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Probabilistic Automata Model of a Soft Robot for the Planning of Manipulation Tasks | IEEE Journals & Magazine | IEEE Xplore

Probabilistic Automata Model of a Soft Robot for the Planning of Manipulation Tasks


Abstract:

Soft robots must be able to structure an automation problem into a sequence of actions that lead to a desired state, before they can fulfill a meaningful role in automati...Show More

Abstract:

Soft robots must be able to structure an automation problem into a sequence of actions that lead to a desired state, before they can fulfill a meaningful role in automation applications. This, however, can only be successful if the robot can predict the outcome of an action. The theory of rigid industrial robots is not applicable without major changes, because kinematic chains do not adequately describe the continuous deformation of the complex, often biologically inspired shapes of soft robots. Analytic solutions have not been found yet. Numerical solutions based on finite elements are slow, technically challenging, and only suitable for one specific robot. It is, however, possible to observe the outcome of an action, and use these observations to plan a sequence of actions that let the robot accomplish an automation task. In this paper, we analyze a probabilistic automaton that computes the optimal sequence of actions to bring the robot into a desired state. An earlier article explained the functioning of the method in a toy example. In this paper, we analyze if it is feasible to apply the method to a planning problem inspired by a real soft robot. We show the results and document the planning process. We identify the analog of an impulse response, although it is not closed form due to the nonparametric nature of the method.
Published in: IEEE Transactions on Automation Science and Engineering ( Volume: 14, Issue: 4, October 2017)
Page(s): 1722 - 1730
Date of Publication: 03 July 2017

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