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Reducing the Computational Complexity of Mass-Matrix Calculation for High DOF Robots

Communication avec acte
Auteur
SAFEEA, Mohammad
164378 Faculty of Sciences and Technology [Coimbra]
NETO, Pedro
164378 Faculty of Sciences and Technology [Coimbra]
ccBEAREE, Richard
543315 Laboratoire d’Ingénierie des Systèmes Physiques et Numériques [LISPEN]

URI
http://hdl.handle.net/10985/17376
DOI
10.1109/IROS.2018.8593775
Date
2018

Résumé

Increasingly, robots have more degrees of freedom (DOF), imposing a need for calculating more complex dynamics. As a result, better efficiency in carrying out dynamics computations is becoming more important. In this study, an efficient method for computing the joint space inertia matrix (JSIM) for high DOF serially linked robots is addressed. We call this method the Geometric Dynamics Algorithm for High number of robot Joints (GDAHJ). GDAHJ is non-symbolic, preserve simple formulation, and it is convenient for numerical implementation. This is achieved by simplifying the way to recursively derive the mass-matrix exploiting the unique property of each column of the JSIM and minimizing the number of operations with O(n2) complexity. Results compare favorably with existing methods, achieving better performance over state-of-the-art by Featherstone when applied for robots with more than 13 DOF.

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Documents liés

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  • Robot dynamics: A recursive algorithm for efficient calculation of Christoffel symbols 
    Article dans une revue avec comité de lecture
    SAFEEA, Mohammad; NETO, Pedro; ccBEAREE, Richard (Elsevier, 2019)
    Christoffel symbols of the first kind are very important in robot dynamics. They are used for tuning various proposed robot controllers, for determining the bounds on Coriolis/Centrifugal matrix, for mathematical formulation ...
  • On-line collision avoidance for collaborative robot manipulators by adjusting off-line generated paths: An industrial use case 
    Article dans une revue avec comité de lecture
    SAFEEA, Mohammad; NETO, Pedro; ccBEAREE, Richard (Elsevier, 2019)
    Human–robot collision avoidance is a key in collaborative robotics and in the framework of Industry 4.0. It plays an important role for achieving safety criteria while having humans and machines working side-by-side in ...
  • Efficient Calculation of Minimum Distance Between Capsules and Its Use in Robotics 
    Article dans une revue avec comité de lecture
    SAFEEA, Mohammad; NETO, Pedro; ccBEAREE, Richard (IEEE, 2018)
    The problem of minimum distance calculation between line-segments/capsules, in 3D space, is an important subject in many engineering applications, spanning CAD design, computer graphics, simulation, and robotics. In the ...
  • Collision Avoidance of Redundant Robotic Manipulators Using Newton’s Method 
    Article dans une revue avec comité de lecture
    SAFEEA, Mohammad; NETO, Pedro; ccBEAREE, Richard (Springer Verlag, 2020)
    This study investigates the application of Newton method to the problems of collision avoidance and path planning for robotic manipulators, especially robots with high Degrees of Freedom (DOF). The proposed algorithm applies ...
  • An integrated framework for collaborative robot-assisted additive manufacturing 
    Article dans une revue avec comité de lecture
    SAFEEA, Mohammad; NETO, Pedro; ccBEAREE, Richard (Elsevier BV, 2022-09)
    Additive manufacturing (AM) is revolutionizing industry, allowing to prototype and fabricate custom-made parts with complex geometries rapidly and at an affordable cost. The use of robots to perform AM has great potentials ...

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