Abstract
Massive deforestation induced by unplanned urbanization in the hilly watersheds of Brahmaputra basin, India, has led to ecological imbalance and is gradually transforming this basin into a multi-hazard zone. Removal of green cover is also becoming a matter of global concern, as it can accelerate the adverse impacts of climate change. People coming in search of work generally reside in the hills, as they cannot afford the high cost of land in plains. This has led to deforestation of the hilly area and has resulted in increased surface erosion from the upper catchments. Though sediment and water yield from these degraded watersheds could have been minimized by implementing ecologically sustainable management practices (EMPs), such as grass land, forest land and detention pond, poor economic conditions of the people stands in the way of field implementation. On the other hand, major industries, which can be held responsible for emission of greenhouse gases, can be asked to finance greenery development in these hilly watersheds through implementation of selected EMPs to earn carbon credit for them. To convert this concept into reality, the EMP combination must be selected in such a way that it restricts sediment and water yield from the watershed within the permissible limit and maximizes its carbon sequestration capacity at minimum possible cost. Such optimal planning is a prerequisite for preparing an acceptable logical agreement between Government and private companies. Keeping this in mind, an optimization model was developed and applied to a micro watershed of Guwahati to explore its applicability in actual field. The model developed in this study provides most logical carbon credit negotiation, subject to the availability of reliable value of CO2 sequestration for different EMPs.
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1 Introduction
Urbanization is a universal phenomenon. The developing countries are experiencing rapid and unplanned urbanization which is transforming forested hilly areas into urban lands. This transformation is resulting in severe environmental impacts, particularly in terms of soil erosion in hills and flash floods in the downstream reaches (Brun and Band, 2000; Kondoh and Nishiyama, 2000; Biggs et al., 2010; Viessman and Lewis, 2008; Misra, 2011). Furthermore, removal of vegetative cover leads to a significant reduction in carbon sink and thus aggravates the impact of climate change (Lal, 2004; Shi et al., 2009; Wang et al., 2011). Such interlinked consequences of haphazard development often render urban hilly watersheds a multi-hazard zone. Development should therefore be planned in such a way that it can minimise climate change vulnerability, while satisfying the developmental goals and thus can enhance economic, social and environmental benefits (Mukheibir, 2008)
Development of urban land surfaces with ecologically sound and sustainable measures can mitigate detrimental consequences that are caused by the conversion of natural areas to urban areas. Such eco-friendly sustainable management practices used for maintaining and enhancing landuses in a natural way can be termed Ecological Management Practices (EMPs). EMPs, like contour terracing, mulching, grass, shrubs, detention/retention pond, buffer zone with vegetation and tree, sediment trap, rainwater harvesting systems, and vegetated waterways can be conveniently used for controlling sediment yield and runoff volume from land surfaces (Wang et al., 2004; Hsieh and Yang, 2007; Kaini et al.; 2012). In addition, rainwater harvesting can be a good EMP for urban systems in view of the climate change impacts and increasing water demand for the growing population (Mukheibir, 2008; Ibrahim, 2009). Again, as vegetation has great potential in sequestrating atmospheric CO2 (Jong et al., 2000; Lasco et al. 2002; Freibauer et al., 2004; Jandl et al., 2007), vegetative EMPs can provide additional benefit by reducing climate change impacts. The carbon sequestration capacity of vegetation depends upon the complex interaction between climate, soil, tree species and management, and chemical composition of the litter as determined by the dominant tree species (Lal, 2005) and thus different vegetation types provide different carbon sequestration potential.
In developing countries, poor economic conditions of the people stand in the way of field implementation of EMPs. Implementation and maintenance costs of EMPs often become unaffordable for the people in lower economic groups and thus sustainability of EMP projects becomes an issue. In such situations, the economic sustainability of an EMP project can be achieved by utilizing the economic value of the implemented EMPs. One way of obtaining financial support for EMPs is to utilize the carbon sequestration potential of vegetative EMPs to earn carbon credit. Industries, which are responsible for green house gas (GHG) emissions, have a moral responsibility of contributing towards enhancing carbon sequestration and thus they need to earn carbon credit. If a hilly residential area can be developed to have maximum carbon sequestration through application of EMPs, then a polluting industry can be asked to implement and maintain such an EMP area to earn carbon credit in proportion to its GHG emission. The EMP combination must be selected in such a way that it restricts sediment and water yield from the watershed within permissible limits and maximizes its carbon sequestration capacity at minimum possible cost. Such optimal planning is a prerequisite for preparing an acceptable logical agreement between Government and private companies.
Real world system problems, involving management of land and water resources, usually become multi-objective, as they need to address conflicting social, economic and environmental issues (Gabriel et al., 2006; Riveira et al., 2008; Han et al., 2011). We formulated a watershed-based multiobjective EMP optimization model, entitled OPTEMP-CSMO (OPTimal EMP model considering Carbon Sequestration with MultiObjctive optimization), targeting at carbon sequestration maximization and cost minimization. The model uses two most robust hydrological models, Revised Soil Loss Equation (RUSLE) and Rational method, to address the sediment yield and peak discharge restriction constraints. This paper describes the application of OPTEMP-CSMO model to a microwatershed of Guwahati city, Assam, India. It also analysed the scope of compromising between carbon sequestration and EMP cost for the study area. The model developed in this study provides most logical carbon credit negotiation, subject to the availability of reliable value of CO2 sequestration for different EMPs.
2 The OPTEMP-CSMO model
In OPTEMP-CSMO, the Laxicographic method of solving multiobjective optimization is considered. In this formulation, two objective functions are ranked as follows:
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Rank-1 objective function: Maximization of carbon sequestration of EMPs in the watershed
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Rank-2 objective function: Minimization of total cost of EMPs in the watershed
where n = the number of possible EMPs that are considered for the study; m = the number of different land covers in the plot except for the EMPs and coverage area; a i = the area of the ith EMP in the plot (m2); (Cc)i = the capital cost of the ith EMP (INR); (Cm)i = the maintenance cost of the ith EMP (INR); (CS)i = the amount of carbon sequestration (tonnes/yr) from the ith EMP in the plot having an area of ai.
2.1 Constraints
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(i)
Sediment yield constraint: Annual sediment yield from the watershed after the installation of EMPs should be greater than or equal to the required minimum sediment yield and less than or equal to the maximum allowable sediment yield. This constraint is addressed by using the Revised Universal Soil Loss Equation (RUSLE).
$$ {{\displaystyle S}}_{\min}\le \left[ RK(LS)\left\{{\displaystyle \sum_{i=1}^n{c}_i{a}_i}+{\displaystyle \sum_{j=1}^m\left({A}_j-{\displaystyle \sum_{i=1}^n{a}_i}\right){c}_j+ CcAc}\right\}P\right]{{\displaystyle \le S}}_{\max } $$(3)where S min = the minimum sediment yield required from the plot (tonnes/yr); S max = the maximum sediment yield allowed from the plot (tonnes/yr); A = the area of the plot (m2); R = the rainfall and runoff erosivity index of the plot (100 ft · tonf · in/acre/hr/yr); K = the soil erodibility factor of the plot (tonnes/acre per unit of R); LS = the LS factor of the plot (dimensionless); C i = the cover factor for the ith EMP in the plot (dimensionless); A j = the area of the jth land cover in the plot (m2); and C j = the cover factor for the jth land cover in the plot (dimensionless)
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(ii)
Peak discharge constraints: Peak discharge from the plot should not exceed the maximum and minimum allowable limit for peak discharge from the watershed after implementation of EMPs. This constraint is addressed by using the Rational method.
$$ {{\displaystyle Q}}_{\min}\le \left[\left\{{\displaystyle \sum_{i=1}^nR{C}_i{a}_i}+{\displaystyle \sum_{j=1}^m\left({A}_j-{\displaystyle \sum_{i=1}^n{a}_i}\right)}R{C}_j+ RcAc\right\}\div A\right] IA\le {{\displaystyle Q}}_{\max } $$(4)where Q max = the maximum allowable peak rate of runoff from the plot (cumec); Q min = the minimum allowable peak rate of runoff at downstream from the plot, (cumec); RC i = the runoff coefficient for the ith EMP in the plot (dimensionless); RC j = the runoff coefficient for the jth landcover in the plot (dimensionless); Rc = the runoff coefficient of the coverage area (dimensionless); Ac = the coverage area of the plot (m2); I = the maximum intensity of rainfall for the time of concentration of the selected design storm for the plot (mm/hr)
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(iii)
EMP area suitability constraints: The Area of an EMP in a plot cannot exceed the suitable area available in that plot for that EMP. Also, an EMP is allowed only when a suitable area available for the EMP in that plot is greater than a minimum feasible area required for the implementation of that particular EMP.
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(iv)
Suitable EMP area constraint is
$$ {{\displaystyle a}}_i\le {{\displaystyle as}}_i $$(5)where (as)i = the suitable area available for the ith EMP in the plot (m2).
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(v)
Maximum area available for EMPs: No EMP is allowed within the coverage area of the plot, as this area will be used for construction of houses.
Available EMP area constraint is
$$ {\displaystyle \sum_{i=1}^n{a}_i\le AL=A-A{C}_{\max }} $$(6)where, AL = the total available EMP area in the plot (m2); and C max = the maximum coverage allowed in the plot (%).
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(vi)
Owner’s choice for EMPs: The owner of the plot, for various reasons, may have a choice in the EMP selection. The area of an EMP should not go beyond the maximum and minimum area acceptable to the owner for that particular EMP:
$$ {\left({{\displaystyle a}}_{\max}\right)}_i\ge {{\displaystyle a}}_i\ge {\left({{\displaystyle a}}_{\min}\right)}_i $$(7)where, (amin)i is the minimum area kept for the ith EMP in the plot according to owner’s choice (m2); and (amax)i is the maximum area kept for ith EMP in the plot according to owner’s choice (m2).
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(vii)
Non negativity constraint is
$$ {{\displaystyle a}}_i\ge 0 $$(8)
3 Case study
Guwahati, a premier city of Northeast India, is suffering from the severe problem of flash floods due to extensive hill cutting in and around the city. Though sediment and water yield from these degraded watersheds could have been minimized by implementing EMPs, poor economic condition of the people stands in the way of field implementation. Therefore, we considered a micro watershed located near the Games Village area of Guwahati, a site having potential for residential development in its hilly parts (Fig. 1). The ASTER DEM data was used for delineating the watershed in ArcSWAT. The TIN model for the area was developed by using 20 m contour interval obtained from the Survey of India (SoI) toposheets (1:50000 scale) for developing the slope and elevation map.
3.1 Parameter consideration for OPTEMP-CSMO model
For the OPTEMP-CSMO model, we first determined the allowable limits for sediment yield and peak discharge for the study watershed using RUSLE and the rational method. We considered that when maximum permissible coverage area of the watershed would be used for constructing buildings and the rest for EMPs, the sediment yield from the plot should not exceed the value of sediment yield from the watershed under natural condition, i.e., pre-urbanized condition. However a lower limit of sediment yield (i.e., requirement at the downstream channel) may also exist from a water quality or environment point of view. On the other hand, a minimum amount of water flow is always required to sustain the downstream aquatic ecosystem, thus the value of peak discharge obtained with natural cover was considered as the lower limit of peak discharge (Qmin). The maximum allowable peak discharge (Qmax) was estimated based on the safe carrying capacity of the drain immediately downstream (Table 1).
3.2 Deriving model parameters for RUSLE
For applying the RUSLE model, the available literature was referred to for obtaining the values of model parameters for the study watershed. The rainfall erodibility factor (R) was chosen by referring to the value obtained by Sarma et al. (2005) in their hydrological study of Guwahati City. For calculation of the Soil Erodibility factor (K) value, the soil map (developed by Assam Remote Sensing Application Centre) was employed. The K value for each soil type was taken from the USLE tables. The average K value for the entire plot was computed by weighting over the entire area. From the slope map, the slope value for each pixel was taken and its corresponding length was considered as the length for that slope. The slope-Length factor for each of the pixels was then determined as referred to by Stone and Hilborn (2000). The LS value for the entire plot was determined by taking the arithmetic average of the LS values computed for each of these pixels. The cover factor for the various land covers (Table 2) was considered, based on the available literature (Renard et al., 1997; Toy et al., 1998; Sarma et al., 2005; Wall et al., 2002). The cover factor for the built-up area was taken as 0, and the cover factor of the barren land was taken as 1. The Practice factor (P factor) was considered equal to 1, as impact of different landuses/EMPs was introduced indirectly by modifying the C factor of USLE.
3.3 Deriving model parameters for Rational method
For applying the rational method, the runoff coefficients for various land covers were considered based on the available literature (Sarma et al. 2005; Iowa Storm Water Management Manual, 2008). The runoff coefficient for the built-up area was taken as 1 and for that of the barren land as 0.5. The runoff coefficient values of other land uses are given in Table 2. As rainwater harvesting is mandatory according to Guwahati Metropolitan Development Authority (GMDA) Building By-Law (2006), we considered the application of rooftop rainwater harvesting system, which can reduce runoff coefficient of built-up area from 1 to 0.8 (Sarma et al., 2006). The intensity of the designed rainfall was obtained as 50 mm/hr by using the intensity duration curve developed by Sarma and Goswami (2004) for the Guwahati City.
4 EMP Consideration
We considered three EMPs, namely grass, shrubs and forest, all having varying characteristics in respect of carbon sequestration, sediment and water conservation and construction and maintenance cost (Table 2). The exact value of carbon sequestration for the considered EMPs in the northeastern region of India are not found in the literature and thus these values were considered as documented by Lasco et al. (2002).
5 Results and Discussion
The OPTEMP-CSMO model maximizes the carbon sequestration from the area with the considered EMPs subjected to other constraints and we found that the maximum carbon sequestration of 165.81tonnes/yr can be achieved with the EMP combination costing about INR 2.03 crores (USD 0.345 million), which results with a sediment yield of 1,000 tonnes/yr and peak discharge of 1.43 cumec (Case A of Table 3). This value of carbon sequestration can be regarded as the potential maximum carbon sequestration (PMCS) for the study area subject to the given constraints. In Case A, as cost was not a constraint, it increased the EMP area to maximize the carbon sequestration and doing so the model used higher EMP areas reducing sediment yield up to 1,000 tonnes/yr and peak discharge up to 1.43 cumec, which were much lower than the permissible maximum values. Now, considering carbon sequestration equal to PMCS as an additional constraint, the model was run for minimizing the total cost of EMPs for the plot (Case B1 of Table 3). This gave the optimal EMP cost as INR.1.73 crores (USD 0.294 milion) with carbon sequestration value of 165.80 tonnes/yr, sediment yield of 2,000 tonnes/yr and peak discharge 1.47 cumec.
We also analysed the need and scope of compromising between carbon sequestration and cost for the considered EMPs for the study watershed. For purposes of analysis the OPTEMP-CSMO model was run by reducing the carbon sequestration value by some percentage of PMCS in a step by step manner and computing the minimum cost achieved for each of these carbon sequestration values. Results obtained are presented in Table 3 (Case B2 to B6). In these scenarios sediment yield and peak discharge were found to be the same as in B1.
Comparison of all these scenarios is presented graphically in Fig. 2 through Fig. 4. In Fig. 2, the variation of total EMP cost with carbon sequestration is presented and the reduction in carbon sequestration reduces the total EMP cost up to a certain limit. However, reduction of the carbon sequestration value beyond 10 % (Fig. 3) did not reduce the cost further, rather it increased the cost, and thus reduction beyond 10 % of the PMCS was not beneficial. This happened because to reduce the CS value beyond 10 % of PMCS, the model made the forest area zero, increased the grass area and decreased the shrub area marginally to satisfy the constraints of sediment and water yield. Figure 4 presents EMP combinations for all these different scenarios and there corresponding sediment yield and peak discharge are represented in Figs. 5 and 6. EMP with the highest carbon sequestration capacity and low cost was found to be consistent for all scenarios. With the percentage decrease in the acceptable carbon sequestration value, EMP areas were adjusted with mutual increase and decrease between grass (comparatively high cost, no carbon sequestration potential) and forest (comparatively medium cost, medium carbon sequestration capacity) (Fig. 7).
6 Conclusions
Urbanization is a dynamic process and presents both problems and solutions to sustainability challenges (Bao and Fang, 2012). Climate change, in addition to increasing population pressure and land-use changes, poses a major challenge to water resources management (Short et al., 2012). Therefore, sustainable urban development in hilly watersheds is a real challenge, while satisfying conflicting interests that arise from economic, social, administrative and environmental issues- more particularly considering the sustainability of the fragile ecosystem. Judicious implementation of EMPs in hilly urban watersheds can mitigate adverse consequences of urban development in an ecologically sound and sustainable way. Optimal planning considering these aspects can help in achieving an acceptable logical agreement between environment and development. Although many studies on the optimal allocation of different landuses to satisfy conflicting interests of different stockholders are found in the literature, none of these studies has focused on the optimal allocation of EMPs considering their carbon sequestration potential to ensure project sustainability.
This study investigates how to enhance the sustainability of an EMP project by utilizing carbon sequestration potential of vegetative EMPs. The proposed optimal combination of grass, shrub and forest, in addition to satisfying primary constraints of restricting sediment yield and peak discharge within permissible limit, could contribute towards mitigating climate change impacts by maximizing carbon sequestration. Optimal EMP combination has shown PMCS to be 169.81tonnes/yr for a cost of INR 2.034crores (USD 0.346 million). It was possible to reduce the cost further by INR 0.3crores (USD 0.051 million) taking recourse to lexicographic method, where the proposed OPTEMP-CSMO model minimizes cost keeping carbon sequestration same as PMCS. Many industries are responsible for producing greenhouse gases and therefore they can logically compensate for their GHG production by earning carbon credit. Depending on the need of carbon credit and financial constraint, one may decide to reduce the targeted carbon sequestration to reduce EMP cost. Thus, if a hilly residential area can be developed to have the maximum carbon sequestration through application of vegetative EMPs then a polluting industry can be asked to contribute fully or partially towards the implementation and maintenance of such EMPs area to earn carbon credit as a compensation for their GHG emission. Considering this, the OPTEMP-CSMO model is developed for the selection of EMPs in such a way that it restricts sediment and water yield from the watershed within permissible limits and also maximizes its carbon sequestration capacity at minimum possible cost.
References
Bao C, Fang C (2012) Water Resources Flows Related to Urbanization in China: Challenges and Perspectives for Water Management and Urban Development. Water Resource Management 26:531–552
Biggs TW, Atkinson E, Powell R, Revah LO (2010) Land cover following rapid urbanization on the US–Mexico border: Implications for conceptual models of urban watershed processes. Landscape and Urban Planning 96:78–87
Brun SE, Band LE (2000) Simulating runoff behavior in an urbanizing watershed. Computers Environment and Urban Systems 24:5–22
GMDA Building By-Laws (2006) Building By-Laws for Guwahati Metropolitan Development Authority (http://gmda.co.in/bldg_byelaws.htm as browse on 10th April 2012)
Freibauer A, Rounsevell MDA, Smith P, Verhagen J (2004) Carbon sequestration in the agricultural soils of Europe. Geoderma 122:1–23
Gabriel SA, Faria JA, Moglen GE (2006) Multiobjective optimization approach to smart growth in land development. Socio-Economic Planning Science 40:212–248
Han Y, Huang YF, Wang GQ, Maqsood I (2011) A Multi-objective Linear Programming Model with Interval Parameters for Water Resources Allocation in Dalian City. Water Resource Management 25:449–463. doi:10.1007/s11269-010-9708-7
Hsieh CD, Yang WF (2007) Optimal non point source pollution control strategies for a reservoir watershed in Taiwan. Journal of Environmental Management 85:908–917
Ibrahim MB (2009) Rainwater Harvesting for Urban Areas: a Success Story from Gadarif City in Central Sudan. Water Resource Management 23:2727–2736
Iowa Stormwater Management Manual (2008) Manual prepared by Iowa State University (2C-4). Version2. URL-http://www.intrans.iastate.edu/pubs/stormwater/Design/2C/2C-4%20Rational%20Method.pdf
Jandl R, Lindner M, Vesterdal L, Bauwens B, Baritz R, Hagedorn F, Johnson DW, Minkkinen K, Byrne A (2007) How strongly can forest management influence soil carbon sequestration? Geoderma 137:253–268
Jones JC, Ball R (2010) The carbon sequestration capacity of trees expressed in monetary terms. The Open Thermodynamics Journal 4:220–221
Jong BHJD, Tipper R, Montoya-Go´mez G (2000) An economic analysis of the potential for carbon sequestration by forests: evidence from southern Mexico. Ecological Economics 33:313–327
Kaini P, Artita K, Nicklow WJ (2012) Optimizing Structural Best Management Practices Using SWAT and Genetic Algorithm to Improve Water Quality Goals. Water Resource Management 26:1827–1845. doi:10.1007/s11269-012-9989-0
Kondoh A, Nishiyama J (2000) Changes in hydrological cycle due to urbanization in the Tokyo metropolitan area, Japan. Advence Space Research 26(7):1173–1176
Lal R (2004) Soil carbon sequestration to mitigate climate change. Geoderm 123:1–22
Lal R (2005) Forest soils and carbon sequestration. Forest Ecology and Management 220:242–258
Lasco RD, Joveno S, Lales M, Theresa A, Guillermo IQ, de AC J, Medrano R, Bajar OF, Mendoza CV (2002) Carbon dioxide (CO2) storage and sequestration of land cover in the Leyte Geothermal Reservation. Renewable Energy 25:307–315
Misra AK (2011) Impact of Urbanization on the Hydrology of Ganga Basin (India). Water Resource Management 25:705–719. doi:10.1007/s11269-010-9722-9
Mukheibir P (2008) Water Resources Management Strategies for Adaptation to Climate-Induced Impacts in South Africa. Water Resource Management 22:1259–1276. doi:10.1007/s11269-007-9224-6
Renard KG, Foster GR, Weesies GA, McCool DK, Yoder DC (1997) Predicting Soil Erosion by Water: A Guide to Conservation Planning with the Revised Universal Soil Loss Equation (RUSLE). USDA Agricultural Handbook. No 703
Riveira IS, Marcos BM, Rafael CM, David MB (2008) Algorithm based on simulated annealing for land-use allocation. Computers & Geoscience 34:259–268
Sarma AK, Goswami P (2004) Developing Intensity Duration Curve with Limited Rainfall Data, In the Book Predictions in ungauged Basins for Sustainable Water Resource Planning and Management”. Jain Brothers, New Delhi, pp 187–194
Sarma AK, Chandramouli V, Singh B, Goswami P, Rajbongshi N (2005) Urban Flood Hazard Mitigation of Guwahati City by Silt monitoring and watershed modeling. Report submitted to Ministry of Human Resources Department (MHRD) by Dept. of Civil Engg., IIT Guwahati
Sarma AK, Giraud G, Baishya MD (2006) Rainwater Harvesting for Urban Flood Peak Reduction, My Green Earth. Journal of Society for Socio Economic Awareness and Environment Protection 3(2):14–21
Shi XZ, Wang HJ, Yu DS, David C, Cheng XF, Pan XZ, Sun WX, Chen JM (2009) Potential for soil carbon sequestration of eroded areas in subtropical China. Soil & Tillage Research 105:322–327
Short MD, Peirson WL, Peters GM, Cox RJ (2012) Managing Adaptation of Urban Water Systems in a Changing Climate. Water Resource Management 26:1953–1981. doi:10.1007/s11269-012-0002-8
Stone RP, Hilborn D (2000) Universal Soil Loss Equation (USLE), Factsheets, Ministry of Agricultural, Food and Rural Affairs; ISSN-1198-712X (www.gov.on.ca/omafra as browse on 17th May 2011)
Toy TJ, Foster GR, Galetovic JR (1998) Guidelines for the Use of the Revised Universal Soil Loss Equation (RUSLE) Version 1.06, URL: http://www.greenfix.com/Channel%20Web/pdfs/RUSLE%20Guidelines.pdf
Viessman WJ, Lewis GL (2008) Introduction to Hydrology .5th Edition. Prentice Hall of India. ISBN: 978-61-203-3368-0
Wall GJ, Coote DR, Pringle EA, Shelton IJ (2002) RUSLEFAC — Revised Universal Soil Loss Equation for Application in Canada: A Handbook for Estimating Soil Loss from Water Erosion in Canada. Research Branch, Agriculture and Agri-Food Canada. Ottawa. Contribution No. AAFC/AAC2244E. 117
Wang X, Yu S, Huang GH (2004) Land allocation based on integrated GIS-optimization modeling at a watershed level. Landscape and Urban Planning 66:61–74
Wang Y, Fu B, Lü Y, Chen L (2011) Effects of vegetation restoration on soil organic carbon sequestration at multiple scales in semi-arid Loess Plateau, China. Catena 85:58–66
Acknowledgments
The work presented here is a part of the research work under Ministry of Urban Development (MoUD), Govt. of India sponsored project on Centre of Excellence (CoE) for “Integrated Landuse Planning and Water Resource Management.” The authors would like to thank Ministry of Urban Development (MoUD), Govt. of India for their financial support of this research work.
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Sarma, B., Sarma, A.K. & Singh, V.P. Optimal Ecological Management Practices (EMPs) for Minimizing the Impact of Climate Change and Watershed Degradation Due to Urbanization. Water Resour Manage 27, 4069–4082 (2013). https://doi.org/10.1007/s11269-013-0396-y
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DOI: https://doi.org/10.1007/s11269-013-0396-y