이 제출물을 팔로우합니다
- 팔로우하는 게시물 피드에서 업데이트를 확인할 수 있습니다
- 정보 수신 기본 설정에 따라 이메일을 받을 수 있습니다
This paper introduces a new swarm intelligence strategy, anti coronavirus optimization (ACVO) algorithm. This algorithm is a multi-agent strategy, in which each agent is a person that tries to stay healthy and slow down the spread of COVID-19 by observing the containment protocols. The algorithm composed of three main steps: social distancing, quarantine, and isolation. In the social distancing phase, the algorithm attempts to maintain a safe physical distance between people and limit close contacts. In the quarantine phase, the algorithm quarantines the suspected people to prevent the spread of disease. Some people who have not followed the health protocols and infected by the virus should be taken care of to get a full recovery. In the isolation phase, the algorithm cared for the infected people to recover their health. The algorithm iteratively applies these operators on the population to find the fittest and healthiest person. The proposed algorithm is evaluated on standard multi-variable single-objective optimization problems and compared with several counterpart algorithms. The results show the superiority of ACVO on most test problems compared with its counterparts.
인용 양식
Hojjat Emami (2026). Anti coronavirus optimization algorithm (https://kr.mathworks.com/matlabcentral/fileexchange/119803-anti-coronavirus-optimization-algorithm), MATLAB Central File Exchange. 검색 날짜: .
Emami, Hojjat. “Anti-Coronavirus Optimization Algorithm.” Soft Computing, vol. 26, no. 11, Springer Science and Business Media LLC, Mar. 2022, pp. 4991–5023, doi:10.1007/s00500-022-06903-5.
| 버전 | 퍼블리시됨 | 릴리스 정보 | Action |
|---|---|---|---|
| 1.0.0 |
