OPTIMAL DELIVERY STRATEGY OF SMOKE SCREEN JAMMING BOMBS BASED ON KINEMATICS AND PARTICLE SWARM OPTIMIZATION

Authors

  • XingYu Liu (Corresponding Author) College of Electronic Information Engineering, Shenyang Aerospace University, Shenyang 110136, Liaoninge, China.
  • XueJiao Lu College of Artificial Intelligence, Shenyang Aerospace University, Shenyang 110136, Liaoninge, China.
  • JiaYing Wang College of Electronic Information Engineering, Shenyang Aerospace University, Shenyang 110136, Liaoninge, China.
  • JiaYi Shao College of Electronic Information Engineering, Shenyang Aerospace University, Shenyang 110136, Liaoninge, China.

Keywords:

Smoke screen interception, Kinematics model, Optimal deployment, Effective coverage, Intelligent optimization

Abstract

Aiming at the problem of accurate interception and effective coverage in the process of smoke screen deployment, this paper establishes a complete three-dimensional kinematics model, which fully considers the air dynamic environment, spatial position constraints, and target movement characteristics, and includes the motion of carriers, the diffusion and drop of smoke screens, and the trajectory of moving targets. On this basis, a multi-objective optimization model is constructed with the goal of maximizing the effective interception time and the coverage rate. The model takes the flight parameters of carriers, the release timing of smoke screens, the detonation delay and the spatial constraints as the main decision variables, and introduces the environmental interference factors and dynamic constraint conditions to enhance the adaptability and robustness of the model. The intelligent optimization algorithm is used to solve the optimal deployment strategy, and the iterative optimization mechanism and global search ability are fully utilized to improve the convergence speed and optimization accuracy. Simulation results and case analysis show that the proposed method can significantly improve the continuous interception effect of smoke screens, and realize the autonomous and accurate deployment in the whole process. The model and method can provide theoretical support and engineering reference for the design of smoke screen interception, regional shielding and safety protection in complex environments.

References

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Published

2026-06-06

Issue

Section

Research Article

DOI:

How to Cite

XingYu Liu, XueJiao Lu, JiaYing Wang, JiaYi Shao. Optimal Delivery Strategy Of Smoke Screen Jamming Bombs Based On Kinematics And Particle Swarm Optimization. World Journal of Engineering Research. 2026, 4(4): 34-38. DOI: https://doi.org/10.61784/wjer3105.