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Prescribed-Time Stabilization Robust to Measurement Disturbances.

2022 American Control Conference (ACC)(2022)

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摘要
Prescribed-time stabilization employs time-varying gains that grow and multiply states that decay. Such feedback structures have unprecedented properties of regulation in user-prescribed finite time, independent of the initial condition, and with zero asymptotic gains to process right-hand side disturbances (perfect disturbance rejection), regardless of the disturbance size. However, when the state measurement is itself subject to a disturbance, the multiplication with growing gains threatens to result in unbounded control inputs. In this paper we present results—for linear systems in the controllable canonical form and for nonlinear high-dimensional Euler-Lagrange systems that describe high-degree-of-freedom robotic manipulators—which carry no such risk: the sum of the state and the measurement disturbance is still driven to zero, the input remains bounded, and a particular ISS property relative to the disturbance is guaranteed. The price we pay for such strong and fairly unexpected results is a structural condition we impose on the disturbance, which is met in practical applications that rely on accelerometer, gyroscope, or encoder measurements.
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关键词
linear systems,controllable canonical form,measurement disturbances,prescribed-time stabilization,time-varying gains,feedback structures,user-prescribed finite time,zero asymptotic gains,right-hand side disturbances,high-degree-of-freedom robotic manipulators,nonlinear high-dimensional Euler-Lagrange systems
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