A Hybrid Discrete Grey Wolf Optimizer to Solve Weapon Target Assignment Problems

作者:Wang, Jun*; Luo, Pengcheng; Hu, Xinwu; Zhang, Xiaonan
来源:Discrete Dynamics in Nature and Society, 2018, 2018: 4674920.
DOI:10.1155/2018/4674920

摘要

We propose a hybrid discrete grey wolf optimizer (HDGWO) in this paper to solve the weapon target assignment(WTA) problem, a kind of nonlinear integer programming problems. To make the original grey wolf optimizer (GWO), which was only developed for problems with a continuous solution space, available in the context, we first modify it by adopting a decimal integer encoding method to represent solutions (wolves) and presenting a modular position update method to update solutions in the discrete solution space. By this means, we acquire a discrete grey wolf optimizer (DGWO) and then through combining it with a local search algorithm (LSA), we obtain the HDGWO. Moreover, we also introduce specific domain knowledge into both the encoding method and the local search algorithm to compress the feasible solution space. Finally, we examine the feasibility of the HDGWO and the scalability of the HDGWO, respectively, by adopting it to solve a benchmark case and ten large-scale WTA problems. All of the running results are compared with those of a discrete particle swarm optimization (DPSO), a genetic algorithm with greedy eugenics (GAWGE), and an adaptive immune genetic algorithm (AIGA). The detailed analysis proves the feasibility of the HDGWO in solving the benchmark case and demonstrates its scalability in solving large-scale WTA problems.