Online identification of a mechatronic system with structured recurrent neural networks

C. Hintz, B. Angerer, D. Schroder
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引用次数: 5

Abstract

In this paper, the authors present an online identification method for mechatronic systems consisting of a linear part with unknown parameters and a nonlinear system part with unknown static nonlinear characteristics (systems with isolated nonlinearities). A structured recurrent neural network is used to identify the unknown parameters of the known signal flow chart. In this paper, the authors present the successful identification of a typical motion control environment consisting of a driving machine connected by an elastic shaft to the load. The presented identification algorithm uses only the speed of the driving machine for parameter adaption. Besides the detailed steps to develop the structured recurrent network, the authors present simulation results as well as measurement results. The identified linear parameters are the inertias of the driving machine and the load, the spring and damping constant of the elastic shaft. Identification results for the nonlinear friction characteristics are also derived. The novelty of this approach is the simultaneous identification of the parameters of the linear part and the nonlinearity. Due to the use of this approach physical interpretation of the identification results is possible. It is possible to use the identification results in order to optimize nonlinear observers and state space controllers.
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基于结构化递归神经网络的机电系统在线辨识
本文提出了由参数未知的线性部分和静态非线性特性未知的非线性部分组成的机电系统(具有孤立非线性的系统)的在线辨识方法。采用结构化递归神经网络对已知信号流程图中的未知参数进行识别。在本文中,作者成功地识别了一个典型的运动控制环境,该环境由一个弹性轴与负载连接的驱动机构组成。所提出的辨识算法仅使用驱动机器的速度进行参数自适应。除了详细介绍结构化循环网络的开发步骤外,作者还给出了仿真结果和测量结果。所识别的线性参数为驱动机构的惯量和载荷、弹性轴的弹簧常数和阻尼常数。给出了非线性摩擦特性的辨识结果。该方法的新颖之处在于可以同时识别线性部分和非线性部分的参数。由于使用这种方法,鉴定结果的物理解释是可能的。利用辨识结果可以优化非线性观测器和状态空间控制器。
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