基于棉花干燥过程系统的模糊模糊逻辑调节系统的训练神经网络仿真

S. Yunusova
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引用次数: 0

摘要

本文讨论了原棉干燥过程的模糊逻辑调控系统的建模问题。提出了涤棉行业企业技术单元在运行过程中克服不确定性的任务。最后给出了用人工神经网络求解这类问题的一个实例。基于神经网络的数学模型已被开发出来,用于形式化原棉干燥过程,并确定模糊逻辑PID控制器的最佳调谐参数,允许改变干燥滚筒工艺单元的操作模式。提出了一种确定人工神经网络天气权值的方法,使训练次数最小化,提高了管理决策的速度。采用误差反向扩散法训练神经网络权值。考虑到棉花干燥过程的特点,调整参数的变化范围是合理的。将该模型应用于干燥过程的质量指标控制系统中,提高了工艺过程的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SIMULATION OF A TRAINED TRAINED NEURAL NETWORK OF A FUZZY L FUZZY LOGIC REGUL OGIC REGULATION SY TION SYSTEM BASED ON THE CO STEM BASED ON THE COTTON DRYING PROCESS
The article discusses the modeling of a fuzzy-logical system of regulation of the process of drying of raw cotton. The tasks of overcoming uncertainties arising in the process of operation of technological units at the enterprises of the cotton-cleaning industry are presented. An example of solving such a problem by using an artificial neural network is given. Mathematical models based on the neural network have been developed that are used to formalize the process of drying raw cotton and determine the optimal tuned parameters of the fuzzy-logical PID controller, allowing the fate of changing the operating modes of the technological units of the drying drum. A method for determining the number of synoptic weights of artificial neural networks is proposed, which minimizes the number of trainings and increases the speed of management decisions. To train the neural network weights use the reverse spreading error method. The range of variation of the regulator parameter is justified, taking into account the features of the cotton drying process. As a result, the proposed model was used in the control system of the drying process in terms of quality indicators, which led to an increase in the accuracy of the technological process.
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