Biomedical Engineering Reference
In-Depth Information
Table 5.6
Results for Hybrid Genetic Algorithms
Distance
Gender
*
Average
Maximum
Time per run (sec)
Steepest descent
K ¼ 1
No
86
1452
1264
0.57
K ¼ 2
No
125
1471
1254
0.62
K ¼ 3
No
114
1469
1214
0.64
K ¼ 4
No
79
1458
1170
0.65
K ¼ 5
No
50
1449
1180
0.66
K ¼ 1
Yes
78
1452
1236
0.57
K ¼ 2
Yes
115
1469
1334
0.62
K ¼ 3
Yes
74
1460
1262
0.65
K ¼ 4
Yes
61
1448
1164
0.66
K ¼ 5
Yes
56
1440
1120
0.67
10 Levels
K ¼ 1
No
430
1510
1420
25.54
K ¼ 2
No
584
1524
1432
27.15
K ¼ 3
No
631
1528
1428
28.29
K ¼ 4
No
607
1527
1400
28.82
K ¼ 5
No
626
1528
1428
29.32
K ¼ 1
Yes
448
1511
1412
25.51
K ¼ 2
Yes
612
1525
1422
27.14
K ¼ 3
Yes
591
1525
1398
28.17
K ¼ 4
Yes
594
1526
1420
28.91
K ¼ 5
Yes
568
1524
1402
29.36
25 Levels
K ¼ 1
No
538
1518
1426
58.46
K ¼ 2
No
616
1526
1438
62.01
K ¼ 3
No
691
1532
1448
64.06
K ¼ 4
No
688
1532
1450
65.49
K ¼ 5
No
664
1531
1420
66.56
K ¼ 1
Yes
516
1517
1402
58.58
K ¼ 2
Yes
632
1527
1448
61.86
K ¼ 3
Yes
660
1530
1420
64.27
1531
1428
65.60
K ¼ 4
Yes
673
K ¼ 5
Yes
639
1529
1384
66.46
*Number of times out of 1000 that the best known solution of 1550 was obtained.
definition keeps evolving with changing environmental conditions and across species. For example,
the male bird of paradise in New Guinea is the fittest when his feathers and tail are very colorful and
attractive to the female bird of paradise. The same colorful and beautiful male would not be the
fittest in a different environment (off the island), one that is predator rich. Similarly, the peppered
moth, in England, during the Industrial Revolution would not have survived without a color
adaptation. In urban areas, the fittest was the darker peppered moth that adapted to the new gray,
ash-covered trees on which it rests. By blending into the tree, it protected itself from predators,
while at the same time, in rural areas, the peppered moth continued to thrive and survive on lichen-
covered tree branches. Unlike nature, in genetic algorithms the definition of the ''fittest'' is stable.
The more stable definition of ''fittest'' in genetic algorithms, in turn, allows for the ultimate
achievement of an ''ideal'' population, a situation not paralleled in nature.
In nature, species have to cope with invasion of other species and competition for resources.
Species diversity is rampant as genetic diversity is instrumental to adaptation. The survival of the
fittest individual leads to survival of the species. In genetic algorithms, by comparison, there is one
species only. Occasionally generating offspring who are ''fitter'' than existing members in order to
''enrich'' the population ''gene pool'' incorporates invasion in genetic algorithms. PGA allow
population movements, but those are of the same species. In compounded genetic algorithms,
there is no population movement between the isolated populations.
Offspring mutation is another natural selection tenet incorporated in genetic algorithms. Muta-
tions occur quite frequently in nature. Most mutations are not beneficial to the species, while some,
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