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Neural Learning Control of Strict-Feedback Systems Using Disturbance Observer

机译:基于扰动观测器的严格反馈系统的神经学习控制

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摘要

This paper studies the compound learning control of disturbed uncertain strict-feedback systems. The design is using the dynamic surface control equipped with a novel learning scheme. This paper integrates the recently developed online recorded data-based neural learning with the nonlinear disturbance observer (DOB) to achieve good "understanding" of the system uncertainty including unknown dynamics and time-varying disturbance. With the proposed method to show how the neural networks and DOB are cooperating with each other, one indicator is constructed and included into the update law. The closed-loop system stability analysis is rigorously presented. Different kinds of disturbances are considered in a third-order system as simulation examples and the results confirm that the proposed method achieves higher tracking accuracy while the compound estimation is much more precise. The design is applied to the flexible hypersonic flight dynamics and a better tracking performance is obtained.
机译:本文研究了不确定不确定严格反馈系统的复合学习控制。该设计使用的是带有新颖学习方案的动态表面控制。本文将最近开发的基于在线记录数据的神经学习与非线性扰动观测器(DOB)集成在一起,以很好地“理解”系统不确定性,包括未知动力学和时变扰动。通过提出的方法来显示神经网络和DOB如何相互配合,构造了一个指标并将其包含在更新定律中。严格介绍了闭环系统稳定性分析。在三阶系统中以不同类型的干扰作为仿真实例,结果证实了该方法具有较高的跟踪精度,而复合估计则更为精确。该设计应用于柔性高超音速飞行动力学中,并获得了更好的跟踪性能。

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