A literature Review of Ant Colony Algorithm Based on Cite Space
DOI:
https://doi.org/10.62177/jaet.v2i1.170Keywords:
Ant Colony Algorithm, Cite Space, BibliometricsAbstract
Ant colony algorithm is a kind of biological heuristic algorithm, which has been applied in the fields of combinatorial optimization, path planning, task scheduling and other fields and has achieved significant optimization results, so it is necessary to sort out the literature of ant colony algorithm and deepen the understanding of its research status, hotspots and future development directions. In this paper, the process, principle and application fields of ant colony algorithm are sorted out, and the literature related to ant colony algorithm is bibliologically analyzed based on Cite Space software, and the number of publications, the current situation of researchers and research institutions are summarized, and the research hotspots and trends of ant colony algorithm are revealed through citation network and keyword co-occurrence analysis. Through bibliometric analysis, we understand that the research on ant colony algorithm is stable, and there is overlap and integration with other optimization algorithms. Future research can continue to focus on the improvement and application of ant colony algorithm, and explore its combination with other algorithms to promote the application of ant colony algorithm in a wider range of fields.
Downloads
References
Huang Fengyun, Jiang Shiqiu, Xu Jianning. Research on Robot Path Planning Based on Improved Ant Colony Algorithm[J/OL].Mechanical Design and Manufacturing:1-5[2023-06-06]. DOI:10.19356/j.cnki.1001-3997.20230605.030.
Huang Guoliang, Zhou Yi, Zheng Kun, Li Meng, Meng Xuehao. Global ship path planning method based on improved ant colony algorithm[J].Marine Engineering,2023,52(02):97-101+136.)
Xu Wei, Zhong Yuchao, Yu Chengcheng. LEACH improved protocol based on genetic algorithm and ant colony algorithm[J/OL].Radio Engineering:1-12[2023-06-06].http://kns.cnki.net/kcms/detail/13.1097.TN.20230424.1733.020.html
Yuan Qingqing, Yuan Ding, Yan Qing. Directional gradient transmission opportunistic routing protocol based on ant colony algorithm in U-WSNs[J/OL].Radio Engineering:1-7[2023-06-06].http://kns.cnki.net/kcms/detail/13.1097.TN.20230406.1143.010.html
Wang Wenfeng, Yu Lanting, Liu Zhe, Niu Chenggang, Xu Xingman, Han Longzhe. Improved ant colony algorithm based on dichotomy and control pheromone quantity[J].Computer Engineering and Design,2023,44(03):784-790.DOI:10.16208/j.issn1000-7024.2023.03.020.
Hu Shengbang, Yuan Xiaofang, Guo Lin. Optimization of transportation route of civil explosives with improved ant colony algorithm[J].Journal of Highway and Transportation Science and Technology,2023,40(03):247-253.)
Huo Feizhou, Gao Shuaiyun, Wei Yunfei, Ma Yaping, Wu Lijun. Research on evacuation path planning in congested environment with improved ant colony algorithm[J/OL].Computer Engineering and Application:1-11[2023-06-06].http://kns.cnki.net/kcms/detail/11.2127.TP.20230228.1637.036.html
Yu Zhou, Chen Shengjun, Li Xiaoping. A review of improved ant colony algorithms[J].Information and Computer(Theoretical Edition),2021,33(11):57-59.)
Guo Chengcheng, Tian Liqin, Wu Wenxing. A review of the application of ant colony algorithm in solving the traveling salesman problem[J].Computer Systems Applications,2023,32(03):1-14.DOI:10.15888/j.cnki.csa.008976.
Wu Yujun, Ye Ziqing. Review on the application of ant colony algorithm in microgrid capacity allocation optimization[J].Electrical Technology and Economy,2022(03):20-22.)
Xiao Yanqiu, Jiao Jianqiang, Qiao Dongping, et al. Light Industry Science and Technology,2018,34(03):69-72.)
Zhu Suxia, Long Yifei, Sun Guanglu, Li Chunfeng. Journal of Harbin University of Science and Technology,2022,27(01):1-7.DOI:10.15938/j.jhust.2022.01.001.
Ren Teng, Luo Tianyu, Li Shuxuan, Xiang Shang, Xiao Helu, Xing Lining. Control and Decision,2022,37(03):545-554.DOI:10.13195/j.kzyjc.2021.0160.
Zan Xinyu, Zhang Tiefeng, Yuan Jinsha. Fire rescue path planning method for mobile robot based on improved ant colony algorithm[J].Science Technology and Engineering,2021,21(17):7243-7248.)
Shi Chun, Zeng Yanyang, Hou Shouming. Computer Engineering and Applications,2021,57(08):36-47.)
Yang Yang, Chen Jiajun. A review of the application of optimization of BP neural network based on swarm intelligence algorithm[J].Computer Knowledge and Technology,2020,16(35):7-10+14.DOI:10.14004/j.cnki.ckt.2020.3762.
Shi Xiaodong, Li Yongjun, Zhao Shanghong, Wang Weilong. Infrared and Laser Engineering,2020,49(10):211-218.)
Shi Jianchao, Xie Zhiyuan. Fusion method of low-voltage power line and micro-power wireless communication for information perception of power Internet of things[J].Electric Power Automation Equipment,2020,40(10):147-157.DOI:10.16081/j.epae.202009026.
Zhang Songcan, Pu Jiexin, Si Yanna, Sun Lifan. Computer Engineering and Applications,2020,56(08):10-19.)
Zhu Yizhi. Clustering algorithm based on similarity algorithm and ant colony algorithm[J].Computer Measurement and Control,2018,26(06):149-151.DOI:10.16526/j.cnki.11-4762/tp.2018.06.038.
Qiao Dongping, Pei Jie, Xiao Yanqiu, Zhou Kun. Software Guide,2017,16(12):217-221.)
Wang Xiaoyan, Yang Le, Zhang Yu, Meng Shuai. Robot path planning based on improved potential field ant colony algorithm[J].Control and Decision,2018,33(10):1775-1781.DOI:10.13195/j.kzyjc.2017.0639.
Downloads
How to Cite
Issue
Section
License
Copyright (c) 2025 Shiyu Li, Shengpan Yang, Jie Jin

This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.