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Reference model supervisory loop for neural network based adaptive control of a flexible joint with hard nonlinearities

机译:基于神经网络的基于神经网络的基于柔性关节的基于神经网络的参考模型监控环

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We propose an artificial neural network based adaptive controller for a positioning system with a flexible transmission element, taking into account hard nonlinearities in the motor and load models. A feedforward compensation module (ANN/sub FF/) learns the approximate inverse dynamics of the system and a feedback controller (ANN/sub FBK/) compensates for residual errors. The error at the output of a reference model, which defines the desired error dynamics, and the output of ANN/sub FBK/ are respectively used as the error signal for adaptation of ANN/sub FBK/ and ANN/sub FF/. The contribution of the paper is to propose a rule based supervisor for online adaptation of the parameters of the reference model to maintain stability of the system for large variations of load parameters. The controller is suitable for DSP and VLSI implementation and can be used to improve static and dynamic performance of electromechanical systems.
机译:我们提出了一种用于具有柔性传动元件的定位系统的基于人工神经网络的自适应控制器,考虑到电动机和负载模型中的硬度非线性。前馈补偿模块(ANN / SUB FF /)了解系统的近似逆动力学,反馈控制器(ANN / SUB FBK /)补偿残余错误。参考模型输出的误差定义所需的误差动态,以及ANN / SUB FBK /的输出分别用作ANN / SUB CBK / SUB FF / ANN / SUB / SUB / SUB / SUB / SUB / SUB FF /的误差信号。纸张的贡献是提出基于规则的主管,用于在线适应参考模型的参数,以保持系统的稳定性,以实现大量负载参数的变化。控制器适用于DSP和VLSI实现,可用于提高机电系统的静态和动态性能。

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