A New Fuzzy MARCOS Method for Road Traffic Risk Analysis
Abstract
:1. Introduction
2. Preliminaries
3. A New Fuzzy MARCOS Method
4. Results
5. Validation Tests
5.1. Changing the Significance of Input Parameters
5.2. Impact of Reverse Rank Matrices
5.3. Comparison with Other Approaches
6. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Linguistic Term | Mark | TFN |
---|---|---|
Extremely poor | EP | (1,1,1) |
Very poor | VP | (1,1,3) |
Poor | P | (1,3,3) |
Medium poor | MP | (3,3,5) |
Medium | M | (3,5,5) |
Medium good | MG | (5,5,7) |
Good | G | (5,7,7) |
Very good | VG | (7,7,9) |
Extremely good | EG | (7,9,9) |
Linguistic Ratings | Ratings with TFNs | |||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
C1 | C2 | C3 | C4 | C5 | C6 | C1 | C2 | C3 | C4 | C5 | C6 | |
A1 | EP | VP | EP | M | M | MP | (1,1,1) | (1,1,3) | (1,1,1) | (3,5,5) | (3,5,5) | (3,3,5) |
A2 | VP | VP | EP | EP | P | VP | (1,1,3) | (1,1,3) | (1,1,1) | (1,1,1) | (1,3,3) | (1,1,3) |
A3 | MP | VP | EP | EP | EP | VP | (3,3,5) | (1,1,3) | (1,1,1) | (1,1,1) | (1,1,1) | (1,1,3) |
A4 | M | EP | EP | M | EP | VP | (3,5,5) | (1,1,1) | (1,1,1) | (3,5,5) | (1,1,1) | (1,1,3) |
A5 | VP | VP | EG | EP | EP | EP | (1,1,3) | (1,1,3) | (7,9,9) | (1,1,1) | (1,1,1) | (1,1,1) |
A6 | MP | EP | EP | VP | P | VP | (3,3,5) | (1,1,1) | (1,1,1) | (1,1,3) | (1,3,3) | (1,1,3) |
A7 | P | VP | EP | MP | EP | MG | (1,3,3) | (1,1,3) | (1,1,1) | (3,3,5) | (1,1,1) | (5,5,7) |
A8 | MG | VP | EP | EP | P | P | (5,5,7) | (1,1,3) | (1,1,1) | (1,1,1) | (1,3,3) | (1,3,3) |
A9 | EP | VP | EP | EP | G | VP | (1,1,1) | (1,1,3) | (1,1,1) | (1,1,1) | (5,7,7) | (1,1,3) |
A10 | G | VP | EP | EP | EP | P | (5,7,7) | (1,1,3) | (1,1,1) | (1,1,1) | (1,1,1) | (1,3,3) |
A11 | VP | VP | EP | EP | EP | VP | (1,1,3) | (1,1,3) | (1,1,1) | (1,1,1) | (1,1,1) | (1,1,3) |
A12 | M | VP | EG | EP | EP | EP | (3,5,5) | (1,1,3) | (7,9,9) | (1,1,1) | (1,1,1) | (1,1,1) |
A13 | M | P | EP | VP | EP | VP | (3,5,5) | (1,3,3) | (1,1,1) | (1,1,3) | (1,1,1) | (1,1,3) |
A14 | MP | M | EP | VP | EP | P | (3,3,5) | (3,5,5) | (1,1,1) | (1,1,3) | (1,1,1) | (1,3,3) |
A15 | VP | MP | EP | VP | EP | P | (1,1,3) | (3,3,5) | (1,1,1) | (1,1,3) | (1,1,1) | (1,3,3) |
A16 | VP | VG | EP | VP | EP | EP | (1,1,3) | (7,7,9) | (1,1,1) | (1,1,3) | (1,1,1) | (1,1,1) |
A17 | MP | EG | EP | P | EP | P | (3,3,5) | (7,9,9) | (1,1,1) | (1,3,3) | (1,1,1) | (1,3,3) |
A18 | MP | VG | EG | EP | EP | P | (3,3,5) | (7,7,9) | (7,9,9) | (1,1,1) | (1,1,1) | (1,3,3) |
A19 | MP | G | EP | MP | EP | MP | (3,3,5) | (5,7,7) | (1,1,1) | (3,3,5) | (1,1,1) | (3,3,5) |
A20 | VP | VG | EP | MG | P | EG | (1,1,3) | (7,7,9) | (1,1,1) | (5,5,7) | (1,3,3) | (7,9,9) |
A21 | EG | G | EP | EP | P | VP | (7,9,9) | (5,7,7) | (1,1,1) | (1,1,1) | (1,3,3) | (1,1,3) |
A22 | MG | MP | EP | VP | EP | EP | (5,5,7) | (3,3,5) | (1,1,1) | (1,1,3) | (1,1,1) | (1,1,1) |
A23 | MP | M | EG | VG | M | EG | (3,3,5) | (3,5,5) | (7,9,9) | (7,7,9) | (3,5,5) | (7,9,9) |
A24 | VP | MP | EP | EP | EP | VP | (1,1,3) | (3,3,5) | (1,1,1) | (1,1,1) | (1,1,1) | (1,1,3) |
A25 | P | M | EP | VP | EP | EP | (1,3,3) | (3,5,5) | (1,1,1) | (1,1,3) | (1,1,1) | (1,1,1) |
A26 | MG | M | EP | EP | EP | VP | (5,5,7) | (3,5,5) | (1,1,1) | (1,1,1) | (1,1,1) | (1,1,3) |
A27 | M | P | EP | VP | EP | VP | (3,5,5) | (1,3,3) | (1,1,1) | (1,1,3) | (1,1,1) | (1,1,3) |
A28 | VP | EP | EP | G | M | MP | (1,1,3) | (1,1,1) | (1,1,1) | (5,7,7) | (3,5,5) | (3,3,5) |
A29 | P | VP | EP | VP | EP | EP | (1,3,3) | (1,1,3) | (1,1,1) | (1,1,3) | (1,1,1) | (1,1,1) |
A30 | P | VP | EP | VP | EP | VP | (1,3,3) | (1,1,3) | (1,1,1) | (1,1,3) | (1,1,1) | (1,1,3) |
A31 | EP | VP | EP | VP | EP | P | (1,1,1) | (1,1,3) | (1,1,1) | (1,1,3) | (1,1,1) | (1,3,3) |
A32 | VP | P | EP | M | P | VP | (1,1,3) | (1,3,3) | (1,1,1) | (3,5,5) | (1,3,3) | (1,1,3) |
A33 | P | P | EG | VP | EP | MG | (1,3,3) | (1,3,3) | (7,9,9) | (1,1,3) | (1,1,1) | (5,5,7) |
A34 | VP | EP | EP | EP | EP | VP | (1,1,3) | (1,1,1) | (1,1,1) | (1,1,1) | (1,1,1) | (1,1,3) |
A35 | P | EP | EP | EP | EP | EP | (1,3,3) | (1,1,1) | (1,1,1) | (1,1,1) | (1,1,1) | (1,1,1) |
A36 | VP | VP | EP | VP | P | VP | (1,1,3) | (1,1,3) | (1,1,1) | (1,1,3) | (1,3,3) | (1,1,3) |
A37 | MG | VP | EP | EP | P | MP | (5,5,7) | (1,1,3) | (1,1,1) | (1,1,1) | (1,3,3) | (3,3,5) |
A38 | MP | VP | EP | EP | EP | VP | (3,3,5) | (1,1,3) | (1,1,1) | (1,1,1) | (1,1,1) | (1,1,3) |
sj | kj | qj | wj | DF | |
---|---|---|---|---|---|
C1 | (1,1,1) | (1,1,1) | (0.136,0.182,0.223) | 0.181 | |
C2 | (1.2,1.3,1.35) | (0.65,0.7,0.8) | (1.25,1.429,1.538) | (0.17,0.261,0.343) | 0.259 |
C3 | (0.5,0.667,1) | (1,1.333,1.5) | (0.833,1.071,1.538) | (0.113,0.195,0.343) | 0.206 |
C4 | (0.333,0.4,0.5) | (1.5,1.6,1.667) | (0.5,0.67,1.026) | (0.068,0.122,0.229) | 0.131 |
C5 | (1.1,1.15,1.2) | (0.8,0.85,0.9) | (0.556,0.788,1.282) | (0.076,0.144,0.286) | 0.156 |
C6 | (0.4,0.5,0.667) | (1.333,1.5,1.6) | (0.347,0.525,0.962) | (0.047,0.096,0.214) | 0.107 |
SUM | (4.486,5.483,7.346) | ||||
sj | kj | qj | wj | DF | |
C1 | (0.4,0.5,0.667) | (1.333,1.5,1.6) | (0.827,1.528,2.885) | (0.06,0.165,0.449) | 0.195 |
C2 | (1.1,1.15,1.2) | (0.8,0.85,0.9) | (1.323,2.292,3.846) | (0.095,0.247,0.599) | 0.281 |
C3 | (1.3,1.45,1.5) | (0.5,0.55,0.7) | (1.19,1.948,3.077) | (0.086,0.21,0.479) | 0.234 |
C4 | (0.5,0.667,1) | (1,1.333,1.5) | (0.833,1.071,1.538) | (0.06,0.116,0.24) | 0.127 |
C5 | (1.2,1.3,1.35) | (0.65,0.7,0.8) | (1.25,1.429,1.538) | (0.09,0.154,0.24) | 0.158 |
C6 | (1,1,1) | (1,1,1) | (0.072,0.108,0.156) | 0.110 | |
SUM | (6.423,9.268,13.885) |
C1 | C2 | C3 | C4 | C5 | C6 | |
---|---|---|---|---|---|---|
AAI | (0.111,0.111,0.111) | (0.111,0.111,0.111) | (0.111,0.111,0.111) | (0.111,0.111,0.111) | (0.143,0.143,0.143) | (0.111,0.111,0.111) |
A1 | (0.111,0.111,0.111) | (0.111,0.111,0.333) | (0.111,0.111,0.111) | (0.333,0.556,0.556) | (0.429,0.714,0.714) | (0.333,0.333,0.556) |
A2 | (0.111,0.111,0.333) | (0.111,0.111,0.333) | (0.111,0.111,0.111) | (0.111,0.111,0.111) | (0.143,0.429,0.429) | (0.111,0.111,0.333) |
A3 | (0.333,0.333,0.556) | (0.111,0.111,0.333) | (0.111,0.111,0.111) | (0.111,0.111,0.111) | (0.143,0.143,0.143) | (0.111,0.111,0.333) |
… | ||||||
A23 | (0.333,0.333,0.556) | (0.333,0.556,0.556) | (0.778,1,1) | (0.778,0.778,1) | (0.429,0.714,0.714) | (0.778,1,1) |
A24 | (0.111,0.111,0.333) | (0.333,0.333,0.556) | (0.111,0.111,0.111) | (0.111,0.111,0.111) | (0.143,0.143,0.143) | (0.111,0.111,0.333) |
A25 | (0.111,0.333,0.333) | (0.333,0.556,0.556) | (0.111,0.111,0.111) | (0.111,0.111,0.333) | (0.143,0.143,0.143) | (0.111,0.111,0.111) |
… | ||||||
A36 | (0.111,0.111,0.333) | (0.111,0.111,0.333) | (0.111,0.111,0.111) | (0.111,0.111,0.333) | (0.143,0.429,0.429) | (0.111,0.111,0.333) |
A37 | (0.556,0.556,0.778) | (0.111,0.111,0.333) | (0.111,0.111,0.111) | (0.111,0.111,0.111) | (0.143,0.429,0.429) | (0.333,0.333,0.556) |
A38 | (0.333,0.333,0.556) | (0.111,0.111,0.333) | (0.111,0.111,0.111) | (0.111,0.111,0.111) | (0.143,0.143,0.143) | (0.111,0.111,0.333) |
ID | (0.778,1,1) | (0.778,1,1) | (0.778,1,1) | (0.778,0.778,1) | (0.714,1,1) | (0.778,1,1) |
C1 | C2 | C3 | C4 | C5 | C6 | |
---|---|---|---|---|---|---|
AAI | (0.011,0.019,0.037) | (0.015,0.028,0.052) | (0.011,0.023,0.046) | (0.007,0.013,0.026) | (0.012,0.021,0.038) | (0.007,0.011,0.021) |
A1 | (0.011,0.019,0.037) | (0.015,0.028,0.157) | (0.011,0.023,0.046) | (0.021,0.066,0.13) | (0.035,0.106,0.188) | (0.02,0.034,0.103) |
A2 | (0.011,0.019,0.112) | (0.015,0.028,0.157) | (0.011,0.023,0.046) | (0.007,0.013,0.026) | (0.012,0.064,0.113) | (0.007,0.011,0.062) |
A3 | (0.033,0.058,0.187) | (0.015,0.028,0.157) | (0.011,0.023,0.046) | (0.007,0.013,0.026) | (0.012,0.021,0.038) | (0.007,0.011,0.062) |
… | ||||||
A23 | (0.033,0.058,0.187) | (0.044,0.141,0.262) | (0.077,0.203,0.411) | (0.05,0.092,0.234) | (0.035,0.106,0.188) | (0.046,0.102,0.185) |
A24 | (0.011,0.019,0.112) | (0.044,0.085,0.262) | (0.011,0.023,0.046) | (0.007,0.013,0.026) | (0.012,0.021,0.038) | (0.007,0.011,0.062) |
A25 | (0.011,0.058,0.112) | (0.044,0.141,0.262) | (0.011,0.023,0.046) | (0.007,0.013,0.078) | (0.012,0.021,0.038) | (0.007,0.011,0.021) |
… | ||||||
A36 | (0.011,0.019,0.112) | (0.015,0.028,0.157) | (0.011,0.023,0.046) | (0.007,0.013,0.078) | (0.012,0.064,0.113) | (0.007,0.011,0.062) |
A37 | (0.054,0.096,0.261) | (0.015,0.028,0.157) | (0.011,0.023,0.046) | (0.007,0.013,0.026) | (0.012,0.064,0.113) | (0.02,0.034,0.103) |
A38 | (0.033,0.058,0.187) | (0.015,0.028,0.157) | (0.011,0.023,0.046) | (0.007,0.013,0.026) | (0.012,0.021,0.038) | (0.007,0.011,0.062) |
ID | (0.076,0.174,0.336) | (0.103,0.254,0.471) | (0.077,0.203,0.411) | (0.05,0.092,0.234) | (0.059,0.149,0.263) | (0.046,0.102,0.185) |
K- | K+ | fK- | fK+ | Ki | Rank | |||
---|---|---|---|---|---|---|---|---|
A1 | (0.006,0.031,0.173) | (0.056,0.257,1.143) | 3.445 | 0.466 | 0.050 | 0.371 | 0.181 | 15 |
A2 | (0.004,0.018,0.135) | (0.031,0.147,0.891) | 2.337 | 0.322 | 0.035 | 0.252 | 0.084 | 29 |
A3 | (0.005,0.017,0.134) | (0.041,0.144,0.89) | 2.330 | 0.321 | 0.035 | 0.251 | 0.083 | 30 |
.... | ||||||||
A23 | (0.016,0.078,0.383) | (0.14,0.653,2.536) | 8.184 | 1.099 | 0.118 | 0.882 | 1.082 | 1 |
A24 | (0.005,0.019,0.142) | (0.045,0.16,0.942) | 2.519 | 0.346 | 0.037 | 0.271 | 0.097 | 27 |
A25 | (0.005,0.03,0.145) | (0.045,0.249,0.961) | 3.095 | 0.416 | 0.045 | 0.333 | 0.144 | 20 |
... | ||||||||
A36 | (0.004,0.018,0.148) | (0.031,0.147,0.981) | 2.476 | 0.343 | 0.037 | 0.267 | 0.095 | 28 |
A37 | (0.007,0.029,0.184) | (0.058,0.24,1.22) | 3.464 | 0.472 | 0.051 | 0.373 | 0.185 | 14 |
A38 | (0.005,0.017,0.134) | (0.041,0.144,0.89) | 2.330 | 0.321 | 0.035 | 0.251 | 0.083 | 30 |
w1 | w2 | w3 | w4 | w5 | w6 | |
---|---|---|---|---|---|---|
S1 | (0.093,0.165,0.319) | (0.133,0.257,0.483) | (0.1,0.205,0.421) | (0.064,0.12,0.24) | (0.083,0.15,0.269) | (0.06,0.103,0.19) |
S2 | (0.083,0.148,0.286) | (0.135,0.262,0.507) | (0.101,0.209,0.442) | (0.065,0.123,0.252) | (0.084,0.154,0.283) | (0.061,0.105,0.199) |
S3 | (0.073,0.13,0.252) | (0.136,0.267,0.53) | (0.102,0.213,0.463) | (0.066,0.125,0.264) | (0.085,0.157,0.296) | (0.061,0.107,0.208) |
S4 | (0.064,0.113,0.218) | (0.138,0.273,0.554) | (0.103,0.218,0.484) | (0.066,0.128,0.276) | (0.086,0.16,0.309) | (0.062,0.109,0.218) |
S5 | (0.054,0.095,0.185) | (0.139,0.278,0.578) | (0.104,0.222,0.505) | (0.067,0.13,0.287) | (0.087,0.163,0.322) | (0.063,0.111,0.227) |
S6 | (0.044,0.078,0.151) | (0.141,0.283,0.602) | (0.106,0.226,0.525) | (0.068,0.133,0.299) | (0.088,0.166,0.336) | (0.063,0.114,0.237) |
S7 | (0.034,0.061,0.118) | (0.142,0.289,0.626) | (0.107,0.231,0.546) | (0.069,0.135,0.311) | (0.089,0.169,0.349) | (0.064,0.116,0.246) |
S8 | (0.024,0.043,0.084) | (0.144,0.294,0.65) | (0.108,0.235,0.567) | (0.069,0.138,0.323) | (0.09,0.172,0.362) | (0.064,0.118,0.255) |
S9 | (0.015,0.026,0.05) | (0.145,0.299,0.673) | (0.109,0.239,0.588) | (0.07,0.14,0.335) | (0.09,0.176,0.376) | (0.065,0.12,0.265) |
S10 | (0.005,0.009,0.017) | (0.146,0.305,0.697) | (0.11,0.243,0.609) | (0.071,0.143,0.347) | (0.091,0.179,0.389) | (0.066,0.122,0.274) |
S11 | (0.099,0.177,0.351) | (0.126,0.241,0.447) | (0.1,0.206,0.429) | (0.065,0.121,0.244) | (0.083,0.151,0.274) | (0.06,0.104,0.193) |
S12 | (0.1,0.182,0.381) | (0.113,0.216,0.4) | (0.102,0.213,0.466) | (0.066,0.125,0.265) | (0.085,0.157,0.298) | (0.061,0.107,0.21) |
S13 | (0.102,0.188,0.411) | (0.1,0.19,0.353) | (0.103,0.22,0.502) | (0.066,0.129,0.286) | (0.086,0.162,0.321) | (0.062,0.111,0.226) |
S14 | (0.103,0.194,0.441) | (0.086,0.165,0.306) | (0.105,0.227,0.539) | (0.067,0.133,0.307) | (0.087,0.167,0.344) | (0.063,0.114,0.243) |
S15 | (0.105,0.2,0.471) | (0.073,0.14,0.259) | (0.106,0.234,0.576) | (0.068,0.137,0.328) | (0.089,0.172,0.368) | (0.064,0.117,0.259) |
S16 | (0.106,0.206,0.5) | (0.06,0.114,0.212) | (0.108,0.241,0.612) | (0.069,0.141,0.349) | (0.09,0.177,0.391) | (0.065,0.121,0.276) |
S17 | (0.108,0.212,0.53) | (0.046,0.089,0.165) | (0.109,0.248,0.649) | (0.07,0.145,0.369) | (0.091,0.182,0.415) | (0.066,0.124,0.292) |
S18 | (0.109,0.218,0.56) | (0.033,0.063,0.118) | (0.111,0.255,0.685) | (0.071,0.149,0.39) | (0.092,0.187,0.438) | (0.066,0.128,0.308) |
S19 | (0.111,0.224,0.59) | (0.02,0.038,0.071) | (0.113,0.261,0.722) | (0.072,0.153,0.411) | (0.094,0.192,0.461) | (0.067,0.131,0.325) |
S20 | (0.112,0.23,0.62) | (0.007,0.013,0.024) | (0.114,0.268,0.758) | (0.073,0.157,0.432) | (0.095,0.197,0.485) | (0.068,0.135,0.341) |
S21 | (0.098,0.176,0.348) | (0.133,0.257,0.487) | (0.095,0.193,0.39) | (0.064,0.12,0.242) | (0.083,0.151,0.272) | (0.06,0.103,0.191) |
S22 | (0.099,0.18,0.371) | (0.135,0.264,0.52) | (0.085,0.172,0.349) | (0.065,0.123,0.259) | (0.084,0.155,0.29) | (0.061,0.106,0.204) |
S23 | (0.101,0.185,0.395) | (0.136,0.27,0.553) | (0.075,0.152,0.308) | (0.066,0.126,0.275) | (0.085,0.158,0.308) | (0.061,0.108,0.217) |
S24 | (0.102,0.189,0.418) | (0.138,0.277,0.586) | (0.065,0.132,0.267) | (0.067,0.129,0.291) | (0.086,0.162,0.327) | (0.062,0.111,0.23) |
S25 | (0.103,0.194,0.441) | (0.139,0.283,0.619) | (0.055,0.112,0.226) | (0.067,0.132,0.308) | (0.087,0.166,0.345) | (0.063,0.114,0.243) |
S26 | (0.104,0.198,0.465) | (0.141,0.289,0.652) | (0.045,0.091,0.185) | (0.068,0.136,0.324) | (0.088,0.17,0.363) | (0.063,0.116,0.256) |
S27 | (0.105,0.202,0.488) | (0.142,0.296,0.684) | (0.035,0.071,0.144) | (0.069,0.139,0.34) | (0.089,0.174,0.382) | (0.064,0.119,0.269) |
S28 | (0.106,0.207,0.512) | (0.144,0.302,0.717) | (0.025,0.051,0.103) | (0.069,0.142,0.357) | (0.09,0.177,0.4) | (0.065,0.121,0.282) |
S29 | (0.107,0.211,0.535) | (0.145,0.309,0.75) | (0.015,0.03,0.062) | (0.07,0.145,0.373) | (0.091,0.181,0.418) | (0.065,0.124,0.295) |
S30 | (0.108,0.216,0.559) | (0.147,0.315,0.783) | (0.005,0.01,0.021) | (0.071,0.148,0.389) | (0.092,0.185,0.437) | (0.066,0.126,0.308) |
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Stanković, M.; Stević, Ž.; Das, D.K.; Subotić, M.; Pamučar, D. A New Fuzzy MARCOS Method for Road Traffic Risk Analysis. Mathematics 2020, 8, 457. https://doi.org/10.3390/math8030457
Stanković M, Stević Ž, Das DK, Subotić M, Pamučar D. A New Fuzzy MARCOS Method for Road Traffic Risk Analysis. Mathematics. 2020; 8(3):457. https://doi.org/10.3390/math8030457
Chicago/Turabian StyleStanković, Miomir, Željko Stević, Dillip Kumar Das, Marko Subotić, and Dragan Pamučar. 2020. "A New Fuzzy MARCOS Method for Road Traffic Risk Analysis" Mathematics 8, no. 3: 457. https://doi.org/10.3390/math8030457
APA StyleStanković, M., Stević, Ž., Das, D. K., Subotić, M., & Pamučar, D. (2020). A New Fuzzy MARCOS Method for Road Traffic Risk Analysis. Mathematics, 8(3), 457. https://doi.org/10.3390/math8030457