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首页> 外文期刊>International journal of computational intelligence systems >An Optimization Algorithm Based on Binary Difference and Gravitational Evolution
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An Optimization Algorithm Based on Binary Difference and Gravitational Evolution

机译:基于二元差分和引力演化的优化算法

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摘要

Universal gravitation is a natural phenomenon. Inspired by Newton's universal gravitation model and based on binary differences strategy, we propose an algorithm for global optimization problems, which is called the binary difference gravitational evolution (BDGE) algorithm. BDGE is a population-based algorithm, and the population is composed of particles. Each particle is treated as a virtual object with two attributes of position and quality. Some of the best objects in the population compose the reference-group and the rest objects compose the floating-group. The BDGE algorithm could find the global optimum solutions through two critical operations: the self-update of reference-group and the interactive-update process between the reference-group and floating-group utilizing the gravitational evolution method. The parameters of BDGE are set by a trial-and-error process and the BDGE is proved that it can converge to the global optimal solution with probability 1. Benchmark functions are used to evaluate the performance of BDGE and to compare it with classic Differential Evolution. The simulation results illustrate the encouraging performance of the BDGE algorithm with regards to computing speed and accuracy.
机译:万有引力是自然现象。在牛顿万有引力模型的启发下,基于二元差分策略,我们提出了一种针对全局优化问题的算法,称为二元差分引力演化算法(BDGE)。 BDGE是基于种群的算法,种群由粒子组成。每个粒子都被视为具有位置和质量两个属性的虚拟对象。总体中一些最好的对象组成了参考组,其余的对象组成了浮动组。 BDGE算法可以通过两个关键操作找到全局最优解:参考组的自我更新以及利用引力演化方法进行的参考组与浮动组之间的交互更新过程。通过反复试验来设置BDGE的参数,并证明BDGE可以以概率1收敛到全局最优解。使用基准函数评估BDGE的性能并将其与经典的差分演化进行比较。 。仿真结果说明了BDGE算法在计算速度和准确性方面令人鼓舞的性能。

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