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Research on Particle Swarm Optimization Algorithm Based on Optimal Movement Probability

机译:基于最优运动概率的粒子群优化算法研究

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The particle swarm optimization algorithm to improve the control precision, and has great application value training neural network and fuzzy system control fields etc.The traditional particle swarm algorithm is used for the training of feed forward neural networks,the search efficiency is low, and easy to fall into local convergence. An improved particle swarm optimization algorithm is proposed based on error back propagation gradient descent. Particle swarm optimization for Solving Least Squares Problems to meme group, the particles in the fitness ranking, optimization problem of the overall consideration, the error back propagation gradient descent training BP neural network, particle to update the velocity and position according to their individual optimal and global optimization, make the particles more to the social optimal learning and less to its optimal learning, it can avoid the particles fall into local optimum, by using gradient information can accelerate the PSO local search ability, improve the multi beam particle swarm depth zero less trajectory information search efficiency, the realization of improved particle swarm optimization algorithm. Simulation results show that the algorithm in the initial stage of rapid convergence to the global optimal solution can be near to the global optimal solution and keep close to the trend, the algorithm has faster convergence speed and search performance in the same running time, it can improve the convergence speed of the algorithm, especially the later search efficiency.
机译:粒子群优化算法提高了控制精度,在训练神经网络和模糊系统控制领域等方面具有很大的应用价值。传统的粒子群算法用于前馈神经网络的训练,搜索效率低,容易实现。陷入局部融合。提出了一种基于误差反向传播梯度下降的改进粒子群算法。求解粒子群最小二乘问题的粒子群优化算法,适应度排序中的粒子,整体考虑的优化问题,误差反向传播梯度下降训练BP神经网络,粒子根据其各自的最优值更新速度和位置,全局最优化,使粒子更多地处于社会最优学习而较少地达到其最优学习,可以避免粒子陷入局部最优,通过使用梯度信息可以加速PSO局部搜索能力,提高多波束粒子群深度为零轨迹信息搜索效率高,实现了改进的粒子群优化算法。仿真结果表明,该算法在快速收敛到全局最优解的初始阶段可以接近全局最优解并保持接近趋势,该算法在相同运行时间下具有更快的收敛速度和搜索性能,因此可以提高了算法的收敛速度,特别是后期的搜索效率。

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