Assessing and Prioritizing the Climate Change Policy Objectives for Sustainable Development in Pakistan
Abstract
:1. Introduction
2. Climate Change Policy Objectives with Special Reference to Pakistan’s Economy
2.1. Climate Change Policy Objective Criteria (CCPOC) and Climate Change Policy Objective Sub-Criteria (CCPOSC) Policy in Pakistan
2.2. Climate Change Policy Objectives (Alternatives) in Pakistan
2.2.1. Institutional Capacity Building (CCPOA1)
2.2.2. Water Security (CCPOA2)
2.2.3. Integration of National Policies (CCPOA3)
2.2.4. Natural Disaster Management (CCPOA4)
2.2.5. Natural Resource Management (CCPOA5)
2.2.6. Social Sector Development and Health (CCPOA6)
2.2.7. Environmental Financial Structure (CCPOA7)
3. Methodological Framework for Climate Change Policy Objective Prioritization
3.1. Fuzzy AHP
- Step I:
- Construct the hierarchical structure of the problem.
- Step II:
- The pairs of criteria, Equation (1), sub-criteria, Equation (2), and alternatives, Equation (3) are evaluated and compared:
- Step III:
- The weights of three matrices in Step 2 are determined gradually, using the extent analysis, fuzzy arithmetic [75], and the extension principle. All resulting weights are normalized as:In Equation (6), ‘’ represents the sub-criteria weights with the total length “K”.
- Step IV:
- In this step, the aggregation principal is applied to reduce the two hierarchy tiers (i.e., criteria and sub-criteria) to a single tier:
- Step V:
- This step comprises an estimation of the fuzzy decision matrix and fuzzy performance matrix. The fuzzy decision matrix is obtained from the estimations of the fuzzy extent analysis in Step 3 for the alternatives as:The fuzzy performance matrix indicates the overall performance of each alternative related to all sub-criteria:
- Step VI:
- The ultimate values of the alternatives are obtained in the form of triangular fuzzy numbers:
- Step VII:
- The last step is defuzzification: the alternative with the greatest weight is deemed to be the optimal one. The sum of the weights of all the alternatives equals zero:
3.2. Fuzzy VIKOR
- Step I:
- Construct the fuzzy performance matrix and the weight vector as:In Equation (1),alternatives i, ;criterion or attribute j,fuzzy performance rating of alternatives (A’s) with respect to criterion (c’s);= the fuzzy weight for each criterion. Here, can be defined as and as a TFN.
- Step II:
- The ideal and the nadir values of each criterion function according to the benefit or cost functions were determined. The set of criteria expressing benefits (good or positive effects) is symbolized as , and a set of criteria expressing costs (unfavorable or negative effects) is symbolized as .
- Step III:
- The normalized fuzzy differences () were estimated.
- Step IV:
- The values and were estimated:
- Step V:
- The next step is to estimate the values :In the above equation, and . Additionally, is a weight for the strategy of “the majority” criteria (), and is the weight of the individual regret (.
- Step VI:
- Defuzzify , , and .
- Step VII:
- The next step is to rank the alternatives, sorting them by their crisp values in descending order. The results would be in three ranking lists, , and , according to , , and , respectively.
- Step VIII:
- Suggest a compromise solution for the alternative —the optimal solution by the measure if the following conditions hold:C1. “Optimal benefit”:where is the advantage rate alternative (ranked first), compared with the alternative in the second position, in and .C2: The acceptable stability of the decision-making is determined as an alternative, and the must also be the best ranked by S or R.If one of the above conditions is not fulfilled, a set of compromise solutions (CS) is suggested which consists of:CS1: The alternative and if only C2 is not satisfied.CS2: The alternatives , …, if condition C1 is not satisfied: is determined by the relation for the maximum M (the position of these alternatives in closeness).
3.3. Proposed Approach to the Problem
4. Results and Discussion
4.1. Results of the Fuzzy AHP Analysis of the Climate Change Policy Objective Criteria (CCPOC (Criteria))
4.2. Results of the Fuzzy AHP Analysis of Climate Change Policy Objectives Sub-Criteria (CCPOSC)
4.2.1. Ranking of the Sub-Criteria (CCPOSC1i’s) with Respect to the Energy Criteria (CCPOC1)
4.2.2. Ranking of the Sub-Criteria (CCPOS2i’s) with Respect to the Transport Criteria (CCPOC2)
4.2.3. Ranking of the Sub-Criteria (CCPOSC3i’s) with Respect to the Urban Planning Criteria (CCPOC3)
4.2.4. Ranking of the Sub-Criteria (CCPOSC4i’s) with Respect to the Industry Criteria (CCPOC4)
4.2.5. Ranking of the Sub-Criteria (CCPOSC5i’s) with Respect to the Agriculture Sector Criteria (CCPOC5)
4.3. Results of the Fuzzy AHP Analysis of OVERALL CCPOSC with Respect to the Goal
4.4. Results of the Fuzzy VIKOR for Climate Change Policy Objective (Alternatives)
5. Conclusion and Policy Implications
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Appendix A
Serial # | Designation | Gender | Qualification | Age | Organization |
---|---|---|---|---|---|
1. | Professor | Male | Ph. D. | 54 | Arid Agriculture University Rawalpindi |
2. | Professor | Male | Ph. D. | 53 | University of Agriculture Faisalabad |
3. | Chief Economist | Male | Ph. D. | 57 | Planning Commission of Pakistan |
4. | Additional Secretary | Male | Master | 45 | Ministry of Climate Change, Pakistan |
5. | Director General (Environment) | Male | Master | 49 | Ministry of Climate Change, Pakistan |
6. | Deputy Secretary | Female | Master | 42 | Ministry of Climate Change, Pakistan |
7. | Director (Monitoring, Lab & Implementation) | Male | M. Phil. | 41 | Environmental Protection Department, Punjab, Pakistan |
8. | Director (Environmental Impact Assessment) | Male | Master | 44 | Environmental Protection Department, Punjab, Pakistan |
9. | Director of Transport Planning Unit | Male | Master | 45 | Transport Department Punjab, Pakistan |
10. | Project Manager | Male | Ph. D. | 49 | Kachhi Canal Project |
11. | Managing Director | Male | Ph. D. | 51 | Private Power & Infrastructure Board, Government of Pakistan |
12. | Project Director | Male | Master | 45 | National Program for Improvement of Watercourses in Pakistan (Phase-II)-The Punjab Component |
13. | DG Planning | Male | Ph. D. | 56 | Ministry of Railways |
14. | Stakeholder | Male | Master | 46 | All Pakistan Transport Association |
15. | Stakeholder | Male | BA | 41 | Pakistan Agriculture and Dairy Famers Association |
Appendix B. Fuzzy AHP Results
CCPOC1 | CCPOC2 | CCPOC3 | CCPOC4 | CCPOC5 | |
---|---|---|---|---|---|
CCPOC1 | (1.000,1.000,1.000) | (1.000,1.552,5.000) | (1.000,4.516,7.000) | (1.000,1.719,7.000) | (1.000,2.372,7.000) |
CCPOC2 | (0.200,0.644,1.000) | (1.000,1.000,1.000) | (1.000,3.322,7.000) | (0.200,1.000,5.000) | (1.000,2.141,7.000) |
CCPOC3 | (0.143,0.221,1.000) | (0.143,0.301,1.000) | (1.000,1.000,1.000) | (0.200,0.416,3.000) | (0.200,0.518,3.000) |
CCPOC4 | (0.143,0.582,1.000) | (0.200,1.000,5.000) | (0.333,2.404,5.000) | (1.000,1.000,1.000) | (1.000,2.141,7.000) |
CCPOC5 | (0.143,0.422,1.000) | (0.143,0.467,1.000) | (0.333,1.931,5.000) | (0.143,0.467,1.000) | (1.000,1.000,1.000) |
CCPOC11 | CCPOC12 | CCPOC13 | |
---|---|---|---|
CCPOC11 | (1.000,1.000,1.000) | (1.000,3.625,7.000) | (0.200,1.000,5.000) |
CCPOC12 | (0.143,0.276,1.000) | (1.000,1.000,1.000) | (0.143,0.301,1.000) |
CCPOC13 | (0.200,1.000,5.000) | (1.000,3.322,6.993) | (1.000,1.000,1.000) |
CCPOC21 | CCPOC22 | CCPOC23 | |
---|---|---|---|
CCPOC21 | (1.000,1.000,1.000) | (0.143,0.725,5.000) | (0.143,0.645,7.000) |
CCPOC22 | (0.200,1.379,6.993) | (1.000,1.000,1.000) | (0.200,1.000,5.000) |
CCPOC23 | (0.143,1.550,6.993) | (0.200,1.000,5.000) | (1.000,1.000,1.000) |
CCPOC31 | CCPOC32 | CCPOC33 | CCPOC34 | |
---|---|---|---|---|
CCPOC31 | (1.000,1.000,1.000) | (1.000,2.955,7.000) | (1.000,2.408,5.000) | (1.000,1.000,3.000) |
CCPOC32 | (0.143,0.338,1.000) | (1.000,1.000,1.000) | (0.200,0.645,3.000) | (0.143,0.375,3.000) |
CCPOC33 | (0.200,0.415,1.000) | (0.333,1.550,5.000) | (1.000,1.000,1.000) | (0.200,0.518,3.000) |
CCPOC34 | (0.333,1.000,1.000) | (0.333,2.667,6.993) | (0.333,1.931,5.000) | (1.000,1.000,1.000) |
CCPOC41 | CCPOC42 | CCPOC43 | |
---|---|---|---|
CCPOC41 | (1.000,1.000,1.000) | (1.000,1.246,5.000) | (1.000,2.955,7.000) |
CCPOC42 | (0.200,0.803,1.000) | (1.000,1.000,1.000) | (1.000,2.141,7.000) |
CCPOC43 | (0.143,0.338,1.000) | (0.143,0.467,1.000) | (1.000,1.000,1.000) |
CCPOC51 | CCPOC52 | CCPOC53 | CCPOC54 | |
---|---|---|---|---|
CCPOC51 | (1.000,1.000,1.000) | (1.000,1.552,5.000) | (1.000,4.077,7.000) | (1.000,2.408,5.000) |
CCPOC52 | (0.200,0.644,1.000) | (1.000,1.000,1.000) | (1.000,1.933,5.000) | (1.000,1.246,5.000) |
CCPOC53 | (0.143,0.245,1.000) | (0.200,0.517,1.000) | (1.000,1.000,1.000) | (0.200,0.518,3.000) |
CCPOC54 | (0.200,0.415,1.000) | (0.200,0.803,1.000) | (0.333,1.931,5.000) | (1.000,1.000,1.000) |
Appendix C. Fuzzy VIKOR Results
CCPOC11 | CCPOC12 | CCPOC13 | CCPOC21 | CCPOC22 | CCPOC23 | CCPOC31 | CCPOC32 | CCPOC33 | CCPOC34 | CCPOC41 | CCPOC42 | CCPOC43 | CCPOC51 | CCPOC52 | CCPOC53 | CCPOC54 | |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
A1 | (1.8,3,4.2) | (3.2,4.4,5.6) | (2.6,3.8,5) | (0.8,1.9,3) | (1.2,2.4,3.6) | (2,3.2,4.4) | (1.6,2.7,3.8) | (1.8,3,4.2) | (1.8,3,4.2) | (2.2,3.2,4.2) | (1.6,2.7,3.8) | (1.6,2.7,3.8) | (2.4,3.5,4.6) | (2.6,3.8,5) | (4,5.3,6.6) | (2,3.2,4.4) | (3.4,4.7,6) |
A2 | (1.6,2.7,3.8) | (3.4,4.7,6) | (2.6,3.8,5) | (3.2,4.4,5.6) | (0.8,1.9,3) | (2.6,3.8,5) | (1,2.2,3.4) | (2.6,3.8,5) | (1.8,2.9,4) | (2,3.2,4.4) | (2,3.2,4.4) | (1.4,2.5,3.6) | (1.8,3,4.2) | (2.4,3.5,4.6) | (3.2,4.4,5.6) | (2.6,3.8,5) | (1.2,2.4,3.6) |
A3 | (2.8,4.1,5.4) | (2.8,4.1,5.4) | (1.8,3,4.2) | (2.4,3.5,4.6) | (1.2,2.4,3.6) | (1.8,2.9,4) | (1.4,2.5,3.6) | (2.6,3.8,5) | (1.6,2.7,3.8) | (2.8,4.1,5.4) | (3,4.1,5.2) | (1.6,2.7,3.8) | (2.6,3.8,5) | (2,3.2,4.4) | (3.4,4.7,6) | (2.6,3.8,5) | (2.6,3.8,5) |
A4 | (2.4,3.5,4.6) | (1.8,3,4.2) | (2.8,4.1,5.4) | (2.2,3.5,4.8) | (1.2,2.4,3.6) | (2.6,3.8,5) | (2.6,3.8,5) | (1.6,2.7,3.8) | (2.4,3.5,4.6) | (4,5.3,6.6) | (2.4,3.5,4.6) | (3.4,4.7,6) | (4.6,5.9,7.2) | (2.6,3.8,5) | (2.6,3.8,5) | (1,2.2,3.4) | (2.4,3.4,4.4) |
A5 | (2.4,3.5,4.6) | (2.6,3.7,4.8) | (3.2,4.4,5.6) | (2.4,3.5,4.6) | (2,3.2,4.4) | (1.8,3,4.2) | (1.8,3,4.2) | (1.4,2.5,3.6) | (2.6,3.8,5) | (2.8,4.1,5.4) | (3.2,4.4,5.6) | (2.6,3.7,4.8) | (4,5.3,6.6) | (2,3.2,4.4) | (3.6,5,6.4) | (2,3.2,4.4) | (1.8,3,4.2) |
A6 | (1.8,2.8,3.8) | (2,3.2,4.4) | (2,3.3,4.6) | (1,2.1,3.2) | (2,3.2,4.4) | (4,5.4,6.8) | (2.4,3.5,4.6) | (2.2,3.3,4.4) | (1.6,2.7,3.8) | (3.8,5,6.2) | (2.2,3.5,4.8) | (4.4,5.6,6.8) | (3.8,5,6.2) | (2.4,3.5,4.6) | (1.8,3,4.2) | (2.4,3.6,4.8) | (3.2,4.4,5.6) |
A7 | (3.6,5,6.4) | (3.4,4.7,6) | (3.4,4.7,6) | (2.6,3.8,5) | (1.4,2.6,3.8) | (2.6,3.8,5) | (3.2,4.4,5.6) | (1.6,2.7,3.8) | (2.6,3.8,5) | (3.4,4.7,6) | (1.8,3,4.2) | (3.2,4.4,5.6) | (2.8,4.1,5.4) | (3.6,5,6.4) | (3.4,4.7,6) | (2.4,3.5,4.6) | (3.4,4.7,6) |
CCPOC11 | CCPOC12 | CCPOC13 | CCPOC21 | CCPOC22 | CCPOC23 | CCPOC31 | CCPOC32 | CCPOC33 | CCPOC34 | CCPOC41 | CCPOC42 | CCPOC43 | CCPOC51 | CCPOC52 | CCPOC53 | CCPOC54 | |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
A1 | −0.417,0.063,0.542 | −0.238,0.333,0.905 | −0.381,0.190,0.762 | −0.423,0,0.423 | −0.500,0.139,0.778 | −0.400,0.060,0.520 | −0.391,0.109,0.609 | −0.500,0.139,0.778 | −0.588,0.088,0.765 | −0.435,0,0.478 | −0.500,0.075,0.650 | −0.360,0.100,0.560 | −0.154,0.269,0.692 | −0.409,0.136,0.682 | 0.040,0.520,1 | −0.350,0.250,0.850 | −0.042,0.479,1 |
A2 | −0.458,0,0.458 | −0.190,0.405,1 | −0.381,0.190,0.762 | 0.038,0.481,0.923 | −0.611,0,0.611 | −0.280,0.180,0.640 | −0.522,0,0.522 | −0.278,0.361,1 | −0.588,0.059,0.706 | −0.478,0,0.522 | −0.400,0.200,0.800 | −0.400,0.060,0.520 | −0.269,0.173,0.615 | −0.455,0.068,0.591 | −0.120,0.340,0.800 | −0.200,0.400,1 | −0.500,0,0.500 |
A3 | −0.208,0.292,0.792 | −0.333,0.262,0.857 | −0.571,0,0.571 | −0.115,0.308,0.731 | −0.500,0.139,0.778 | −0.440,0,0.440 | −0.435,0.065,0.565 | −0.444,0.194,0.833 | −0.647,0,0.647 | −0.478,0,0.522 | −0.150,0.425,1 | −0.400,0.060,0.520 | −0.115,0.327,0.769 | −0.545,0,0.545 | −0.080,0.400,0.880 | −0.200,0.400,1 | −0.208,0.292,0.792 |
A4 | −0.292,0.167,0.625 | −0.571,0,0.571 | −0.333,0.262,0.857 | −0.154,0.308,0.769 | −0.500,0.139,0.778 | −0.280,0.180,0.640 | −0.174,0.348,0.870 | −0.556,0.056,0.667 | −0.412,0.235,0.882 | −0.043,0.457,1 | −0.500,0.075,0.650 | 0,0.500,1 | 0.115,0.558,1 | −0.409,0.136,0.682 | −0.240,0.220,0.680 | −0.600,0,0.600 | −0.250,0.208,0.667 |
A5 | −0.292,0.167,0.625 | −0.381,0.167,0.714 | −0.238,0.333,0.905 | −0.115,0.308,0.731 | −0.278,0.361,1 | −0.440,0.020,0.480 | −0.348,0.174,0.696 | −0.611,0,0.611 | −0.353,0.324,1 | −0.304,0.196,0.739 | −0.400,0.200,0.800 | −0.480,0,0.480 | −0.423,0,0.423 | −0.545,0,0.545 | −0.440,0,0.440 | −0.350,0.250,0.850 | −0.375,0.125,0.625 |
A6 | −0.417,0.021,0.458 | −0.524,0.048,0.619 | −0.524,0.071,0.667 | −0.385,0.038,0.462 | −0.278,0.361,1 | 0,0.500,1 | −0.217,0.283,0.783 | −0.389,0.222,0.833 | −0.647,0,0.647 | −0.087,0.391,0.913 | −0.350,0.275,0.900 | −0.160,0.320,0.800 | 0.115,0.558,1 | −0.455,0.068,0.591 | −0.400,0.060,0.520 | −0.250,0.350,0.950 | −0.083,0.417,0.917 |
A7 | −0.042,0.479,1 | −0.190,0.405,1 | −0.190,0.405,1 | 0.077,0.538,1 | −0.444,0.194,0.833 | −0.120,0.360,0.840 | −0.043,0.478,1 | −0.389,0.278,0.944 | −0.353,0.324,1 | −0.174,0.326,0.870 | −0.600,0,0.600 | −0.040,0.440,0.920 | −0.077,0.385,0.846 | −0.182,0.409,1 | −0.080,0.400,0.880 | −0.250,0.325,0.900 | −0.042,0.479,1 |
Alternative | Si | Ri | Qi | ||||||
---|---|---|---|---|---|---|---|---|---|
A1 | −0.3715 | 0.1505 | 0.6750 | −0.0024 | 0.0278 | 0.0580 | −0.8892 | 0.0352 | 0.9264 |
A2 | −0.3718 | 0.1508 | 0.6760 | 0.0024 | 0.0302 | 0.0580 | −0.8523 | 0.0538 | 0.9268 |
A3 | −0.3381 | 0.1873 | 0.7152 | −0.0073 | 0.0232 | 0.0580 | −0.9127 | 0.0150 | 0.9427 |
A4 | −0.3035 | 0.2222 | 0.7505 | 0.0043 | 0.0311 | 0.0580 | −0.8101 | 0.0901 | 0.9572 |
A5 | −0.2980 | 0.2285 | 0.7574 | −0.0021 | 0.0247 | 0.0580 | −0.8572 | 0.0433 | 0.9600 |
A6 | −0.2965 | 0.2272 | 0.7536 | 0.0086 | 0.0333 | 0.0580 | −0.7744 | 0.1086 | 0.9584 |
A7 | −0.2221 | 0.3155 | 0.8557 | −0.0024 | 0.0278 | 0.0580 | −0.8284 | 0.1024 | 1.0000 |
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Criteria | Sub-Criteria | Description |
---|---|---|
Energy (CCPOC1) | Energy Production (CCPOSC11) | Energy production is one of the foremost reasons for anthropogenic CO2 emissions [15,16,17] Mitigation and adaptation measures are required on an urgent basis for environmental resilience. |
Transmission and Distribution (CCPOSC12) | Upgradation and improvement of transmission lines and distribution systems could help reduce line losses and increase the efficient use of produced energy [18]. | |
Fiscal Reforms in the Energy Sector (CCPOSC13) | Fiscal reforms in energy sectors are direly needed to tackle circular debt [33]. Energy investment policy needs to be focussed on investment in green energy. A shift of energy mix from non-renewable to renewable energy sources to ensure environmental sustainability. | |
Transport (CCPOC2) | Road Infrastructure (CCPOSC21) | Road infrastructure is vital for the movement of people and goods and services. Moreover, it also integrates the country, facilities economic activity, labor mobility, help generate employment opportunities, and poverty alleviation. Transport infrastructure is the center of political and scientific debate on sustainability due to its negative externalities both on the environment and quality of life [20]. Improving the road infrastructure considering environmental and climate is imperative [21]. |
General Transport (CCPOSC22) | The number of transport vehicles during the last decades has increased a lot. This sector is one of the highly energy-consuming sectors and GHG emission contributors [17,28,34]. It is one of the main areas that need mitigation and adaptation. | |
Railways (CCPOSC23) | Despite a potential single major transport mode of transport contributing to economic growth and national integration, the Pakistan railway has not been able to efficiently to provide sustainable transport facilities [22]. A comprehensive railway rehabilitation plan is warranted to provide a comparatively environmentally friendly transport facility. It could be the first step towards green transport system in Pakistan. | |
Urban & Town Planning (CCPOC3) | Population and Urbanization (CCPOSC31) | Having rampant population growth and unmanaged urban sprawl in Pakistan, integrated population control and urban planning is required for successful mitigation and adaptation measures to climate change [22]. |
Integrate Mass-Transit System (CCPOSC32) | Urban transport management is a critical and challenging issue [23,24] The development of integrated urban mass-transit systems in the big cities indispensable to reduce the number of vehicles and provide sustainable transport facilities [22]. Also, urban transport needed to be moved to renewable energy and fuels for a sustainable urban environment. | |
Solid Waste Management (CCPOSC33) | Solid Waste Management (SWM) is one of the biggest challenging issues, especially in urban areas [35]. The development of the SWM system must be considered in the climate change policy. | |
Water Management (CCPOSC34) | Water management in urban areas is not considering climate change [25]. Rampant urbanization has heightened the pollution of groundwater in urban areas. There is a dire need to incorporate the climate change perspectives in water management such as the provision of clean drinking water and disposal and recycling of drainage and wastewater. | |
Industry (CCPOC4) | Air Pollution (CCPOSC41) | The industrial and manufacturing sector is a major source of anthropogenic GHG emissions [28]. Industrial and manufacturing plants need to be shifted to renewable energy to mitigate emissions for the industrial sector. |
Water Pollution (CCPOSC42) | Industrial plants cause water pollution. Water treatment plants need to be constructed to ensure water quality [26,27]. Climate change policy must imperatively consider the water pollution sourced from the industry. | |
Land Pollution/Brownfield (CCPOSC43) | Land pollution and brownfields are a serious issue in Pakistan [29] but have not attracted enough attention from the government and policymakers. | |
Agriculture (CCPOC5) | Crops (CCPOSC51) | There is extensive use of fossil fuels, pesticides, herbicides, fertilizer, and other chemicals in the crop growing process [31] in economies including Pakistan. Environmentally friendly crop growing techniques and practices could be prolific if dovetailed in climate change and agricultural policy. |
Irrigation System and practices (CCPOSC52) | The agriculture sector is one of the largest water-using sectors in most of the regions in the world [36]. Pakistan is no exception to this. Irrigation system and water use practices in agriculture are characterized as inefficient [30]. Having Pakistan an agrarian economy, the irrigation management system and water use practices in the agriculture sector needs attention in climate change policy. | |
Livestock (CCPOSC53) | The livestock sector also contributes to climate change. It has a large potential to reduce its GHG emissions [32]. This sector also needs attention in the climate change policy. | |
Forestry (CCPOSC54) | Deforestation in the economy has its environmental consequences. Multiple initiatives such as the reduction of emissions from deforestations and forest degradation as a mitigation strategy in the forestry sector [32]. |
Study | Purpose | MCDA Method |
---|---|---|
Papapostolou et al. [53] | Analysis of cross-border renewable energy cooperation strategies. | AHP, SWOT, Fuzzy TOPSIS |
Salimi et al. [54] | Examination of the role of advertising types on water consumption behavior. | Fuzzy AHP, Fuzzy VIKOR |
Dao et al. [55] | Assessment of environmental conflicts in the mining industry. | Fuzzy AHP, Fuzzy TOPSIS |
Shumaiza et al. [56] | Application of MCDA approaches on the selection of waste treatment and site selection for the thermal power station. | Fuzzy VIKOR, Fuzzy TOPSIS |
Solangi et al. [57] | Analysis of the solar power project site selection for renewable energy production. | AHP, Fuzzy VIKOR |
Solangi et al. [16] | Evaluation of the strategies for sustainable energy planning. | SWOT-AHP, Fuzzy TOPSIS |
Ahmed et al. [58] | Environmental implications of crop-stubble burning and its implications on climate change. | AHP, TOPSIS |
Wang et al. [59] | Sustainable energy conservation technologies selection for agriculture residue. | Fuzzy AHP, VIKOR |
Shah et al. [15] | Examination of barriers to the adoption of cleaner energy production technologies. | Modified Delphi, Fuzzy AHP |
Busico et al. [60] | Modeling actual and future climate change accounting water resources attention role. | GIS, AHP |
Xu et al. [61] | Analysis of economic viability and environmental efficiency of the hydrogen production process for decarbonization of energy systems. | Fuzzy AHP, Fuzzy TOPSIS |
Suganthi [62] | Multi-expert and multi-criteria analysis of sectoral investment for sustainable development. | Fuzzy AHP, VIKOR, DEA |
Udie et al. [63] | Vulnerability assessment of climate change impact on critical oil & gas unfractured. | AHP |
Champalle et al. [64] | Prioritization of climate change adaptation. | MCDA, NCA |
Kim and Chung [65] | Prioritizing climate change adaptation strategies. | VIKOR |
Chung and Kim [66] | Prioritization of locations of treated wastewater use regarding climate change scenarios. | WSM, TOPSIS, Fuzzy TOPSIS, |
Kim and Chung [67] | Assessing the vulnerability of water supply to climate change and variability in South Korea. | Fuzzy VIKOR |
Kaya and Kahraman [68] | Renewable energy planning for alternative energy policies. | Fuzzy VIKOR, AHP |
Alternative | Rank | |||
---|---|---|---|---|
Institutional Capacity Building (CCPOA1) | 0.1514 | 0.0278 | 0.0241 | 2nd |
Water Security (CCPOA2) | 0.1517 | 0.0302 | 0.0428 | 3rd |
Integration of National Policies (CCPOA3) | 0.1881 | 0.0247 | 0.0150 | 1st |
Natural Disaster Management (CCPOA4) | 0.2231 | 0.0311 | 0.0790 | 5th |
Natural Resource Management (CCPOA5) | 0.2293 | 0.0269 | 0.0487 | 4th |
Social sector development and health (CCPOA6) | 0.2281 | 0.0333 | 0.0975 | 7th |
Environmental financial structure development (CCPOA7) | 0.3164 | 0.0278 | 0.0913 | 6th |
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Ahmed, W.; Tan, Q.; Shaikh, G.M.; Waqas, H.; Kanasro, N.A.; Ali, S.; Solangi, Y.A. Assessing and Prioritizing the Climate Change Policy Objectives for Sustainable Development in Pakistan. Symmetry 2020, 12, 1203. https://doi.org/10.3390/sym12081203
Ahmed W, Tan Q, Shaikh GM, Waqas H, Kanasro NA, Ali S, Solangi YA. Assessing and Prioritizing the Climate Change Policy Objectives for Sustainable Development in Pakistan. Symmetry. 2020; 12(8):1203. https://doi.org/10.3390/sym12081203
Chicago/Turabian StyleAhmed, Waqas, Qingmei Tan, Ghulam Muhammad Shaikh, Hamid Waqas, Nadeem Ahmed Kanasro, Sharafat Ali, and Yasir Ahmed Solangi. 2020. "Assessing and Prioritizing the Climate Change Policy Objectives for Sustainable Development in Pakistan" Symmetry 12, no. 8: 1203. https://doi.org/10.3390/sym12081203
APA StyleAhmed, W., Tan, Q., Shaikh, G. M., Waqas, H., Kanasro, N. A., Ali, S., & Solangi, Y. A. (2020). Assessing and Prioritizing the Climate Change Policy Objectives for Sustainable Development in Pakistan. Symmetry, 12(8), 1203. https://doi.org/10.3390/sym12081203