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Identification of solenoid parameters based on fiber squeezer and neural network for Smart control

机译:基于光纤挤压器和神经网络的智能控制磁型参数识别

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Solenoids are low-cost high-speed nonlinear actuators commonly used in switching mode in many applications. However, fluctuations on the performances of solenoid are a major problem, particularly in industrial applications. These fluctuations are essentially due to changes in the spring constant, in the coefficient of friction, in the inductance and the resistance of the coil. This paper proposes a new methodology for controlling the effect of solenoid parameters variation on the PID corrector coefficients. First at all, the effect of solenoid parameters variation on the PID corrector coefficients is analyzed, Then, the algorithm based on artificial neural networks (ANN) coupled with optical fiber polarization squeezer based on solenoid for polarization scrambling is used to monitor the solenoid parameters from the coefficients of the transfer function, these coefficient are determined from the step response of the squeezer fiber. the parameters identified are used to automatically adjust the coefficients of the PID correctors. The results of the simulation show the validity for monitoring the solenoid parameters for keeping an optimized dynamic response.
机译:螺线管是在许多应用中的开关模式中使用的低成本高速非线性执行器。然而,对螺线管性能的波动是一个主要问题,特别是在工业应用中。这些波动基本上是由于弹簧常数在摩擦系数,电感和线圈的电阻中变化。本文提出了一种用于控制电磁阀参数变化对PID校正器系数的效果的新方法。首先,分析了电磁阀参数变化对PID校正器系数的效果,然后,基于基于螺线管的光纤偏振仪耦合的基于人工神经网络(ANN)的算法用于偏振加扰的光纤偏振ZHEEER来监测螺线管参数传递函数的系数,这些系数由挤压光纤的阶跃响应确定。所识别的参数用于自动调整PID校正的系数。模拟结果显示了监控螺线管参数的有效性,以保持优化的动态响应。

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