A Learning Framework to inverse kinematics of high DOF redundant manipulators

•Solves inverse kinematics of redundant manipulators with high DOFs in real-time.•Selection of inverse kinematic solutions based on redundancy resolution criteria.•A proper parametrizing of some manipulator’s joints through workspace clustering. This paper proposes a learning framework for solving t...

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Veröffentlicht in:Mechanism and machine theory 2020-11, Vol.153, p.103978, Article 103978
Hauptverfasser: Jiokou Kouabon, A.G., Melingui, A., Mvogo Ahanda, J.J.B., Lakhal, O., Coelen, V., KOM, M., Merzouki, R.
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Sprache:eng
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Zusammenfassung:•Solves inverse kinematics of redundant manipulators with high DOFs in real-time.•Selection of inverse kinematic solutions based on redundancy resolution criteria.•A proper parametrizing of some manipulator’s joints through workspace clustering. This paper proposes a learning framework for solving the inverse kinematics (IK) problem of high DOF redundant manipulators. These have several possible combinations to get the end effector (EE) pose. Therefore, for a given EE pose, several joint angle vectors can be associated. However, for a given EE pose, if a set of joint angles is parameterized, the IK problem of redundant manipulators can be reduced to that of non-redundant ones, such that the closed-form analytical methods developed for non-redundant manipulators can be applied to obtain the IK solution. In this paper, some redundant manipulator’s joints are parameterized through workspace clustering and configuration space clustering of the redundant manipulator. The growing neural gas network (GNG) is used for workspace clustering while a neighborhood function (NF) is introduced in configuration space clustering. The results obtained by performing a series of simulations and experiments on redundant manipulators show the effectiveness of the proposed approach.
ISSN:0094-114X
1873-3999
DOI:10.1016/j.mechmachtheory.2020.103978