Article ID Journal Published Year Pages File Type
1717520 Aerospace Science and Technology 2016 11 Pages PDF
Abstract

Automatic path planning is an essential aspect of unmanned aerial vehicle (UAV) autonomy. This paper presents a three dimensional path planning algorithm based on adaptive sensitivity decision operator combined with particle swarm optimization (PSO) technique. In the proposed method, an adaptive sensitivity decision area is constructed to overcome the defects of local optimal and slow convergence. By using this specified area, the potential particle locations with high probabilities are determined and other candidates are deleted to improve computational capacity. Then the searching space of particles is constrained in a limited boundary to avoid premature state. In addition, the searching accuracy is enhanced by the relative particle directivity from current location. The objective function is redesigned by taking into account the distance to destination and UAV self-constraints. To evaluate the path length, the paired-sample T-Test is performed and the straight line rate (SLR  ) index is introduced. In the two scenarios applied in this paper, our proposed method is 35.4%35.4%, 21.6%21.6% and 49.5%49.5% better compared with other three tested optimization algorithms in the path cost on average. Correspondingly it is 9.6%9.6%, 12.8%12.8%, and 25.3%25.3% better in SLR, which is capable of generating higher quality paths efficiently for UAVs.

Related Topics
Physical Sciences and Engineering Engineering Aerospace Engineering
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