
Journal of Systems Engineering and Electronics ›› 2026, Vol. 37 ›› Issue (1): 272-286.doi: 10.23919/JSEE.2026.000010
• SYSTEMS ENGINEERING • Previous Articles Next Articles
Xiaoduo LI1,2(
), He LUO1,2,3(
), Guoqiang WANG1,2,3,*(
), Youlong YIN4(
)
Received:2023-09-05
Online:2026-02-18
Published:2026-03-09
Contact:
Guoqiang WANG
E-mail:lixiaoduo@mail.hfut.edu.cn;luohe@hfut.edu.cn;gqwang2017@hfut.edu.cn;yinyoulong@mail.hfut.edu.cn
About author:Supported by:Xiaoduo LI, He LUO, Guoqiang WANG, Youlong YIN. Improved simulated annealing algorithm for UAV path planning with uncertain flight time[J]. Journal of Systems Engineering and Electronics, 2026, 37(1): 272-286.
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Table 2
Experimental results obtained by ROME, RC-CPLEX, and SA-RFC under different levels of uncertainty (R-x-y-1)"
| Instance | ||||||||||||||
| ROME | RC-CPLEX | SA-RFC | Gap | ROME | RC-CPLEX | SA-RFC | Gap | ROME | RC-CPLEX | SA-RFC | Gap | |||
| R-2-15-1 | 0.00 | 0.00 | 0.00 | |||||||||||
| R-2-20-1 | 0.00 | 0.07 | 0.39 | |||||||||||
| R-2-25-1 | 0.00 | 0.66 | − | 1.63 | ||||||||||
| R-2-30-1 | 0.00 | − | 1.21 | − | − | − | ||||||||
| R-2-35-1 | − | − | − | − | − | − | − | − | − | |||||
| R-2-40-1 | − | − | − | − | − | − | − | − | − | |||||
| R-2-50-1 | − | − | − | − | − | − | − | − | − | |||||
| R-3-15-1 | 0.00 | 0.00 | 0.00 | |||||||||||
| R-3-20-1 | 0.08 | 0.31 | 2.87 | |||||||||||
| R-3-25-1 | 0.35 | − | 1.96 | − | − | − | ||||||||
| R-3-30-1 | − | − | − | − | − | − | − | − | − | |||||
| R-3-35-1 | − | − | − | − | − | − | − | − | − | |||||
| R-3-40-1 | − | − | − | − | − | − | − | − | − | |||||
| R-3-50-1 | − | − | − | − | − | − | − | − | − | |||||
| R-4-15-1 | 0.00 | 0.00 | 0.00 | |||||||||||
| R-4-20-1 | 0.07 | 0.88 | 3.02 | |||||||||||
| R-4-25-1 | − | 0.56 | − | 2.27 | − | − | − | |||||||
| R-4-30-1 | − | − | − | − | − | − | − | − | − | |||||
| R-4-35-1 | − | − | − | − | − | − | − | − | − | |||||
| R-4-40-1 | − | − | − | − | − | − | − | − | − | |||||
| R-4-50-1 | − | − | 105.424 | − | − | − | − | − | − | − | ||||
Table 3
Computation time of ROME, RC-CPLEX, and SA-RFC under different levels of uncertainty (R-x-y-1) s"
| Instance | ||||||||||||||
| ROME | RC-CPLEX | SA-RFC | Gap | ROME | RC-CPLEX | SA-RFC | Gap | ROME | RC-CPLEX | SA-RFC | Gap | |||
| R-2-15-1 | 316.85 | 512.85 | 12.30 | 96.11 | 12.69 | 98.74 | 13.16 | 99.41 | ||||||
| R-2-20-1 | 15.49 | 98.46 | 14.84 | 99.39 | 15.87 | 99.45 | ||||||||
| R-2-25-1 | 18.72 | 99.27 | 18.99 | 99.36 | − | 19.83 | 99.44 | |||||||
| R-2-30-1 | 19.21 | 99.43 | − | 18.97 | 99.47 | − | − | 20.42 | − | |||||
| R-2-35-1 | − | − | 19.64 | − | − | − | 19.30 | − | − | − | 21.45 | − | ||
| R-2-40-1 | − | − | 20.37 | − | − | − | 21.03 | − | − | − | 23.78 | − | ||
| R-2-50-1 | − | − | 22.94 | − | − | − | 23.98 | − | − | − | 25.83 | − | ||
| R-3-15-1 | 680.19 | 985.05 | 12.89 | 98.10 | 12.99 | 99.07 | 14.32 | 99.46 | ||||||
| R-3-20-1 | 16.94 | 99.29 | 15.21 | 99.47 | 16.35 | 99.48 | ||||||||
| R-3-25-1 | 19.73 | 99.41 | − | 18.72 | 99.43 | − | − | 22.98 | − | |||||
| R-3-30-1 | − | − | 20.42 | − | − | − | 20.20 | − | − | − | 23.28 | − | ||
| R-3-35-1 | − | − | 20.60 | − | − | − | 21.99 | − | − | − | 25.14 | − | ||
| R-3-40-1 | − | − | 21.12 | − | − | − | 22.23 | − | − | − | 25.73 | − | ||
| R-3-50-1 | − | − | 23.64 | − | − | − | 25.57 | − | − | − | 28.36 | − | ||
| R-4-15-1 | 873.77 | 12.43 | 98.57 | 13.97 | 99.12 | 15.34 | 99.47 | |||||||
| R-4-20-1 | 17.72 | 99.38 | 16.33 | 99.45 | 16.98 | 99.51 | ||||||||
| R-4-25-1 | − | 20.33 | 99.41 | − | 18.93 | 99.46 | − | − | 23.54 | − | ||||
| R-4-30-1 | − | − | 20.86 | − | − | − | 21.94 | − | − | − | 25.67 | − | ||
| R-4-35-1 | − | − | 21.70 | − | − | − | 22.42 | − | − | − | 27.55 | − | ||
| R-4-40-1 | − | − | 22.42 | − | − | − | 24.96 | − | − | − | 28.19 | − | ||
| R-4-50-1 | − | − | 24.81 | − | − | − | 26.80 | − | − | − | 30.49 | − | ||
Table 4
Experimental results of the robust model under C, R and RC"
| Location distribution | Instance | ε=0.0 | ε=0.2 | ε=0.4 | ε=0.6 | |||||||||||
| PoR/% | Risk/% | K | PoR/% | Risk/% | K | PoR/% | Risk/% | K | PoR/% | Risk/% | K | |||||
| C | C-2-50-1 | − | 57.24 | 3 | 9.23 | 3.83 | 4 | 12.91 | 0 | 5.5 | 13.24 | 0 | 7 | |||
| C-2-50-2 | − | 38.53 | 3 | 7.35 | 2.11 | 4.2 | 8.91 | 0 | 4 | 10.91 | 0 | 4.1 | ||||
| C-2-50-3 | − | 36.94 | 3 | 6.37 | 3.36 | 3.7 | 8.32 | 0 | 4 | 9.02 | 0 | 4 | ||||
| R | R-2-50-1 | − | 100 | 4 | 18.4 | 37.76 | 6 | 24.9 | 2.12 | 7 | 29.9 | 0 | 7.8 | |||
| R-2-50-2 | − | 100 | 4 | 11.86 | 11.07 | 6.2 | 11.49 | 0.5 | 6.4 | 23.06 | 0 | 7 | ||||
| R-2-50-3 | − | 100 | 4 | 4.7 | 21.84 | 4.9 | 13.13 | 0.37 | 5.6 | 16.1 | 0 | 6.4 | ||||
| RC | RC-2-50-1 | − | 99.99 | 5 | 12.34 | 33.8 | 6 | 16.37 | 1.1 | 6.9 | 18.74 | 0 | 8.5 | |||
| RC-2-50-2 | − | 100 | 4 | 8.79 | 10.47 | 4.8 | 9.26 | 0.48 | 5.1 | 10.25 | 0 | 5 | ||||
| RC-2-50-3 | − | 97.28 | 4 | 10.58 | 18.96 | 4.3 | 10.98 | 0.03 | 4.4 | 12.44 | 0 | 4.5 | ||||
Table 5
Experimental results of the robust model under two, three and four depots"
| Numbers of depots | Instance | ε=0.0 | ε=0.2 | ε=0.4 | ε=0.6 | |||||||||||
| PoR/% | Risk/% | K | PoR/% | Risk/% | K | PoR/% | Risk/% | K | PoR/% | Risk/% | K | |||||
| 2 | R-2-50-1 | — | 100 | 4 | 18.4 | 37.76 | 6 | 24.9 | 2.12 | 7 | 29.9 | 0 | 7.8 | |||
| R-2-50-2 | — | 100 | 4 | 11.86 | 11.07 | 6.2 | 11.49 | 0.5 | 6.4 | 23.06 | 0 | 7 | ||||
| R-2-50-3 | — | 100 | 4 | 4.7 | 21.84 | 4.9 | 13.13 | 0.37 | 5.6 | 16.1 | 0 | 6.4 | ||||
| 3 | R-3-50-1 | — | 97.83 | 5 | 6.4 | 10.39 | 5.7 | 9.39 | 0.14 | 6.4 | 18.58 | 0 | 7.1 | |||
| R-3-50-2 | — | 99.99 | 4 | 10.34 | 5.22 | 5.8 | 8.9 | 0.01 | 6.2 | 12.44 | 0 | 6.6 | ||||
| R-3-50-3 | — | 100 | 5 | 4.63 | 9.72 | 5.5 | 8.45 | 0 | 5.9 | 9.7 | 0 | 6 | ||||
| 4 | R-4-50-1 | — | 95.98 | 5 | 5.5 | 2.3 | 5.8 | 7.57 | 0.62 | 6.6 | 8.17 | 0 | 6.8 | |||
| R-4-50-2 | — | 85.17 | 5 | 5.06 | 1.77 | 5.7 | 5.59 | 0 | 6 | 6.22 | 0 | 6.1 | ||||
| R-4-50-3 | — | 91.08 | 5 | 3.28 | 0.65 | 5.5 | 6.63 | 0 | 5.9 | 7.93 | 0 | 6.3 | ||||
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