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Identification of a golf swing robot using soft computing approach

机译:使用软计算方法识别高尔夫挥杆机器人

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Golf swing robots have been recently developed in an attempt to simulate the ultra high-speed swing motions of golfers. Accurate identification of a golf swing robot is an important and challenging research topic, which has been regarded as a fundamental basis in the motion analysis and control of the robots. But there have been few studies conducted on the golf swing robot identification, and comparative analyses using different kinds of soft computing methodologies have not been found in the literature. This paper investigates the identification of a golf swing robot based on four kinds of soft computing methods, including feedforward neural networks (FFNN), dynamic recurrent neural networks (DRNN), fuzzy neural networks (FNN) and dynamic recurrent fuzzy neural networks (DRFNN). The performance comparison is evaluated based on three sets of swing trajectory data with different boundary conditions. The sensitivity of the results to the changes in system structure and learning rate is also investigated. The results suggest that both FNN and DRFNN can be used as a soft computing method to identify a golf robot more accurately than FFNN and DRNN, which can be used in the motion control of the robot.
机译:最近开发了高尔夫挥杆机器人,以尝试模拟高尔夫球手的超高速挥杆动作。高尔夫挥杆机器人的准确识别是一个重要而具有挑战性的研究课题,已被认为是机器人运动分析和控制的基础。但是,关于高尔夫挥杆机器人识别的研究很少,在文献中还没有发现使用各种软计算方法进行的比较分析。本文研究了基于前馈神经网络(FFNN),动态递归神经网络(DRNN),模糊神经网络(FNN)和动态递归模糊神经网络(DRFNN)四种软计算方法的高尔夫挥杆机器人的识别。 。基于具有不同边界条件的三组回转轨迹数据评估性能比较。还研究了结果对系统结构和学习率变化的敏感性。结果表明,与可用于机器人运动控制的FFNN和DRNN相比,FNN和DRFNN均可作为一种软计算方法来更准确地识别高尔夫机器人。

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