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Mechanical state variable estimation of drive system with elastic coupling using optimised feed-forward neural networks

机译:基于优化前馈神经网络的弹性耦合驱动系统机械状态变量估计

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摘要

The paper deals with the application of the feed-forward and cascade-forward neural networks to mechanical state variable estimation of the drive system with elastic coupling.The learning procedure of neural estimators is described and the influence of the input vector size and neural network structure to the accuracy of state variable estimation is investigated.The quality of state estimation by neural estimators of different types is tested and compared.The simple optimisation procedure is proposed.Optimised neural estimators of the torsional torque and the load machine speed are tested in the open-loop and closed-loop control structure of the drive system with elastic joint,with additional feedbacks from the shaft torque and the difference between the motor and the load speeds.It is shown that torsional vibrations of the two-mass system are damped effectively using the closed-loop control structure with additional feedbacks obtained from the developed neural estimators.The simulation results are confirmed by laboratory experiments.
机译:本文研究了前馈神经网络和级联前向神经网络在弹性耦合驱动系统机械状态变量估计中的应用。描述了神经估计器的学习过程,以及输入向量大小和神经网络结构的影响。对状态变量估计的准确性进行了研究。测试和比较了不同类型的神经估计器的状态估计的质量。提出了简单的优化程序。公开测试了扭矩和负载机器速度的优化神经估计器带有弹性接头的驱动系统的闭环和闭环控制结构,以及来自轴转矩和电动机与负载速度之间的差的附加反馈。这表明,利用质量控制可以有效地阻尼双质量系统的扭转振动。闭环控制结构以及从发达的神经估计器获得的附加反馈。 n结果通过实验室实验得到证实。

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