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引用次数: 39
摘要
本文提出了一种用于参数估计的混合算法-基于种群的随机粒子群优化器来识别搜索空间中有希望的区域,这些区域由Levenburg-Marquardt优化器进一步局部探索。该方法能够对6个基准问题找到全局最优解。它对定义粒子间信息传递的群体拓扑敏感;然而,对于具有大量最优解的问题,星型拓扑结构更适合寻找最优解的假设(Kennedy et al., 2001)并未得到本研究的支持。我们还可以看到,在没有局部优化器的情况下,粒子群本身并不有效。该方法还在一个相同的催化反应器模型上进行了验证。
A hybrid swarm optimizer for efficient parameter estimation
This paper proposes a hybrid algorithm for parameter estimation - a population-based, stochastic, particle swarm optimizer to identify promising regions of search space that are further locally explored by a Levenburg-Marquardt optimizer. This hybrid method is able to find global optimum for six benchmark problems. It is sensitive to the swarm topology which defines information transfer between particles; however, the hypothesis (Kennedy et al., 2001) that a star topology is better for finding the optimum for problems with large number of optima is not supported by this study. It is also seen that in the absence of the local optimizer, particle swarm alone is not as effective. The proposed method is also demonstrated on an identical catalytic reactor model.