location: Current position: Home >> Scientific Research >> Paper Publications

基于全局优化改进混沌粒子群遗传算法的物料平衡数据校正

Hits:

Date of Publication:2022-10-10

Journal:化工进展

Issue:9

Page Number:2663-2669

ISSN No.:1000-6613

Abstract:The advantages of genetic algorithm(GA),the particle swarm optimization(PSO)and chaotic motion characteristics are combined in this paper. The chaotic particle swarm genetic algorithm (DCPSO-GA)joined with the chaos perturbing is put forward,and the global optimization performance of the hybrid algorithm are analyzed by 5 high dimensional nonlinear test function. The stagnation phenomenon which appears in the optimal search is solved by DCPSO-GA. The search space of the global optimization is expanded and the diversity of the particle is enriched,while the function gradient information is not required. The global optimal solution can be found by DCPSO-GA for the 5 test function in this paper,and its convergence rate is very fast,greatly reducing the amount of computation. Moreover,it can be known that when the total number of target function calls is close to or less than other related algorithms,the improved algorithm has a great improvement in the calculation accuracy and convergence speed. The DCPSO-GA algorithm is applied to heavy oil cracking parameter estimation and prediction. It can be shown in the test results that the parameter estimation and prediction accuracy can be improved,the error can be reduced,the global optimal solution can be effectively found,the convergence speed can be improved and the amount of calculation can be greatly reduced.

Note:新增回溯数据

Pre One:基于“1134”模式的大学生创新创业训练计划管理制度探索与实践

Next One:A comprehensive method of ionic liquid screening and experimental verification for simultaneous separation of multiple sulfides from oil