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Data-driven control for SISO feedback linearizable systems with unknown control gain

机译:用于SISO反馈的数据驱动控制,具有未知控制增益的线性系统

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In this paper we consider the problem of controlling an unknown system without making use of prior data or training. By relying on a feedback linearizability assumption we show how, based on prior ideas by Fliess and co-workers on model-free control, it is possible to accomplish such objective. The key idea is to learn a model that is only valid at the current state and re-learn this model as time progresses. Since this requires learning two real numbers rather than functions, it results in an approach quite different from: 1) deep learning since it requires no prior data neither large amounts of data; 2) reinforcement learning since it converges much faster and does not suffer from the curse of dimensionality.
机译:在本文中,我们考虑控制未知系统而不利用先前的数据或培训的问题。通过依靠反馈线性化的假设,我们展示了如何根据先前的想法通过Fliess和Full Workers在无模型控制上,可以实现这种目标。关键的想法是学习仅在当前状态下有效的模型,并随着时间的推移重新学习此模型。由于这需要学习两个实数而不是函数,因此它会导致一个完全不同的方法:1)深度学习,因为它不需要既有大量数据; 2)加强学习,因为它收敛得多,并且不会遭受维度的诅咒。

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