Data-Efficient Learning Control of Continuum Robots in Constrained Environments

Research output: Journal Publications and ReviewsRGC 21 - Publication in refereed journalpeer-review

1 Scopus Citations
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Detail(s)

Original languageEnglish
Pages (from-to)984-995
Journal / PublicationIEEE Transactions on Automation Science and Engineering
Volume22
Online published19 Feb 2024
Publication statusPublished - 2025

Abstract

This research investigates learning-based control of continuum robots in constrained environments without relying on analytical models. We propose a data-efficient stochastic control strategy incorporating online model updates to achieve precise manipulation even when arbitrary robot deformations occur due to environmental interactions. A localized Gaussian process regression approach accounting for state stochasticity is first presented to approximate the forward kinematics. The learned model enables uncertainty-aware stochastic predictions via the proposed scaled unscented transform (SUT)-based method for efficient exploration. Leveraging new data, online model updates are performed in a highly sample-efficient manner. Furthermore, a probabilistic model predictive control approach integrating the learned models and chance constraints based on Chebyshev’s inequality is developed for searching an optimal control sequence. Simulations and experiments are performed to demonstrate the effectiveness of the proposed approach for controlling continuum robots in constrained environments using limited observational data. 

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Research Area(s)

  • Adaptation models, Artificial neural networks, Continuum robot, Data models, intelligent control, Jacobian matrices, Kinematics, learning control systems, Robot sensing systems, Robots, visual servoing