2022
DOI: 10.3390/s22082995
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Fast Adaptation of Manipulator Trajectories to Task Perturbation by Differentiating through the Optimal Solution

Abstract: Joint space trajectory optimization under end-effector task constraints leads to a challenging non-convex problem. Thus, a real-time adaptation of prior computed trajectories to perturbation in task constraints often becomes intractable. Existing works use the so-called warm-starting of trajectory optimization to improve computational performance. We present a fundamentally different approach that relies on deriving analytical gradients of the optimal solution with respect to the task constraint parameters. Th… Show more

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“…Srikanth et al [ 4 ] address the problem of the fast adaptation of manipulator trajectories for task perturbations. The main objective is to deal with the fact that manipulator joint space trajectory optimization under end-effector task constraints leads to a challenging non-convex problem.…”
mentioning
confidence: 99%
“…Srikanth et al [ 4 ] address the problem of the fast adaptation of manipulator trajectories for task perturbations. The main objective is to deal with the fact that manipulator joint space trajectory optimization under end-effector task constraints leads to a challenging non-convex problem.…”
mentioning
confidence: 99%