Multi-unmanned aerial vehicle cooperation sequential coupling task distribution method of mixing gravitation search algorithm

A gravitational search algorithm and multi-UAV technology, applied in the field of cooperative task assignment of UAVs, can solve the problems of low quality of global optimal particles, inability to guarantee the diversity and distribution of non-dominated solutions, and the reduction of population diversity.

Inactive Publication Date: 2017-07-28
NORTHWESTERN POLYTECHNICAL UNIV
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Problems solved by technology

[0005] However, when the gravitational search algorithm is applied to multi-UAV cooperative timing coupling task allocation, some of its own shortcomings lead to low quality of the global optimal particle in the algorithm, and the effect of timing coupling task allocation needs to be improved
First of all, in the gravitational search algorithm, only the current position information plays a role in the iterative update process, that is, the algorithm is an algorithm that lacks memory, which leads to no information exchange between the upper and lower generations of the population, and it is easy to fall into premature convergence
On the other hand, due to the high particle speed in the gravitational search algorithm, all of them move towards the particles with large mass, and the convergence is very fast, so the diversity of the population decreases rapidly, that is, the diversity is lost rapidly, and the diversity of non-dominated solutions cannot be guaranteed. and distribution

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  • Multi-unmanned aerial vehicle cooperation sequential coupling task distribution method of mixing gravitation search algorithm
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  • Multi-unmanned aerial vehicle cooperation sequential coupling task distribution method of mixing gravitation search algorithm

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[0115] The present invention will be further described below in conjunction with the accompanying drawings and embodiments.

[0116] The technical problem to be solved by the present invention is to provide a multi-UAV cooperative timing coupling task assignment problem based on the improved gravitational search algorithm, which can effectively avoid the multi-objective optimization from falling into local extremum, and significantly improve the application of the gravitational search algorithm to multiple unmanned vehicles. Convergence, diversity and distribution of non-dominated solutions in machine-cooperative time-sequence coupled task assignment domain.

[0117] The present invention provides a design method, which formulates mission planning for multiple UAVs according to acquired intelligence information, mission requirements, terrain, meteorological environment and other factors, that is, pre-planning. At the same time, based on the background of multi-UAV cooperative ...

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Abstract

The present invention provides a multi-unmanned aerial vehicle cooperation sequential coupling task distribution method of a mixing gravitation search algorithm, and relates to the unmanned aerial vehicle cooperation task distribution field. The method comprises: a multi-unmanned aerial vehicle cooperation task distribution model is constructed in the time coupling constraint, a fitness function and a task constraint are obtained, in the gravitation search algorithm based on genetic operators, the individual discretization coding and the population are initialized, the individual is decoded, and the fitness function is employed to calculate the fitness and perform individual update. Because the genetic operators are added in the gravitation search algorithm, the multi-unmanned aerial vehicle cooperation sequential coupling task distribution method of the mixing gravitation search algorithm has good general applicability, the number of times of long-term simulation tests and data statistics constructs a more improved database to allow the model to be more improved; and compared to the discrete particle swarm algorithm, the mixing gravitation search algorithm can be rapidly converged, the searching optimization result is optimal, the iteration process is brief, and the convergence speed is fast.

Description

technical field [0001] The invention relates to the field of unmanned aerial vehicle (UAV) collaborative task assignment, in particular to a multi-unmanned aerial vehicle task assignment method under time coupling constraints. Background technique [0002] Multi-UAV cooperative timing coupling task assignment plays a very important role in scientific research and engineering applications. The traditional gravitational search algorithm has outstanding global optimization ability in solving such problems, but also has many defects, such as easy to fall into local optimum, and the quality of the global optimal particle is low. The essence of the Gravitation Search Algorithm (GSA) is to simulate the gravitational phenomenon in nature and evolve it into a process of randomly searching for the optimal solution. [0003] Due to the calculation and search of global optimal particles (selection of guided particles) in multi-UAV cooperative timing coupling task assignment, it has an ...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G05D1/12
CPCG05D1/12
Inventor 张耀中李飞龙胡波张建东史国庆谢松岩
Owner NORTHWESTERN POLYTECHNICAL UNIV
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