Multi-objective optimization method based on improved gravitation search algorithm

A gravitational search algorithm and multi-objective optimization technology, applied in the field of multi-objective optimization, can solve the problems of low global optimal particle quality, lack of memory, and inability to guarantee the diversity and distribution of non-dominated solutions.

Inactive Publication Date: 2014-03-19
CHINA UNIV OF PETROLEUM (EAST CHINA)
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Problems solved by technology

[0005] However, when the gravitational search algorithm is applied to multi-objective optimization, some of its own shortcomings lead to low quality of the global optimal particle in the algorithm, and the effect of multi-objective optimization 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 info

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  • Multi-objective optimization method based on improved gravitation search algorithm
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  • Multi-objective optimization method based on improved gravitation search algorithm

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[0043]The performance of the multi-objective optimization method based on the improved gravitational search algorithm proposed by the present invention is verified below through a specific embodiment. The experimental environment is 3.2Ghz, 4G memory, MATLAB7.8 version.

[0044] In this example, refer to Figure 1 to Figure 6 As shown in the figure, a multi-objective optimization method based on the improved gravitational search algorithm specifically includes the following steps:

[0045] 1) Define the multi-objective optimization problem MOP to be solved: the objective function of the problem, the search space dimension n of the whole problem, the upper and lower limits of the space ub, lb, and the number of targets m such as Figure 6 Shown:

[0046] 2) Population initialization: set the number of particles N in the gravitational field, and the maximum number of iterations M; randomly initialize the position X, velocity V, and the upper and lower bounds of the velocity [V...

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Abstract

The invention discloses a multi-objective optimization method based on an improved gravitation search algorithm. According to the algorithm, a memory strategy is introduced into a universal gravitation search algorithm, so that particle swarm information and information of previous generations and next generations of particles are shared, the global search capability and the local search capability of the particles are balanced, and the premature convergence problem is solved. On this basis, a diversity enhancement mechanism is introduced into the algorithm, namely, particle speed and position are controlled each iteration, so that the diversity loss is relieved, the particle diversity is improved, and diversity and distributivity of non-dominated solution sets are enhanced. Therefore, by means of the multi-objective optimization method based on the improved gravitation search algorithm, the phenomenon that multi-objective optimization is caught in a local extremum can be effectively avoided, and convergence, diversity and distributivity of non-dominated solutions are remarkably improved when the gravitation search algorithm is applied to the field of multi-objective optimization.

Description

technical field [0001] The invention relates to a multi-objective optimization method based on an improved gravitational search algorithm. Background technique [0002] Multi-objective optimization problems play a very important role in both scientific research and engineering applications. The essential difference from the single-objective optimization problem is that its solution is not unique, but there is a set of optimal solutions composed of many Pareto optimal solutions, and each element in the set is called Pareto optimal solution or non-dominated untie. [0003] Because in the multi-objective optimization algorithm, the calculation and search of the global optimal particle (selection of guided particles) has an important impact on the convergence and distribution of the solution in the multi-objective optimization, the evolutionary algorithm with outstanding global optimization ability is favored Applied to the field of multi-objective optimization. At present, t...

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Application Information

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IPC IPC(8): G06F19/00G06N3/00
Inventor 孙根云张爱竹王振杰
Owner CHINA UNIV OF PETROLEUM (EAST CHINA)
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