A Multi-Criteria Decision Support Framework for Inland Nuclear Power Plant Site Selection under Z-Information: A Case Study in Hunan Province of China
Abstract
:1. Introduction
2. Literature Review
2.1. Methods for NPP Site Selection
2.2. Evaluation Criteria for Inland NPP Site Selection
3. Preliminaries
4. Methodology
4.1. The Designed Multi-criteria Decision Support Framework
4.2. The Proposed Methods in the Inland NPP Siting Framework
4.2.1. Phase II: Determine Criterion Weights and Interrelationships
4.2.2. Phase III: Determine the Order of Site Alternatives
5. Case Study and Result
5.1. Phase I: Construct A Criteria System and Case Description
5.2. Phase II: Determine Criterion Weights and Interrelationships
5.3. Phase III: Determine the Order of Site Alternatives
6. Discussion
6.1. Sensitivity Analysis
6.2. Comparative Analysis
7. Conclusion and Policy Implication
Author Contributions
Funding
Conflicts of Interest
Appendix A
S1 | S2 | S3 | S4 | S5 | S6 | |
---|---|---|---|---|---|---|
U11 | (2.85,4.51,6.18) | (2.84,4.49,6.15) | (4.32,6.06,7.78) | (4.44,6.22,8.00) | (3.70,5.18,6.65) | (3.85,5.58,7.31) |
U12 | (3.11,4.71,6.31) | (2.93,4.60,6.28) | (3.07,4.65,6.24) | (2.46,4.18,5.90) | (3.49,5.07,6.66) | (3.37,4.90,6.43) |
U13 | (3.11,4.71,6.31) | (3.10,4.88,6.67) | (3.67,5.32,6.98) | (2.69,4.29,5.89) | (4.46,6.25,8.04) | (4.18,5.90,7.27) |
U21 | (3.60,5.21,6.82) | (3.70,5.18,6.65) | (4.65,6.38,7.74) | (3.69,5.35,7.02) | (4.32,6.06,7.78) | (4.04,5.83,7.62) |
U22 | (3.99,5.78,7.56) | (3.69,5.35,7.02) | (3.43,5.16,6.89) | (3.19,4.79,6.40) | (3.34,4.67,6.00) | (3.70,5.18,6.65) |
U23 | (2.41,4.02,5.63) | (2.08,3.74,5.41) | (1.95,3.49,5.02) | (0.87,2.18,3.90) | (2.02,3.69,5.35) | (1.70,3.43,5.16) |
U24 | (0.81,2.00,3.60) | (2.77,4.60,6.45) | (1.26,2.93,4.60) | (2.12,3.54,4.95) | (2.67,4.21,5.76) | (3.18,5.02,6.86) |
U25 | (0.84,2.50,4.16) | (1.19,2.85,4.51) | (0.84,0.84,2.50) | (0.84,2.09,3.76) | (2.17,3.88,5.60) | (1.31,3.10,4.88) |
U26 | (3.99,5.78,7.56) | (4.46,6.25,8.04) | (6.25,8.04,8.04) | (4.21,5.76,6.95) | (4.14,5.80,7.45) | (4.14,5.80,7.45) |
U27 | (3.84,5.37,6.91) | (3.50,4.90,6.30) | (4.74,6.47,7.78) | (3.17,4.62,6.07) | (4.16,5.83,7.49) | (2.82,4.51,6.21) |
U31 | (0.81,2.00,3.60) | (1.24,3.02,4.79) | (1.19,2.32,3.86) | (2.77,4.60,6.45) | (1.66,3.18,4.70) | (2.50,4.16,5.83) |
U32 | (0.84,2.51,4.18) | (2.02,3.69,5.35) | (0.80,2.40,4.00) | (2.94,4.65,6.38) | (2.12,3.54,4.95) | (2.77,4.37,5.99) |
U33 | (0.84,0.84,2.51) | (0.87,2.60,4.32) | (1.16,2.28,3.88) | (0.86,2.11,3.83) | (0.84,2.09,3.76) | (1.45,2.93,4.41) |
U34 | (4.60,6.45,8.29) | (4.32,6.06,7.78) | (4.93,6.60,7.49) | (3.70,5.18,6.65) | (3.60,5.21,6.82) | (3.53,5.13,6.72) |
U35 | (2.29,4.13,5.97) | (0.87,2.18,3.90) | (1.51,3.11,4.71) | (0.89,2.67,4.44) | (1.51,3.11,4.71) | (1.73,3.52,5.30) |
U36 | (4.44,6.05,7.24) | (3.49,5.07,6.66) | (4.35,5.95,7.20) | (2.74,4.37,6.02) | (4.30,6.02,7.74) | (3.37,4.90,6.43) |
S1 | S2 | S3 | S4 | S5 | S6 | |
---|---|---|---|---|---|---|
U11 | (0.357,0.564,0.773) | (0.355,0.562,0.768) | (0.540,0.757,0.973) | (0.555,0.777,1.000) | (0.463,0.647,0.832) | (0.481,0.698,0.913) |
U12 | (0.467,0.706,0.947) | (0.440,0.691,0.943) | (0.461,0.699,0.937) | (0.370,0.628,0.886) | (0.524,0.762,1.000) | (0.506,0.735,0.965) |
U13 | (0.387,0.585,0.784) | (0.385,0.607,0.829) | (0.456,0.662,0.868) | (0.335,0.533,0.732) | (0.555,0.777,1.000) | (0.520,0.734,0.904) |
U21 | (0.463,0.670,0.877) | (0.476,0.665,0.855) | (0.598,0.819,0.995) | (0.474,0.688,0.902) | (0.555,0.778,1.000) | (0.520,0.749,0.979) |
U22 | (0.527,0.764,1.000) | (0.488,0.708,0.928) | (0.454,0.683,0.911) | (0.421,0.634,0.847) | (0.442,0.618,0.794) | (0.489,0.685,0.880) |
U23 | (0.154,0.216,0.361) | (0.161,0.232,0.418) | (0.173,0.250,0.446) | (0.223,0.400,1.000) | (0.163,0.236,0.430) | (0.169,0.254,0.511) |
U24 | (0.225,0.406,1.000) | (0.126,0.176,0.293) | (0.176,0.277,0.644) | (0.164,0.229,0.382) | (0.141,0.192,0.303) | (0.118,0.161,0.255) |
U25 | (0.202,0.336,1.000) | (0.186,0.294,0.707) | (0.336,1.000,1.000) | (0.223,0.401,1.000) | (0.284,0.403,0.673) | (0.172,0.271,0.640) |
U26 | (0.496,0.718,0.940) | (0.555,0.777,1.000) | (0.777,1.000,1.000) | (0.524,0.716,0.864) | (0.515,0.721,0.927) | (0.515,0.721,0.927) |
U27 | (0.494,0.691,0.888) | (0.450,0.629,0.809) | (0.609,0.832,1.000) | (0.407,0.594,0.781) | (0.535,0.749,0.963) | (0.363,0.580,0.799) |
U31 | (0.225,0.406,1.000) | (0.169,0.268,0.652) | (0.210,0.350,0.679) | (0.126,0.176,0.293) | (0.172,0.255,0.487) | (0.139,0.195,0.324) |
U32 | (0.191,0.319,0.952) | (0.149,0.217,0.396) | (0.200,0.333,1.000) | (0.125,0.172,0.272) | (0.162,0.226,0.377) | (0.134,0.183,0.289) |
U33 | (0.335,1.000,1.000) | (0.194,0.324,0.968) | (0.216,0.368,0.727) | (0.219,0.399,0.974) | (0.223,0.401,1.000) | (0.191,0.287,0.580) |
U34 | (0.555,0.777,1.000) | (0.521,0.730,0.939) | (0.595,0.796,0.903) | (0.446,0.625,0.802) | (0.435,0.629,0.823) | (0.426,0.618,0.811) |
U35 | (0.146,0.211,0.380) | (0.223,0.400,1.000) | (0.185,0.280,0.577) | (0.196,0.326,0.978) | (0.185,0.280,0.577) | (0.164,0.248,0.503) |
U36 | (0.574,0.782,0.935) | (0.451,0.655,0.860) | (0.562,0.769,0.930) | (0.354,0.565,0.777) | (0.556,0.778,1.000) | (0.435,0.633,0.831) |
S1 | S2 | S3 | S4 | S5 | S6 | |
---|---|---|---|---|---|---|
U11 | (0.009,0.014,0.019) | (0.009,0.013,0.018) | (0.013,0.018,0.023) | (0.013,0.019,0.024) | (0.011,0.016,0.020) | (0.012,0.017,0.022) |
U12 | (0.041,0.061,0.082) | (0.038,0.060,0.082) | (0.040,0.061,0.082) | (0.032,0.055,0.077) | (0.046,0.066,0.087) | (0.044,0.064,0.084) |
U13 | (0.036,0.054,0.072) | (0.035,0.056,0.076) | (0.042,0.061,0.080) | (0.031,0.049,0.067) | (0.051,0.072,0.092) | (0.048,0.068,0.083) |
U21 | (0.016,0.023,0.031) | (0.017,0.023,0.030) | (0.021,0.029,0.035) | (0.017,0.024,0.032) | (0.019,0.027,0.035) | (0.018,0.026,0.034) |
U22 | (0.023,0.034,0.044) | (0.021,0.031,0.041) | (0.020,0.030,0.040) | (0.019,0.028,0.037) | (0.019,0.027,0.035) | (0.022,0.030,0.039) |
U23 | (0.006,0.009,0.014) | (0.006,0.009,0.017) | (0.007,0.010,0.018) | (0.009,0.016,0.040) | (0.007,0.009,0.017) | (0.007,0.010,0.020) |
U24 | (0.025,0.045,0.112) | (0.014,0.020,0.033) | (0.020,0.031,0.072) | (0.018,0.026,0.043) | (0.016,0.022,0.034) | (0.013,0.018,0.029) |
U25 | (0.017,0.029,0.086) | (0.016,0.025,0.061) | (0.029,0.086,0.086) | (0.019,0.035,0.086) | (0.024,0.035,0.058) | (0.015,0.023,0.055) |
U26 | (0.046,0.066,0.087) | (0.051,0.072,0.092) | (0.072,0.092,0.092) | (0.048,0.066,0.079) | (0.047,0.066,0.085) | (0.047,0.066,0.085) |
U27 | (0.020,0.028,0.036) | (0.018,0.026,0.033) | (0.025,0.034,0.041) | (0.017,0.024,0.032) | (0.022,0.031,0.039) | (0.015,0.024,0.033) |
U31 | (0.008,0.014,0.034) | (0.006,0.009,0.022) | (0.007,0.012,0.023) | (0.004,0.006,0.010) | (0.006,0.009,0.017) | (0.005,0.007,0.011) |
U32 | (0.025,0.042,0.127) | (0.020,0.029,0.053) | (0.027,0.044,0.133) | (0.017,0.023,0.036) | (0.021,0.030,0.050) | (0.018,0.024,0.038) |
U33 | (0.017,0.052,0.052) | (0.010,0.017,0.050) | (0.011,0.019,0.038) | (0.011,0.021,0.051) | (0.012,0.021,0.052) | (0.010,0.015,0.030) |
U34 | (0.021,0.030,0.038) | (0.020,0.028,0.036) | (0.023,0.030,0.034) | (0.017,0.024,0.030) | (0.017,0.024,0.031) | (0.016,0.023,0.031) |
U35 | (0.005,0.007,0.012) | (0.007,0.013,0.032) | (0.006,0.009,0.018) | (0.006,0.010,0.031) | (0.006,0.009,0.018) | (0.005,0.008,0.016) |
U36 | (0.033,0.045,0.053) | (0.026,0.037,0.049) | (0.032,0.044,0.053) | (0.020,0.032,0.044) | (0.032,0.044,0.057) | (0.025,0.036,0.047) |
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Criteria | Sub-criteria | Category | Reference |
---|---|---|---|
U1 | Distance from vegetation area U11 | B | [24,30,31] |
Distance from groundwater-rich area U12 | B | ||
Distance from protected area U13 | B | ||
U2 | Slope stability U21 | B | [32,33,34,36,37] |
Elevation stability U22 | B | ||
Soil erosion U23 | C | ||
Flood disasters U24 | C | ||
Seismic activity U25 | C | ||
Cooling water availability U26 | B | ||
The atmospheric dispersion U27 | B | ||
U3 | Land-use costs U31 | C | [2,5,7,35,38,39] |
Population density U32 | C | ||
Distance from Road U33 | C | ||
Distance from Airports U34 | B | ||
Distance from power grid U35 | C | ||
Distance from hazardous facilities U36 | B |
Constraint | Reliability | ||
---|---|---|---|
Linguistic Terms | Fuzzy Numbers | Linguistic Terms | Fuzzy Numbers |
Equally Important (EI) | (1,1,1) | Strongly Unlikely (SU) | (0,0,0.3) |
Weakly Important (WI) | (2/3,1,3/2) | Unlikely (U) | (0.1,0.3,0.5) |
Generally Important (GI) | (3/2,2,5/2) | Neutral (N) | (0.3,0.5,0.7) |
Very Important (VI) | (5/2,3,7/2) | Likely (L) | (0.5,0.7,0.9) |
Absolutely Important (AI) | (7/2,4,9/2) | Strongly Likely (SL) | (0.7,1.0,1.0) |
Linguistic variable | (EI, SU) | (EI, U) | (EI, N) | (EI, L) | (EI, SL) |
CI | 3 | 3 | 3 | 3 | 3 |
Linguistic variable | (WI, SU) | (WI, U) | (WI, N) | (WI, L) | (WI, SL) |
CI | 2.07 | 2.7 | 3.11 | 3.42 | 3.68 |
Linguistic variable | (GI, SU) | (GI, U) | (GI, N) | (GI, L) | (GI, SL) |
CI | 2.64 | 3.6 | 4.22 | 4.71 | 5.11 |
Linguistic variable | (VI, SU) | (VI, U) | (VI, N) | (VI, L) | (VI, SL) |
CI | 3.17 | 4.44 | 5.27 | 5.92 | 6.45 |
Linguistic variable | (AI, SU) | (AI, U) | (AI, N) | (AI, L) | (AI, SL) |
CI | 3.68 | 5.24 | 6.27 | 7.07 | 7.74 |
Linguistic Terms | Fuzzy Numbers |
---|---|
No Influence (NO) | (0,0,0) |
Very Low Influence (VL) | (0,0,0.25) |
Low Influence (L) | (0,0.25,0.5) |
High Influence (H) | (0.25,0.5,0.75) |
Very High Influence (VH) | (0.5,0.75,1.0) |
Linguistic Terms | Fuzzy Numbers |
---|---|
Very Poor (VP) | (1,1,3) |
Poor (P) | (1,3,5) |
Fairly (F) | (3,5,7) |
Good (G) | (5,7,9) |
Very Good (VG) | (7,9,9) |
DM1 | DM2 | DM3 | DM4 | |
---|---|---|---|---|
Best criteria | U2 | U2 | U3 | U1 |
Worst criteria | U1 | U1 | U1 | U3 |
DM1 | DM2 | DM3 | DM4 | ||
---|---|---|---|---|---|
U1 | Best criteria | U12 | U13 | U13 | U12 |
Worst criteria | U11 | U11 | U11 | U11 | |
U2 | Best criteria | U25 | U26 | U25 | U24 |
Worst criteria | U23 | U22 | U22 | U21 | |
U3 | Best criteria | U32 | U32 | U32 | U32 |
Worst criteria | U35 | U31 | U34 | U31 |
Best-to-Others Vectors | Others-to-Worst Vectors | |||||
---|---|---|---|---|---|---|
U1 | U2 | U3 | U1 | U2 | U3 | |
DM1 | (AI, L) | (EI, SL) | (GI, L) | (EI, SL) | (AI, L) | (VI, L) |
DM2 | (AI, L) | (EI, L) | (VI, U) | (EI, L) | (AI, L) | (VI, N) |
DM3 | (VI, SL) | (WI, L) | (EI, SL) | (EI, SL) | (VI, L) | (VI, SL) |
DM4 | (EI, L) | (WI, N) | (GI, L) | (GI, L) | (GI, U) | (EI, L) |
Best-to-Others Vectors | |||
U1 | U2 | U3 | |
DM1 | (2.94,3.36,3.78) | (1,1,1) | (1.26,1.68,2.10) |
DM2 | (2.94,3.36,3.78) | (1,1,1) | (1.37,1.64,1.92) |
DM3 | (2.38,2.85,3.33) | (0.56,0.84,1.26) | (1,1,1) |
DM4 | (1,1,1) | (0.47,0.71,0.82) | (1.26,1.68,2.10) |
Others-to-Worst Vectors | |||
U1 | U2 | U3 | |
DM1 | (1,1,1) | (2.94,3.36,3.78) | (2.10,2.52,2.94) |
DM2 | (1,1,1) | (2.94,3.36,3.78) | (1.78,2.13,2.49) |
DM3 | (1,1,1) | (2.10,2.52,2.94) | (2.38,2.85,3.33) |
DM4 | (1.26,1.68,2.10) | (0.82,1.10,1.37) | (1,1,1) |
U1 | U2 | U3 | ||
---|---|---|---|---|
DM1 | (0.138,0.147,0.147) | (0.458,0.520,0.546) | (0.283,0.345,0.382) | (0.174,0.174,0.174) |
DM2 | (0.141,0.157,0.158) | (0.467,0.532,0.532) | (0.277,0.330,0.348) | (0.028,0.028,0.028) |
DM3 | (0.156,0.157,0.157) | (0.347,0.422,0.484) | (0.349,0.423,0.494) | (0.162,0.162,0.162) |
DM4 | (0.302,0.368,0.409) | (0.361,0.361,0.385) | (0.229,0.269,0.319) | (0.313,0.313,0.313) |
Main Criteria | Sub-criteria | Final Weights | Global Weights |
---|---|---|---|
U1 | U11 | 0.144 | 0.030 |
U12 | 0.413 | 0.084 | |
U13 | 0.443 | 0.091 | |
U2 | U21 | 0.078 | 0.035 |
U22 | 0.091 | 0.042 | |
U23 | 0.074 | 0.034 | |
U24 | 0.203 | 0.092 | |
U25 | 0.220 | 0.100 | |
U26 | 0.218 | 0.099 | |
U27 | 0.117 | 0.053 | |
U3 | U31 | 0.113 | 0.038 |
U32 | 0.309 | 0.105 | |
U33 | 0.153 | 0.052 | |
U34 | 0.116 | 0.039 | |
U35 | 0.114 | 0.039 | |
U36 | 0.196 | 0.067 |
DM1 | DM2 | |||||
U1 | U2 | U3 | U1 | U2 | U3 | |
U1 | (NO, SU) | (H, L) | (L, SL) | (NO, SU) | (H, L) | (L, L) |
U2 | (L, L) | (NO, SU) | (H, L) | (VL, L) | (NO, SU) | (H, N) |
U3 | (VH, N) | (L, SL) | (NO, SU) | (H, SL) | (H, L) | (NO, SU) |
DM3 | DM4 | |||||
U1 | U2 | U3 | U1 | U2 | U3 | |
U1 | (NO, SU) | (L, L) | (H, N) | (NO, SU) | (L, N) | (L, L) |
U2 | (VH, U) | (NO, SU) | (H, N) | (H, N) | (NO, SU) | (VL, L) |
U3 | (L, N) | (L, L) | (NO, SU) | (L, SL) | (H, N) | (NO, SU) |
U1 | U2 | U3 | |
---|---|---|---|
U1 | (0,0,0) | (0.11,0.31,0.51) | (0.05,0.25,0.46) |
U2 | (0.11,0.24,0.43) | (0,0,0) | (0.14,0.28,0.48) |
U3 | (0.15,0.36,0.56) | (0.10,0.31,0.51) | (0,0,0) |
U1 | U2 | U3 | |
---|---|---|---|
U1 | (0,0,0) | (0.108,0.304,0.500) | (0.049,0.245,0.451) |
U2 | (0.108,0.235,0.422) | (0,0,0) | (0.137,0.275,0.471) |
U3 | (0.147,0.353,0.549) | (0.098,0.304,0.500) | (0,0,0) |
U1 | U2 | U3 | |
---|---|---|---|
U1 | (0.022,0.288,8.386) | (0.117,0.532,8.908) | (0.066,0.462,8.428) |
U2 | (0.133,0.467,8.356) | (0.029,0.284,8.237) | (0.147,0.467,8.119) |
U3 | (0.163,0.597,9.331) | (0.118,0.578,9.509) | (0.024,0.305,8.686) |
U1 | (0.205,1.282,25.722) | (0.318,1.352,26.073) | 10.476 | −0.124 | 2.148 | −0.025 |
U2 | (0.309,1.218,24.712) | (0.264,1.394,26.654) | 10.398 | −0.434 | 4.731 | −0.197 |
U3 | (0.305,1.480,27.526) | (0.237,1.234,25.233) | 10.693 | 0.558 | 3.636 | 0.190 |
Main Criteria | Sub-criteria | Modified Weights |
---|---|---|
U1 (0.204) | U11 (0.120) | 0.024 |
U12 (0.428) | 0.087 | |
U13 (0.452) | 0.092 | |
U2 (0.45) | U21 (0.078) | 0.035 |
U22 (0.098) | 0.044 | |
U23 (0.089) | 0.040 | |
U24 (0.248) | 0.112 | |
U25 (0.191) | 0.086 | |
U26 (0.204) | 0.092 | |
U27 (0.092) | 0.042 | |
U3 (0.346) | U31 (0.098) | 0.034 |
U32 (0.384) | 0.133 | |
U33 (0.150) | 0.052 | |
U34 (0.110) | 0.038 | |
U35 (0.093) | 0.032 | |
U36 (0.164) | 0.057 |
Ranking | ||||
---|---|---|---|---|
15.403 | 0.652 | 0.0406 | 2 | |
15.499 | 0.535 | 0.0334 | 4 | |
15.378 | 0.665 | 0.0415 | 1 | |
15.509 | 0.527 | 0.0329 | 5 | |
15.470 | 0.555 | 0.0346 | 3 | |
15.521 | 0.501 | 0.0313 | 6 |
Methods | Ranking Orders |
---|---|
Fuzzy AHP-Grey TODIM | |
Fuzzy SWARA-COPRAS | |
Rough BWM-MAIRCA | |
The proposed ranking |
© 2020 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
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Peng, H.-m.; Wang, X.-k.; Wang, T.-l.; Liu, Y.-h.; Wang, J.-q. A Multi-Criteria Decision Support Framework for Inland Nuclear Power Plant Site Selection under Z-Information: A Case Study in Hunan Province of China. Mathematics 2020, 8, 252. https://doi.org/10.3390/math8020252
Peng H-m, Wang X-k, Wang T-l, Liu Y-h, Wang J-q. A Multi-Criteria Decision Support Framework for Inland Nuclear Power Plant Site Selection under Z-Information: A Case Study in Hunan Province of China. Mathematics. 2020; 8(2):252. https://doi.org/10.3390/math8020252
Chicago/Turabian StylePeng, Heng-ming, Xiao-kang Wang, Tie-li Wang, Ya-hua Liu, and Jian-qiang Wang. 2020. "A Multi-Criteria Decision Support Framework for Inland Nuclear Power Plant Site Selection under Z-Information: A Case Study in Hunan Province of China" Mathematics 8, no. 2: 252. https://doi.org/10.3390/math8020252