Abstract

Unmanned autonomous helicopter (UAH) path planning problem is an important component of the UAH mission planning system. The performance of the automatic path planner determines the quality of the UAH flight path. Aiming to produce a high-quality flight path, a path planning system is designed based on human-computer hybrid augmented intelligence framework for the UAH in this paper. Firstly, an improved artificial bee colony (I-ABC) algorithm is proposed based on the dynamic evaluation selection strategy and the complex optimization method. In the I-ABC algorithm, the following way of on-looker bees and the update strategy of nectar source are optimized to accelerate the convergence rate and retain the exploration ability of the population. In addition, a space clipping operation is proposed based on the attention mechanism for constructing a new spatial search area. The search time can be further reduced by the space clipping operation under the path planning result within acceptable changes. Moreover, the entire optimization process and results can be feeded back to the knowledge database by the human-computer hybrid augmented intelligence framework to guide subsequent path planning issues. Finally, the simulation results confirm that a feasible and effective flight path can be quickly generated by the UAH path planning system based on human-computer hybrid augmented intelligence.

Highlights

  • In recent years, the developments in automated and unmanned flight technologies have been of high interest to many military organizations throughout the world [1, 2]

  • The used human-computer hybrid augmented intelligence framework combines the advantages of human and computer for planning a high-quality flight path (ii) An improved artificial bee colony (I-artificial bee colony (ABC)) algorithm is proposed based on the dynamic evaluation selection strategy and the complex optimization method for accelerating the convergence rate and maintaining the exploration ability of the population (iii) A space clipping method is designed based on the attention mechanism for reconstructing the spatial search area

  • (i) First, in order to prevent the ABC algorithm premature convergence problem, a dynamic evaluation selection strategy is proposed to optimize the follow way of on-looker bees for improving the searching efficiency (ii) Second, in order to improve the quality of the flight path, the complex method is used to guide the optimization of the swarm

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Summary

Introduction

The developments in automated and unmanned flight technologies have been of high interest to many military organizations throughout the world [1, 2]. To overcome the defects of the traditional ABC algorithm and improve the quality of the flight path, a path planning system is proposed based on human-computer hybrid augmented intelligence framework for the UAH in this paper. The used human-computer hybrid augmented intelligence framework combines the advantages of human and computer for planning a high-quality flight path (ii) An I-ABC algorithm is proposed based on the dynamic evaluation selection strategy and the complex optimization method for accelerating the convergence rate and maintaining the exploration ability of the population (iii) A space clipping method is designed based on the attention mechanism for reconstructing the spatial search area. The space clipping operation further reduces the subsequent search time of the flight path for the path planning system (iv) The simulation studies are executed to comprehensively prove the effectiveness of path planning system based on human-computer hybrid augmented intelligence framework for UAH by various air combat environment models.

Problem Statement
Human-Computer Hybrid Augmented Intelligence Framework for the Path Planning
Evaluation score of planning result
UAH Path Planning Based on I-ABC Algorithm
Space Clipping Operation Based on Attentional Mechanism
New search area Search boundary
Part 1: dense threat environment
Simulation Experiments
Conclusion
Full Text
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