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Industrial robotic systems with fuzzy logic controller and neural network

机译:具有模糊逻辑控制器和神经网络的工业机器人系统

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Generally, when we control the robot, we should calculate exact inverse kinematics. However, inverse kinematics calculation is complex and it takes much time for the manipulator to control in real time. Therefore, the calculation of inverse kinematics can result in a significant control delay in real time. We present a method in which inverse kinematics can be calculated through fuzzy logic mapping, based on an exact solution through fuzzy reasoning instead of inverse kinematics calculation. Also, the result provides sufficient precision and transient tracking error can be controlled based on a fuzzy adaptive scheme. We also demonstrate that neural networks can be used effectively for the control of a nonlinear dynamic system with uncertain or unknown dynamics models and applied to the control robot. The advantage of using the neural approach over the conventional inverse kinematics algorithms is that neural networks can avoid time consuming calculations. We represent a good control efficiency through simulation of a 2-DOF manipulator by fuzzy logic controller, and demonstrate the effectiveness of the proposed learning scheme using feedforward neural networks, too.
机译:通常,当我们控制机器人时,我们应该计算精确的逆运动学。但是,逆运动学计算很复杂,并且机械手要花费大量时间进行实时控制。因此,逆运动学的计算会导致实时中明显的控制延迟。我们提出了一种通过模糊逻辑映射来计算逆运动学的方法,它基于通过模糊推理而不是逆运动学计算的精确解决方案。而且,结果提供了足够的精度,并且可以基于模糊自适应方案来控制瞬态跟踪误差。我们还证明了神经网络可以有效地用于控制具有不确定或未知动力学模型的非线性动力学系统,并将其应用于控制机器人。与传统的逆运动学算法相比,使用神经方法的优势在于神经网络可以避免耗时的计算。通过用模糊逻辑控制器对2自由度机械臂进行仿真,我们表现出了良好的控制效率,并且还利用前馈神经网络演示了所提出的学习方案的有效性。

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