计算机科学 ›› 2022, Vol. 49 ›› Issue (6A): 211-216.doi: 10.11896/jsjkx.220300216

• 智能计算 • 上一篇    下一篇

基于改进麻雀搜索优化支持向量机的渔船捕捞方式识别

单晓英1, 任迎春2   

  1. 1 嘉兴学院平湖师范学院 浙江 平湖 314200
    2 嘉兴学院数据科学学院 浙江 嘉兴 314001
  • 出版日期:2022-06-10 发布日期:2022-06-08
  • 通讯作者: 任迎春(bayes618@163.com)
  • 作者简介:(sxy_r123@zjxu.edu.com)
  • 基金资助:
    浙江省教育厅科研项目(Y202044497);浙江省自然科学基金(LQ20F020027)

Fishing Type Identification of Marine Fishing Vessels Based on Support Vector Machine Optimized by Improved Sparrow Search Algorithm

SHAN Xiao-ying1, REN Ying-chun2   

  1. 1 Pinghu Normal College,Jiaxing University,Pinghu,Zhejiang 314200,China
    2 College of Data Science,Jiaxing University,Jiaxing,Zhejiang 314001,China
  • Online:2022-06-10 Published:2022-06-08
  • About author:SHAN Xiao-ying,born in 1984,Ph.D.Her main research interests include pattern recognition and image processing.
    REN Ying-chun,born in 1982,Ph.D.His main research interests include machine learning and computer vision.
  • Supported by:
    Zhejiang Province Education Department Science Research Item(Y202044497) and Zhejiang Provincial Natural Science Foundation of China(LQ20F020027).

摘要: 准确识别渔船的捕捞方式对监测近海渔船的捕捞行为和维护海洋生态平衡具有重要意义。为保护海洋环境,提高渔船的监管效率,提出了一种基于改进麻雀搜索算法(Improved Sparrow Search Algorithm,ISSA)优化支持向量机(Support Vector Machine,SVM)的渔船捕捞方式识别模型。首先引入t分布变异算子对种群进行优化选择,提高了原麻雀搜索算法的全局搜索能力和局部开发能力;其次修订原麻雀算法中警戒者的位置更新公式,进一步提高了算法的收敛速度;最后用 ISSA 优化 SVM 的核函数参数和惩罚项系数,建立渔船捕捞方式识别模型。在3 546艘渔船上的实验结果表明,与原支持向量机、粒子群优化支持向量机、灰狼算法优化支持向量机和麻雀搜索算法优化支持向量机相比,文中提出的基于改进麻雀搜索优化支持向量机的渔船捕捞方式识别模型的准确率更高,而且具有更快的收敛速度。

关键词: t分布, 捕捞方式识别, 麻雀搜索算法, 适应度值, 支持向量机

Abstract: The identification of fishing type has significance for monitoring the fishing activities of motor vessels and maintaining the marine ecological balance.To protect the marine environment and improve the supervision efficiency of fishing vessels,a fi-shing type identification algorithm based on support vector machine optimized by the improved sparrow search algorithm (ISSA-SVM) is proposed.First,the t-distribution mutation operator is introduced to optimize the population selection,which improves the global search ability and local development ability of the original SSA.Second,the position update formula of the spectators of SSA is modified to further improve the convergence speed of the algorithm.Finally,the fishing type identification model ISSA-SVM is constructed by using ISSA to optimize the parameters of SVM.The experimental results on 3 546 fishing vessels show that compared with SVM,PSO-SVM,GWO-SVM and SSA-SVM,the fishing type identification model of ISSA-SVM proposed in this paper has higher accuracy and faster convergence speed.

Key words: t distribution, Fishing type identification, Fitness value, Sparrow search algorithm, Support vector machine

中图分类号: 

  • TP391
[1] DING Q,SHAN X J,JIN X S,et al.A multidimensionalanalysis of marine capture fisheries in China's coastal provinces[J].Fi-sheries Science,2021,87(3):297-309.
[2] GONZALEZ E B,BOER F D.Correction to:The development of the Norwegian wrasse fishery and the use of wrasses as cleaner fish in the salmon aquaculture industry[J].Fisheries Science,2021,87(3):425-426.
[3] LI B,JIN X.Spatio-temporal evolution of marine fishery industry ecosystem vulnerability in the Bohai rim region[J].Chinese Geographical Science,2019,29(6),150-162.
[4] CONSLOLI P,ROMEO T,ANGIOLILLO M,et al.Marine litter from fishery activities in the Western Mediterranean sea:The impact of entanglement on marine animal forests[J].Environmental Pollution,2019,249(1):472-481.
[5] WITT M J,GODLEY B J,ROSS T.A Step Towards Seascape Scale Conservation:Using Vessel Monitoring Systems(VMS) to Map Fishing Activity[J].PLOS One,2007,2(10):1111-1115.
[6] DENG R,DICHMONT C,MILTON D,et al.Can vessel monitoring system data also be used to study trawling intensity and population depletion? the example of Australia's northern prawn fishery[J].Canadian Journal of Fisheries & Aquatic Scien-ces,2005,62(3):611-622.
[7] RUSSO T,PARISI A,PRORGI M,et al.When behavior reveals activity:Assigning fishing effort to métiers based on VMS data using artificial neural networks[J].Fisheries Research,2011,111(1):53-64.
[8] ZHANG J,GENG J,WAN J,et al.An automatically learning and discovering human fishing behaviors scheme for CPSCN[J].IEEE Access,2018,6:19844-19858.
[9] ZHENG Q,WEI F,ZHANG S,et al.Identification of fishing type from VMS data based on artificial neural network[J].South China Fisheries Science,2016,12(2):81-87.
[10] TANG X.Fishing type identification of gill net and trawl netbased on deep learning[J].Marine Fisheries,2020,42(2):107-118.
[11] OKWUASHI O,NDEHEDEHE C E,OLAYINKA D N,et al.Deep support vector machine for POLSAR image classification[J].International Journal of Remote Sensing,2021,42(17):6498-6536.
[12] HU C,ALBERTANI R.Wind turbine event detection by sup-port vector machine[J].Wind Energy,2021,24(7):672-685.
[13] WEERASINGHE S,ALPCAN T,ERFANI S M,et al.Defending support vector machines against data poisoning attacks[J].IEEE Transactions on Information Forensics and Security,2021,16(1):2566-2578.
[14] SRIDEVI S.Classification of coronary heart artery disease using IVUS images by SVM classifier with modified radial basis function kernel (MRBFK)[J].International Journal of Advanced Trends in Computer Science and Engineering,2020,9(3):3877-3886.
[15] EID H F,ABRAHAM A.Plant species identification using leaf biometrics and swarm optimization:a hybrid PSO,GWO,SVM model[J].International Journal of Hybrid Intelligent Systems,2017,14(3):155-165.
[16] SM A,SMM B,AL A.Grey wolf optimizer[J].Advances in Engineering Software,2014,69:46-61.
[17] BERGH F,ENGELBRECHT A P.A study of particle swarm optimization particle trajectories[J].Information Sciences,2006,176(8):937-971.
[18] XUE J K,SHEN B.A novel swarm intelligence optimization approach:sparrow search algorithm[J].Systems Science & Control Engineering,2020,8(1):22-34.
[19] HUANG H,HONG F,LIU J,et al.FVIDS:fishing vessel type identification based on VMS trajectories[J].Journal of Ocean University of China,2019,18(2):403-412.
[20] ZHOU F J,WANG X J,ZHANG M.Evolutionary programming using mutations based on the t probability distribution[J].Acta Electronica SINICA,2008,36(4):667-671.
[21] ELBIS Y,MOUSSA S.Sea Wave Parameters Prediction by Support Vector Machine Using a Genetic Algorithm[J].Journal of Coastal Research,2015,31(314):892-899.
[22] SU H,WANG Y P,XIAO J,et al.Classification of MODIS images combining surface temperature and texture features using the Support Vector Machine method for estimation of the extent of sea ice in the frozen Bohai Bay,China[J].International Journal of Remote Sensing,2015,36(9/10):2734-2750.
[23] LI X M,SUN Y,ZHANG Q.Extraction of Sea Ice Cover by Sentinel-1 SAR Based on Support Vector Machine with Unsupervised Generation of Training Data[J].IEEE Transactions on Geoscience and Remote Sensing,2021,59(4),3040-3053.
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