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Performance of a neuro-model-based robot controller: adaptability and noise rejection

机译:基于神经模型的机器人控制器的性能:适应性和噪声抑制

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Effective control strategies for robotic manipulators usually require the on-line computation of the robot dynamic model in real time. However, the complexity of the robot dynamic model makes this difficult to achieve in practice, and multiprocessor controller architectures appear attractive for real-time implementation inside the control servo loop. Furthermore, inevitable modelling errors, changing parameter values and disturbances can compromise controller stability and performance. In this paper, the performance of a neuro-model-based controller architecture is investigated. The neural network is used to adapt to unmodelled dynamics and parameter modelling errors. Simulation of the neuro-model-based control of a one-link robot demonstrates an improved performance over standard model-based control algorithm, in the presence of modelling errors and in the presence of disturbance and noise.
机译:机器人操纵器的有效控制策略通常需要实时在线计算机器人动力学模型。但是,机器人动态模型的复杂性使得在实践中很难做到这一点,并且多处理器控制器体系结构对于控制伺服回路内部的实时实现似乎很有吸引力。此外,不可避免的建模错误,参数值的更改和干扰都会损害控制器的稳定性和性能。在本文中,研究了基于神经模型的控制器架构的性能。神经网络用于适应未建模的动力学和参数建模错误。单链机器人基于神经模型的控制的仿真表明,在存在模型错误以及干扰和噪声的情况下,其性能优于基于标准模型的控制算法。

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