4.7 Article

A Comparative Study of Swarm Intelligence Algorithms for UCAV Path-Planning Problems

Journal

MATHEMATICS
Volume 9, Issue 2, Pages -

Publisher

MDPI
DOI: 10.3390/math9020171

Keywords

swarm intelligence; UCAV path-planning; optimization

Categories

Funding

  1. National Natural Science Foundation of China [32000464, 62076109]
  2. Natural Science Foundation of Jilin Province [20190103006JH]
  3. Health and Medical Research Fund, the Food and Health Bureau, the Government of the Hong Kong Special Administrative Region [07181426]
  4. Hong Kong Institute for Data Science (HKIDS) at City University of Hong Kong
  5. City University of Hong Kong [CityU 11202219, CityU 11203520]

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This study explores the performance of different swarm intelligence algorithms in path-planning for uninhabited combat air vehicles (UCAV) and finds that the Spider Monkey Optimization algorithm is more effective.
Path-planning for uninhabited combat air vehicles (UCAV) is a typically complicated global optimization problem. It seeks a superior flight path in a complex battlefield environment, taking into various constraints. Many swarm intelligence (SI) algorithms have recently gained remarkable attention due to their capability to address complex optimization problems. However, different SI algorithms present various performances for UCAV path-planning since each algorithm has its own strengths and weaknesses. Therefore, this study provides an overview of different SI algorithms for UCAV path-planning research. In the experiment, twelve algorithms that published in major journals and conference proceedings are surveyed and then applied to UCAV path-planning. Moreover, to demonstrate the performance of different algorithms in further, we design different scales of problem cases for those comparative algorithms. The experimental results show that UCAV can find the safe path to avoid the threats efficiently based on most SI algorithms. In particular, the Spider Monkey Optimization is more effective and robust than other algorithms in handling the UCAV path-planning problem. The analysis from different perspectives contributes to highlight trends and open issues in the field of UCAVs.

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