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永磁交流伺服系统参数自学习模糊控制器设计与实现 被引量:4
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作者 张剑 许镇琳 《电机与控制学报》 EI CSCD 北大核心 2005年第2期175-178,共4页
为进一步改善永磁交流伺服系统的动静态性能,设计了一种基于单神经元的参数自学习模糊控制器,它在控制规则数与二维控制器相当的基础上,可实现三维模糊控制的效果。模糊推理方法基于相平面,直接输入连续量进行推理,计算量小。引入的单... 为进一步改善永磁交流伺服系统的动静态性能,设计了一种基于单神经元的参数自学习模糊控制器,它在控制规则数与二维控制器相当的基础上,可实现三维模糊控制的效果。模糊推理方法基于相平面,直接输入连续量进行推理,计算量小。引入的单神经元采用改进的BP算法来实现比例因子的在线自学习。该控制器结构及算法简单,易于解析实现,具有通用性。将其用于永磁交流伺服系统,实验结果验证其控制性能较PI算法更佳,提高了系统的性能。 展开更多
关键词 永磁同步电机 永磁交流伺服系统 参数自学习模糊控制器 设计 单神经元 模糊推理
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一种新的分布式神经模糊控制器
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作者 余文 李人厚 《计算机工程》 CAS CSCD 北大核心 2002年第5期28-29,共2页
提出了一种分布式神经模糊网络和自学习模糊控制器的构成方法。它是模型的一种扩展,使其能进行模糊推理和构成自学习CMAC的模糊控制器。该方法除具有优点外,还具有以下特点:输入数据通过模糊划分和隶属函数后自动编码,对精度没有限制;... 提出了一种分布式神经模糊网络和自学习模糊控制器的构成方法。它是模型的一种扩展,使其能进行模糊推理和构成自学习CMAC的模糊控制器。该方法除具有优点外,还具有以下特点:输入数据通过模糊划分和隶属函数后自动编码,对精度没有限制;从现场数CMAC据直接获取控制规则,即使对未训练的数据,也能结合插值和泛化两种能力,推理给出合适的输出。学习实例证明了方法的有效性。 展开更多
关键词 分布式神经网络 自学习模糊控制器 模糊推理 模糊控制
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多变量模糊系统理论及应用研究 被引量:3
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作者 秦勇 张锡第 贾利民 《中国铁道科学》 EI CAS CSCD 北大核心 2001年第6期131-134,共4页
Modeling, analysis and control of multivariable fuzzy system, an important direction of intelligent techniques, are to analyze and deal with complex MIMO dynamic systems. A complex multivariable system features nonlin... Modeling, analysis and control of multivariable fuzzy system, an important direction of intelligent techniques, are to analyze and deal with complex MIMO dynamic systems. A complex multivariable system features nonlinearity, uncertainty, multiple variables and couple action. It is difficult or even impossible to effectively deal with this kind of system with the existing conventional system and control theories based on classical logic. The theory of fuzzy sets and fuzzy systems open a new alternative way to modeling, analysis and control of such systems. But most developments are limited during the dealing with SISO systems in recent years. Therefore, the study on multivariable fuzzy system is of significance in respects of theory and application, and becomes one of the focuses on the research of the fuzzy logic techniques. In this dissertation, several conclusions about the multivariable fuzzy system theory have been achieved. The whole thesis includes two parts, and the main contents and conclusions are summarized as follows: In the first part, the theory about modeling, analysis and control of multivariable fuzzy systems is studied, including 1 The study on generalized fuzzy basis function based multivariable fuzzy system model By analyzing the existing modeling methods of multivariable fuzzy systems, enlightened by the fuzzy cell to cell mapping model proposed by L.M.Jia, a new analytical description of the MIMO fuzzy rules generalized fuzzy basis function (GFBF) is put forwards under the deterministic definition of the fuzzy cellization. It cannot only simultaneously the numerical data and linguistic knowledge of the complex systems, but also contains many kinds of fuzzy basis function according to the basic properties of GFBF. Consequently, generalized fuzzy basis function series (GFBFS), an efficient and concise modeling method for MIMO fuzzy systems, is proposed through the reasonable selection for the decision making logic used in the fuzzy inference mechanism, which can be proved to approximate arbitrary nonlinear functions to any degree of accuracy. Based on this model, an identification algorithm utilizing numerical data is provided and its convergence property is detailed studied. Furthermore, in order to improve the computational efficiency of the identification algorithm, a fast technique based on ρ cut equivalent system is put forward. The simulation results about typical system and practical industrial plant demonstrate its effectiveness. 2 The study on analysis of the dynamic properties of the MIMO fuzzy systems By reviewing the existing analyzing method of fuzzy systems, and based on the idea that the dynamics of any complex system is the aggregation of its implicit stable sub dynamics and unstable sub dynamics, system decomposition method is proposed to make the system properties easier to be recognized. Furthermore, the filtering operation is used to reasonable eliminate the less significant factors and make the dominant dynamics emerge. Then, the system behavior can be evaluated directly from the α cut equivalent system structure characterized by the cell to cell mapping. This provides a new approach to analyze the asymptotic response of the complex dynamic system. 3 The study on fuzzy sliding-mode based self learning multivariable fuzzy controller (FSM MFC) After a brief introduction to the state of arts of the researches on multivariable fuzzy controller (MFC), the limitation of indirect MFC based on the controlled system model is summarized. More and more researchers concentrate on the study of direct MFC and the general purposed model free MFC becomes the focus on the researches on fuzzy logic control theory and its application. Based on the method of sliding mode variable structure control (VSC) dealing with SISO and n the order systems, the concept of fuzzy sliding mode (FSM) is defined in the state space, and the performance of the closed loop system is significantly improved through the introduction to another control input. Meantime, by 展开更多
关键词 模糊控制系统 多变量模糊系统 广义模糊基函数 模糊滑模 自学习多变量模糊控制器 工业智能自动化系统
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