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A Lyapunov-Based Extension to Particle Swarm Dynamics for Continuous Function Optimization

机译:基于李雅普诺夫的粒子群动力学扩展用于连续函数优化

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摘要

The paper proposes three alternative extensions to the classical global-best particle swarm optimization dynamics, and compares their relative performance with the standard particle swarm algorithm. The first extension, which readily follows from the well-known Lyapunov's stability theorem, provides a mathematical basis of the particle dynamics with a guaranteed convergence at an optimum. The inclusion of local and global attractors to this dynamics leads to faster convergence speed and better accuracy than the classical one. The second extension augments the velocity adaptation equation by a negative randomly weighted positional term of individual particle, while the third extension considers the negative positional term in place of the inertial term. Computer simulations further reveal that the last two extensions outperform both the classical and the first extension in terms of convergence speed and accuracy.
机译:本文提出了对经典全局最佳粒子群优化动力学的三种替代扩展,并将它们的相对性能与标准粒子群算法进行了比较。第一次扩展很容易遵循著名的Lyapunov稳定性定理,它为粒子动力学提供了数学基础,并保证了最优收敛。与经典方法相比,将本地和全局吸引器包含在这种动力学中可以加快收敛速度​​并提高准确性。第二扩展用单个粒子的负随机加权位置项来扩充速度自适应方程,而第三扩展则用负位置项代替惯性项。计算机仿真进一步表明,在收敛速度和准确性方面,最后两个扩展优于传统扩展和第一个扩展。

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