Neural network compensation of gear backlash hysteresis in position-controlled mechanisms

D.R. Seidl, S. Lam, J. A. Putnam, R. Lorenz
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引用次数: 94

Abstract

It is demonstrated that artificial neural networks can be used to identify and compensate for hysteresis caused by gear backlash in precision position-controlled mechanisms. Physical analysis of the system nonlinearities and optimal control are used to design the neural network structure. Network sizing and initializing problems are thus eliminated. This physically meaningful, modular approach facilitates the integration of this neural network with existing controllers; thus, initial performance matches that of existing control approaches and then is improved by refining the parameter estimates via further learning. The neural network operates by recognizing backlash and switching to a control which moves smoothly through the backlash when a torque transmitted to the output shaft must be reversed.<>
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位置控制机构齿轮间隙滞后的神经网络补偿
结果表明,人工神经网络可以用于精确位置控制机构中齿轮间隙引起的滞回辨识和补偿。利用系统的物理分析、非线性和最优控制等方法设计神经网络结构。这样就消除了网络规模和初始化问题。这种物理上有意义的模块化方法促进了神经网络与现有控制器的集成;因此,初始性能与现有控制方法相匹配,然后通过进一步学习来改进参数估计。当传递到输出轴的扭矩必须反转时,神经网络通过识别间隙并切换到平滑通过间隙的控制来工作。
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