Optimal task positioning in multi-robot cells, using nested meta-heuristic swarm algorithms
Academic Article
Publication Date:
2018
abstract:
Process planning of multi-robot cells is usually a manual and time consuming activity, based on trials-and-errors. A co-manipulation problem is analysed, where one robot handles the work-piece and one robot performs a task on it and a method to find the optimal pose of the work-piece is proposed. The method, based on a combination of Whale Optimization Algorithm and Ant Colony Optimization algorithm, minimize a performance index while taking into account technological and kinematics constraints. The index evaluates process accuracy considering transmission elasticity, backslashes and distance from joint limits. Numerical simulations demonstrate the method robustness and convergence.
Iris type:
01.01 Articolo in rivista
Keywords:
accuracy indexes; industrial robotics; optimization algorithms; Task placement
List of contributors:
Mutti, Stefano; Nicola, Giorgio; Pedrocchi, Nicola; Beschi, Manuel
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