自适应模拟退火粒子群优化催化剂保护区域参数辨识

Li Shu-ting, Gao Xian-wen
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引用次数: 2

摘要

针对丙烯氧化过程中催化剂保护区域参数辨识问题,提出了一种基于自适应模拟退火粒子群优化(ASAPSO)算法的催化剂保护区域参数辨识方法。在模拟退火粒子群优化算法中嵌入同步变化学习因子和线性递减惯性权值。同步变化学习因素增强了信息交换能力。整体搜索能力和局部改进能力通过线性递减的惯性权来平衡。该算法具有稳定性好、信息交换能力强、收敛速度快等优点。同时,该算法还解决了局部最小阀的缺点。仿真结果表明了该算法的可行性和准确性。确定了丙烯氧化反应在6.35% ~ 11.25%范围内的催化剂保护区域。最后,提出的ASAPSO算法是高效的。
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Adaptive simulated annealing particle swarm optimization for catalyst protected region parameter identification
Aiming at the parameter identification problem of catalyst protected region in the process of propylene oxidation, a novel parameter identification method has been proposed for catalyst protected region using an adaptive simulated annealing particle swarm optimization (ASAPSO) algorithm. Synchronous change learning factors and linear decrease progressively inertia weights are embedded in the simulated annealing particle swarm optimization algorithm. The information exchange capacity is enhanced by the synchronous change learning factors. The overall search ability and local improved ability are balanced by the linear decrease progressively inertia weights. The proposed algorithm has some advantages in the aspect of good stability, strong information exchange capacity and fast convergence. Meanwhile, the shortcoming of local minimum valve is solved by the proposed algorithm. Simulation results show that the algorithm is feasible and accurate. The catalyst protected region of propylene oxidation from 6.35% to 11.25% is determined. Finally, the proposed ASAPSO algorithm is efficient.
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