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Main Authors: Yang, Weiyi, Li, Shuai, Luo, Xin
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2408.12126
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author Yang, Weiyi
Li, Shuai
Luo, Xin
author_facet Yang, Weiyi
Li, Shuai
Luo, Xin
contents With the rapid development of industry, the vibration control of flexible structures and underactuated systems has been increasingly gaining attention. Input shaping technology enables stable performance for high-speed motion in industrial motion systems. However, existing input shapers generally suffer from the ineffective control performance due to the neglect of observation errors. To address this critical issue, this paper proposes an Extended Kalman Filter-incorporated Residual Neural Network-based input Shaping (ERS) model for vibration control. Its main ideas are two-fold: a) adopting an extended Kalman filter to address a vertical flexible beam's model errors; and b) adopting a residual neural network to cascade with the extended Kalman filter for eliminating the remaining observation errors. Detailed experiments on a real dataset collected from a vertical flexible beam demonstrate that the proposed ERS model has achieved significant vibration control performance over several state-of-the-art models.
format Preprint
id arxiv_https___arxiv_org_abs_2408_12126
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Robust Input Shaping Vibration Control via Extended Kalman Filter-Incorporated Residual Neural Network
Yang, Weiyi
Li, Shuai
Luo, Xin
Systems and Control
With the rapid development of industry, the vibration control of flexible structures and underactuated systems has been increasingly gaining attention. Input shaping technology enables stable performance for high-speed motion in industrial motion systems. However, existing input shapers generally suffer from the ineffective control performance due to the neglect of observation errors. To address this critical issue, this paper proposes an Extended Kalman Filter-incorporated Residual Neural Network-based input Shaping (ERS) model for vibration control. Its main ideas are two-fold: a) adopting an extended Kalman filter to address a vertical flexible beam's model errors; and b) adopting a residual neural network to cascade with the extended Kalman filter for eliminating the remaining observation errors. Detailed experiments on a real dataset collected from a vertical flexible beam demonstrate that the proposed ERS model has achieved significant vibration control performance over several state-of-the-art models.
title Robust Input Shaping Vibration Control via Extended Kalman Filter-Incorporated Residual Neural Network
topic Systems and Control
url https://arxiv.org/abs/2408.12126