Volume 51 Issue 6
Jun.  2025
Turn off MathJax
Article Contents
DU X X,HAO T R,WANG B,et al. Artificial gorilla troops optimizer based on double random disturbance and its application of engineering problem[J]. Journal of Beijing University of Aeronautics and Astronautics,2025,51(6):1882-1896 (in Chinese) doi: 10.13700/j.bh.1001-5965.2023.0404
Citation: DU X X,HAO T R,WANG B,et al. Artificial gorilla troops optimizer based on double random disturbance and its application of engineering problem[J]. Journal of Beijing University of Aeronautics and Astronautics,2025,51(6):1882-1896 (in Chinese) doi: 10.13700/j.bh.1001-5965.2023.0404

Artificial gorilla troops optimizer based on double random disturbance and its application of engineering problem

doi: 10.13700/j.bh.1001-5965.2023.0404
Funds:

Heilongjiang Provincial Higher Education Institutions Basic Scientific Research Business Funds Natural Science Young Innovative Talents Program (145209206)

More Information
  • Corresponding author: E-mail:xiaoxindu@qqhru.edu.cn
  • Received Date: 25 Jun 2023
  • Accepted Date: 11 Sep 2023
  • Available Online: 27 Jun 2025
  • Publish Date: 20 Oct 2023
  • Traditional artificial gorilla troops optimizer (GTO) has the drawbacks of easily falling into local optimum, slow convergence speed, and low optimization accuracy. Aiming at these problems, an artificial gorilla troops optimizer based on a double random disturbance strategy (DGTO) was proposed. Firstly, the Halton sequence was introduced to initialize the population to increase the diversity of the population. Secondly, the method’s convergence speed was increased by using the multi-dimensional random number technique during the algorithm optimization stage and proposing an adaptive position exploration mechanism. Thirdly, a double random disturbance strategy was proposed, which solved the group effect of gorillas and enhanced the ability of the algorithm to jump out of the local optimum. Finally, the individual position was updated by a dimension-by-dimension update strategy, which improved the convergence accuracy of the algorithm. It is evident that the enhanced technique has a greater improvement in optimization accuracy and convergence speed when comparing the Wilcoxon rank sum test results with the optimization results of ten benchmark test functions. In addition, through the experimental comparative analysis of one practical engineering optimization problem, the superiority of the proposed algorithm in dealing with practical engineering problems is further verified.

     

  • loading
  • [1]
    EBERHART R, KENNEDY J. A new optimizer using particle swarm theory[C]//Proceedings of the 6th International Symposium on Micro Machine and Human Science. Piscataway: IEEE Press, 2002: 39-43.
    [2]
    CHEN D, ZHANG S, YANG Y, et al. Optimization of character image matching based on artificial bee colony algorithm[J]. Journal of Physics: Conference Series, 2021, 2035(1): 012034.
    [3]
    MORIN M, ABI-ZEID I, QUIMPER C G. Ant colony optimization for path planning in search and rescue operations[J]. European Journal of Operational Research, 2023, 305(1): 53-63.
    [4]
    AL-IBRAHIM A M H. Solving travelling salesman problem (TSP) by hybrid genetic algorithm (HGA)[J]. International Journal of Advanced Computer Science and Applications, 2020, 11(6): 376-384.
    [5]
    LI J H, LEI Y S, YANG S H. Mid-long term load forecasting model based on support vector machine optimized by improved sparrow search algorithm[J]. Energy Reports, 2022, 8: 491-497.
    [6]
    YAN Z P, ZHANG J Z, ZENG J, et al. Three-dimensional path planning for autonomous underwater vehicles based on a whale optimization algorithm[J]. Ocean Engineering, 2022, 250: 111070.
    [7]
    GUHA D, ROY P K, BANERJEE S. Load frequency control of interconnected power system using grey wolf optimization[J]. Swarm and Evolutionary Computation, 2016, 27: 97-115.
    [8]
    ABDOLLAHZADEH B, GHAREHCHOPOGH F S, MIRJALILI S. Artificial gorilla troops optimizer: a new nature-inspired metaheuristic algorithm for global optimization problems[J]. International Journal of Intelligent Systems, 2021, 36(10): 5887-5958.
    [9]
    XIAO Y N, SUN X, GUO Y L, et al. An improved gorilla troops optimizer based on lens opposition-based learning and adaptive β-hill climbing for global optimization[J]. Computer Modeling in Engineering & Sciences, 2022, 131(2): 815-850.
    [10]
    LIANG Q W, CHU S C, YANG Q Y, et al. Multi-group gorilla troops optimizer with multi-strategies for 3D node localization of wireless sensor networks[J]. Sensors, 2022, 22(11): 4275.
    [11]
    WU T Y, WU D, JIA H M, et al. A modified gorilla troops optimizer for global optimization problem[J]. Applied Sciences, 2022, 12(19): 10144.
    [12]
    ALSOLAI H, ALZAHRANI J S, MARAY M, et al. Enhanced artificial gorilla troops optimizer based clustering protocol for UAV-assisted intelligent vehicular network[J]. Drones, 2022, 6(11): 358.
    [13]
    MOSTAFA R R, GAHEEN M A, ABD ELAZIZ M, et al. An improved gorilla troops optimizer for global optimization problems and feature selection[J]. Knowledge-Based Systems, 2023, 269: 110462.
    [14]
    BANGYAL W H, TAYYAB H, BATOOL H, et al. An improved particle swarm optimization algorithm with Chi-square mutation strategy[J]. International Journal of Advanced Computer Science and Applications, 2019, 10(3): 481-491.
    [15]
    宋立钦, 陈文杰, 陈伟海, 等. 基于混合策略的麻雀搜索算法改进及应用[J]. 北京亚洲成人在线一二三四五六区学报, 2023, 49(8): 2187-2199.

    SONG L Q, CHEN W J, CHEN W H, et al. Improvement and application of hybrid strategy-based sparrow search algorithm[J]. Journal of Beijing University of Aeronautics and Astronautics, 2023, 49(8): 2187-2199(in Chinese).
    [16]
    周理, 朱红求. 基于自适应步长果蝇算法的爬行机器人足端轨迹规划[J]. 机械设计与研究, 2021, 37(3): 60-63.

    ZHOU L, ZHU H Q. Foot trajectory planning of creeping robot based on adaptive step fruit fly optimization algorithm[J]. Machine Design & Research, 2021, 37(3): 60-63(in Chinese).
    [17]
    宋阿妮, 包贤哲, 权轶. 基于混沌自适应萤火虫算法的UAVs分配策略[J]. 计算机应用与软件, 2022, 39(2): 300-306.

    SONG A N, BAO X Z, QUAN Y. Uavs scheduling strategy based on chaotic adaptive firefly algorithm[J]. Computer Applications and Software, 2022, 39(2): 300-306(in Chinese).
    [18]
    李凡长, 刘洋, 吴鹏翔, 等. 元学习研究综述[J]. 计算机学报, 2021, 44(2): 422-446.

    LI F C, LIU Y, WU P X, et al. A survey on recent advances in meta-learning[J]. Chinese Journal of Computers, 2021, 44(2): 422-446 (in Chinese).
    [19]
    LI K W, LI S H, HUANG Z C, et al. Grey wolf optimization algorithm based on Cauchy-Gaussian mutation and improved search strategy[J]. Scientific Reports, 2022, 12: 18961.
    [20]
    刘薇, 赵剑锟, 刘义保, 等. 基于改进型灰狼算法的γ能谱解析应用研究[J]. 核技术, 2021, 44(4): 31-36.

    LIU W, ZHAO J K, LIU Y B, et al. Application research of γ energy spectrum analysis based on improved grey wolf algorithm[J]. Nuclear Techniques, 2021, 44(4): 31-36(in Chinese).
    [21]
    KOHLI M, ARORA S. Chaotic grey wolf optimization algorithm for constrained optimization problems[J]. Journal of Computational Design and Engineering, 2018, 5(4): 458-472.
    [22]
    STORN R, PRICE K. Differential evolution-a simple and efficient heuristic for global optimization over continuous spaces[J]. Journal of Global Optimization, 1997, 11(4): 341-359.
    [23]
    MIRJALILI S, LEWIS A. The whale optimization algorithm[J]. Advances in Engineering Software, 2016, 95: 51-67.
    [24]
    NABIL E. A modified flower pollination algorithm for global optimization[J]. Expert Systems with Applications, 2016, 57: 192-203.
    [25]
    张新明, 王霞, 康强. 改进的灰狼优化算法及其高维函数和FCM优化[J]. 控制与决策, 2019, 34(10): 2073-2084.

    ZHANG X M, WANG X, KANG Q. Improved grey wolf optimizer and its application to high-dimensional function and FCM optimization[J]. Control and Decision, 2019, 34(10): 2073-2084(in Chinese).
    [26]
    LUO Q F, LI J, ZHOU Y Q, et al. Using spotted hyena optimizer for training feedforward neural networks[J]. Cognitive Systems Research, 2021, 65: 1-16.
    [27]
    ABUALIGAH L. Multi-verse optimizer algorithm: a comprehensive survey of its results, variants, and applications[J]. Neural Computing and Applications, 2020, 32(16): 12381-12401.
    [28]
    MIRJALILI S. SCA: a sine cosine algorithm for solving optimization problems[J]. Knowledge-Based Systems, 2016, 96: 120-133.
    [29]
    YAZDANI S, NEZAMABADI-POUR H, KAMYAB S. A gravitational search algorithm for multimodal optimization[J]. Swarm and Evolutionary Computation, 2014, 14: 1-14.
    [30]
    KAUR S, AWASTHI L K, SANGAL A L, et al. Tunicate swarm algorithm: a new bio-inspired based metaheuristic paradigm for global optimization[J]. Engineering Applications of Artificial Intelligence, 2020, 90: 103541.
  • 加载中

Catalog

    通讯作者: 陈斌, bchen63@163.com
    • 1. 

      沈阳化工大学材料科学与工程学院 沈阳 110142

    1. 本站搜索
    2. 百度学术搜索
    3. 万方数据库搜索
    4. CNKI搜索

    Figures(11)  / Tables(8)

    Article Metrics

    Article views(259) PDF downloads(25) Cited by()
    Proportional views
    Related

    /

    DownLoad:  Full-Size Img  PowerPoint
    Return
    Return