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Design and implement of the recurrent radial basis function neural network control for brushless DC motor

机译:无刷直流电动机经常性径向基函数神经网络控制的设计与实现

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In this paper, intelligent PID neural network (IPIDNN) controller based on a recurrent radial basis function neural network (RRBFNN) for brushless dc motor (BLDCM) speed control is proposed. First, the dynamic model of BLDCM system is derived. Then, the PID controller with online tuning using an RRBFNN is proposed to control the BLDCM for improving speed tracking response. The parameter learning of RRBFNN is based on the supervised gradient descent method, using a delta adaptation law. Moreover, all the control algorithms are implemented in a TMS320F28069 DSP-based control computer. Finally, it is validated that the proposed controller accomplishes the advanced control performance, with low overshoot and reduced improved transient and compared to the conventional PID method in the presence of parameter uncertainties.
机译:在本文中,提出了基于用于无刷直流电机(BLDCM)速度控制的经常性径向基函数神经网络(RRBFNN)的智能PID神经网络(IPIDNN)控制器。首先,派生了BLDCM系统的动态模型。然后,提出了使用RRBFNN在线调谐的PID控制器来控制BLDCM以提高速度跟踪响应。 RRBFNN的参数学习基于使用Delta适应法的监督梯度下降方法。此外,所有控制算法都在TMS320F28069 DSP的控制计算机中实现。最后,验证了所提出的控制器实现先进的控制性能,低过冲和降低的瞬态,并与传统的PID方法相比,在参数不确定性的存在下。

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