Antenna Design by Means of the Fruit Fly Optimization Algorithm
Abstract
:1. Introduction
2. Description of the Algorithm
- The swarm is positioned at the location , with a given smell concentration . For each fly i in the swarm:
- The fly moves around a random distance, searching for food by using the osphresis:
- The smell concentration judgement value is defined as the reciprocal of the distance to the origin of coordinates:
- Compute the smell concentration of the fly’s current location by using the smell concentration function (equivalent to a fitness function):
- Look for the specific fly I with the best smell concentration. If this value is better than the value in the initial location of the swarm then move the swarm towards the position of the fly I by using the vision sense:
3. Numerical Examples
3.1. Application to Array Factor Synthesis
- Flies per swarm: 20.
- Total smell function evaluations: 5000.
3.2. Application to Horn Antennas
- Radii: 0.15 mm
- Lengths:
- Angle:
3.3. Statistical Analysis of the Results
3.4. Comparison with a Genetic Algorithm
4. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
Abbreviations
FOA | Fruit fly Optimization Algorithm |
SLL | Side Lobe Level |
TE | Transverse Electric |
TM | Transverse Magnetic |
GA | Genetic Algorithm |
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Parameter | Initial / Dolph | FOA |
---|---|---|
Parameter | Initial | FOA | Simplex |
---|---|---|---|
Parameter | Initial | FOA | Simplex |
---|---|---|---|
1.50 mm | 1.70 mm | 1.64 mm | |
1.60 mm | 6.11 mm | 2.78 mm | |
1.95 mm | 2.44 mm | 2.13 mm | |
3.99 mm | 2.64 mm | 2.76 mm | |
Parameter | Lower Boundary | Upper Boundary |
---|---|---|
1.13 mm | 9.57 mm | |
1.00 mm | 10.00 mm | |
1.13 mm | 9.57 mm | |
1.00 mm | 10.00 mm | |
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Polo-López, L.; Córcoles, J.; Ruiz-Cruz, J.A. Antenna Design by Means of the Fruit Fly Optimization Algorithm. Electronics 2018, 7, 3. https://doi.org/10.3390/electronics7010003
Polo-López L, Córcoles J, Ruiz-Cruz JA. Antenna Design by Means of the Fruit Fly Optimization Algorithm. Electronics. 2018; 7(1):3. https://doi.org/10.3390/electronics7010003
Chicago/Turabian StylePolo-López, Lucas, Juan Córcoles, and Jorge A. Ruiz-Cruz. 2018. "Antenna Design by Means of the Fruit Fly Optimization Algorithm" Electronics 7, no. 1: 3. https://doi.org/10.3390/electronics7010003
APA StylePolo-López, L., Córcoles, J., & Ruiz-Cruz, J. A. (2018). Antenna Design by Means of the Fruit Fly Optimization Algorithm. Electronics, 7(1), 3. https://doi.org/10.3390/electronics7010003