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ANFIS controller for an Active Magnetic Bearing system

机译:用于有源磁轴承系统的ANFIS控制器

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This paper proposes an intelligent control method for positioning an Active Magnetic Bearing (AMB) system, using the emerging approaches of the Fuzzy Logic Controller (FLC) and Adaptive Neuro-Fuzzy Inference System (ANFIS). An AMB system depends on control of the air gap between the stator and the rotor. In practice, no precise mathematical model can be established because the rotor displacement in this AMB system are inherently unstable and the relationship between the current and electromagnetic force is highly nonlinear. Fuzzy logic has emerged as a mathematical tool to deal with the uncertainties in human perception and reasoning. It also provides a framework for applying approximate human reasoning capabilities to knowledge-based systems. Additionally, ANFIS has emerged as an intelligent controller with learning and adaptive capabilities. Recently, these two fields have been integrated into the emergent field of fuzzy neural networks. In the method that is developed herein, the control model uses Takagi-Sugeno fuzzy logic, in which the back-propagation algorithm processes information from neural networks to adjust suitably the parameters of the fuzzy controller, and the output control signal tracks the input signal. This method can be applied to improve the control performance of nonlinear systems. The output signal responses transient performance of systems using a fuzzy-neural network that must be trained through a learning process to yield suitable membership functions and weightings. The results of a simulation of the AMB system indicated that the system responds with satisfactory control performance without overshoot, with a zero-error steady-state, and a rise time of 0.12±0.02 seconds. The proposed controller can be feasibly applied to AMB systems with various external disturbances, and the effectiveness of the ANFIS with self-learning and self-improving capacities is proven.
机译:本文采用了一种使用模糊逻辑控制器(FLC)和自适应神经模糊推理系统(ANFIS)的新出现方法定位有源磁轴承(AMB)系统的智能控制方法。 AMB系统取决于控制定子和转子之间的气隙。在实践中,由于该AMB系统中的转子位移是固有的不稳定的,因此不能建立精确的数学模型,并且电流与电磁力之间的关系是高度非线性的。模糊逻辑已成为处理人类感知和推理中的不确定性的数学工具。它还提供了一个框架,用于将近似的人工推理能力应用于基于知识的系统。此外,ANFIS已成为具有学习和自适应功能的智能控制器。最近,这两个领域已被整合到模糊神经网络的紧急领域。在本文开发的方法中,控制模型使用Takagi-Sugeno模糊逻辑,其中回波传播算法从神经网络处理信息以适当地调整模糊控制器的参数,并且输出控制信号跟踪输入信号。该方法可以应用于提高非线性系统的控制性能。输出信号使用模糊神经网络响应系统的瞬态性能,这些模糊神经网络必须通过学习过程训练,从而产生合适的隶属函数和权重。 AMB系统的模拟结果表明,系统响应了令人满意的控制性能而没有过冲,零误差稳态,上升时间为0.12± 0.02秒。所提出的控制器可以对具有各种外部干扰的AMB系统可行应用,并且证明了ANFIS具有自学和自我提高能力的有效性。

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