2021
DOI: 10.1109/tcst.2020.2975138
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Model-Predictive Control With Inverse Statics Optimization for Tensegrity Spine Robots

Abstract: Robots with flexible spines based on tensegrity structures have potential advantages over traditional designs with rigid torsos. However, these robots can be difficult to control due to their high-dimensional nonlinear dynamics. To overcome these issues, this work presents two controllers for tensegrity spine robots, using model-predictive control (MPC), and demonstrates the first closed-loop control of such structures. The first of the two controllers is formulated using only state tracking with smoothing con… Show more

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Cited by 29 publications
(9 citation statements)
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“…Most importantly, future work can incorporate these models as part of predictive control or planning algorithms for positioning of untethered soft limbs. Dynamics models are needed for advanced techniques such as model predictive control for soft robots ( Sabelhaus et al, 2021 ), which demonstrate advantages in robustness and safety over model-free approaches. Whether robot designs include the proposed temperature sensor, or simply use PWM duty cycle in the neural network, our results imply that predictions are possible.…”
Section: Discussionmentioning
confidence: 99%
“…Most importantly, future work can incorporate these models as part of predictive control or planning algorithms for positioning of untethered soft limbs. Dynamics models are needed for advanced techniques such as model predictive control for soft robots ( Sabelhaus et al, 2021 ), which demonstrate advantages in robustness and safety over model-free approaches. Whether robot designs include the proposed temperature sensor, or simply use PWM duty cycle in the neural network, our results imply that predictions are possible.…”
Section: Discussionmentioning
confidence: 99%
“…Moreover, the many advantages of tensegrity have also attracted researchers to find new ways to design soft robotics, i.e., six-bar tensegrity robot (Booth et al, 2020;K. Wang et al, 2020), robotic spine (Sabelhaus et al, 2020), morphing wings (M. , robotic fish (B. Chen & Jiang, 2019), debris capturing robot (Feng et al, 2021). The statics and dynamics analysis of tensegrity structures is essential to get insight into the structure properties.…”
Section: Motivation and Introductionmentioning
confidence: 99%
“…Trajectory optimization offers two distinct benefits in comparison to feedback without pre-planned trajectories [15]. First, an optimized trajectory verifies dynamic feasibility of a motion a-priori, a common requirement and significant challenge for many state-feedback techniques (such as modelpredictive control [16]) in soft and flexible robots. Second, trajectory optimization allows for creating feasible trajectories for different goals: for example, minimum energy expenditure versus minimum time [15].…”
Section: Introductionmentioning
confidence: 99%