基于FVSS-NLMS算法的非最小相位对象正弦扰动自适应逆控制综合

Rodrigo Possidônio Noronha
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引用次数: 0

摘要

本文提出了一种基于有限脉冲响应(FIR)滤波器的自适应间接逆控制(IAIC)方法,使控制器由自适应FIR滤波器表示。FIR滤波器权向量的估计可以通过基于随机梯度下降的自适应算法来实现,因此IAIC的性能受到权向量更新性能的影响,在收敛速度和稳态均方误差(MSE)方面,从而受到自适应算法步长的影响。为了解决这一问题,本文提出了一种新的NLMS算法,该算法通过Mamdani模糊推理系统(MFIS)调整步长。在IAIC合成中对该算法进行了验证,并将其应用于控制信号中加入正弦干扰信号的非最小相位对象。
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Adaptive Inverse Control Synthesis Subject to Sinusoidal Disturbance for Non-Minimum Phase Plant via FVSS-NLMS Algorithm
In this paper, an Adaptive Indirect Inverse Control (IAIC) methodology based on the Finite Impulse Response (FIR) Filter is proposed, such that the controller is represented by an adaptive FIR Filter. The estimate of the weights vector of FIR Filter can be performed through an adaptive algorithm based on stochastic gradient descent, such that the performance of IAIC is influenced by the performance of update of the weights vector, in terms of convergence speed and steady-state Mean Square Error (MSE), that, consequently, is influenced by the step size of an adaptive algorithm. Aiming to present a proposal to solve this problem, a new version of NLMS algorithm is proposed, with the adapted step size through Mamdani Fuzzy Inference System (MFIS). The proposed algorithm was evaluated in the IAIC syhnthesis and applied in non-minimum phase plant, in the presence of a sinusoidal disturbance signal added to the control signal.
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