Description: 用RBF神经网络和模糊控制方法控制二级倒立摆源码-Using RBF neural networks and fuzzy control method to control a double inverted pendulum source Platform: |
Size: 52224 |
Author:王启源 |
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Description: 一级倒立摆的模糊控制与神经网络控制。Simulink仿真环境。使用说明:在使用模糊控制时先把*.fis导入workspace,否则无法运行。-An inverted pendulum fuzzy control and neural network control. Simulink simulation environment. Usage: in the use of fuzzy control to import*. fis first workspace, otherwise it is impossible to run. Platform: |
Size: 20480 |
Author:时光 |
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Description: 为了提高三级倒立摆系统控制的响应速度和稳定性,在设计Mamdani 型模糊推理规则控制器控制倒立摆系统稳定的基础上,
设计了一种更有效率的基于Sugeno 型模糊推理规则的模糊神经网络控制器。该控制器使用BP 神经网络和最小二乘法的混
合算法进行参数训练,能够准确归纳输入输出量的模糊隶属度函数和模糊逻辑规则。通过与Mamdani 型控制器的仿真对比,
表明该Sugeno 型模糊神经网络控制器对三级倒立摆系统的控制具有良好的稳定性和快速性,以及较高的控制精度。-In order to improve the three-level control of inverted pendulum system response speed and stability, in the design of Mamdani-type fuzzy inference rules of the system controller to control the stability of inverted pendulum on the basis of a more efficient design based on Sugeno-type fuzzy inference rules of fuzzy neural network controller. The controller is the use of BP neural network and hybrid least squares training algorithm parameters can be accurately summed up the amount of input and output fuzzy membership function and fuzzy logic rules. Mamdani-type controller with a simulation comparison shows that the Sugeno-type fuzzy neural network controller for the three-tier control of inverted pendulum system with good stability and fast, as well as a higher control precision. Platform: |
Size: 551936 |
Author:月到风来AA |
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Description: 倒立摆的仿真程序,作为模糊神经网络的入门程序很不错。-Inverted pendulum simulink simulation program as a fuzzy neural network entry procedure very well Platform: |
Size: 7168 |
Author:artemis |
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Description: :针对能够采用仿射非线性表示的含有未建模动态的SISO非线性系统,讨论了一种基于神经网络的自适应
控制方法.该方法对受控对象的已知部分.采用反馈线性化方法设计控制器,用神经网络在线补偿未建模动态及
外部干扰等引起的误差,从而实现自适应控制。对具有未建模动态的双车倒立摆设计了输出反馈自适应控制系
统.仿真表明该方法是有效的。 -A discussion is devoted to design neural network adaptive control scheme of the SISO (single
input and single output)nonlinear system with unmodeled dynamics.According to the known part of
the plant.feedback Iinearization method iS used to design the controller.The error resulted from the un~
modeled dynamics and the external disturbance is compensated by online neural network.The neural
networks are designed as a five layer fuzzy neural network and its construction is optimized by genetic al—
gorithms.It has been used to approtimate the nonlinear function of system and to compesate the error of
unmodeled dynamic.The design of neural network adaptive controller has better performances.The
method is verified by the digital simulation of tWO—·cart with inverted·-pendulum system and unmodeled
dynamics. Platform: |
Size: 163840 |
Author: |
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