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Active structural-acoustic control of interior noise in a vibro-acoustic cavity incorporating system identification

机译:振动声腔内的内部噪声的主动结构声控制,包括系统识别

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摘要

Linear quadratic Gaussian optimal control is one of the techniques used for active noise control. In practical implementation of this technique, one of the key difficulties faced is the estimation of the states of the plant. A state observer that accurately estimates these states can be used in this regard. Studies reported make use of analytically or experimentally derived models to build observers. This paper proposes a method for active noise control in the framework of active structural-acoustic control incorporating system identification for the development of the linear quadratic Gaussian controller. Kalman filter is used as a stochastic state observer of the plant states. System identification is carried out using modal testing and finite element model updating to obtain an accurate model of the plant for building up the Kalman filter. The objective of the proposed method is to actively reduce the noise inside the cavity due to disturbances acting on the cavity structure. The active control is achieved by controlling the structural vibrations by taking into account the degree of coupling between the various structural and the acoustic modes. The effectiveness of the proposed method is evaluated experimentally on a 3D rectangular box cavity with a flexible plate.
机译:线性二次高斯最优控制是用于有源噪声控制的技术之一。在这种技术的实际实施中,面临的关键困难之一是估计植物状态。在这方面可以使用准确估计这些状态的国家观察者。研究报告使用分析或实验衍生的模型来构建观察者。本文提出了一种用于积极结构声控制框架中的主动噪声控制方法,其包括用于开发线性二次高斯控制器的系统识别。卡尔曼滤波器用作植物状态的随机状态观察者。使用模态测试和有限元模型进行系统识别,以获得用于构建卡尔曼滤波器的工厂的准确模型。所提出的方法的目的是由于作用于腔结构的干扰,在腔体中主动减小腔内的噪声。通过考虑各种结构和声学模式之间的耦合程度来控制结构振动来实现主动控制。所提出的方法的有效性在用柔性板上实验在3D矩形箱腔上进行评估。

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