一种改进的最近邻最差粒子粒子群算法及其在汽油端点软测量中的应用

Hui Wang
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引用次数: 0

摘要

提出了一种基于最优邻居和最坏粒子的粒子群优化算法。在BNWPPSO中,一些粒子将被构建为每个粒子的新邻居,其中最好的一个将对粒子的行为产生影响。为了更好地平衡局部搜索能力和全局搜索能力,对位置更新公式进行了改进。为了防止粒子群算法的过早收敛,将每一代的最差粒子重新随机化。通过几个基准问题对BNWPPSO进行了研究,结果表明BNWPPSO的性能优于传统的粒子群算法。在此基础上,应用BNWPPSO训练人工神经网络,构建了原油蒸馏装置汽油终点软传感器。结果表明,BNWPPSO构建的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。
An improved particle swarm optimization using best neighbor with worst particle and its application in soft-sensor of gasoline endpoint
This paper proposes out a variation of particle swarm optimization with best neighbor and worst particle (BNWPPSO). In BNWPPSO, some particles will be constructed as new neighbors of each particle and the best one of them will have influence on the behavior of the particle. The update formula of position is modified also to balance the local search ability and global search ability more efficiency. The worst particle of the swarm will be re-randomized at every generation to prevent premature convergence of PSO. BNWPPSO is investigated by several benchmark problems, the results show that BNWPPSO performances better than traditional PSO. Furthermore, BNWPPSO is applied to train artificial neural network to construct a soft-sensor of gasoline endpoint of crude distillation unit. The results show that the model constructed by BNWPPSO is feasible and effective.
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