Accès libre

Research on the Prediction Model of College Students’ Sports Performance Based on Improved Sparrow Search Algorithm

 et   
16 sept. 2024
À propos de cet article

Citez
Télécharger la couverture

Xue, J. K. (2020). Research and application of a novel swarm intelligence optimization technique. Donghua University. Search in Google Scholar

Shan, X. Y., & Ren, Y. C. (2012). Trawling pattern identification of fishing boats based on improved Sparrow search optimization support vector machine. Computer Science, 49, 211–216. Search in Google Scholar

Layeb, A. (2022). Tangent search algorithm for solving optimization problems. Neural Computing and Applications. https://doi.org/10.1007/s00521-022-06908-z Search in Google Scholar

Zhou, Y., Fang, Q., Pei, Z. X., et al. (2019). Sparrow search algorithm based on tangential flight. Application Research of Computers, 40(1), 141–146. Search in Google Scholar

Ma, W., & Zhu, X. (2019). Sparrow search algorithm based on Levy flight disturbance strategy. Journal of Applied Sciences, 40(1), 116–130. Search in Google Scholar

Lian, J., Yao, X., & Li, Z. S. (2022). Research and improvements on crow search algorithm for feature selection. Journal of Software, 33(11), 3903–3916. Search in Google Scholar

Ge, Z. Z., Zhang, D. M., & Zhang, L. N., et al. (2021). Hybrid strategy improved crow search algorithm. Application Research of Computers, 38(11), 3334–3339. Search in Google Scholar

Chen, X., Cao, J., Sheng, Y., et al. (2021). Research on optimal allocation of comprehensive energy system capacity of natural gas storage based on Cuckoo algorithm. Journal of Chongqing University of Technology (Natural Science), 35(6), 209–2019. Search in Google Scholar

Xue, J. K., & Shen, B. (2020). A novel swarm intelligence optimization approach: Sparrow search algorithm. Systems Science & Control Engineering, 8(1), 22–34. Search in Google Scholar

Zhang, Y. D., & Mo, Y. B. (2022). Improved sparrow search algorithm and its application in TSP. Computer Systems & Applications, 31(2), 200–206. Search in Google Scholar

Zhang, S. H., & Tang, M. (2023). Improved PSO algorithm and its application in route planning of UAV. Computer Systems and Applications, 32(3), 330–337. Search in Google Scholar

Gao, C. F., Chen, J. Q., & Shi, M. H. (2022). Multi-strategy sparrow search algorithm integrating golden sine and curve adaptation. Application Research of Computers, 39(2), 491–499. Search in Google Scholar

Mao, Q. H., & Zhang, Q. (2021). Improved sparrow algorithm combining Cauchy mutation and opposition-based learning. Journal of Frontiers of Computer Science and Technology, 15(6), 1155–1164. Search in Google Scholar

Gonzalez, E. B., & Boer, F. D. (2021). Correction to: The development of the Norwegian wrasse fishery and the use of wrasses as cleaner fish in the salmon aquaculture industry. Fisheries Science, 87(3), 425–426. Search in Google Scholar

Li, B., & Jin, X. (2019). Spatio-temporal evolution of marine fishery industry ecosystem vulnerability in the Bohai rim region. Chinese Geographical Science, 29(6), 150–162. Search in Google Scholar

Consoli, P., Romeo, T., Angiolillo, M., et al. (2019). Marine litter from fishery activities in the Western Mediterranean Sea: The impact of entanglement on marine animal forests. Environmental Pollution, 249(1), 472–481. Search in Google Scholar

Witt, M. J., Godley, B. J., & Ross, T. A. (2007). Step towards seascape scale conservation: Using vessel monitoring systems (VMS) to map fishing activity. PLOS One, 2(10), 1111–1115. Search in Google Scholar

Deng, R., Dichmont, C., Milton, D., et al. (2005). Can vessel monitoring system data also be used to study trawling intensity and population depletion? The example of Australia’s northern prawn fishery. Canadian Journal of Fisheries & Aquatic Sciences, 62(3), 611–622. Search in Google Scholar

Russo, T., Parisi, A., Prorgi, M., et al. (2011). When behavior reveals activity: Assigning fishing effort to métiers based on VMS data using artificial neural networks. Fisheries Research, 111(1), 53–64. Search in Google Scholar

Zhang, J., Geng, J., Wan, J., et al. (2018). An automatically learning and discovering human fishing behaviors scheme for CPSCN. IEEE Access, 6, 19844–19858. Search in Google Scholar