Research on the mill feeding system of an elastic variable universe fuzzy control based on particle swarm optimization algorithm

IF 1.3 4区 工程技术 Q4 CHEMISTRY, PHYSICAL
N. Tian, Songwei Huang, Li fang He, Ling pan Du, S. Yang, Bin Huang
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引用次数: 0

Abstract

The grinding process in the concentrator is a part of the largest energy consumption, but also the most likely to cause a waste of resources, so the optimization of the grinding process is a very important link. The traditional fuzzy controller relies solely on the expert knowledge summary to construct control rules, which can cause significant steady-state errors in the model. In order to solve the above problem, this paper proposes an elastic variable universe fuzzy control based on Particle Swarm Optimization (PSO) algorithm. The elastic universe fuzzy control model does not need precise fuzzy rules, but only needs to input the general trend of the rules, and the division of the universe is performed by the contraction-expansion factor. The control performance is directly related to the contraction-expansion factor, so this article also proposes using particle swarm optimization to optimize the scaling factor to achieve the optimal value. Finally, simulation models of traditional fuzzy control and elastic universe fuzzy control of feeding system of mill were built using Python to verify the control effect. Its simulation results show that the time of the reaction of the fuzzy control system in the elastic variable theory universe based on particle swarm optimization was shorter by 34.48% comparing to the traditional one. Elastic variable universe fuzzy control based on particle swarm optimization (PSO) effectively improved the control accuracy of the mill feeding system and improved the response speed of the system to a certain extent.
基于粒子群优化算法的弹性变域模糊控制磨机给料系统研究
磨矿过程是选矿厂中能耗最大的一个环节,也是最容易造成资源浪费的一个环节,因此磨矿过程的优化是一个非常重要的环节。传统的模糊控制器仅仅依靠专家知识的总结来构建控制规则,这可能会导致模型产生明显的稳态误差。为了解决上述问题,本文提出了一种基于粒子群优化算法的弹性变域模糊控制。弹性宇宙模糊控制模型不需要精确的模糊规则,只需要输入规则的一般趋势,并通过收缩-膨胀因子对宇宙进行划分。控制性能与收缩-膨胀因子直接相关,因此本文也提出利用粒子群算法对比例因子进行优化,以达到最优值。最后,利用Python建立了磨机给料系统的传统模糊控制和弹性模糊控制的仿真模型,验证了控制效果。仿真结果表明,基于粒子群优化的模糊控制系统在弹性变量理论域的反应时间比传统模糊控制系统缩短了34.48%。基于粒子群优化(PSO)的弹性变域模糊控制有效地提高了磨机给料系统的控制精度,在一定程度上提高了系统的响应速度。
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来源期刊
Physicochemical Problems of Mineral Processing
Physicochemical Problems of Mineral Processing CHEMISTRY, PHYSICAL-MINING & MINERAL PROCESSING
自引率
6.70%
发文量
99
期刊介绍: Physicochemical Problems of Mineral Processing is an international, open access journal which covers theoretical approaches and their practical applications in all aspects of mineral processing and extractive metallurgy. Criteria for publication in the Physicochemical Problems of Mineral Processing journal are novelty, quality and current interest. Manuscripts which only make routine use of minor extensions to well established methodologies are not appropriate for the journal. Topics of interest Analytical techniques and applied mineralogy Computer applications Comminution, classification and sorting Froth flotation Solid-liquid separation Gravity concentration Magnetic and electric separation Hydro and biohydrometallurgy Extractive metallurgy Recycling and mineral wastes Environmental aspects of mineral processing and other mineral processing related subjects.
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