Improved Aquila Optimization Based on Multi-Strategy Integration

被引:0
|
作者
Zhang C.-S. [1 ]
Zhang J.-Z. [1 ]
Qian B. [1 ]
Hu R. [1 ]
机构
[1] Faculty of Information Engineering and Automation, Kunming University of Science and Technology, Yunnan, Kunming
来源
基金
中国国家自然科学基金;
关键词
adaptive weight; aquila optimization; Bernoulli sequence; Cauchy-Gaussian mutation; intraspecific and mutual assistance; refracted opposition-based learning;
D O I
10.12263/DZXB.20220205
中图分类号
学科分类号
摘要
In order to solve the problem that aquila optimization algorithm (AO) is easy to fall into local optimum and slow convergence, this paper proposes an improved aquila optimization algorithm with multi-strategy integration (MSIAO). In this algorithm, the refracted opposition-based learning combined with Tent chaotic map is used to initialize the population to improve the early search efficiency of the algorithm, and intraspecific and mutual assistance and optimization strategy are used to solve the problem of optimization stagnation of the algorithm. The convergence speed of the algorithm is improved by an adaptive weighting strategy based on Bernoulli chaotic sequences. Cauchy-Gaussian mutation operator is introduced to enhance the ability of the algorithm to escape local extremum in the later iteration. This paper conducts experiments on 10 benchmark functions and some CEC2014 test function sets, and the proposed MSIAO is applied to 2 engineering design optimization problems. The results show that MSIAO has higher convergence accuracy and faster convergence speed than AO for high-dimensional single-peak, high-dimensional multi-peak and fixed-dimensional complex multimode functions. Compared with AO, MSIAO saves 4.62% and 0.77% in economic cost of optimal design of pressure vessel and welding beam, which verifies the practicability and superiority of MSIAO in dealing with mechanical engineering problems. © 2023 Chinese Institute of Electronics. All rights reserved.
引用
收藏
页码:1245 / 1255
页数:10
相关论文
共 23 条
  • [1] ABUALIGAH L, YOUSRI D, ELAZIZ M ABD, Et al., Aquila optimizer: A novel meta-heuristic optimization algorithm, Computers & Industrial Engineering, 157, (2021)
  • [2] ALRASSAS A M, AL-QANESS M A A, EWEES A A, Et al., Optimized ANFIS model using aquila optimizer for oil production forecasting, Processes, 9, 7, (2021)
  • [3] KANDAN M, KRISHNAMURTHY A, SELVI S, Et al., Quasi oppositional aquila optimizer-based task scheduling approach in an IoT enabled cloud environment, The Journal of Supercomputing, 78, 7, pp. 10176-10190, (2022)
  • [4] WANG S, JIA H, ABUALIGAH L, Et al., An improved hybrid aquila optimizer and Harris hawks algorithm for solving industrial engineering optimization problems, Processes, 9, 9, (2021)
  • [5] AL-QANESS M A A, EWEES A A, FAN H, Et al., Modified aquila optimizer for forecasting oil production[J/OL], Geo-Spatial Information Science
  • [6] SINGH S, BANSAL J C., Mutation-driven grey wolf optimizer with modified search mechanism, Expert Systems with Applications, 194, (2022)
  • [7] BAIRATHI D, GOPALANI D., An improved salp swarm algorithm for complex multi-modal problems, Soft Computing, 25, 15, pp. 10441-10465, (2021)
  • [8] CHAKRABORTY S, SAHA A K, CHAKRABORTY R, Et al., An enhanced whale optimization algorithm for large scale optimization problems, Knowledge-Based Systems, 233, (2021)
  • [9] ZHANG X, LIN Q., Three-learning strategy particle swarm algorithm for global optimization problems, Information Sciences, 593, pp. 289-313, (2022)
  • [10] LI X, MOBAYEN S., Optimal design of a PEMFC-based combined cooling, heating and power system based on an improved version of aquila optimizer, Concurrency and Computation-Practice & Experience, 34, 15, (2022)