首页 | 本学科首页   官方微博 | 高级检索  
相似文献
 共查询到20条相似文献,搜索用时 49 毫秒
1.
采用正交小波网络的非线性系统辨识方法   总被引:10,自引:0,他引:10  
基于多分辨分析的递阶思想,采用正交小波网络研究了输入样本空间分布非均匀时非线性系统的辨识问题,重点讨论了样本非均匀时网络系的设计问题,并给出了基于该网络系的在线递阶辨识算法,最后利用正交小波网络分别对非线性静态和动态系统进行了仿真辨识。  相似文献   

2.
In this paper, a delay independent adaptive control strategy is presented for a class of uncertain, delayed nonlinear system subjected to actuator saturation. In proposed control scheme wavelet networks are used for approximation of unknown system dynamics as well as a wavelet based compensator is designed to deal with actuator saturation. Delayed wavelet networks are used for identification of unknown system dynamics having state delayed terms, thereby the approximation capabilities of delayed wavelet network are utilized. Adaptation laws are developed for the online tuning of wavelet parameters. Adaptation singularity problem is solved by employing a switching scheme. The stability of closed loop system and ultimate upper boundedness all closed loop signals is proved by constructing a Lyapunov–Krasovskii functional.  相似文献   

3.
基于小波逼近的非线性系统鲁棒迭代学习控制   总被引:3,自引:0,他引:3  
刘山  吴铁军 《自动化学报》2004,30(2):270-276
针对存在扰动的未知非线性系统,利用小波逼近将系统参数化,结合变结构控制技术,提出了一种鲁棒迭代学习控制算法.该算法采用迭代学习的方式修正小波逼近的系数,利用具有死区的滑模变结构技术保证算法的鲁棒收敛性.收敛性分析表明,每次迭代学习都将减小所得到的逼近系数与最佳系数的差异.因此,期望轨迹变化后,该算法针对以前轨迹的学习结果仍然可以起作用,部分克服了传统迭代学习控制的学习结果仅对某一特定轨迹有效的缺点.  相似文献   

4.
The behavior of a multivariable predictive control scheme based on neural networks applied to a model of a nonlinear multivariable real process, consisting of a pressurized tank is investigated in this paper. The neural scheme consists of three neural networks; the first is meant for the identification of plant parameters (identifier), the second one is for the prediction of future control errors (predictor) and the third one, based on the two previous, compute the control input to be applied to the plant (controller). The weights of the neural networks are updated on-line, using standard and dynamic backpropagation. The model of the nonlinear process is driven to an operation point and it is then controlled with the proposed neural control scheme, analyzing the maximum range over the neural control works properly.  相似文献   

5.
动态非线性连续时间系统的小波神经网络辨识   总被引:3,自引:0,他引:3  
将小波神经网络应用于动态非线性连续时间系统的辨识, 同时为了使神经网络的训练达到全局最优和加速小波神经网络训练的收敛速度, 提出了信赖域算法, 并研究了信赖域算法的收敛性. 随后进行了算例仿真, 证明了所提辨识方法的有效性.  相似文献   

6.
This study presents a nonlinear systems and function learning by using wavelet network. Wavelet networks are as neural network for training and structural approach. But, training algorithms of wavelet networks is required a smaller number of iterations when the compared with neural networks. Gaussian-based mother wavelet function is used as an activation function. Wavelet networks have three main parameters; dilation, translation, and connection parameters (weights). Initial values of these parameters are randomly selected. They are optimized during training (learning) phase. Because of random selection of all initial values, it may not be suitable for process modeling. Because wavelet functions are rapidly vanishing functions. For this reason heuristic procedure has been used. In this study serial-parallel identification model has been applied to system modeling. This structure does not utilize feedback. Real system outputs have been exercised for prediction of the future system outputs. So that stability and approximation of the network is guaranteed. Gradient methods have been applied for parameters updating with momentum term. Quadratic cost function is used for error minimization. Three example problems have been examined in the simulation. They are static nonlinear functions and discrete dynamic nonlinear system.  相似文献   

7.
戴琼海  张涛 《信息与控制》1997,26(5):353-359
研究了一类基于动态神经网络的未知非线性多变量系统的鲁棒辨识问题,用Lyapunov稳定性理论获得了具有保护策略的鲁棒调权律,从理论上证明了被辨识的系统是鲁榛 ,辨识误差按建模误差和未建模动态收敛到一个稳定区域,该策略的特点是不需要离线学习又不需要对象的状态完全可测,仿真结果验证了提出的动态网鲁棒辨识策略的有效性。  相似文献   

8.
A new class of wavelet networks for nonlinear system identification   总被引:14,自引:0,他引:14  
A new class of wavelet networks (WNs) is proposed for nonlinear system identification. In the new networks, the model structure for a high-dimensional system is chosen to be a superimposition of a number of functions with fewer variables. By expanding each function using truncated wavelet decompositions, the multivariate nonlinear networks can be converted into linear-in-the-parameter regressions, which can be solved using least-squares type methods. An efficient model term selection approach based upon a forward orthogonal least squares (OLS) algorithm and the error reduction ratio (ERR) is applied to solve the linear-in-the-parameters problem in the present study. The main advantage of the new WN is that it exploits the attractive features of multiscale wavelet decompositions and the capability of traditional neural networks. By adopting the analysis of variance (ANOVA) expansion, WNs can now handle nonlinear identification problems in high dimensions.  相似文献   

9.
基于神经网络非线性系统辨识和控制的研究   总被引:12,自引:0,他引:12  
本文提出了由静态的前馈网络和稳定的滤波器构成的非线性系统的辨识模型,在神经网络固有的逼近误差存在的情况下,从理论上讨论了神经网络应用于辨识控制过程中系统的稳定性问题,最后研究了在非线性系统的轨迹跟踪过程中增加滑动控制来偿神经网络的逼近误差,从而提高系统跟踪性能。  相似文献   

10.
黄勇  王书宁  戴建设 《信息与控制》1998,27(6):457-463,468
利用小波逼近的软阈(Soft-Thresholding)方法,研究了离散非线性系统的Worst-Case辨识问题.证明了该算法在Worst-Case误差下的拟最优性和光滑性;估计了该算法的Worst-Case误差:给出了存在鲁棒收敛的辨识算法的充要条件;最后,证明了小波网逼近算法是鲁棒收敛的.  相似文献   

11.
Since wavelet transform uses the multi-scale (or multi-resolution) techniques for time series, wavelet transform is suitable for modeling complex signals. Haar wavelet transform is the most commonly used and the simplest one. The Haar wavelet neural network (HWNN) applies the Harr wavelet transform as active functions. It is easy for HWNN to model a nonlinear system at multiple time scales and sudden transitions. In this paper, two types of HWNN, feedforward and recurrent wavelet neural networks, are used to model discrete-time nonlinear systems, which are in the forms of the NARMAX model and state-space model. We first propose an optimal method to determine the structure of HWNN. Then two stable learning algorithms are given for the shifting and broadening coefficients of the wavelet functions. The stability of the identification procedures is proven.  相似文献   

12.
基于神经网络的一类非线性系统自适应跟踪控制   总被引:1,自引:1,他引:0  
提出一种非线性系统的自适应神经跟踪控制方案。通过利用RBF神经网络对未知非线性系统建模,并用一个滑模控制项消除网络建模误差和外部干扰的影响,从而能够保证闭环系统的全局稳定性和输出跟踪误差渐近收敛于零。  相似文献   

13.
This paper proposes a wavelet-based cerebellar model arithmetic controller neural network (called WCMAC) and develops an adaptive supervisory WCMAC control (SWC) scheme for nonlinear uncertain systems. The WCMAC is modified from the traditional CMAC for obtaining high approximation accuracy and convergent rate using the advantages of wavelet functions and fuzzy TSK-model. For nonlinear uncertain systems, a PD-type WCMAC controller with filter is constructed to approximate an ideal control signal. The corresponding adaptive supervisory controller is used to recover the residual of approximation error. Finally, the adaptive SWC scheme is applied to chaotic system identification and control including Mackey–Glass time-series prediction, control of inverted pendulum system, and control of Chua circuit system. These demonstrate the effectiveness of our adaptive SWC approach for nonlinear uncertain systems.  相似文献   

14.
In this paper, identification problem of a general class of nonlinear dynamic systems is fully considered using adaptive wavelet differential neural networks. In these networks, the activation functions are described by wavelets where parameters are tuned adaptively. The stability analysis of such identifiers is performed by means of Lyapunov analysis. Asymptotic convergence of the error and boundedness of the parameters are proven. To validate the approach, the neuro-identifier is applied to both the Van der pole oscillator and the twin-tanks plant. The simulation results show that the proposed neuro-identifier outperforms the sigmoid based differential neural network identifier.  相似文献   

15.
用神经网络进行连续时间非线性系统建模的研究   总被引:1,自引:0,他引:1  
在用神经网络进行系统建模时,建模误差的存在是难免的。为了减小这种误差,本文对连接时间非线性系统提出了一种新的神经网络辨识模型,它是由带有输入修正的神经网络和稳定滤波器组合而成。文中给出了权值的学习算法,即权值是根据辨识误差的投影算法来改变,证明了在一定条件下辨识误差的收敛性。  相似文献   

16.
This paper presents identification and control designs using neural networks for a nonlinear two-robot multiinput multioutput (MIMO) system. The proposed neuro-controller is a combination of linear controllers and a neural-network controller, and is trained by an indirect neuro-control scheme. The proposed neuro-controller is implemented and tested on an IBM PC-based two 2-bar systems holding an object, and is applicable to many d.c.-motor-driven precision nonlinear two-robot MIMO systems. The algorithm and experimental results are described. The experimental results are shown to be superior to those of conventional control.  相似文献   

17.
针对一类不确定非线性系统的跟踪控制问题,在考虑建模误差、参数不确定和外部干扰情况下,以良好的跟踪性能及强鲁棒性为目标,提出基于自组织小脑模型(self-organizing wavelet cerebellar model articulation controller,SOWCMAC)的鲁棒自适应积分末端(terminal)滑模控制策略.首先,将小脑模型、自组织神经网络和小波函数各自优势相结合,给出一种SOWCMAC,以保证干扰估计方法具有快速学习能力和更好的泛化能力.其次,设计两种改进的terminal滑模面构造方法,并分别给出各自的收敛时间.然后,基于SOWCMAC和改进的积分terminal滑模面,给出不确定非线性系统鲁棒自适应非奇异terminal控制器的设计过程,其中通过构造自适应鲁棒项抑制干扰估计误差对系统跟踪性能的影响,并利用Lyapunov理论证明闭环系统的稳定性.最后,将该方法应用于近空间飞行器姿态的控制仿真实验,结果表明所提出方法有效性.  相似文献   

18.
This paper discusses memory neuron networks as models for identification and adaptive control of nonlinear dynamical systems. These are a class of recurrent networks obtained by adding trainable temporal elements to feedforward networks that makes the output history-sensitive. By virtue of this capability, these networks can identify dynamical systems without having to be explicitly fed with past inputs and outputs. Thus, they can identify systems whose order is unknown or systems with unknown delay. It is argued that for satisfactory modeling of dynamical systems, neural networks should be endowed with such internal memory. The paper presents a preliminary analysis of the learning algorithm, providing theoretical justification for the identification method. Methods for adaptive control of nonlinear systems using these networks are presented. Through extensive simulations, these models are shown to be effective both for identification and model reference adaptive control of nonlinear systems.  相似文献   

19.
This paper presents an approximation-based nonlinear disturbance observer (NDO) methodology for adaptive tracking of uncertain pure-feedback nonlinear systems with unmatched external disturbances. Compared with existing control results using NDO for nonlinear systems in lower-triangular form, the major contribution of this study is to develop an NDO-based control framework in the presence of non-affine nonlinearities and disturbances unmatched in the control input. An approximation-based NDO scheme is designed to attenuate the effect of compounded disturbance terms consisting of external disturbances, approximation errors and control coefficient nonlinearities. The function approximation technique using neural networks is employed to estimate the unknown nonlinearities derived from the recursive design procedure. Based on the designed NDO scheme, an adaptive dynamic surface control system is constructed to ensure that all signals of the closed-loop system are semi-globally uniformly ultimately bounded and the tracking error converges to a neighbourhood of the origin. Simulation examples including a mechanical system are provided to show the effectiveness of the proposed theoretical result.  相似文献   

20.
基于小波网络的非线性系统建模与控制   总被引:6,自引:2,他引:4  
提出了种基于小波网络的非线性系统的建模和控制方法。使用小波网络对未知控制系统建立一步预测模型,基于Dsavidon最小二乘法得到自适应控制律。小波网络的权值由广义递推最小二乘法来学习,尺度参数和平移参数通过稳定的Davidon最小二乘法来获得。仿真结果表明了该方法的有效性。  相似文献   

设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号