Adaptive Input Shaper Design for Unknown Second-Order Systems with Real-Time Parameter Estimation
Nyi Nyi Aung, Bradley Wight, Adrian Stein

TL;DR
This paper introduces an adaptive input shaper with real-time parameter estimation for unknown second-order systems, enabling precise control without prior system knowledge, suitable for vibration suppression in motion control.
Contribution
It presents a novel adaptive input shaping method that estimates system parameters online, eliminating the need for prior knowledge and improving control accuracy in unknown systems.
Findings
Effective in simulation for vibration suppression
Handles missed initial switching instants
Adapts to system parameter variations
Abstract
We propose a feedforward input-shaping framework with online parameter estimation for unknown second-order systems. The proposed approach eliminates the need for prior knowledge of system parameters when designing input shaping for precise switching times by incorporating online estimation for a black-box system. The adaptive input shaping scheme accounts for the system's periodic switching behavior and enables reference shaping even when initial switching instants are missed. The proposed framework is evaluated in simulation and is intended for vibration suppression in motion control applications such as gantry cranes and 3D printer headers.
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Taxonomy
TopicsDynamics and Control of Mechanical Systems · Iterative Learning Control Systems · Control Systems in Engineering
