TY - JOUR
T1 - Stochastic Adaptive Estimation in Polynomial Curvature Shape State Space for Continuum Robots
AU - Zhang, Guoqing
AU - Wang, Long
N1 - Publisher Copyright:
© 2004-2012 IEEE.
PY - 2026
Y1 - 2026
N2 - In continuum robotics, real-time robust shape estimation is crucial for planning and control tasks that involve physical manipulation in complex environments. In this article, we present a novel stochastic observer-based shape estimation framework designed specifically for continuum robots. The shape state space is uniquely represented by the modal coefficients of a polynomial, enabled by leveraging polynomial curvature kinematics to describe the curvature distribution along the arclength. Our framework processes noisy measurements from limited discrete position, orientation, or pose sensors to estimate the shape state robustly. We derive a novel noise-weighted observability matrix, providing a detailed assessment of observability variations under diverse sensor configurations. To overcome the limitations of a single model, our observer employs the interacting multiple model (IMM) method, coupled with extended Kalman filters, to mix polynomial curvature models of different orders. The IMM approach, rooted in Markov processes, effectively manages multiple model scenarios by dynamically adapting to different polynomial orders based on real-time model probabilities. This adaptability is key to ensuring robust shape estimation of the robot’s behaviors under various conditions. Our comprehensive analysis, supported by both simulation studies and experimental validations, confirms the robustness and accuracy of our methods.
AB - In continuum robotics, real-time robust shape estimation is crucial for planning and control tasks that involve physical manipulation in complex environments. In this article, we present a novel stochastic observer-based shape estimation framework designed specifically for continuum robots. The shape state space is uniquely represented by the modal coefficients of a polynomial, enabled by leveraging polynomial curvature kinematics to describe the curvature distribution along the arclength. Our framework processes noisy measurements from limited discrete position, orientation, or pose sensors to estimate the shape state robustly. We derive a novel noise-weighted observability matrix, providing a detailed assessment of observability variations under diverse sensor configurations. To overcome the limitations of a single model, our observer employs the interacting multiple model (IMM) method, coupled with extended Kalman filters, to mix polynomial curvature models of different orders. The IMM approach, rooted in Markov processes, effectively manages multiple model scenarios by dynamically adapting to different polynomial orders based on real-time model probabilities. This adaptability is key to ensuring robust shape estimation of the robot’s behaviors under various conditions. Our comprehensive analysis, supported by both simulation studies and experimental validations, confirms the robustness and accuracy of our methods.
KW - Continuum robots
KW - extended Kalman filter
KW - interacting multiple model
KW - observability analysis
KW - polynomial curvature kinematics
KW - shape estimation
UR - https://www.scopus.com/pages/publications/105023056028
UR - https://www.scopus.com/pages/publications/105023056028#tab=citedBy
U2 - 10.1109/TRO.2025.3637147
DO - 10.1109/TRO.2025.3637147
M3 - Article
AN - SCOPUS:105023056028
SN - 1552-3098
VL - 42
SP - 261
EP - 280
JO - IEEE Transactions on Robotics
JF - IEEE Transactions on Robotics
ER -