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Chaotic hopfield neural network swarm optimization and its application

机译:混沌Hopfield神经网络群优化及其应用。

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A new neural network based optimization algorithm is proposed. The presented model is a discrete-time, continuous-state Hopfield neural network and the states of the model are updated synchronously. The proposed algorithm combines the advantages of traditional PSO, chaos and Hopfield neural networks: particles learn from their own experience and the experiences of surrounding particles, their search behavior is ergodic, and convergence of the swarm is guaranteed. The effectiveness of the proposed approach is demonstrated using simulations and typical optimization problems.
机译:提出了一种新的基于神经网络的优化算法。提出的模型是离散时间,连续状态Hopfield神经网络,并且模型的状态被同步更新。提出的算法结合了传统粒子群算法,混沌算法和Hopfield神经网络的优点:粒子从自身的经验和周围粒子的经验中学习,它们的搜索行为是遍历遍历的,并且保证了群体的收敛性。通过仿真和典型的优化问题证明了该方法的有效性。

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