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Robotics and computer-integrated manufacturing, 2019-10, Vol.59, p.267-277
2019

Details

Autor(en) / Beteiligte
Titel
Static and dynamic optimization of a pose adjusting mechanism considering parameter changes during construction
Ist Teil von
  • Robotics and computer-integrated manufacturing, 2019-10, Vol.59, p.267-277
Ort / Verlag
Oxford: Elsevier Ltd
Erscheinungsjahr
2019
Link zum Volltext
Quelle
Elsevier ScienceDirect Journals Complete
Beschreibungen/Notizen
  • •Stiffness and elasto-dynamic models of a pose adjusting mechanism are formulated.•From parametric models, performance indices are defined to be objectives.•Parameter changes during construction are considered in the design process.•Statistical objectives and probabilistic constraints are reformulated.•Pareto-based method is adopted to achieve compromise among multiple performances. Having potentially high stiffness and good dynamic response, a parallel pose adjusting mechanism was proposed for being an attachment to a big serial robot of a macro-micro robotic system. This paper addresses its design optimization problem mainly concerning arrangements of design variables and objectives. Parameter changes during construction are added to the design variables in order to prevent the negative effects to the physical prototype. These parameter changes are interpreted as parameter uncertainty and modeled by probabilistic theory. For the objectives, both static and dynamic performances are simultaneously optimized by Pareto-based method. The involved performance indices are instantaneous energy based stiffness index, first natural frequency and execution mass. The optimization procedure is implemented as: (1) carrying out performance modeling and defining performance indices, (2) reformulating statistical objectives and probabilistic constraints considering parameter uncertainty, (3) conducting Pareto-based optimization with the aid of response surface method (RSM) and particle swarm optimization (PSO), (4) selecting optimal solution by searching for cooperative equilibrium point (CEP). By addressing parameter uncertainty and the best compromise among multiple objectives, the presented optimization procedure provides more reliable optimal parameters that would not be affected by minor parameter changes during construction, and less biased optimum between static and dynamic performances comparing with the conventional optimization methods. The proposed optimization method can also be applied to the other similar mechanisms.

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