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Experimental estimation of model error bounds based on modified stochastic approximation

机译:基于修正随机逼近的模型误差范围实验估计

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摘要

A modification of the estimation algorithm stochastic approximation is presented. With assumptions to the statistical distribution of the training data it becomes possible, to estimate not only the mean value but also well directed deviating values of the data distribution. Thus, detailed error models can be identified by means of parameter-linear formulation of the new algorithm. By definition of suitable probabilities, these parametric error models are estimating soft error bounds. That way, an experimental identification method is provided that is able to support a robust controller design. The method was applied at an industrial robot, which is controlled by feedback linearisation. Based on a dynamic model realised by a neural network, the presented approach is utilised for the robust design of the stabilising decentral controllers.
机译:提出了对估计算法随机逼近的一种改进。通过对训练数据的统计分布进行假设,不仅可以估计平均值,而且可以估计数据分布的方向正确的偏离值。因此,可以通过新算法的参数线性公式确定详细的错误模型。通过定义合适的概率,这些参数误差模型正在估计软误差范围。这样,提供了一种能够支持鲁棒控制器设计的实验识别方法。该方法应用于工业机器人,该工业机器人由反馈线性化控制。基于神经网络实现的动态模型,该方法可用于稳定分散控制器的鲁棒设计。

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