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Disturbance and Friction Compensations in Hard Disk Drives Using Neural Networks

机译:使用神经网络的硬盘驱动器中的干扰和摩擦补偿

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In this paper, we show that by using two adaptive neural networks (NNs), each of which is tailored for a specific task, the tracking performance of the hard-disk-drive (HDD) actuator can be significantly improved. The first NN utilizes accelerometer signal to detect external vibrations and compensates for its effect on HDD position via feedforward action. The second NN is designed to compensate for pivot friction. The appealing advantage of the NN compensators is that the design does not involve any information on the plant, sensor, disturbance dynamics, and friction model. The stability of the proposed scheme is analyzed by the Lyapunov criterion. Experimental results show that the tracking performance of the HDDs can be improved significantly with the use of the NN compensators as compared to the case without compensation.
机译:在本文中,我们表明,通过使用两个自适应神经网络(NNs)(分别针对特定任务量身定制),可以显着提高硬盘驱动器(HDD)执行器的跟踪性能。第一个NN利用加速度计信号检测外部振动,并通过前馈作用补偿其对HDD位置的影响。第二个NN用于补偿枢轴摩擦。 NN补偿器的吸引人的优势在于,该设计不包含有关设备,传感器,扰动动力学和摩擦模型的任何信息。利用Lyapunov准则分析了所提方案的稳定性。实验结果表明,与没有补偿的情况相比,使用NN补偿器可以显着提高HDD的跟踪性能。

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