论文标题
带有输入延迟的采样数据系统的控制屏障功能
Control Barrier Functions for Sampled-Data Systems with Input Delays
论文作者
论文摘要
本文考虑了将理论上安全控制器转换为硬件的总体问题。具体而言,我们探讨了控制屏障功能(CBF)在采样数据系统中的应用:连续发展但其控制动作的系统是在离散时间阶段计算的。尽管该模型公式的使用少于其连续的配对,但它在实践中更准确地模拟了大多数控制系统的现实,从而使安全性更具影响力。在这种情况下,我们证明了与零订单保持控制器和状态不确定性相对于无需明确计算任何控制不变设置的稳健设置不变性。然后表明,可以利用此公式来解决该系统中的输入延迟,结果是输入中仿射的CBF约束。在实时对不稳定的Segway机器人系统的高保真模拟中证明了结果。
This paper considers the general problem of transitioning theoretically safe controllers to hardware. Concretely, we explore the application of control barrier functions (CBFs) to sampled-data systems: systems that evolve continuously but whose control actions are computed in discrete time-steps. While this model formulation is less commonly used than its continuous counterpart, it more accurately models the reality of most control systems in practice, making the safety guarantees more impactful. In this context, we prove robust set invariance with respect to zero-order hold controllers as well as state uncertainty, without the need to explicitly compute any control invariant sets. It is then shown that this formulation can be exploited to address input delays in this system, with the result being CBF constraints that are affine in the input. The results are demonstrated in a high-fidelity simulation of an unstable Segway robotic system in real-time.