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Iterative learning approach to active noise control of highly autocorrelated signals with applications to machinery noise

机译:应用对机械噪声高度自相关信号的迭代学习方法

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This study describes an iterative learning approach to the active control of machinery noise with high autocorrelation properties. In contrast to typical active noise control solutions, which work by adapting the transfer function of the controller, in the iterative learning control one adapts the control signal itself. Special care was taken to develop a generic solution that can handle different sorts of secondary path models including very long and non-minimum phase finite impulse response filters. To achieve that, the authors used spectral factorisation and exploit the fact that, for non-minimum phase systems, a stable inverse can be constructed if the causality constraint is relaxed and later restored by taking advantage of the periodicity of the attenuated signal. The resulting controller can be efficiently implemented on a sample-to-sample calculation basis. The behaviour and the performance of the proposed scheme are studied using computer simulations and real-world experiments on noises from an electric transformer and functional magnetic resonance imaging device. The proposed solution was also compared to normalised feedforward filtered-X least mean squares algorithm and performed much better in terms of attenuation, convergence, and robustness.
机译:本研究描述了具有高自相关性能的机械噪声主动控制的迭代学习方法。与典型的有源噪声控制解决方案相比,通过调整控制器的传递函数的工作,在迭代学习控制中,一个适应控制信号本身。特别小心开发一种通用解决方案,可以处理不同种类的二级路径模型,包括非常长而不最小的相位有限脉冲响应滤波器。为此,作者使用光谱分子和利用的事实,即对于非最小相位系统,如果通过利用衰减信号的周期性来恢复因果关系约束并且稍后恢复稳定的逆。可以在采样到样本计算基础上有效地实现所得控制器。使用计算机模拟和实际研究来自电动变压器和功能磁共振成像装置的噪声的实际实验研究了所提出的方案的行为和性能。将所提出的解决方案与标准化的前馈滤波 - X最小均方方算法进行比较,并且在衰减,收敛和鲁棒性方面表现得更好。

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