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Design optimization of a spatial six degree-of-freedom parallel manipulator based on artificial intelligence approaches

机译:基于人工智能方法的空间六自由度并联机械手设计优化

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摘要

Optimizing the system stiffness and dexterity of parallel manipulators by adjusting the geometrical parameters can be a difficult and time-consuming endeavor, especially when the variables are diverse and the objective functions are excessively complex. However, optimization techniques that are based on artificial intelligence approaches can be an effective solution for addressing this issue. Accordingly, this paper describes the implementation of genetic algorithms and artificial neural networks as an intelligent optimization tool for the dimensional synthesis of the spatial six degree-of-freedom (DOF) parallel manipulator. The objective functions of system stiffness and dexterity are derived according to kinematic analysis of the parallel mechanism. In particular, the neural network-based standard backpropagation learning algorithm and the Levenberg-Marquardt algorithm are utilized to approximate the analytical solutions of system stiffness and dexterity. Subsequently, genetic algorithms are derived from the objective functions described by the trained neural networks, which model various performance solutions. The multi-objective optimization (MOO) of performance indices is established by searching the Pareto-optimal frontier sets in the solution space. Consequently, the effectiveness of this method is validated by simulation.
机译:通过调整几何参数来优化并联机械手的系统刚度和灵活性可能是一项困难且耗时的工作,尤其是当变量多样且目标函数过于复杂时。但是,基于人工智能方法的优化技术可能是解决此问题的有效解决方案。因此,本文将遗传算法和人工神经网络的实现描述为用于空间六自由度(DOF)并联操纵器尺寸合成的智能优化工具。通过对并联机构进行运动学分析,得出系统刚度和敏捷度的目标函数。特别是,使用基于神经网络的标准反向传播学习算法和Levenberg-Marquardt算法来近似系统刚度和灵活性的解析解。随后,从训练有素的神经网络描述的目标函数中导出遗传算法,该模型对各种性能解决方案进行建模。通过在解空间中搜索Pareto最优边界集,可以建立性能指标的多目标优化(MOO)。因此,通过仿真验证了该方法的有效性。

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