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Orthonormal filters for identification in active control systems

机译:用于主动控制系统识别的正交滤波器

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Many active noise and vibration control systems require models of the control paths. When the controlled system changes slightly over time, adaptive digital filters for the identification of the models are useful. This paper aims at the investigation of a special class of adaptive digital filters: orthonormal filter banks possess the robust and simple adaptation of the widely applied finite impulse response (FIR) filters, but at a lower model order, which is important when considering implementation on embedded systems. However, the filter banks require prior knowledge about the resonance frequencies and damping of the structure. This knowledge can be supposed to be of limited precision, since in many practical systems, uncertainties in the structural parameters exist. In this work, a procedure using a number of training systems to find the fixed parameters for the filter banks is applied. The effect of uncertainties in the prior knowledge on the model error is examined both with a basic example and in an experiment. Furthermore, the possibilities to compensate for the imprecise prior knowledge by a higher filter order are investigated. Also comparisons with FIR filters are implemented in order to assess the possible advantages of the orthonormal filter banks. Numerical and experimental investigations show that significantly lower computational effort can be reached by the filter banks under certain conditions.
机译:许多有源噪声和振动控制系统都需要控制路径模型。当受控系统随时间略有变化时,自适应数字滤波器可用于模型识别。本文旨在研究一类特殊的自适应数字滤波器:正交滤波器组具有对广泛应用的有限脉冲响应(FIR)滤波器的鲁棒且简单的自适应,但是模型阶数较低,这在考虑实现时很重要。嵌入式系统。但是,滤波器组需要有关共振频率和结构阻尼的先验知识。由于在许多实际系统中存在结构参数的不确定性,因此可以认为该知识的精确度有限。在这项工作中,采用了使用大量训练系统来查找滤波器组的固定参数的过程。通过一个基本示例和一个实验来检验先验知识中不确定性对模型误差的影响。此外,研究了通过较高的滤波器阶数来补偿不精确的先验知识的可能性。还与FIR滤波器进行比较,以评估正交滤波器组的可能优势。数值和实验研究表明,在某些条件下,滤波器组可以大大降低计算量。

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