Sigmoid Comprehensive Learning Particle Swarm Optimization
Abstract
1. Introduction
2. Related Work
2.1. Parameter Improvement
2.2. Neighborhood Topology Improvement
2.3. Hybridization with Other Methods
3. Background
3.1. Comprehensive Learning Particle Swarm Optimization
3.2. Enhanced Comprehensive Learning Particle Swarm Optimization
3.3. Adaptive Comprehensive Learning Particle Swarm Optimization
4. Sigmoid Comprehensive Learning Particle Swarm Optimization
4.1. Sigmoid Interval Scaling Coefficient
4.2. Sigmoid Probability Tradeoff Coefficient
4.3. Flowchart and Time Complexity
5. Experimental Results
5.1. Benchmark Functions and Experimental Setup
5.2. Experimental Results and Analysis
5.2.1. Comparison of the Sixteen Classical Benchmark Functions
5.2.2. Determination of Relevant Parameters in SCLPSO
5.2.3. Comparison on the CEC2013 Multimodal Test Suite
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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| PSO Variants | Parameters Settings |
|---|---|
| PSO-LDIW [17] | c1 = c2 = 2.0, w = 0.9~0.4. |
| PSO-CF [21] | χ = 0.729, c1 = c2 = 2.05. |
| HPSO-TVAC [20] | c1 = 2.5~0.5, c2 = 0.5~2.5, w = 0.9~0.4 |
| CLPSO [10] | w = 0.9~0.4, m = 7, c = 1.49445. |
| DNLPSO [11] | w = 0.9~0.4, m = 7, c1 = c2 = 1.49445, g = 10. |
| ECLPSO [13] | w = 0.9~0.4, m = 7, c = 1.49445. |
| ACLPSO [14] | m = 7, s = 0.1 or 1.1, v = 0.05 or 0.3. |
| SCLPSO | m = 7 |
| Name | Expression | Search Space | x* | f(x*) | Category |
|---|---|---|---|---|---|
| Sphere | 0 | Unimodal | |||
| Schwefel P2.22 | 0 | ||||
| Rosenbrock | 0 | ||||
| Schwefel P1.2 | 0 | ||||
| Rastrigin | 0 | Multimodal | |||
| Noncontinuous Rastrigin | 0 | ||||
| Ackley | 0 | ||||
| Griewank | 0 | ||||
| Schwefel | 0 | ||||
| Shifted Rosenbrock | 0 | Shifted | |||
| Shifted Griewank | 0 | ||||
| Shifted Schwefel P1.2 | 0 | ||||
| Rotated Rastrigin | 0 | Rotated | |||
| Rotated Schwefel | 0 | ||||
| Rotated Griewank | 0 | ||||
| Shifted Rotated Ackley | 0 | Shifted Rotated |
| Name | Index | D | FEs | N | f(x*) | Search Space |
|---|---|---|---|---|---|---|
| Five-Uneven-Peak Trap | f1 | 1 | 600 | 12 | 200.0 | |
| Equal Maxima | f2 | 1 | 600 | 12 | 1.0 | |
| Uneven Decreasing Maxima | f3 | 1 | 600 | 12 | 1.0 | |
| Himmelblau | f4 | 2 | 1200 | 12 | 200.0 | |
| Six-Hump Camel Back | f5 | 2 | 1200 | 12 | 1.03163 | |
| Shubert | f6 | 2 | 1200 | 12 | 186.713 | |
| f7 | 3 | 3000 | 20 | 2709.0935 | ||
| Vincent | f8 | 2 | 1200 | 12 | 1.0 | |
| f9 | 3 | 3000 | 20 | 1.0 | ||
| Modified Rastrigin | f10 | 2 | 1200 | 12 | 2.0 | |
| Composition Function 1 | f11 | 2 | 1500 | 12 | 0 | |
| Composition Function 2 | f12 | 2 | 1500 | 12 | 0 | |
| Composition Function 3 | f13 | 2 | 1500 | 12 | 0 | |
| f14 | 3 | 3000 | 20 | 0 | ||
| f15 | 5 | 10,000 | 20 | 0 | ||
| f16 | 10 | 30,000 | 30 | 0 | ||
| Composition Function 4 | f17 | 3 | 3000 | 20 | 0 | |
| f18 | 5 | 10,000 | 30 | 0 | ||
| f19 | 10 | 30,000 | 30 | 0 | ||
| f20 | 20 | 90,000 | 40 | 0 |
| Function | Metrics | ACLPSO-1 | ACLPSO-2 | ACLPSO-3 | ACLPSO-4 | CLPSO | ECLPSO | DNLPSO | HPSO-TVAC | PSO-CF | PSO-LDIW | SCLPSO |
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| f1 | Mean | 2.87 × 10−12 | 1.23 × 10−10 | 3.28 × 10−115 | 3.37 × 10−15 | 2.34 × 10−14 | 2.74 × 10−93 | 4.36 × 10−34 | 6.26 × 10−36 | 1.50 × 10−93 | 1.91 × 10−32 | 1.17 × 10−13 |
| SD | 8.18 × 10−12 | 6.08 × 10−10 | 6.11 × 10−115 | 9.36 × 10−15 | 3.77 × 10−14 | 4.71 × 10−93 | 1.91 × 10−33 | 1.12 × 10−35 | 6.00 × 10−93 | 4.13 × 10−32 | 3.78 × 10−13 | |
| Rank | 10 | 11 | 1 | 2 | 9 | 5 | 7 | 6 | 4 | 8 | 3 | |
| f2 | Mean | 3.09 × 10−29 | 1.48 × 10−17 | 7.25 × 10−37 | 4.74 × 10−22 | 6.55 × 10−10 | 2.34 × 10−27 | 2.71 × 10−12 | 5.86 × 10−21 | 1.30 × 10−23 | 8.00 × 10−1 | 3.51 × 10−35 |
| SD | 4.27 × 10−29 | 2.19 × 10−17 | 6.84 × 10−37 | 9.70 × 10−22 | 6.64 × 10−10 | 2.29 × 10−27 | 1.29 × 10−11 | 9.96 × 10−21 | 5.76 × 10−23 | 2.77 × 100 | 5.41 × 10−35 | |
| SD | 3 | 8 | 1 | 6 | 10 | 4 | 9 | 7 | 5 | 11 | 2 | |
| f3 | Mean | 1.84 × 100 | 4.23 × 100 | 2.61 × 101 | 6.56 × 101 | 3.98 × 101 | 2.98 × 101 | 1.75 × 101 | 2.05 × 101 | 1.44 × 104 | 3.40 × 101 | 1.03 × 101 |
| SD | 1.63 × 100 | 2.43 × 100 | 2.87 × 101 | 2.49 × 101 | 1.90 × 101 | 2.12 × 101 | 2.16 × 101 | 1.69 × 101 | 3.37 × 104 | 2.25 × 101 | 2.33 × 101 | |
| Rank | 1 | 2 | 6 | 10 | 9 | 7 | 4 | 5 | 11 | 8 | 3 | |
| f4 | Mean | 3.39 × 102 | 1.56 × 104 | 7.87 × 10−2 | 1.71 × 104 | 4.48 × 102 | 5.57 × 102 | 3.82 × 10−2 | 1.92 × 10−4 | 4.00 × 102 | 2.00 × 102 | 6.35 × 100 |
| SD | 8.84 × 101 | 3.44 × 103 | 8.72 × 10−2 | 8.24 × 103 | 1.01 × 102 | 1.37 × 102 | 1.14 × 10−1 | 1.81 × 10−4 | 1.38 × 103 | 1.00 × 103 | 3.49 × 100 | |
| Rank | 6 | 10 | 3 | 11 | 8 | 9 | 2 | 1 | 7 | 5 | 4 | |
| f5 | Mean | 5.17 × 10−1 | 0.00 × 100 | 3.02 × 100 | 1.55 × 100 | 1.76 × 10−6 | 0.00 × 100 | 3.08 × 101 | 7.40 × 100 | 9.57 × 101 | 6.50 × 101 | 0.00 × 100 |
| SD | 5.83 × 10−1 | 0.00 × 100 | 1.45 × 100 | 9.12 × 10−1 | 1.94 × 10−6 | 0.00 × 100 | 6.59 × 100 | 2.96 × 100 | 2.50 × 101 | 1.90 × 101 | 0.00 × 100 | |
| Rank | 5 | 1 | 7 | 6 | 4 | 1 | 9 | 8 | 11 | 10 | 1 | |
| f6 | Mean | 5.66 × 10−1 | 4.19 × 10−1 | 2.00 × 10−1 | 0.00 × 100 | 0.00 × 100 | 4.60 × 10−3 | 3.76 × 100 | 2.80 × 10−1 | 6.72 × 100 | 3.20 × 10−1 | 0.00 × 100 |
| SD | 6.63 × 10−1 | 7.19 × 10−1 | 4.08 × 10−1 | 0.00 × 100 | 0.00 × 100 | 2.19 × 10−2 | 1.79 × 100 | 6.78 × 10−1 | 2.67 × 100 | 5.57 × 10−1 | 0.00 × 100 | |
| Rank | 9 | 8 | 5 | 1 | 1 | 4 | 10 | 6 | 11 | 7 | 1 | |
| f7 | Mean | 1.15 × 10−8 | 1.92 × 10−6 | 3.25 × 10−15 | 3.11 × 10−15 | 3.88 × 10−8 | 3.11 × 10−15 | 1.27 × 10−13 | 9.79 × 10−14 | 1.22 × 100 | 1.16 × 10−14 | 3.11 × 10−15 |
| SD | 5.77 × 10−8 | 6.96 × 10−6 | 7.11 × 10−16 | 0.00 × 100 | 2.72 × 10−8 | 0.00 × 100 | 1.86 × 10−13 | 3.59 × 10−14 | 1.11 × 100 | 3.70 × 10−15 | 0.00 × 100 | |
| Rank | 8 | 10 | 4 | 1 | 9 | 1 | 7 | 6 | 11 | 5 | 1 | |
| f8 | Mean | 1.87 × 10−8 | 3.35 × 10−8 | 1.38 × 10−11 | 0.00 × 100 | 1.34 × 10−9 | 1.43 × 10−10 | 7.98 × 10−3 | 7.78 × 10−3 | 3.19 × 10−2 | 1.57 × 10−2 | 0.00 × 100 |
| SD | 3.45 × 10−8 | 3.88 × 10−8 | 4.56 × 10−11 | 0.00 × 100 | 2.74 × 10−9 | 3.28 × 10−10 | 1.16 × 10−2 | 1.00 × 10−2 | 8.34 × 10−2 | 1.68 × 10−2 | 0.00 × 100 | |
| Rank | 6 | 7 | 3 | 1 | 5 | 4 | 9 | 8 | 11 | 10 | 1 | |
| f9 | Mean | 2.23 × 102 | 3.82 × 10−4 | 5.87 × 102 | 4.29 × 102 | 3.82 × 10−4 | 3.82 × 10−4 | 1.88 × 103 | 1.63 × 103 | 5.85 × 103 | 5.13 × 103 | 3.82 × 10−4 |
| SD | 1.38 × 102 | 9.15 × 10−7 | 2.04 × 102 | 2.71 × 102 | 4.90 × 10−13 | 3.94 × 10−11 | 3.11 × 102 | 3.35 × 102 | 6.88 × 102 | 7.18 × 102 | 0.00 × 100 | |
| Rank | 5 | 4 | 7 | 6 | 2 | 3 | 9 | 8 | 11 | 10 | 1 | |
| f10 | Mean | 2.62 × 101 | 1.67 × 101 | 9.18 × 101 | 8.54 × 102 | 2.89 × 101 | 9.85 × 101 | 3.51 × 101 | 7.07 × 101 | 3.51 × 107 | 5.50 × 107 | 1.21 × 102 |
| SD | 2.01 × 101 | 1.46 × 101 | 9.29 × 101 | 2.45 × 103 | 1.74 × 101 | 3.36 × 101 | 5.08 × 101 | 8.25 × 101 | 9.40 × 107 | 9.79 × 107 | 4.41 × 101 | |
| Rank | 2 | 1 | 6 | 9 | 3 | 7 | 4 | 5 | 10 | 11 | 8 | |
| f11 | Mean | 1.28 × 10−7 | 1.26 × 10−7 | 1.96 × 10−3 | 0.00 × 100 | 8.16 × 10−10 | 8.32 × 10−10 | 9.06 × 10−3 | 2.03 × 10−2 | 1.24 × 101 | 2.04 × 101 | 0.00 × 100 |
| SD | 2.34 × 10−7 | 3.30 × 10−7 | 8.01 × 10−3 | 0.00 × 100 | 1.11 × 10−9 | 2.21 × 10−9 | 1.10 × 10−2 | 1.96 × 10−2 | 9.35 × 100 | 1.28 × 101 | 0.00 × 100 | |
| Rank | 6 | 5 | 7 | 1 | 3 | 4 | 8 | 9 | 10 | 11 | 1 | |
| f12 | Mean | 1.33 × 103 | 7.40 × 103 | 2.60 × 100 | 1.50 × 103 | 1.35 × 103 | 1.65 × 103 | 1.27 × 10−2 | 5.89 × 10−4 | 7.91 × 100 | 1.83 × 101 | 6.74 × 101 |
| SD | 3.07 × 102 | 1.77 × 103 | 1.71 × 100 | 7.37 × 102 | 3.49 × 102 | 2.48 × 102 | 2.33 × 10−2 | 6.18 × 10−4 | 3.01 × 101 | 4.45 × 101 | 5.05 × 101 | |
| Rank | 7 | 11 | 3 | 9 | 8 | 10 | 2 | 1 | 4 | 5 | 6 | |
| f13 | Mean | 2.04 × 101 | 3.65 × 101 | 1.39 × 101 | 3.25 × 100 | 2.59 × 101 | 2.04 × 101 | 5.56 × 101 | 2.59 × 101 | 8.53 × 101 | 6.65 × 101 | 7.03 × 101 |
| SD | 3.70 × 100 | 7.40 × 100 | 2.53 × 100 | 1.88 × 100 | 4.60 × 100 | 3.70 × 100 | 1.62 × 101 | 9.40 × 100 | 1.71 × 101 | 1.88 × 101 | 7.50 × 100 | |
| Rank | 3 | 7 | 2 | 1 | 5 | 4 | 8 | 6 | 11 | 9 | 10 | |
| f14 | Mean | 1.35 × 103 | 5.78 × 102 | 1.32 × 103 | 2.53 × 102 | 1.25 × 103 | 1.23 × 103 | 2.29 × 103 | 2.08 × 103 | 5.88 × 103 | 5.15 × 103 | 4.37 × 103 |
| SD | 1.85 × 102 | 4.00 × 102 | 2.19 × 102 | 2.09 × 102 | 1.19 × 102 | 1.42 × 102 | 2.98 × 102 | 7.10 × 102 | 7.82 × 102 | 6.50 × 102 | 2.58 × 102 | |
| Rank | 6 | 2 | 5 | 1 | 4 | 3 | 8 | 7 | 11 | 10 | 9 | |
| f15 | Mean | 1.65 × 10−3 | 2.05 × 10−3 | 2.76 × 10−3 | 5.33 × 10−17 | 1.10 × 10−4 | 4.51 × 10−3 | 1.32 × 10−2 | 1.11 × 10−2 | 2.97 × 10−2 | 1.52 × 10−2 | 2.41 × 10−8 |
| SD | 2.70 × 10−3 | 2.71 × 10−3 | 5.91 × 10−3 | 6.51 × 10−17 | 3.01 × 10−4 | 3.10 × 10−3 | 1.61 × 10−2 | 1.23 × 10−2 | 2.77 × 10−2 | 1.51 × 10−2 | 1.16 × 10−7 | |
| Rank | 4 | 5 | 6 | 1 | 3 | 7 | 9 | 8 | 11 | 10 | 2 | |
| f16 | Mean | 1.74 × 10−6 | 2.73 × 10−5 | 3.82 × 10−15 | 3.96 × 10−15 | 4.13 × 10−7 | 3.96 × 10−15 | 4.21 × 10−1 | 2.82 × 100 | 1.94 × 100 | 1.29 × 10−14 | 3.82 × 10−15 |
| SD | 6.94 × 10−6 | 9.24 × 10−5 | 1.45 × 10−15 | 1.55 × 10−15 | 6.94 × 10−6 | 1.55 × 10−15 | 6.42 × 10−1 | 4.65 × 100 | 1.53 × 100 | 3.12 × 10−15 | 1.45 × 10−15 | |
| Rank | 7 | 8 | 2 | 3 | 6 | 4 | 9 | 11 | 10 | 5 | 1 | |
| Average Rank | 5.5 | 6.25 | 4.25 | 4.3125 | 5.5625 | 4.8125 | 7.125 | 6.375 | 9.3125 | 8.4375 | 3.375 | |
| Final Rank | 5 | 7 | 2 | 3 | 6 | 4 | 9 | 8 | 11 | 10 | 1 | |
| Function | ACLPSO-1 | ACLPSO-2 | ACLPSO-3 | ACLPSO-4 | ||||
|---|---|---|---|---|---|---|---|---|
| p-Value | z-Value | p-Value | z-Value | p-Value | z-Value | p-Value | z-Value | |
| f1 | 5.960 × 10−8 | −4.359 × 100 | 5.960 × 10−8 | −4.363 × 100 | 4.172 × 10−6 | 4.036 × 100 | 6.670 × 10−2 | 1.830 × 100 |
| f2 | 5.960 × 10−8 | −4.359 × 100 | 5.960 × 10−8 | −4.359 × 100 | 5.960 × 10−8 | 4.359 × 100 | 5.960 × 10−8 | −4.359 × 100 |
| f3 | 8.081 × 10−4 | 3.175 × 100 | 2.027 × 10−2 | 2.287 × 100 | 7.915 × 10−1 | −2.691 × 10−1 | 1.150 × 10−3 | −3.094 × 100 |
| f4 | 5.960 × 10−8 | −4.359 × 100 | 5.960 × 10−8 | −4.359 × 100 | 5.960 × 10−8 | 4.359 × 100 | 5.960 × 10−8 | −4.359 × 100 |
| f5 | 6.104 × 10−5 | −3.379 × 100 | 1.000 × 100 | 0.000 × 100 | 1.192 × 10−7 | −4.307 × 100 | 5.960 × 10−8 | −4.359 × 100 |
| f6 | 2.441 × 10−4 | −3.145 × 100 | 3.052 × 10−5 | −3.490 × 100 | 2.441 × 10−4 | −3.145 × 100 | 1.000 × 100 | 0.000 × 100 |
| f7 | 3.125 × 10−2 | −2.102 × 100 | 1.950 × 10−3 | −2.752 × 100 | 5.000 × 10−1 | −8.944 × 10−1 | 1.000 × 100 | 0.000 × 100 |
| f8 | 1.250 × 10−1 | −1.643 × 100 | 5.960 × 10−8 | −4.359 × 100 | 1.250 × 10−1 | −1.643 × 100 | 1.000 × 100 | 0.000 × 100 |
| f9 | 5.960 × 10−8 | −4.359 × 100 | 1.000 × 100 | 0.000 × 100 | 5.960 × 10−8 | −4.361 × 100 | 1.907 × 10−6 | −3.905 × 100 |
| f10 | 2.980 × 10−7 | 4.278 × 100 | 2.980 × 10−7 | 4.278 × 100 | 4.908 × 10−1 | 6.996 × 10−1 | 6.915 × 10−1 | 4.036 × 10−1 |
| f11 | 5.960 × 10−8 | −4.359 × 100 | 5.960 × 10−8 | −4.359 × 100 | 3.910 × 10−3 | −2.606 × 100 | 1.000 × 100 | 0.000 × 100 |
| f12 | 5.960 × 10−8 | −4.359 × 100 | 5.960 × 10−8 | −4.359 × 100 | 5.960 × 10−8 | 4.359 × 100 | 5.960 × 10−8 | −4.359 × 100 |
| f13 | 5.960 × 10−8 | 4.359 × 100 | 2.980 × 10−7 | 4.278 × 100 | 5.960 × 10−8 | 4.359 × 100 | 5.960 × 10−8 | 4.359 × 100 |
| f14 | 5.960 × 10−8 | 4.359 × 100 | 5.960 × 10−8 | 4.359 × 100 | 5.960 × 10−8 | 4.359 × 100 | 5.960 × 10−8 | 4.359 × 100 |
| f15 | 4.542 × 10−5 | −3.713 × 100 | 5.388 × 10−5 | −3.686 × 100 | 8.796 × 10−1 | 1.465 × 10−1 | 7.600 × 10−3 | 2.577 × 100 |
| f16 | 9.766 × 10−4 | −2.942 × 100 | 5.960 × 10−8 | −4.359 × 100 | 7.539 × 10−1 | −5.750 × 10−1 | 2.891 × 10−1 | −1.336 × 100 |
| Function | Metrics | ps = 0.1 | ps = 0.05 | ps = 0.01 | ps = 0.005 | ps = 0.001 |
|---|---|---|---|---|---|---|
| f2 (v = 0.3) | ks = K/5 | 9.62 × 10−37 | 8.63 × 10−37 | 5.40 × 10−37 | 6.58 × 10−37 | 9.11 × 10−25 |
| ks = 2K/5 | 1.57 × 10−23 | 7.47 × 10−37 | 6.87 × 10−37 | 1.38 × 10−36 | 6.01 × 10−35 | |
| ks = 3K/5 | 1.44 × 10−36 | 1.47 × 10−36 | 1.37 × 10−36 | 9.34 × 10−37 | 2.27 × 10−36 | |
| ks = 4K/5 | 8.86 × 10−37 | 1.48 × 10−36 | 1.11 × 10−36 | 1.14 × 10−36 | 9.96 × 10−37 | |
| f4 (v = 0.3) | ks = K/5 | 5.39 × 10−1 | 6.17 × 10−1 | 8.14 × 10−1 | 3.80 × 101 | 1.38 × 104 |
| ks = 2K/5 | 1.51 × 10−1 | 1.41 × 10−1 | 2.43 × 10−1 | 2.18 × 10−1 | 1.60 × 103 | |
| ks = 3K/5 | 6.62 × 10−2 | 1.05 × 10−1 | 7.46 × 10−2 | 3.12 × 10−1 | 1.03 × 101 | |
| ks = 4K/5 | 3.66 × 10−1 | 9.70 × 10−2 | 1.02 × 100 | 6.69 × 10−2 | 2.11 × 10−1 | |
| f5 (v = 0.05) | ks = K/5 | 1.16 × 10−5 | 5.88 × 10−6 | 4.79 × 10−7 | 1.53 × 10−5 | 6.20 × 10−6 |
| ks = 2K/5 | 1.12 × 10−4 | 1.63 × 10−5 | 4.91 × 10−6 | 3.52 × 10−5 | 1.98 × 10−6 | |
| ks = 3K/5 | 3.98 × 10−2 | 1.75 × 10−5 | 1.02 × 10−4 | 5.15 × 10−5 | 1.08 × 10−5 | |
| ks = 4K/5 | 3.98 × 10−2 | 3.99 × 10−2 | 5.70 × 10−5 | 8.78 × 10−6 | 4.42 × 10−6 | |
| f11 (v = 0.3) | ks = K/5 | 2.94 × 10−3 | 2.96 × 10−4 | 0.00 × 100 | 3.04 × 10−15 | 1.45 × 10−12 |
| ks = 2K/5 | 2.96 × 10−4 | 2.63 × 10−3 | 2.96 × 10−4 | 2.96 × 10−4 | 2.57 × 10−3 | |
| ks = 3K/5 | 3.73 × 10−14 | 6.90 × 10−4 | 3.05 × 10−3 | 4.09 × 10−3 | 7.68 × 10−3 | |
| ks = 4K/5 | 1.08 × 10−3 | 6.89 × 10−4 | 2.17 × 10−3 | 8.06 × 10−3 | 3.94 × 10−4 | |
| f15 (v = 0.3) | ks = K/5 | 7.87 × 10−4 | 1.05 × 10−3 | 5.37 × 10−4 | 9.77 × 10−4 | 1.03 × 10−3 |
| ks = 2K/5 | 8.05 × 10−4 | 3.08 × 10−3 | 1.40 × 10−3 | 1.09 × 10−3 | 9.93 × 10−4 | |
| ks = 3K/5 | 5.88 × 10−4 | 1.28 × 10−3 | 1.19 × 10−3 | 1.20 × 10−3 | 1.09 × 10−3 | |
| ks = 4K/5 | 2.89 × 10−3 | 3.11 × 10−3 | 3.40 × 10−3 | 1.60 × 10−3 | 9.46 × 10−4 |
| Function | Metrics | pv = 0.1 | pv = 0.05 | pv = 0.01 | pv = 0.005 | pv = 0.001 |
|---|---|---|---|---|---|---|
| f5 | kv = K/5 | 4.58 × 100 | 3.10 × 100 | 2.91 × 100 | 4.06 × 100 | 4.42 × 100 |
| kv = 2K/5 | 1.23 × 100 | 1.07 × 100 | 1.39 × 100 | 1.79 × 100 | 2.31 × 100 | |
| kv = 3K/5 | 5.57 × 10−1 | 2.39 × 10−1 | 0.00 × 100 | 1.99 × 10−1 | 1.39 × 100 | |
| kv = 4K/5 | 7.96 × 10−2 | 1.59 × 10−1 | 2.79 × 10−1 | 2.39 × 10−1 | 5.97 × 10−1 | |
| f9 | kv = K/5 | 2.85 × 102 | 3.14 × 102 | 3.70 × 102 | 5.14 × 102 | 4.24 × 102 |
| kv = 2K/5 | 1.19 × 102 | 1.57 × 102 | 1.42 × 102 | 1.85 × 102 | 2.19 × 102 | |
| kv = 3K/5 | 4.74 × 100 | 3.82 × 10−4 | 3.82 × 10−4 | 3.82 × 10−4 | 9.03 × 101 | |
| kv = 4K/5 | 2.37 × 101 | 4.74 × 100 | 4.74 × 100 | 9.48 × 100 | 3.82 × 10−4 | |
| f10 | kv = K/5 | 1.27 × 102 | 1.05 × 102 | 1.37 × 102 | 1.15 × 102 | 7.72 × 102 |
| kv = 2K/5 | 9.98 × 101 | 1.09 × 102 | 1.21 × 102 | 9.09 × 101 | 2.42 × 102 | |
| kv = 3K/5 | 1.34 × 102 | 1.27 × 102 | 9.83 × 101 | 1.21 × 102 | 1.44 × 102 | |
| kv = 4K/5 | 3.14 × 102 | 1.31 × 102 | 1.19 × 102 | 1.11 × 102 | 1.53 × 102 | |
| f11 | kv = K/5 | 4.44 × 10−18 | 0.00 × 100 | 2.96 × 10−4 | 0.00 × 100 | 2.75 × 10−3 |
| kv = 2K/5 | 4.44 × 10−18 | 0.00 × 100 | 0.00 × 100 | 0.00 × 100 | 0.00 × 100 | |
| kv = 3K/5 | 0.00 × 100 | 0.00 × 100 | 0.00 × 100 | 1.33 × 10−17 | 0.00 × 100 | |
| kv = 4K/5 | 2.95 × 10−12 | 2.00 × 10−12 | 1.88 × 10−14 | 4.44 × 10−18 | 4.44 × 10−18 | |
| f15 | kv = K/5 | 2.96 × 10−4 | 6.56 × 10−4 | 2.96 × 10−4 | 2.96 × 10−4 | 8.88 × 10−4 |
| kv = 2K/5 | 2.96 × 10−4 | 4.12 × 10−6 | 2.26 × 10−5 | 7.33 × 10−4 | 2.96 × 10−4 | |
| kv = 3K/5 | 2.66 × 10−5 | 3.04 × 10−4 | 9.86 × 10−8 | 2.41 × 10−7 | 1.57 × 10−3 | |
| kv = 4K/5 | 2.61 × 10−3 | 6.05 × 10−4 | 2.42 × 10−3 | 8.21 × 10−4 | 2.19 × 10−3 |
| Function | Metrics | ACLPSO-1 | ACLPSO-2 | ACLPSO-3 | ACLPSO-4 | CLPSO | ECLPSO | DNLPSO | HPSO-TVAC | PSO-CF | PSO-LDIW | SCLPSO |
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| f1 | Mean | 4.80 × 100 | 0.00 × 100 | 1.60 × 100 | 0.00 × 100 | 1.17 × 101 | 1.11 × 101 | 9.60 × 100 | 1.36 × 101 | 6.40 × 100 | 1.12 × 101 | 0.00 × 100 |
| SD | 1.33 × 101 | 0.00 × 100 | 8.00 × 100 | 0.00 × 100 | 1.78 × 101 | 1.72 × 101 | 1.74 × 101 | 2.29 × 101 | 1.50 × 101 | 1.83 × 101 | 0.00 × 100 | |
| Rank | 5 | 1 | 4 | 1 | 10 | 8 | 7 | 11 | 6 | 9 | 1 | |
| f2 | Mean | 6.21 × 10−10 | 3.00 × 10−10 | 1.28 × 10−9 | 7.02 × 10−9 | 3.27 × 10−10 | 5.59 × 10−13 | 6.02 × 10−14 | 3.71 × 10−10 | 1.43 × 10−7 | 5.76 × 10−7 | 1.85 × 10−9 |
| SD | 1.04 × 10−9 | 6.35 × 10−10 | 1.75 × 10−9 | 1.68 × 10−8 | 1.23 × 10−9 | 2.19 × 10−12 | 1.89 × 10−13 | 1.84 × 10−9 | 4.24 × 10−7 | 2.67 × 10−6 | 5.17 × 10−9 | |
| SD | 6 | 3 | 7 | 9 | 4 | 2 | 1 | 5 | 10 | 11 | 8 | |
| f3 | Mean | 4.17 × 10−2 | 2.98 × 10−5 | 2.16 × 10−2 | 2.51 × 10−4 | 1.22 × 10−2 | 2.53 × 10−2 | 1.23 × 10−2 | 1.54 × 10−2 | 3.49 × 10−2 | 5.83 × 10−2 | 5.56 × 10−6 |
| SD | 4.59 × 10−2 | 1.00 × 10−4 | 2.53 × 10−2 | 9.78 × 10−4 | 2.21 × 10−2 | 2.71 × 10−2 | 2.24 × 10−2 | 4.76 × 10−2 | 2.44 × 10−2 | 6.84 × 10−2 | 1.02 × 10−5 | |
| Rank | 10 | 2 | 7 | 3 | 4 | 8 | 5 | 6 | 9 | 11 | 1 | |
| f4 | Mean | 7.18 × 10−3 | 6.06 × 10−3 | 2.72 × 10−3 | 2.65 × 10−3 | 2.31 × 10−1 | 6.03 × 10−2 | 1.25 × 10−13 | 3.69 × 10−10 | 3.41 × 10−9 | 5.85 × 10−9 | 1.53 × 10−3 |
| SD | 1.78 × 10−2 | 1.06 × 10−2 | 3.79 × 10−3 | 4.24 × 10−3 | 5.20 × 10−1 | 2.08 × 10−1 | 6.25 × 10−13 | 1.78 × 10−9 | 7.23 × 10−9 | 1.48 × 10−8 | 2.88 × 10−3 | |
| Rank | 9 | 8 | 7 | 6 | 11 | 10 | 1 | 2 | 3 | 4 | 5 | |
| f5 | Mean | 2.37 × 10−4 | 5.37 × 10−4 | 1.34 × 10−5 | 2.83 × 10−5 | 6.27 × 10−3 | 1.16 × 10−2 | 1.55 × 10−6 | 1.55 × 10−6 | 1.55 × 10−6 | 1.55 × 10−6 | 1.58 × 10−5 |
| SD | 4.20 × 10−4 | 1.36 × 10−3 | 1.55 × 10−5 | 4.78 × 10−5 | 1.58 × 10−2 | 2.54 × 10−2 | 1.06 × 10−16 | 1.98 × 10−11 | 1.06 × 10−10 | 1.51 × 10−10 | 2.99 × 10−5 | |
| Rank | 8 | 9 | 5 | 7 | 10 | 11 | 1 | 2 | 3 | 4 | 6 | |
| f6 | Mean | 6.10 × 10−1 | 9.10 × 10−1 | 1.19 × 10−1 | 9.39 × 10−1 | 2.64 × 100 | 1.03 × 101 | 9.12 × 10−5 | 9.12 × 10−5 | 9.54 × 10−5 | 1.07 × 10−4 | 3.90 × 10−1 |
| SD | 1.63 × 100 | 1.30 × 100 | 2.03 × 10−1 | 1.43 × 100 | 5.98 × 100 | 1.86 × 101 | 3.61 × 10−9 | 1.53 × 10−7 | 8.04 × 10−6 | 4.41 × 10−5 | 6.48 × 10−1 | |
| Rank | 7 | 8 | 5 | 9 | 10 | 11 | 1 | 2 | 3 | 4 | 6 | |
| f7 | Mean | 5.16 × 101 | 1.61 × 102 | 2.22 × 101 | 9.51 × 101 | 1.20 × 102 | 2.06 × 102 | 5.57 × 10−6 | 3.76 × 10−7 | 1.19 × 10−4 | 2.21 × 10−6 | 7.43 × 101 |
| SD | 5.94 × 101 | 2.22 × 102 | 2.64 × 101 | 8.96 × 101 | 1.61 × 102 | 3.77 × 102 | 1.20 × 10−8 | 1.88 × 10−6 | 3.91 × 10−4 | 2.25 × 10−5 | 7.03 × 101 | |
| Rank | 6 | 10 | 5 | 8 | 9 | 11 | 3 | 1 | 4 | 2 | 7 | |
| f8 | Mean | 2.77 × 10−6 | 4.05 × 10−5 | 5.67 × 10−6 | 8.18 × 10−6 | 9.27 × 10−5 | 6.34 × 10−4 | 4.21 × 10−9 | 9.00 × 10−7 | 1.12 × 10−9 | 2.98 × 10−8 | 6.95 × 10−6 |
| SD | 3.77 × 10−6 | 6.66 × 10−5 | 8.53 × 10−6 | 1.56 × 10−5 | 1.81 × 10−4 | 1.07 × 10−3 | 2.08 × 10−8 | 4.50 × 10−6 | 5.29 × 10−9 | 1.48 × 10−7 | 2.44 × 10−5 | |
| Rank | 5 | 9 | 6 | 8 | 10 | 11 | 2 | 4 | 1 | 3 | 7 | |
| f9 | Mean | 6.95 × 10−5 | 1.12 × 10−4 | 2.90 × 10−5 | 7.38 × 10−5 | 4.02 × 10−4 | 1.06 × 10−3 | 1.51 × 10−10 | 4.12 × 10−14 | 2.82 × 10−13 | 4.93 × 10−12 | 5.02 × 10−5 |
| SD | 1.66 × 10−4 | 1.50 × 10−4 | 5.67 × 10−5 | 9.43 × 10−5 | 6.80 × 10−4 | 1.84 × 10−3 | 7.54 × 10−10 | 2.00 × 10−13 | 6.30 × 10−13 | 1.44 × 10−11 | 6.57 × 10−5 | |
| Rank | 7 | 9 | 5 | 8 | 10 | 11 | 4 | 1 | 2 | 3 | 6 | |
| f10 | Mean | 7.47 × 10−5 | 3.34 × 10−4 | 6.18 × 10−5 | 5.54 × 10−4 | 7.32 × 10−3 | 2.87 × 10−2 | 5.67 × 10−6 | 2.05 × 10−8 | 2.53 × 10−9 | 7.13 × 10−9 | 8.93 × 10−5 |
| SD | 9.67 × 10−5 | 5.24 × 10−4 | 7.02 × 10−5 | 9.06 × 10−4 | 2.46 × 10−2 | 9.16 × 10−2 | 2.77 × 10−5 | 7.87 × 10−8 | 5.50 × 10−9 | 1.65 × 10−8 | 1.73 × 10−4 | |
| Rank | 6 | 8 | 5 | 9 | 10 | 11 | 4 | 3 | 1 | 2 | 7 | |
| f11 | Mean | 7.64 × 10−2 | 4.43 × 10−2 | 3.81 × 10−2 | 7.02 × 10−3 | 5.81 × 10−2 | 8.59 × 10−2 | 2.90 × 10−14 | 1.47 × 10−15 | 3.38 × 10−11 | 9.78 × 10−11 | 1.63 × 10−4 |
| SD | 2.04 × 10−1 | 8.53 × 10−2 | 1.56 × 10−1 | 1.52 × 10−2 | 9.19 × 10−2 | 3.19 × 10−1 | 1.24 × 10−13 | 4.36 × 10−15 | 8.11 × 10−11 | 2.20 × 10−10 | 3.94 × 10−4 | |
| Rank | 10 | 8 | 7 | 6 | 9 | 11 | 2 | 1 | 3 | 4 | 5 | |
| f12 | Mean | 1.49 × 100 | 1.45 × 101 | 5.51 × 10−1 | 7.93 × 10−1 | 3.98 × 100 | 3.32 × 100 | 2.18 × 10−5 | 4.86 × 10−12 | 4.34 × 10−10 | 1.56 × 10−9 | 2.05 × 10−5 |
| SD | 4.14 × 100 | 3.52 × 101 | 1.25 × 100 | 1.26 × 100 | 6.31 × 100 | 7.52 × 100 | 1.09 × 10−4 | 2.43 × 10−11 | 1.36 × 10−9 | 5.85 × 10−9 | 4.20 × 10−5 | |
| Rank | 8 | 11 | 6 | 7 | 10 | 9 | 5 | 1 | 2 | 3 | 4 | |
| f13 | Mean | 1.43 × 10−1 | 1.37 × 10−1 | 4.12 × 10−3 | 9.31 × 10−2 | 1.32 × 100 | 6.85 × 10−1 | 7.49 × 10−14 | 7.25 × 10−11 | 2.84 × 10−10 | 1.23 × 10−9 | 1.90 × 10−5 |
| SD | 3.18 × 10−1 | 4.64 × 10−1 | 8.40 × 10−3 | 2.35 × 10−1 | 5.31 × 100 | 1.70 × 100 | 2.59 × 10−13 | 3.49 × 10−10 | 4.75 × 10−10 | 2.14 × 10−9 | 3.74 × 10−5 | |
| Rank | 9 | 8 | 6 | 7 | 11 | 10 | 1 | 2 | 3 | 4 | 5 | |
| f14 | Mean | 1.57 × 100 | 9.80 × 100 | 8.78 × 10−1 | 3.55 × 100 | 3.08 × 101 | 2.39 × 100 | 0.00 × 100 | 9.92 × 10−14 | 1.82 × 10−10 | 2.02 × 10−9 | 3.53 × 10−2 |
| SD | 1.65 × 100 | 1.70 × 101 | 1.06 × 100 | 5.09 × 100 | 4.12 × 101 | 3.99 × 100 | 0.00 × 100 | 3.50 × 10−13 | 3.44 × 10−10 | 4.20 × 10−9 | 6.36 × 10−2 | |
| Rank | 7 | 10 | 6 | 9 | 11 | 8 | 1 | 2 | 3 | 4 | 5 | |
| f15 | Mean | 6.92 × 100 | 3.38 × 101 | 8.92 × 10−1 | 2.73 × 101 | 5.84 × 100 | 4.16 × 100 | 0.00 × 100 | 6.15 × 10−14 | 1.40 × 10−1 | 1.41 × 101 | 8.10 × 10−6 |
| SD | 1.04 × 101 | 4.55 × 101 | 1.64 × 100 | 3.92 × 101 | 9.68 × 100 | 8.34 × 100 | 0.00 × 100 | 1.70 × 10−13 | 4.84 × 10−1 | 4.10 × 101 | 2.51 × 10−5 | |
| Rank | 8 | 11 | 5 | 10 | 7 | 6 | 1 | 2 | 4 | 9 | 3 | |
| f16 | Mean | 1.28 × 101 | 1.68 × 102 | 6.75 × 10−5 | 1.86 × 102 | 3.44 × 10−1 | 5.10 × 10−1 | 1.10 × 10−13 | 1.81 × 10−12 | 1.29 × 102 | 5.72 × 101 | 4.43 × 10−5 |
| SD | 1.80 × 101 | 8.69 × 101 | 2.99 × 10−4 | 1.37 × 102 | 3.73 × 10−1 | 1.13 × 100 | 2.28 × 10−13 | 1.25 × 10−12 | 1.91 × 102 | 1.12 × 102 | 1.57 × 10−4 | |
| Rank | 7 | 10 | 4 | 11 | 5 | 6 | 1 | 2 | 9 | 8 | 3 | |
| f17 | Mean | 5.54 × 100 | 4.78 × 100 | 1.91 × 100 | 7.61 × 10−1 | 4.22 × 101 | 4.65 × 101 | 3.18 × 100 | 1.34 × 101 | 5.26 × 100 | 3.14 × 100 | 1.89 × 100 |
| SD | 6.46 × 100 | 4.77 × 100 | 2.26 × 100 | 1.27 × 100 | 3.21 × 101 | 6.61 × 101 | 4.01 × 100 | 3.91 × 101 | 1.73 × 101 | 5.01 × 100 | 3.83 × 100 | |
| Rank | 8 | 6 | 3 | 1 | 10 | 11 | 5 | 9 | 7 | 4 | 2 | |
| f18 | Mean | 1.28 × 101 | 8.61 × 100 | 2.19 × 100 | 3.45 × 100 | 4.96 × 100 | 2.54 × 101 | 1.73 × 100 | 2.65 × 101 | 1.87 × 101 | 1.16 × 101 | 5.50 × 100 |
| SD | 1.50 × 101 | 7.96 × 100 | 2.48 × 100 | 2.65 × 100 | 8.20 × 100 | 1.61 × 101 | 2.13 × 100 | 6.91 × 101 | 5.41 × 101 | 3.84 × 101 | 3.38 × 100 | |
| Rank | 8 | 6 | 2 | 3 | 4 | 10 | 1 | 11 | 9 | 7 | 5 | |
| f19 | Mean | 1.38 × 101 | 2.08 × 101 | 2.42 × 100 | 7.12 × 100 | 1.09 × 101 | 5.82 × 100 | 4.27 × 100 | 3.47 × 102 | 4.59 × 100 | 3.30 × 101 | 6.95 × 100 |
| SD | 4.86 × 100 | 6.50 × 100 | 2.12 × 100 | 1.53 × 101 | 5.41 × 100 | 2.65 × 100 | 9.66 × 100 | 2.13 × 102 | 3.66 × 100 | 2.78 × 101 | 1.10 × 101 | |
| Rank | 8 | 9 | 1 | 6 | 7 | 4 | 2 | 11 | 3 | 10 | 5 | |
| f20 | Mean | 1.25 × 100 | 6.69 × 100 | 5.19 × 10−1 | 1.79 × 100 | 3.57 × 10−2 | 8.52 × 10−2 | 2.05 × 100 | 1.39 × 100 | 1.33 × 102 | 2.97 × 101 | 4.19 × 10−2 |
| SD | 9.62 × 10−1 | 2.63 × 100 | 9.66 × 10−1 | 4.65 × 100 | 3.05 × 10−2 | 5.06 × 10−2 | 4.81 × 100 | 4.55 × 100 | 1.37 × 102 | 3.69 × 101 | 1.26 × 10−1 | |
| Rank | 5 | 9 | 4 | 7 | 1 | 3 | 8 | 6 | 11 | 10 | 2 | |
| Average Rank | 7.35 | 7.75 | 5 | 6.75 | 8.15 | 8.6 | 2.8 | 4.2 | 4.8 | 5.8 | 4.65 | |
| Final Rank | 8 | 9 | 5 | 7 | 10 | 11 | 1 | 2 | 4 | 6 | 3 | |
| Function | ACLPSO-1 | ACLPSO-2 | ACLPSO-3 | ACLPSO-4 | ||||
|---|---|---|---|---|---|---|---|---|
| p-Value | z-Value | p-Value | z-Value | p-Value | z-Value | p-Value | z-Value | |
| f1 | 7.810 × 10−3 | −2.466 × 100 | 6.250 × 10−2 | −1.923 × 100 | 3.125 × 10−2 | −2.097 × 100 | 6.250 × 10−2 | −1.923 × 100 |
| f2 | 9.579 × 10−1 | −5.381 × 10−2 | 2.099 × 10−1 | −1.265 × 100 | 1.597 × 10−2 | −2.368 × 100 | 1.399 × 10−4 | −3.525 × 100 |
| f3 | 5.564 × 10−4 | −3.256 × 100 | 8.740 × 10−1 | 1.614 × 10−1 | 3.815 × 10−5 | −3.740 × 100 | 1.820 × 10−3 | −2.987 × 100 |
| f4 | 7.915 × 10−1 | −2.691 × 10−1 | 7.915 × 10−1 | −2.691 × 10−1 | 5.077 × 10−1 | 6.727 × 10−1 | 8.532 × 10−1 | 1.884 × 10−1 |
| f5 | 1.597 × 10−2 | −2.368 × 100 | 1.820 × 10−3 | −2.987 × 100 | 4.908 × 10−1 | 6.996 × 10−1 | 1.485 × 10−1 | −1.453 × 100 |
| f6 | 1.623 × 10−4 | 3.498 × 100 | 1.623 × 10−4 | 3.498 × 100 | 1.623 × 10−4 | 3.498 × 100 | 5.077 × 10−1 | 6.727 × 10−1 |
| f7 | 4.172 × 10−6 | 4.036 × 100 | 9.158 × 10−1 | 1.076 × 10−1 | 1.132 × 10−6 | 4.171 × 100 | 6.150 × 10−1 | 5.112 × 10−1 |
| f8 | 5.580 × 10−3 | 2.691 × 100 | 8.119 × 10−1 | −2.422 × 10−1 | 9.640 × 10−3 | 2.529 × 100 | 8.740 × 10−1 | −1.614 × 10−1 |
| f9 | 1.908 × 10−1 | 1.318 × 100 | 6.915 × 10−1 | 4.036 × 10−1 | 6.313 × 10−4 | 3.229 × 100 | 6.721 × 10−1 | −4.305 × 10−1 |
| f10 | 4.512 × 10−2 | 1.991 × 100 | 1.485 × 10−1 | −1.453 × 100 | 7.255 × 10−1 | −3.498 × 10−1 | 9.032 × 10−2 | −1.695 × 100 |
| f11 | 7.098 × 10−2 | −1.803 × 100 | 3.810 × 10−1 | −8.879 × 10−1 | 6.915 × 10−1 | −4.036 × 10−1 | 7.510 × 10−1 | −3.229 × 10−1 |
| f12 | 3.090 × 10−3 | −2.852 × 100 | 2.498 × 10−4 | −3.417 × 100 | 8.020 × 10−2 | −1.749 × 100 | 2.200 × 10−1 | −1.238 × 100 |
| f13 | 1.145 × 10−2 | −2.475 × 100 | 2.211 × 10−5 | −3.821 × 100 | 1.030 × 10−3 | −3.121 × 100 | 7.510 × 10−1 | −3.229 × 10−1 |
| f14 | 9.175 × 10−2 | 1.688 × 100 | 6.504 × 10−2 | 1.840 × 100 | 1.424 × 10−1 | 1.475 × 100 | 9.881 × 10−1 | −1.521 × 10−2 |
| f15 | 5.960 × 10−8 | −4.359 × 100 | 4.297 × 10−4 | −3.310 × 100 | 3.948 × 10−2 | −2.043 × 100 | 6.498 × 10−4 | −3.214 × 100 |
| f16 | 5.388 × 10−5 | −3.686 × 100 | 5.388 × 10−5 | −3.686 × 100 | 2.899 × 10−2 | −2.146 × 100 | 1.670 × 10−3 | −2.987 × 100 |
| f17 | 5.602 × 10−1 | −5.920 × 10−1 | 3.123 × 10−1 | −1.022 × 100 | 7.915 × 10−1 | 2.691 × 10−1 | 7.915 × 10−1 | −2.691 × 10−1 |
| f18 | 4.215 × 10−2 | −2.018 × 100 | 5.960 × 10−8 | −4.359 × 100 | 5.960 × 10−8 | −4.359 × 100 | 5.960 × 10−8 | −4.359 × 100 |
| f19 | 8.740 × 10−1 | −1.614 × 10−1 | 8.119 × 10−1 | 2.422 × 10−1 | 1.135 × 10−1 | −1.588 × 100 | 1.645 × 10−1 | 1.399 × 100 |
| f20 | 1.399 × 10−4 | −7.534 × 10−1 | 2.498 × 10−4 | −3.417 × 100 | 3.791 × 10−2 | −1.871 × 100 | 2.250 × 10−3 | −2.929 × 100 |
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Yu, X.; Zhang, Y. Sigmoid Comprehensive Learning Particle Swarm Optimization. Mathematics 2026, 14, 1854. https://doi.org/10.3390/math14111854
Yu X, Zhang Y. Sigmoid Comprehensive Learning Particle Swarm Optimization. Mathematics. 2026; 14(11):1854. https://doi.org/10.3390/math14111854
Chicago/Turabian StyleYu, Xiang, and Yi Zhang. 2026. "Sigmoid Comprehensive Learning Particle Swarm Optimization" Mathematics 14, no. 11: 1854. https://doi.org/10.3390/math14111854
APA StyleYu, X., & Zhang, Y. (2026). Sigmoid Comprehensive Learning Particle Swarm Optimization. Mathematics, 14(11), 1854. https://doi.org/10.3390/math14111854
