Systems Engineering and Electronics ›› 2023, Vol. 46 ›› Issue (1): 300-308.doi: 10.12305/j.issn.1001-506X.2024.01.34
• Guidance, Navigation and Control • Previous Articles
Hao LEI1,2, Pinzhang ZHAO1, Donghua WANG1, Boyi CHEN2,*
Received:
2022-10-18
Online:
2023-12-28
Published:
2024-01-11
Contact:
Boyi CHEN
CLC Number:
Hao LEI, Pinzhang ZHAO, Donghua WANG, Boyi CHEN. Improvements of slap swarm algorithm based on dynamic model[J]. Systems Engineering and Electronics, 2023, 46(1): 300-308.
Table 1
Comparison of average rank for statistical characteristics of algorithms"
统计学特征 | 算法 | |||||||
SSA | HSSA | MSSA | MSNSSA | OOSSA | PSO | GWO | MHSSA | |
Median | 5.37(6) | 4.77(5) | 2.77(2) | 7.33(8) | 4.17(4) | 5.97(7) | 3.83(3) | 1.80(1) |
Variance | 4.40(4) | 4.23(3) | 4.93(7) | 4.43(5) | 3.93(2) | 5.37(8) | 4.80(6) | 3.90(1) |
Minimum | 5.13(6) | 4.63(5) | 2.70(2) | 7.23(8) | 4.03(3) | 5.40(7) | 4.33(4) | 2.53(1) |
Maximum | 5.00(5) | 4.47(4) | 2.97(2) | 6.77(8) | 3.27(3) | 6.47(7) | 5.37(6) | 1.70(1) |
Table 2
Significance testing of algorithms"
测试函数序号 | 算法 | ||||||
SSA | HSSA | MSSA | MSNSSA | OOSSA | PSO | GWO | |
1 | S+ | S+ | NS- | S+ | S+ | S+ | S+ |
2 | S+ | S+ | NS+ | S+ | S+ | NS+ | S+ |
3 | S+ | S+ | S- | S+ | S+ | S+ | S+ |
4 | S+ | S+ | NS- | S+ | S+ | S+ | S+ |
5 | NS+ | S+ | NS+ | S+ | NS+ | S+ | S+ |
6 | S+ | S+ | S+ | S+ | S+ | S- | S+ |
7 | S+ | S+ | S- | S+ | S+ | NS+ | S+ |
8 | NS+ | S+ | S+ | S+ | S- | S- | NS- |
9 | S+ | S+ | S+ | S+ | S- | S+ | S+ |
10 | S+ | S+ | S+ | S+ | S+ | S- | NS+ |
11 | S+ | NS+ | NS+ | S+ | NS+ | S+ | NS+ |
12 | S+ | S+ | S+ | S+ | S+ | S+ | S+ |
13 | S+ | S+ | S+ | S+ | S- | S+ | NS- |
14 | S+ | S+ | NS+ | S+ | NS+ | S+ | S+ |
15 | S+ | S+ | S+ | S+ | S+ | S+ | S+ |
16 | S+ | S+ | NS+ | S+ | S+ | S+ | S+ |
17 | S+ | S+ | NS+ | S+ | S+ | S+ | NS- |
18 | S+ | S+ | S+ | S+ | S- | S+ | S+ |
19 | S+ | S+ | NS+ | S+ | S+ | S+ | S+ |
20 | S+ | S+ | S+ | S+ | S- | S+ | S+ |
21 | S+ | S+ | NS- | S+ | S+ | S+ | NS+ |
22 | S+ | S+ | NS+ | S+ | NS+ | S+ | S- |
23 | S+ | S+ | NS- | S+ | S+ | S+ | S+ |
24 | S+ | S+ | S+ | S+ | S+ | S+ | S+ |
25 | S+ | S+ | S+ | S+ | S- | S+ | S+ |
26 | S+ | S+ | NS+ | NS+ | S+ | S+ | NS- |
27 | S+ | S+ | NS+ | S+ | S+ | S+ | NS- |
28 | S+ | S+ | S+ | S+ | S+ | S+ | NS+ |
29 | S+ | S+ | NS- | S+ | S+ | NS+ | NS- |
30 | S+ | S+ | NS- | S+ | S+ | S+ | S+ |
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