1. Introduction
During the past three decades, rising human needs have resulted in a significant increase in land use changes and damages [
1,
2]. Concerns over the effect of changing land use patterns resulting from deforestation and agricultural development or elimination have caused a crisis in the quality of water and soil resources [
3]. Since economic and human activities are mainly carried out on the landscape, it is considered an appropriate spatial scale for studying the environmental changes caused by human activities during a long-term period [
1]; therefore, the assessment of landscape changes and reflection on the human use of the land in the past are used as dynamic tools for sustainable land use planning [
4]. In this context, the landscape metrics are introduced as algorithms for quantifying the spatial properties of patches, classes, or mosaics of the entire terrestrial landscape. Landscape metrics are the best way to compare the state of the landscape of different land uses (e.g., [
4,
5,
6,
7]). The use of landscape metrics plays an important role in determining the different features of land use types relative to each other. Additionally, they can help to monitor better the impact of land use changes on hydrological processes and nutrient cycles [
8]. Therefore, knowledge of human activities’ impacts in different sectors or land use types, as primary data in spatial–temporal characteristics of landscape analysis, is of particular importance to land changes interpretation and modeling and understanding the relations between environmental and human factors [
4].
Landscape fragmentation is one of the most critical processes representing human activities’ impact on the land structure and function disruption [
2]. In the fragmentation process, the landscape is divided into smaller patches which refers to the landscape transformation for human use that hurts biodiversity. It is one of the significant implications of land degradation in reducing dominant communications and habitat corridors over the landscape [
9,
10,
11]. The analysis of landscape fragmentation can lead to effective development strategies to better land reconstruction and conservation [
12].
Many studies have been performed regarding the importance of examining land use changes and landscape fragmentation. For example, Amsalu et al. [
13] studied the land use change in the Ethiopian Highlands watersheds. They reported a reduction trend in natural vegetation due to forest conversion to agriculture due to policy changes that took place over 40 years. Furthermore, Aspinall and Hill [
14] reviewed the land use changes and management in the Amazon Forest. They reported a significant forest fragmentation process. Their results also indicated a reducing trend in the average size of patches and the total forest length, as well as an increase in the distance between the forest patches due to forest degradation and land use change. Giraldo [
15] also investigated the spatial scale of land use fragmentation in monitoring the water process in Colombia. In this study, using remote sensing (RS) and geographical information system (GIS), statistical analysis, and comparison of man-fabricated patches, a variety of landscape patches were studied. The results indicated the significant effect of landscape fragmentation on hydrological processes. In Japan, Kang et al. [
16] calculated the Shannon diversity index, dominance index, mean patch size, edge density, patch density, and mean patch size in 1888, 1909, 1961, and 2002. They concluded that the landscape diversity was reduced, and urban areas, pasture, rice fields, and rangelands were increased, which was attributed to large and split patches.
Nohegar et al. [
8] analyzed the land use characteristics in the central part of Guilan. They used 16 metrics to interpret and analyze the landscape structure. The results showed that the impact of human interference decreased the landscape structure and connectivity, which reflected very high forest utilization and agricultural evolution. Additionally, in the Sefidrud, northern Iran, Kiyani and Feghhi [
17] calculated different landscape metrics, including the class area, area percentage, patch number, total edge, landscape shape, the largest patch, the average landscape of the patch, mean patch area, and Euclidean nearest neighbor distance. They concluded that the highest and lowest fragmentation occurred in agricultural and forest land uses, respectively. The highest and lowest patches dispersion was also related to pasture and forest land uses in that respect. Mitchell et al. [
18] also examined the landscape fragmentation effect of the ecosystem services in Brazil concerning economic, social, and political dimensions. The results verified both positive and negative effects of fragmentation on ecosystem services. Subsequently, De Montisa et al. [
1] examined the landscape fragmentation in Mediterranean Europe. They used three indicators, including indices of infrastructure fragmentation, urban symmetry, and connectivity. The results showed that the coastal areas face high-pressure utilization, and the fast transport infrastructure and new settlements showed the highest fragmentation rates.
Lam et al. [
12] explored the effect of landscape fragmentation on land losses in the Louisiana coastline, United States, based on Landsat TM+ images from 1996 to 2010. The results showed significant land loss due to the fragmentation effects. Kowe et al. [
3] determined the hot and cold spots and clusters of fragmentation during 1994–2017 in Harare metropolitan city, Zimbabwe. The highly fragmented patterns of vegetation patches detected as cold spots were mainly located in the densely built-up places of the study city (i.e., western, eastern, and southern parts). The long-term viability of the Natura 2000 (N2k) network as the world’s largest coordinated network of protected areas was evaluated by Lawrence et al. [
19]. They quantified the degree to which N2k sites are insulated from development pressures and found that the anthropogenic pressures lead to the fragmentation of protected areas. Forest fragmentation of Chitteri Hills in India was analyzed by Narmada et al. [
9]. The results showed an increase in the number of patches due to the expansion of the urban population during the 2000–2019 period. In addition, the effects of surrounding areas on the landscape fragmentation of national parks were assessed by Kubacka et al. [
2]. According to their findings, the high natural and landscape values in the surrounding areas of national parks affect the degree of landscape fragmentation. Meanwhile, the patch density index was assessed as a suitable indicator to indicate the dynamic nature of the landscape change.
In general, different studies were conducted for quantifying landscape metrics; however, their analysis at different levels of the patch, class, and landscape, which is essential for the interpretation and comparison of the regional landscape structure, was not well-considered. KoozehTopraghi Watershed, with diverse land uses located in the northwest of Iran, is similar to many other areas threatened by human activities such as land use change. To this end, the extent, intensity, and spatial pattern of landscape fragmentation in this watershed are under question. In addition, another key question is how landscape metrics at different levels of landscape fragmentation behave. The third critical question that remains unanswered in the watershed study point where the hot spots and cold spots of landscape fragmentation metrics are. Towards this, the present study aims to evaluate the spatial variation in land fragmentation metrics in three levels of patch, class, and landscape in the KoozehTopraghi Watershed, Iran. Furthermore, the landscape fragmentation hot spots and the spatial clustering of landscape fragmentation metrics were investigated. The results can be the appropriate tools to monitor landscape changes and land use-related management decisions.
4. Discussion
Fragmentation metrics at three levels of patch, class, and landscape provide easy-to-use maps of spatial distribution and informative approaches for regional sustainable land planning. Patches that characterize distinct areas with akin features are subjected to patch-level metrics. While entire patches of land use/land cover categories are used to calculate class-level metrics. Finally, landscape-level metrics are computed through a mixture of entire patch and class types in study sub-watersheds [
24].
Our results about the AREA_CPS (34.33 ± 10.30%) and AREA_LPS (49.22 ± 2.41%) at patch-level study were relatively similar to the result reported by Esfandiyari Darabad et al. [
34] in Gharesou River Watershed, Ardabil Province who found the AREA_CPS between 25.75 and 36.96 and AREA_LPS between 28.94 and 38.95%, indicating the relatively high fragmentation. These metrics also indicated that the sub-watersheds with the maximum value had the maximum landscape continuity. PERIM is another fundamental metric that is considered a basis for many landscape analyses. Specifically, the patch perimeter is studied as an edge length. Here, the edge’s intensity and distribution establish the main characteristic of landscape configuration and pattern [
23]. In addition, its connection with the patch area provided the critical basis for many shape metrics [
9,
24]. GYRATE is a degree of patch extent affected by patch size and compaction [
24]. If the patch contains a single cell and rises without limit with increasing patch extent, it results in to GYRATE of zero. It reaches its extreme value when the patch encompasses the whole landscape as obtained for sub-watershed 21 with the value of 1624.60 m (
Table 2). As the GYRATE increase, the cohesion between the patches decreases [
24]. The high variability was observed for PERIM and GYRATE at a spatial scale, indicating the extreme heterogeneity in patch extent and affectability by both patch size and patch compaction.
Patches with less geometrical complexity can be observed in the managed landscape [
26]. SHAPE and FRAC metrics are in a positive relationship with fragmented. Their low mean (Shape = 1.04, FRAC = 1.26) represented low fragmentation in the study watershed. However, Yuan et al. [
35] observed the increase in FRAC at the Qinhuai River Basin from 2003 to 2017, emphasizing the increase in urban lands and their complexity. The CIRCLE metric was also estimated in low to medium value (0.37 ± 0.83). CIRCLE metric quantifies the overall patch elongation. Indeed, it assessed the patch shape or related circumscribing circle according to the patch area/the smallest circumscribing circle area [
36].
Considering the average value of metrics as a threshold, sub-watershed 7 is recognized as the most fragmented sub-watershed in terms of all study patch-level metrics. Sub-watersheds 18 and 25 are in a critical situation in terms of five metrics. Therefore, in these watersheds, taking into account special management programs and measures should be the prime goal to functionally and structurally enhance the vegetation cover.
In terms of class-level analysis, metrics of ED
C, SHAPE_MN
C, LSI
C, SPLIT
C, DIVISION
C, and PD
C are in positive relation with fragmentation, and they recorded different spatial variations (
Table 3,
Figure 3). The highest values of them were found in dry farming, good rangeland, orchard, residential, residential, and residential land uses. In addition, the residential land use is in the lowest value of LPI
C and EA_MN
C. ED
C, as the equivalent total length of the edge, is considered the most commonly used metric in studies quantifying the effects of fragmentation at class level [
25]. LPI
C, as a simple metric of dominance, assesses the percent of total landscape area contained within the largest patch [
37]. LPI
C is equal to 0 and 100 when the largest patch of the specific patch type is very small and the whole landscape entails a single patch of the corresponding patch type, respectively. With an increase in the values of LPI
C, the connection and continuity of the surface of the landscape increase. At the class level, if the patch is larger, the ED
C is greater. In this regard, Kowe et al. [
3] found an increase in ED
C from 109.5 m ha
−1 (in 1994) to 117.8 m ha
−1 (in 2017), denoting an increasing trend in vegetation fragmentation. The high value of this metric was also found by Mohammadi and Fatemizadeh [
38] in southern Iran, and its increasing trend (from 1.77 to 1.85 m ha
−1 for rangeland) was approved due to highway construction.
Our results showed LPI
C with lower than 50 throughout all land uses of KoozehTopraghi Watershed. This shows that there are high and moderate levels of disconnectivity through the dominant land uses. In this regard, Mohammadi and Fatemizadeh [
38] also found a high LPI
C for the Tang-e Bostanak Protected Area (more than 83%); however, a 0.41% decrease in LPI
C was observed after highway construction. Narmada et al. [
9] reported LPI
C ranges of 0.45–31.13, 0.98–27.69, and 2.25–18.45% for 2000, 2008, and 2019, respectively. In all study years, the highest LPI
C was obtained for the evergreen class, with an increasing trend in its fragmentation. This is inconsistent with the higher value of AREA–MN
C in moderate rangeland and dry farming, for the State of Rondônia, Brazilian Amazon. Batistella et al. [
39] also found the highest AREA–MN
C in the forest (76.94–106.59 ha) followed by bareland/cropland (7.27–8.81 ha). They reported the highest and lowest TE
C in the forest (3,905,970–3,905,970 m) and water bodies (30,030–175,020 m), respectively. The LSI
C metric indicates the degree of patch irregularity. In addition, the relative importance of edge length and area of patch types is explained by LSI
C [
39]. Therefore, increasing the amount of LSI
C means increasing the irregularity and class complexity in the study watershed.
COHESION
C is employed to describe the class aggregation and physical connectedness of the corresponding patch type [
25,
40] in the subjected land uses of KoozehTopraghi Watershed. As the patches continue to increase, the value of this indicator also increases. Jaeger [
41] considered the SPLIT
C as a fragmentation metric for quantifying six fragmentation phases, including perforation, incision, dissection, dissipation, shrinkage, and attrition. It was found that by increasing the PD
C, the connectivity of the landscape decreases, and the patches become smaller and more regularized, as also noted by Kang et al. [
16]. Therefore, the abundant presence of small patches in various vegetation coatings lead to a decrease in the intervals of two similar patches and an increasing PD
C of residential land use in the KoozehTopraghi Watershed. Then, orchard and irrigation land uses had PD
C values of 0.04 and 0.03 per ha, respectively. The rangeland land use had a lower PD
C, indicating that the cohesion and continuity in this land use are high.
At the landscape level, metrics of AREA_MN
L, TE
L, SHAPE_MN
L, LSI
L, COHESION
L, SPLIT
L, DIVISION
L, PD
L, PRD, SHDI, and MSIDI allocated more than 50% variance throughout study sub-watersheds. The ED
L has been recognized as a powerful metric representing the watershed structure (e.g., [
7]), habitat loss (e.g., [
42]), abundance (e.g., [
6]), and spatial aggregation (e.g., [
6,
25]), habitat pattern and composition (e.g., [
6]), and so on. At the landscape level, the relationship between ED
L and landscape fragmentation is positive [
43].
The spatial pattern of LPI
L for different conditions was obtained similar to our results (e.g., [
5,
6,
7,
17]). Liu et al. [
42] found an exponential and positive relationship with decreasing trend between Area_MN and habitat loss based on the analysis of 16 large cities around the world. In addition, Rakhmawati [
44] reported a significant reduction in AREA_MN
L metric from 2001 to 2016 at Gunung Halimun Salak National Park (GHSNP) as one of the protected areas in Indonesia. The range of Area_MN
L through GHSNP was noted between 3.2 and 295.5 ha. The results verified a progressive reduction in the size of the study forests. TE
L at the landscape level is an absolute measure of the total edge length of all patch types. According to
Table 4, the maximum and minimum of TE
L for KoozehTopraghi Watershed at landscape level were obtained for sub-watersheds 37 (61,383.00 m) and 21 (1338.37 m), respectively. As the TE
L increases, the landscape connectivity and cohesion decrease, and the patches become more petite and more regular, similar results were reported by Khazaei and Azari Dehkordi [
45] and Kiyani and Feghhi [
17] for the north of Iran.
SHAPE_MN
L is used as the representative metric of the shape complexity of landscape structure [
46]. This metric varied between 1.32 (sub-watershed 25) and 2.07 (sub-watershed 21). Moreover, this metric for a square-shaped patch is equal to one. With increasing the shape irregularity, it becomes larger [
17]. SHAPE_MN
L demonstrates the critical consequences of human impacts on landscapes [
46]. Furthermore, LSI
L is an aggregation metric that deals with the spatial property of dispersion [
43]. The LSI
L is equal to one, indicating the landscape consists of a patch with maximum compression and approximately has a square shape. When the patch is more fragmented, the boundary is more amorphous, and its shape becomes more complicated. The high correlation between LSI
L and habitat abundance and spatial aggregation was found by Wang et al. [
6] in northeast Alberta, Canada. AREA_MN
L is a type of landscape metric based on the mean patch characteristic providing a measure of central tendency in the corresponding patch characteristic across the entire landscape [
43]. In addition, the value of the COHESION
L metric was reported by Akçakaya et al. [
23] for some parts of the United States between 96.14 and 97.65. The COHESION
L explains the physical connectivity of the land use patches, it is generally employed to describe the changes in landscape connectivity resulting from fragmentation in different studies (e.g., [
6,
40]). Uuemaa et al. [
46] noted that the theoretical range of COHESION
L is 0−100, but the actual range was 98−100 for Estonian landscapes. PRD metric is also used in other studies to analyze landscape fragmentation (e.g., [
47] in Germany, [
46] in Estonia, [
48] in the Czech Republic).
According to Akçakaya [
23], Jaeger [
41], and McGarigal [
43], SPLIT
L represents the “number of patches one gets when dividing the region into parts of equal size in such a way that the new configuration leads to the same degree of landscape division”. DIVISION
L characterizes “the anthropogenic penetration of landscapes based on the distribution function of the remaining patch sizes” as also mentioned by Jaeger [
41] and Wang et al. [
6]. The presence of high PD
L in the study sub-watersheds indicates the land use degradation, which has led to fragmentation increase. It is believed that the PD
L of a particular land use type may influence critical ecological processes of the watershed. These results are inconsistent with finding by Kang et al. [
16] who found that PD
L in Japan was reduced, and the urban areas, pastures, and rangelands were concentrated within the large patches. It is believed that the PD
L of a particular habitat type may affect various ecological processes, depending on the landscape context.
SHDI [
49] is one of the crucial metrics frequently used to measure the diversity of the constituents of the landscape [
37]. The SHDI calculates the relative variation in each patch. If there is only one patch in the landscape, then this index is equal to zero, and when the number of patches increases and the distribution of the area is proportional to the increase with the patches types, it would be equal to one [
24]. The MSIDI [
50,
51] is selected along with SHDI as the most popular diversity index and is widely employed to quantify landscape composition [
37]. MSIDI is more sensitive to the most abundant patches. When the number of the homogeneity is one, the landscape is very diverse, and when it descends to zero, the landscape diversity diminishes [
24]. Therefore, the most suitable diversity and appropriate spatial patterns between different landscapes were observed in most study sub-watersheds.
Generally, the Moran index showed mainly positive values for different metrics in most sub-watersheds (
Figure 4 and
Figure 5,
Table 5). This indicates that the spatial distribution of the metrics is clustered. However, the correlation of the study fragmentation metrics was not high, indicating a high data concentration. Results of the Getis-Ord Gi* and Moran indices for Harare metropolitan city in Zimbabwe [
3] dedicated various spatial vegetation clustering varied from dispersed to highly clustered. Hot spots of vegetation patches were also found at confidence levels of 90, 95, and 99%. Furthermore, a slight reduction in hot spots and an increase in cold spots at a 99% confidence level were obtained. The statistically significant hot spots were mainly concentrated in the northern part of Harare metropolitan city, a more vegetated area of large and contiguous vegetation patches.
The results of the present study are significant for prioritizing sub-watersheds to land management objectives. Our findings also are valuable for illustrating the spatial variation in fragmentation patterns for regional studies, as concluded by others (e.g., [
12,
37]). Practical analysis of fragmentation metrics affords a forthright tool for assessing the impact of future land-management projects and human activities on landscape integrity.
Regarding the limitations of the current research, it can be said that the scale dependence of some landscape metrics with spatial resolution requires special attention in choosing the appropriate scale in landscape ecology studies and the accurate interpretation of ecological processes. Therefore, calculating the landscape metrics on a suitable scale affects the identification of ecological processes, prediction of ecological functions (landscape modeling), and the reduction in uncertainty. By increasing the spatial resolution (smaller cell size), the difference in the behavior of the gauges is better understood. The weighting and selection of more effective landscape metrics in ecological processes is influenced by the views of experts and the study objectives. Therefore, the selection of the panel members in an expert elicitation procedure with a comprehensive view on landscape ecology and ecological processes and their potential impacts on different landscape changes is strongly recommended. Moreover, emphasizing the selection of metrics that better interpret change processes is important, and in this regard, focusing on composition (amount) and configuration (i.e., connectivity) provides more details and a better understanding of the landscape analysis.
Considering all factors affecting the spatial pattern of clusters and analyzing hot spots is also another research limitation. In other words, it is difficult and complex to incorporate all the driving forces affecting the change and fragmentation of the landscape, such as population, climate, human activities, and the cumulative effect of land degradation. It is possible to understand changes in landscape patterns under different management conditions by combining spatial and temporal analysis of different criteria, but the limitations caused by changes in land management, as well as climatic and physical conditions, should also be taken into account.