxi Province, and spatial and temporal differentiation results of landscape sustainability from 2000 to 2015 were analyzed. In
Section 4, the approach used in this paper is discussed, and the results are summarized in
Section 5.
3. Results
3.1. The Results of the Experts’ Grading Method
Based on a landscape sustainability score from weak to strong, the scores range from 1 to 10, and the results are shown in
Table 1.
For the seven types of land use in Mizhi County at different elevations and slopes, the positive value of landscape sustainability was scored, with 10 points indicating the most favorable for landscape sustainability and one point indicating the least favorable. As a rural ecosystem, decision-makers in Mizhi County must consider the integrity and the continuity of various ecological processes [
34], emphasizing the self-regulating function and the ecological value of the ecosystem. Therefore, the land use type that is favorable to the ecological environment and directly beneficial to farmers has a higher score, whereas land use types without such benefits are assigned lower scores.
Table 1 shows the following information:
(1) The scores of the seven land use types in the study area are obviously different, but their variability under different natural conditions is not high, indicating that the land use types have a greater impact on the sustainability of the landscape than the natural conditions.
(2) Among the land use types, waters have the highest scores. The reason is that Mizhi County is located in arid and semiarid areas of inland China. The area lacks water year-round, and waterbodies such as rivers, ditches, and reservoirs can provide irrigation, thus the water areas have a strong positive value under any natural conditions. The scores of woodland and orchard are similar, and both are assigned a sub-high value. The pesticides sprayed in the orchard cause the score of the orchard to be slightly lower than that of the woodland. Although grassland can play a positive role in soil and water conservation, it is vulnerable to damage in Mizhi County (such as potential overgrazing, etc.), thus the score assigned to grassland is a medium value; construction land and arable land are assigned a sub-low value because human activities are more frequent on construction land, which is likely to cause ecological damage. The situation of arable land is unique. Only the “low elevation low slope” type is assigned higher scores. Under other natural conditions, the scores are lower, thus the score of arable land is assigned a sub-low value. The land use type with the lowest value—wasteland—is basically unable to support landscape sustainability in Mizhi County.
In general, the scores of land use types on low slopes are generally higher because soil erosion on the Loess Plateau is serious, areas with high slopes are not conducive to agricultural activities, and the risk of soil erosion is high. At the same elevation, the landscape sustainability score decreases as the slope increases. Under the nine natural conditions, the “low elevation low slope” is the optimal condition. Except for wastelands, the scores of the other six land use types are high in their own categories. However, in the case of optimal natural conditions, the wasteland can provide the weakest support for landscape sustainability; thus, the score is the lowest. In the case of high elevation, on the one hand, the accessibility of various types of land use is deteriorated, and agricultural production activities are difficult to implement, thus the scores of arable land and construction land are low. On the other hand, due to the weakening of human disturbance, the ecological functions of woodland, grassland, and orchard are enhanced; therefore, the score is higher.
3.2. The Results of Landscape Sustainability
The score in the evaluation matrix represents landscape sustainability. This score is assigned to the raster first and then to the cells; therefore, the value of each cell can directly reflect the landscape sustainability. The landscape sustainability of each subbasin is quantified as the value of the Boltzmann entropy of the corresponding grid in each subbasin after the min–max normalization. The landscape sustainability values of 2000 and 2015 were calculated for 216 subbasins in Mizhi County, and the sustainability was classified into five levels according to the natural discontinuity grading method (Jenks) in ArcGIS 10.2 software [
32]. The higher the grade was, the worse the landscape sustainability would be. The results in 2000 were unified under the grading standards of 2015 to ensure the comparability of the timing sequence; the results are shown in
Figure 3.
3.2.1. Spatiotemporal Difference in Landscape Sustainability in Mizhi County from 2000 to 2015
Figure 3 shows that the spatiotemporal differentiation of landscape sustainability in Mizhi County from 2000 to 2015 is considerable with a trend of overall improvement. The region of Grade V landscape sustainability shows the greatest change, and the Grade I region remains basically unchanged. In both 2000 and 2015, the landscape sustainability of the mid-eastern section of the study area was worse than that in other areas.
Figure 3a shows that the overall landscape sustainability was poor in Mizhi County in 2000, where the regions of Grade IV and Grade V are more contiguous, and the Grade I regions are the least sporadic. There are 67 subbasins with the worst landscape sustainability (Grade V), accounting for 31.81% of the total study area, with the largest proportion mainly distributed in the eastern, the mid-eastern, and the mid-western parts of Mizhi County. There are 57 subbasins of Grade IV, accounting for 26.96% of the total study area, and these subbasins are distributed along the periphery of the Grade V area. There are 40 subbasins of Grade III scattered in the study area, accounting for 20.09% of the total study area. There are 37 subbasins of Grade II, accounting for 14.79% of the total study area, which are mainly distributed in the eastern, the northeastern, and the western parts of Mizhi County; due to the large forest and the grassland coverage in these areas as well as the small population density and the separation of settlements, humans have less ability to interfere with rural ecosystems, and thus the landscape sustainability is stronger. There are 15 subbasins with the best landscape sustainability (Grade I), accounting for the smallest part of the total study area at only 6.35%. In general, the landscape sustainability values in the central, the eastern, and the mid-western regions of Mizhi County in 2000 were poor.
According to
Figure 3b, the landscape sustainability of Mizhi County shows a better trend in 2015 than in 2000, especially the landscape sustainability in the mid-western area of Mizhi County, which has been greatly improved. There are 23 subbasins in Grade V, accounting for 8.29% of the total study area. During the study period, the landscape sustainability of most subbasins changed from Grade V to Grade III or Grade IV, and landscape sustainability was promoted. There are 61 subbasins of Grade IV, accounting for 30.32% of the total study area, which are mainly distributed in the central and the southern regions, indicating that the landscape sustainability in the central part of Mizhi County increased during the study period. There are 64 subbasins of Grade III, accounting for 32.30% of the total study area. This proportion is the largest and is considerably different from that in 2000. Grade III is evenly distributed in the study area, illustrating that the landscape sustainability of the study area is better overall. There are 52 subbasins of Grade II, accounting for 23.39% of the total study area. There are 16 subbasins of Grade I, accounting for 5.70% of the total study area. Compared with 2000, there is no increase in area in 2015, but Grade I is concentrated to the west in terms of spatial distribution.
3.2.2. Changes in Landscape Sustainability in Mizhi County from 2000 to 2015
Based on the transition matrixes of landscape sustainability, the change in the number and the area of each grade in the subbasins can be obtained.
Table 2 and
Table 3 show that, in addition to self-transformation, there are also nine grades of increased sustainability and nine grades of decreased sustainability. In 2000, with the increase in the grade of landscape sustainability, the number of corresponding subbasins also gradually increased, and the number of subbasins of Grade V was the largest, showing that basins with poor sustainability in Mizhi County were dominant during that year. In 2015, the numbers of subbasins with the best (Grade I) and the worst (Grade V) landscape sustainability values were low, while the numbers of subbasins at Grade II, Grade III, and Grade IV were higher. During the research period, the number of subbasins at Grade I and Grade IV remained stable, the number of subbasins at Grade V decreased by 44, and the area decreased by 285.21 km
2, while the number of subbasins at Grade II and Grade III increased by 15 and 24, respectively, and their area increased by 104.20 km
2 and 148.03 km
2, respectively, suggesting that the landscape sustainability of Mizhi County showed an improving trend overall.
Figure 4 shows the changes in landscape sustainability levels in 216 subbasins in Mizhi County from 2000 to 2015. The landscape sustainability of 113 subbasins improved (i.e., reduced grade), with an area ratio of 55.47% evenly distributed in the study area, and most of these subbasins are contiguous, indicating that, during 2000–2015, more than half of the study area’s landscape sustainability was improved. There are 54 subbasins with nearly unchanged landscape sustainability (i.e., grade maintenance), accounting for 22.70% of the area. This area is roughly distributed in the east-west direction in the middle of the study area as well as a small cluster in the northern part of the study area. The landscape sustainability of 49 subbasins became weaker (i.e., elevated grade) with an area ratio of 21.83%; these subbasins are scattered throughout the study area. However, there are agglomerations in the western, the central, and the southeastern parts of the study area, showing that the landscape sustainability of approximately one-fifth of the area in Mizhi County deteriorated during the study period.
In terms of spatial distribution, the landscape sustainability values in the eastern and the western parts of Mizhi are stronger than those in the central areas. At the temporal level, the landscape sustainability in the mid-western regions increased significantly. Landscape sustainability in the northern and the northeastern regions also improved. Although the landscape sustainability in the central region was inferior compared to that in other regions, it did increase to some extent during 2000–2015. In addition, the landscape sustainability of the three townships of Taozhen, Shadian, and Shigou improved during the study period, which is consistent with the field research of the research group. Due to the vigorous implementation of the “Grain for Green Project” in these townships during 1999–2009, soil and water conservation capacity improved. Additionally, the reduction in arable land led to population outflow, and the ecological disturbance caused by people weakened, further contributing to the improved sustainability of these townships. In the central part of Mizhi County, because it has always been a population center, the central area is greatly disturbed by people, thus landscape sustainability is poor. However, according to the results of field research, as farmer awareness of the means of protecting the ecological environment has gradually enhanced, the landscape sustainability in the area has also increased slightly.
4. Discussion
This study on the landscape sustainability of 216 subbasins in Mizhi County in 2000 and 2015 reveals that the overall trend of landscape sustainability has temporally and spatially improved. The results are consistent with the field research, which demonstrates that the method proposed in this paper—using the results of the evaluation matrix to assign values to subbasins and calculate the Boltzmann entropy of the subbasins—is effective. The selection of a subbasin as the evaluation unit can maximize the guarantee of natural elements, process similarity [
35], and the integrity of the landscape ecosystem within the unit. Notably, the research of Gao et al. [
22] demonstrated that the dimension of the cell directly affects the value of the Boltzmann entropy. Therefore, in this paper, a 30 × 30 grid was generated for each subbasin (i.e., each grid contained 30 rows x 30 columns; the number of cells per grid was 900) according to the sizes of the subbasin to ensure that the Boltzmann entropy of the subbasins in the same year would be comparable.
Gao et al. calculated the Boltzmann entropy of DEM in a certain area to reflect the disorder and the complexity of the landscape in this region. To allow Boltzmann entropy to provide more information, this paper uses the overlay data of elevation, slope, and land use and assigns the result of the evaluation matrix to the overlay data. The Boltzmann entropy calculated using this method can be related to landscape sustainability. Expert grading is a key part of this research, and the results will directly affect the results of the Boltzmann entropy. Therefore, experts who score the actual situations and particularities in the study area must be professionals who are very familiar with the study area. The advantage of the evaluation matrix is that it can flexibly increase and decrease natural conditions and landscape types according to the research contents. The non-portability of the evaluation matrix (
Table 1) is a limitation of this article, but it provides ideas and methods for studying the relationship between landscape sustainability and Boltzmann entropy.