亚群洗牌动态粒子群优化及其在丙烯腈产率软测量中的应用

Hui Wang
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引用次数: 0

摘要

本文提出了粒子群优化的一种变体,称为子种群洗牌动态粒子群优化(SSDPSO)。在SSDPSO中,粒子根据适应度划分为不同的亚种群,以保持种群效率的多样性。在经过一定的迭代进化后,这些亚种群将被洗牌在一起成为一个新的种群。此外,亚种群进化的迭代将是动态变化的。当亚种群在某些迭代中停滞不前时,一些粒子将被重新随机化。在洗牌后,位置较差的部分会被位置较好的部分所取代。通过一些基准函数考察了SSDPSO的性能,并与其他版本的PSO进行了比较。结果表明,SSDPSO可以得到更好的解,收敛速度更快。然后应用SSDPSO训练人工神经网络,构建丙烯腈产率软传感器。结果表明,利用SSDPSONN构建的软测量模型是可行和有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Particle Swarm Optimization with Subpopulations Shuffled Dynamic and its application in soft-sensor of acrylonitrile yield
This paper presents a variant of Particle Swarm Optimization, called Subpopulations Shuffled Dynamic of Particle Swarm Optimization (SSDPSO). In SSDPSO, particles are partitioned into different subpopulations by fitness to maintain diversity of population efficiency. The subpopulations will be shuffled together to be a new population after they evolved for certain iterations. Furthermore, the iterations which subpopulations evolve will be dynamic changing. Some of particles will be re-randomized when subpopulations stagnate for certain iterations. A portion of shuffled population with poor position will be substituted by other one with better position. The performance of SSDPSO is investigated by some benchmark functions and compared with other version PSO. The results show that SSDPSO can achieve better solutions and get faster convergence. SSDPSO is then applied to train artificial neural networks to construct a soft-sensor of acrylonitrile yield. The results show that the soft-sensing model constructed by SSDPSONN is feasible and effective.
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