首页> 外文会议>第四届国际计算机新科技与教育学术会议(2009 4th International Conference on Computer Science Education)论文集 >Identification and Control of Eltro-Hydraulic Servo System Based on Direct Dynamic Recurrent Fuzzy Neural Network
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Identification and Control of Eltro-Hydraulic Servo System Based on Direct Dynamic Recurrent Fuzzy Neural Network

机译:基于直接动态递归模糊神经网络的电动液压伺服系统辨识与控制

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摘要

For the affine nonlinear system having characteristics of differential relations between states, an adaptive dynamic recurrent fuzzy neural network (ADRFNN) taking only some measurable states as its inputs and describing the system's inner dynamic relation by its feedback matrix was proposed to control the system, adaptive laws of the adjustable parameters and the evaluation errors' bounds of ADRFNN were formulated based on lyapunov stability theory, and stable direct ADRFNN controller (ADRFNNC) with gain adaptive VSC (GAVSC) for the estimation errors by ADRFNN and the load disturbance were synthesized. It can overcome the shortcoming of the structural expansion caused by larger number of inputs in traditional adaptive fuzzy neural networks (TAFNN) taking all states as its inputs. The results of its applications to electro-hydraulic position tracking system (EHPTS) show that it has an advantage over the TAFNN controller (TAFNNC) in steady characteristics of system. On the other hand, the proposed control algorithm can also make the chattering of the system's control effort weaker and the system possess more strong robustness
机译:针对具有状态间微分关系特性的仿射非线性系统,提出了一种仅以一些可测状态为输入并通过反馈矩阵描述系统内部动态关系的自适应动态递归模糊神经网络(ADRFNN),对系统进行控制。基于lyapunov稳定性理论,建立了ADRFNN的可调参数定律和评价误差的界线,并利用增益自适应VSC(GAVSC)的稳定直接ADRFNN控制器(ADRFNNC)对ADRFNN的估计误差和负载扰动进行了合成。它可以克服以所有状态为输入的传统自适应模糊神经网络(TAFNN)中大量输入引起的结构扩展的缺点。其在电液位置跟踪系统(EHPTS)中的应用结果表明,在系统的稳定特性方面,它比TAFNN控制器(TAFNNC)具有优势。另一方面,所提出的控制算法也可以使系统的控制力的抖动更弱,系统具有更强的鲁棒性。

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