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Article

Effect of Land-Use Change on Runoff in Hyrcania

1
Faculty of Agriculture and Natural Resources, Mahabad Branch, Islamic Azad University, Mahabad 59135-433, Iran
2
Department of Watershed Management, Haraz University, Amol 46178-78737, Iran
3
School of Forest Sciences, University of Eastern Finland, 80100 Joensuu, Finland
*
Author to whom correspondence should be addressed.
Land 2022, 11(2), 220; https://doi.org/10.3390/land11020220
Submission received: 8 January 2022 / Revised: 28 January 2022 / Accepted: 30 January 2022 / Published: 31 January 2022
(This article belongs to the Section Land–Climate Interactions)

Abstract

:
Population growth and human activities have resulted in drastic changes in land use in many areas of the world, including the Hyrcania region in northern Iran. Land-use changes affect the hydrological processes of water basins. This study evaluated the effect of land-use changes on runoff over 15 years in the Haraz River basin located in Hyrcania using remote sensing data and GIS analyses. The annual precipitation of the region is 66.5 cm. Two Landsat images were used to develop land-use maps for 1996 and 2011. Original image features, their principal components, and vegetation indices were used to classify the two Landsat images into different land-use categories. Runoff was predicted from precipitation, land use, and hydrological soil groups, using the SCS-CN model (the “curve number” approach). During the 15 years, 62.4% of the area remained unchanged and 37.6% had undergone a land-use change. The highest average runoffs were obtained for bare land (14.1–14.5 cm/year) and residential land (10.4–11.4 cm/year), and the lowest for dense forest (2.5–2.6 cm/year) and first-grade rangeland (2.8–3.1 cm/year). The volume of annual runoff increased by 9% during 1996–2011 due to land-use changes. Runoff was estimated at 9.4% of precipitation in 1996, and 9.6% of precipitation in 2011. Most of the increase was related to the increased area of bare land and decreased area of rangeland. The study indicated that combined use of the SCS-CN approach, remote sensing data, and GIS tools allow cost-effective runoff estimation, helping watershed management. The results on the effect of land-use change on runoff can be seen as a warning for land-use managers and policymakers, who should aim at stopping and reversing the current land-use trends of the Haraz River basin.

1. Introduction

Land is an essential natural resource, both for humanity, and the maintenance of all terrestrial ecosystems [1]. Increases in population density and human activities have caused increased demand for water, arable land, wood, grazing areas, and other types of resources [2,3]. Water is an indispensable resource and a key element in human livelihood and socioeconomic development [4]. As water consumption increases, water availability may become a critical factor for human activities. This makes it necessary to manage water resources for their sustainable use [3].
Precipitation is the main source of water in the world. It is unevenly distributed spatially and temporally and strongly influenced by climate and land use [5]. Precipitation and runoff are the main hydrologic components in water resources assessment [6].
Runoff is the result of interactions among climate, terrain, and land use in a water basin. Climate change may change the spatial and temporal distribution of precipitation, affecting the amount and spatial configuration of runoff. Changes in land use may alter the flow processes, which also affects runoff. Although climate change plays a key role in runoff changes, the impact of human activities cannot be ignored [7]. The impact of land cover and climate change on hydrology are global issues affecting the hydrological processes of river basins [8,9].
The impact of vegetation on water runoff is complex. The influence of vegetation, its growth, regeneration, and succession depend on soil properties and micro-topography of the terrain, among other things [10]. The common understanding is that increasing the vegetation cover decreases surface runoff and erosion, but the relationships are not always straightforward since the effect of tree cover depends on tree species and the vertical structure of the canopy [11]. Forests have a limited capability to retain precipitation, even when the forest cover is high. This inadequacy is most apparent during extreme rainfall events [12,13,14]. The results of some studies have indicated that rainfall intensity was the most important factor that influenced runoff [15], and forests and other vegetation were not always capable of retaining much of the rainfall. Differences in natural and geographical conditions or the type and structure of vegetation have an impact on water interception, surface runoff, groundwater, and evaporation, which affect the spatio-temporal patterns of water cycles [10].
Land-use changes have direct effects on the hydrological processes of watersheds, which depend on land-cover characteristics [16,17,18,19]. Changes in land use in areas characterized by large and fast runoff (e.g., areas with much rain but little vegetation) have immediate impacts, while changes in areas with little rain and much vegetation have smaller and delayed impacts [20].
Studies on the relationship between changes in vegetation cover and water runoff dynamics provide information for the regulation of water resources and effective mitigation of the damage caused by land-use changes [10,16]. Watershed management is based on controlling the hydrological processes, mainly runoff [5,21]. Analyzing the long-term dynamics of runoff has practical significance since the new knowledge enhances the management and sustainable use of water resources [10].
Many hydrologic models such as HYMOD, LRHM, and TANK exist for calculating runoff [22,23,24,25]. In Iran, the “curve number method” of the Soil Conservation Service (SCS) of the United States Department of Agriculture (SCS-CN method) is the most frequently used method [26,27]. The runoff curve number (CN) is the key factor of the SCS-CN method and depends on land use and land cover (LULC), soil type, and soil moisture [16,21,28]. Often, an area-weighted average curve number for the entire watershed is used to estimate the runoff of a watershed. This type of analysis ignores the details of the spatial variation in the watershed. A GIS tool called ArcCN-Runoff facilitates detailed and spatially explicit runoff estimation, reducing processing times and improving the efficiency of the analyses [29].
Water runoff and erosion depend on several factors, among which land use has been most studied [30]. Large-scale land-use mapping based on fieldwork is expensive and time-consuming and field mapping of past years’ land uses is impossible. The use of remote sensing data may alleviate these problems because old imageries are available at a low cost. Lacking or inaccurate ground truth information is sometimes a partial hindrance to the effective use of old imageries [10].
GIS is an effective and flexible tool for analyzing and visualizing the effects of LULC [31,32]. Remote sensing provides a synoptic view and wall-to-wall data on watershed basins. The GIS environment facilitates the integration of different data sources and performs complicated spatial analyses to support decision making related to hydrological processes [33,34,35].
One of the recent interests in hydrologic modeling is the assessment of the effects of land-use changes on water resources. As watersheds become more influenced by human activities, they also become more active hydrologically with changing runoff components, streamflows, and flood volumes [36].
Various natural hazards such as floods, landslides, and bed erosion at riverbanks are increasingly observed in northern Iran, including the Haraz River basin with an area of 6774 square kilometers. Vegetation degradation and land-use changes are believed to be important reasons for the increased hazards. This study analyzed the effect of land-use change on runoff in the Haraz River basin during 15 years, using remote sensing data, GIS methods, and the ArcCN-Runoff tool. The objective was to provide useful information for regulating water resources, to reduce soil erosion and improve the management of the watershed.

2. Materials and Methods

2.1. Steps of the Analysis

The study area is a part of the Haraz River basin with an area of about 406,000 hectares, located in the Mazandaran province, North Iran (Figure 1). The dominant land-use categories are rangeland with a few subclasses, hardwood forest, farmland, horticultural land, and bare land.
The analyses consisted of the following steps:
1. Land-use maps were developed for 1996 and 2011 using a Landsat image from these years and supervised classification.
2. A map of hydrological soil groups was developed using soil characteristics.
3. Water runoff potential was evaluated by assigning a “curve number” for different combinations of land use and hydrological soil group.
4. Information on different rain events during a year was obtained from weather stations.
5. Runoff was calculated for 1996 and 2011 by combining the land-use information (Step 1), information on hydrological soil groups (Step 2), curve numbers for different combinations of land use and hydrological soil group (Step 3), and the distribution of rain intensity classes (Step 4).

2.2. Land-Use Classification

Two Landsat satellite images were used for land-use mapping [16,34,37] one from the beginning (1996) and the other at the end (2011) of the analyzed 15-year period. Supervised classification with the maximum likelihood method was used. The land-use classes were: 1 bare land, 2 irrigated farming, 3 dense forests, 4 sparse forests and horticulture, 5 rangeland and dry farming, 6 first-grade range, 7 second-grade range, 8 residential land, and 9 water. First, radiometric and geometric corrections were done on the images. Various derived features such as principal components of the original channels (PC), soil-adjusted vegetation index (SAVI) and natural difference vegetation index (NDVI) were calculated and used in the classification along with the original bands. Before selecting the best combination of original and derived image features, training sites were chosen separately for each image (Table 1). RGB color composites, field control points and aerial photographs were used in the selection of training sites.
To remove isolated pixels and smooth the classified images, a mode filter with a 3 × 3 window was used. The accuracy of the classification was evaluated using the ground truth data. Land-use changes were calculated from the two classifications in the GIS environment. The chi-square statistic was used to evaluate the significance of land-use changes [38,39,40].

2.3. Hydrological Classification

A map of hydrological soil groups (HSG) was developed using soil texture. The HSG depended on soil texture as explained in [41]. The HSG indicates the rate at which water moves within the soil. The four hydrological groups used in our study (A, B, C, and D) have been described by the National Resources Conservation Service of the United States Department of Agriculture [41]. In this research, the method used to assign the HSGs was based on soil texture and adapted from Abraham et al. [42]. The HSG depended on soil texture as explained in NRCS [41] and Kumar et al. [21]. The soil texture map developed by the Iran Surveying Organization on a scale of 1:100,000 was used.

2.4. Calculation of Runoff Potential

The potential water runoff in various land-use categories and HSGs was evaluated by assigning a “curve number” (CN) for each combination, which is a widely used method for estimating the amount of direct runoff from a rainfall event in a particular area. The assessment of the curve numbers was based on earlier literature [43].

2.5. Estimation of Runoff

Various hydrological models exist to assess the quantity of direct runoff in watershed basins. These models differ in complexity and requirements for input data [21]. The “curve number” method of the Soil Conservation Service (SCS) of the United States Department of Agriculture (SCS-CN) is a commonly used approach for estimating direct surface runoff from precipitation [34]. It was used also in this study to calculate the runoff. Runoff estimates were derived from precipitation and the curve numbers of different combinations of hydrological soil class and land use. Information on daily precipitation was available from three weather stations (Panjab, Karehsang and Nemarestagh). Summing the available information, the following average annual distribution of different rain events was obtained:
  • 5 mm (<10 mm): 66 times/year
  • 15 mm: 10 times/year
  • 25 mm: 2 times/year
  • 35 mm: 1 times/year
  • 45 mm: 1 times/year
  • 55 mm: 1 times/year
This resulted in total annual precipitation of 665 mm. Water runoff was calculated separately for each rain intensity, land-use and hydrological soil group. The total runoff of certain land use was obtained from
R total = i = 1 3 w i j = 1 6 n j R i j
where Rtotal is total annual runoff (mm/year), wi is the proportion of HSG i (i = 1 for HSG B, i = 2 for, C and i = 3 for D), nj is the number of rain events of intensity j (5 mm, 15 mm, etc.) and Rij is the amount of runoff in a single rain event with intensity j in hydrological soil class i.
The SCS curve number method assumes that, for a rain event, the ratio of actual water retention of soil after runoff begins to the potential maximum retention of soil is equal to the ratio of direct runoff to precipitation. This assumption results in the following runoff equation where the curve number (30 ≤ CN ≤ 100) represents the potential maximum soil retention (S):
R = ( P 0.2 S ) 2 ( P + 0.8 S ) i f P > 0.2 S 0 i f P 0.2 S
where R is the runoff in a single rain event, P is the amount of rain and S = (1000/CN) – 10 inches, or S = (25,400/CN) – 254 mm in SI units [29]. The parameter of Equation (2) (0.2) is called the initial abstraction ratio. Henceforth, the actual runoff at a certain point, expressed as cm/year is called runoff depth. When runoff depth is integrated over a certain area, the resulting variable is runoff volume. Runoff depths and volumes were calculated for the beginning and the end of the 15 years. Changes in the volume of runoff resulting from land-use change were calculated as the difference between 1996 and 2011.

3. Results

3.1. Land-Use Change

The accuracy of the classifications was assessed using the validation datasets (30% of the ground truth areas). Table 2 shows the results for 130 test points taken from 144 ground truth areas of the 2011 image. The accuracy assessments showed that the overall accuracy was 87% for 1996 and 90% for 2011. The Kappa coefficient was 0.83 for 1996 and 0.88 for 2011.
Land-use maps for 1996 and 2011 (Figure 2) were used to find the changes in land use during the 15 years (Figure 3). In 1996, the most common land uses were rangeland combined with dry farming (Class 5 in Figure 2), and rangeland without farming (Classes 6 and 7). Dense forests covered 7% ,and the share of bare land was 10.4% (Table 3). By 2011, the percentage of bare land had increased to 15.4%, and the share of rangeland with dry farming had increased to 62.7%. The area of dense forest had decreased slightly, and the areas of rangelands without farming (Classes 6 and 7) had decreased significantly.
During the 15 years, about 62% of the area remained unchanged, while land use changed in 38% of the area (Table 4 and Table 5). Of these changes, about 23% was related to the conversion of first- and second-grade rangelands to each other and other uses, especially to rangeland with dry farming (17.1%) and bare land (4.1%). About 6% of the changes were accounted for by the conversion of rangeland/dry farming to other uses, especially bare land (4.6%). The chi-square test showed that the changes in the areas of land-use classes were significant (p < 0.01).

3.2. Hydrological Soil Groups

The soil texture map showed that soils with coarse, medium, and heavy textures cover 14%, 39%, and 47% of the total area, respectively, indicating that the area has moderate to high potential for surface runoff. The three hydrological soil groups of the region (B, C, and D) cover 15% (B), 36% (C) ,and 49% (D) of the area (Table 6).

3.3. Curve Numbers and Runoff

The curve numbers (Table 6) are related to the runoff potential for different land uses and HSGs. The higher the curve number, the higher is the runoff in heavy precipitation events. The CN maps for 1996 and 2011 (Figure 4) were developed using the ArcCN tool in the ArcGIS environment by overlaying the hydrological map with the land-use map and extracting the curve numbers for different combinations from an index table (Table 6).
The minimum runoff depth was obtained for dense forest (2.52 cm/year in 1996 and 2.60 cm/year in 2011) and the maximum depth for bare land (14.10 cm/year in 1996 and 14.50 cm/year in 2011). Runoff depth was high also for residential land and second-grade range (Figure 5a). In bare land, the annual runoff was slightly over 20% of the annual precipitation, whereas the percentage was around 4% in dense forest. This was in line with earlier research, which has shown the strong impact of vegetation on water runoff [2,34,36].
The highest runoff volumes in both years were obtained for bare land, second-grade rangeland, and rangeland with dry farming (Figure 5b), whereas sparse forest and horticulture, dense forest, irrigated farming, and residential areas had the lowest runoff volumes.
The total runoff volume was 223.31 mill. m3 in 1996 (8.3% of precipitation) and 243.35 mill. m3 in 2011(9.0% of precipitation). It increased by 20.05 mill. m3 (8.98%) during the 15 years. Most of the increase was related to the increased areas of bare land and rangeland with dry farming. Runoff decreased in first- and second-grade rangeland because the area of these land uses decreased.

4. Discussion

This study used remote sensing to detect changes in land use and the SCS curve number method to calculate the effect of land-use change on water runoff. The runoff generation method is highly complex, nonlinear, dynamic in character, and affected by numerous interconnected physical factors. Similar methods have been used in the past [29,44,45] and the approach has been deemed suitable for analyzing the effect of land use on hydrological processes [10,21,44]. In the current study, the trends of land-use changes and the Kappa statistics calculated for the classified Landsat images are consistent with the results of Mula-aghajanzadeh et al. [40]. The results indicated good accuracy, suggesting that Landsat imageries have high potential in land-use mapping and hydrological studies [21,29,37]. The use of remote sensing and GIS techniques in combination with hydrological models offers cost-effective analyses as compared with the conventional approaches discussed, for example, for example, Sajikumar and Reyma [18], Kumar et al. [21], and Al-Ghobari et al. [46].
The curve number method is widely used in several countries. Its advantages are simplicity, predictability, stability, a low number of parameters, and its responsiveness to major runoff-producing watershed properties such as soil type, land use, and surface condition [21,28,44]. The disadvantages include marked sensitivity to curve number, varying accuracy for different biomes, and the fixing of the initial abstraction ratio at 0.2 in Equation (2) [47].
D’Asaro and Grillone [48] suggested, according to recent studies, that the initial abstraction ratio should be 0.05 rather than 0.2. Woodward et al. [49], using rain event and runoff data from several hundred plots, also found that a value of about 0.05 gave a better fit to the data and would be more appropriate than 0.2 in runoff calculations. Because of the above suggestions, we calculated the runoff results of our case study area also with the 0.05 initial abstraction ratio. The magnitude of the runoff volume did not change much. The 15-year increase in runoff volume was 14.68 mill. m3 (6.7%) instead of the 20.05 mill. m3 (8.98%) obtained with an initial abstraction ratio of 0.2. The runoff depths and volumes of different land-use classes did not change much.
Huang et al. [50] found that the standard CN method could underestimate large runoff events and overestimate small events. They developed a correction equation based on the relationship between slope and the observed and theoretical CN values. Their improved method predicted runoff depths with an R2 of 0.822. Garen and Moore [51] mentioned that the use of the curve number method was appropriate for flood hydrograph engineering applications, but more physically based algorithms were needed for nonpoint source water quality modeling.
Our analyses ignored the fact that the CN depends on antecedent moisture conditions (AMC), which may change during the year [52]. This simplification was done because of insufficient data for generating temporal variation in AMC and CN. However, calculations with different initial abstraction factors suggest that this simplification does not have any major impact on the main conclusions of the study.
The results of this study on runoff depth and runoff volume cannot be easily compared with previous research because of differences in the amount and distribution of precipitation, land uses, topography, and soil types [17]. In the calculation example of Zhan and Huang [29], the proportion of surface runoff was 3.8% of precipitation, whereas it was about 9% in our study. In addition, Singh et al. [53] calculated that, in the Varekhadi River basin (India), the runoff after the heaviest rain events could be as much as 62–74% of precipitation.
Climate change may also affect water availability and surface runoff [54,55]. The surface runoff will increase if heavy rain events become more frequent. However, most changes can be traced back to human interferences with natural ecosystems. Il Eum et al. [56] and Yin et al. [55] also concluded that land-cover changes played a larger role in the trends of surface runoff than climate change.
In our case study area, land-use changes resulted in a 9% increase in runoff volume during the 15 years. Most of the increase was related to the changes that occurred in rangeland, bare land, and residential land, which was in line with the results of Kamuju [57]. Most changes were caused by human activities, which increased the demand for natural resources and often represented exploitative and unsustainable use. Although the increase is significant, clearly higher increases have been reported in the literature [2].

5. Conclusions

The present study indicates that the SCS-CN method integrated with remote sensing and GIS techniques can be used effectively in watershed management. Large variations in runoff potential were observed for different land uses and landcover types. The results on the effect of land-use changes on surface runoff can be seen as a warning that should affect the future management of the Haraz River basin. As much as 38% of the study area experienced land-use changes during 15 years, mostly in an unfavorable direction from a water runoff point of view. The trend observed in this study may continue in the future, leading to increasing environmental damage and loss of rangelands and forests in Hyrcania. Analyses of past land-use changes and predictions of future changes provide important information for land-use planning, to promote sustainable development and to conserve natural resources. Increasing the awareness of environmental problems through education and having local people participate in the planning and decision-making processes are necessary to prevent irreversible adverse land-use changes in the Hyrcania region.

Author Contributions

Conceptualization, L.R. and N.A.-S.; methodology, N.A.-S.; formal analysis, L.R.; investigation, L.R.; resources, N.A.-S.; data curation, L.R.; writing—original draft preparation, L.R.; writing—review and editing, N.A.-S. and T.P.; supervision, N.A.-S. and T.P. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Data Availability Statement

The data of this study are available on request from the corresponding author.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. Location and satellite image of the study area in Iran. The lower map is a digital elevation model of the study area.
Figure 1. Location and satellite image of the study area in Iran. The lower map is a digital elevation model of the study area.
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Figure 2. Land-use map of 1996 (a) and 2011 (b). The land-use classes are 1, bare land; 2, irrigated farming; 3, dense forests; 4, sparse forests and horticulture; 5, rangeland and dry farming; 6, first-grade range; 7, second-grade range; 8, residential lands; 9, water.
Figure 2. Land-use map of 1996 (a) and 2011 (b). The land-use classes are 1, bare land; 2, irrigated farming; 3, dense forests; 4, sparse forests and horticulture; 5, rangeland and dry farming; 6, first-grade range; 7, second-grade range; 8, residential lands; 9, water.
Land 11 00220 g002aLand 11 00220 g002b
Figure 3. Areas where the land use has changed (yellow) or remained the same (green) between 1996 and 2011.
Figure 3. Areas where the land use has changed (yellow) or remained the same (green) between 1996 and 2011.
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Figure 4. Curve number (CN) map of 1996 (a) and 2011 (b).
Figure 4. Curve number (CN) map of 1996 (a) and 2011 (b).
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Figure 5. Mean annual runoff depths (a) and volumes (b) in different land-use classes in 1996 and 2011. Runoff depth is that part of annual precipitation (66.5 cm/year) that does not infiltrate the soil.
Figure 5. Mean annual runoff depths (a) and volumes (b) in different land-use classes in 1996 and 2011. Runoff depth is that part of annual precipitation (66.5 cm/year) that does not infiltrate the soil.
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Table 1. Number and total area of ground truth areas used in the classification of satellite images. The classification was made for the whole Haraz River basin (677,393 ha). The results of this study were calculated for a smaller area of 406,000 ha.
Table 1. Number and total area of ground truth areas used in the classification of satellite images. The classification was made for the whole Haraz River basin (677,393 ha). The results of this study were calculated for a smaller area of 406,000 ha.
1966 2011
Land-Use ClassNumber Area, haNumber Area, ha
Bare land1016311179
Irrigated farming1628115617
Dense forest1627818252
Sparse forest and horticulture118210137
Rangeland and dry farming2230530531
First-grade range1821117106
Second-grade range1726019385
Residential88016238
Water641844
Total124 144
Table 2. Accuracy of the classification of the 2011 image. The classes were: 1, bare land; 2, irrigated farming; 3, dense forests; 4, sparse forests and horticulture; 5, rangeland and dry farmin;, 6, first-grade range; 7, second-grade range; 8, residential; 9, water.
Table 2. Accuracy of the classification of the 2011 image. The classes were: 1, bare land; 2, irrigated farming; 3, dense forests; 4, sparse forests and horticulture; 5, rangeland and dry farmin;, 6, first-grade range; 7, second-grade range; 8, residential; 9, water.
Classified Land UseTrue Land Use
123456789Total
1120000000012
2016000000016
3001830000021
402260000010
5010131110035
60000071008
70000008109
8000000011011
90000000088
Total1219201031810128130
Table 3. Areas and percentages of land-use classes in 1996 and 2011.
Table 3. Areas and percentages of land-use classes in 1996 and 2011.
CodeLand Use19962011
Area (ha)%Area (ha)%
1Bare land42,28910.4062,72415.43
2Irrigated farming15320.386220.15
3Dense forest28,5357.0124,5516.04
4Sparse forest and horticulture61881.5210,0072.46
5Rangeland and dry farming198,36748.78255,14462.74
6First-grade range59,84314.7218,8984.65
7Second-grade range65,69816.1629,7457.31
8Residential14680.3640491.00
9Water27090.678880.22
Table 4. Area of unchanged land use between 1996 and 2011.
Table 4. Area of unchanged land use between 1996 and 2011.
Land UseArea (ha)Proportion (%)
Bare land26,8886.61
Irrigated farming2390.06
Dense forest22,1485.45
Low-dense forest and horticulture33130.81
Rangeland and dry farming165,65740.74
First-grade range12,4413.06
Second-grade range21,6705.34
Residential4200.10
Water8810.22
Table 5. Main changes in land use between 1996 and 2011.
Table 5. Main changes in land use between 1996 and 2011.
Land Use in 1996Land Use in 2011Area (ha)Area (%)
Second-grade rangeRangeland and dry farming35,8578.82
First-grade rangeRangeland and dry farming33,9458.35
Rangeland and dry farmingBare land18,8014.62
Bare landRangeland and dry farming15,3163.77
First-grade rangeBare land10,9592.70
Second-grade rangeBare land57881.42
Rangeland and dry farmingSecond-grade range50421.24
Table 6. Proportions and curve numbers of hydrological groups B, C, and D (group A does not exist in the study area). See Table 2 for the explanation of hydrological groups.
Table 6. Proportions and curve numbers of hydrological groups B, C, and D (group A does not exist in the study area). See Table 2 for the explanation of hydrological groups.
Land UsePercentage 1996Percentage 2011Curve Number
BCDBCDBCD
Bare land163351113256869194
Irrigated farming463024631919758286
Dense forest143254132958607379
Sparse forest and horticulture93160213445667783
Range land and dry farming163945164045697984
First-grade range92963182457617480
Second-grade range14404582864798689
Residential322443192754859092
Water41144579174100100100
Total153649153649
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Ahmadi-Sani, N.; Razaghnia, L.; Pukkala, T. Effect of Land-Use Change on Runoff in Hyrcania. Land 2022, 11, 220. https://doi.org/10.3390/land11020220

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Ahmadi-Sani N, Razaghnia L, Pukkala T. Effect of Land-Use Change on Runoff in Hyrcania. Land. 2022; 11(2):220. https://doi.org/10.3390/land11020220

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Ahmadi-Sani, Naser, Lida Razaghnia, and Timo Pukkala. 2022. "Effect of Land-Use Change on Runoff in Hyrcania" Land 11, no. 2: 220. https://doi.org/10.3390/land11020220

APA Style

Ahmadi-Sani, N., Razaghnia, L., & Pukkala, T. (2022). Effect of Land-Use Change on Runoff in Hyrcania. Land, 11(2), 220. https://doi.org/10.3390/land11020220

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