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Investigation in non-model-based friction estimation and compensation in motion control.

机译:运动控制中基于非模型的摩擦估计和补偿的研究。

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Friction severely limits performance in precise positioning systems. This thesis investigates one possible approach to counter friction related performance losses, friction cancellation. In this method a friction observer is used to estimate friction in real time. The friction estimate is then is used to provide a torque at the input to the system that is equal in magnitude and opposite in phase to machine friction. The majority of friction observers are model-based, i.e., phenomenological or empirical modeling is used to characterize friction behavior. Models are often constructed with specific operating conditions in mind, such as normal load and driving frequency, and do not perform well when conditions change. In addition, many adaptive models assume slowly time varying parameters and require persistent excitation—requirements that often cannot be guaranteed. This thesis investigates non-model-based estimation, an alternative approach to friction estimation. In this method, known rigid body dynamics of a machine and motion measurements are used to extract unknown external forces acting on the system. Three non-model-based approaches to friction estimation are considered. These include the classical Kalman filter, and two more recent methods, the predictive filter and local function estimation. This thesis also fuses model-based and non-model-based methods, leading to the development of two combined friction estimation methods. To compare the performance of model-based, non-model-based, and combined methods, exhaustive comparative studies are performed experimentally by applying friction cancellation during position tracking in a DC motor driven inertia. Comparative studies and robustness studies are also performed through numerical simulation of friction cancellation in a gear driven inertia with flexible gear teeth. The results show that non-model-based and combined friction cancellation have superior performance and excellent robustness compared to model-based methods. Closed loop stability of the DC motor positioning system is proven for the three non-model-based friction cancellation methods considered.
机译:摩擦严重限制了精确定位系统的性能。本文研究了一种解决与摩擦有关的性能损失,消除摩擦的可能方法。在这种方法中,摩擦观察器用于实时估计摩擦。然后,使用摩擦力估计值在系统输入端提供与机械摩擦力大小相等且相位相反的扭矩。大多数摩擦观察者是基于模型的,即,现象学或经验模型用于表征摩擦行为。在构建模型时,通常会考虑到特定的运行条件,例如正常负载和驱动频率,并且在条件发生变化时表现不佳。此外,许多自适应模型采用缓慢变化的参数,并且需要持续激励,而这些要求通常无法得到保证。本文研究了基于非模型的估计,这是摩擦估计的一种替代方法。在这种方法中,已知的机器刚体动力学和运动测量用于提取作用在系统上的未知外力。考虑了三种非基于模型的摩擦估计方法。这些包括经典的卡尔曼滤波器,以及另外两种最新方法,即预测滤波器和局部函数估计。本文还融合了基于模型的方法和基于非模型的方法,从而导致了两种组合摩擦估计方法的发展。为了比较基于模型的方法,基于非模型的方法和组合方法的性能,通过在直流电动机驱动的惯性中的位置跟踪过程中应用摩擦消除来实验性地进行详尽的比较研究。还通过在具有柔性齿轮齿的齿轮驱动惯性中摩擦消除的数值模拟来进行比较研究和鲁棒性研究。结果表明,与基于模型的方法相比,基于非模型的摩擦和组合式摩擦消除具有出色的性能和出色的鲁棒性。对于所考虑的三种非基于模型的摩擦消除方法,已经证明了直流电动机定位系统的闭环稳定性。

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