声学技术2024,Vol.43Issue(2) :281-286.DOI:10.16300/j.cnki.1000-3630.2024.02.018

高阶声学相对传递函数的参数化辨识

Parametric identification of high-order acoustic relative transfer function

徐赋民 张二亮 付康
声学技术2024,Vol.43Issue(2) :281-286.DOI:10.16300/j.cnki.1000-3630.2024.02.018

高阶声学相对传递函数的参数化辨识

Parametric identification of high-order acoustic relative transfer function

徐赋民 1张二亮 1付康1
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作者信息

  • 1. 郑州大学机械与动力工程学院,河南郑州 450001
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摘要

针对声学相对传递函数的模型阶次高以及辨识数据信噪比低的问题,文章运用频域系统辨识方法,建立了一种相对传递函数的高精度参数化辨识方法.首先建立变量带误差辨识框架,采用周期扫频信号作为声源激励,给出声学相对传递函数的极大似然算法.然后使用正交福赛斯(Forsythe)多项式解决高阶系统带来的雅克比矩阵条件数过高的数值问题,并建立了极大似然方法所需初始值的生成策略.最后通过仿真算例和实验测试,验证文中方法在混响声场下辨识声学相对传递函数的有效性.

Abstract

To solve the problems of high model order of acoustic relative transfer function and low signal to noise ratio of identification data,a highly accurate parametric identification method of acoustic relative transfer functions is proposed by means of frequency domain system identification.Firstly,an errors-in-variables identification framework is established,and by taking a periodic chirp signal as sound source excitation,the maximum likelihood formulation is given to estimate acoustic relative transfer functions.Then,the orthogonal Forsythe polynomial is used to solve the numerical problem of excessive number of Jacobian matrix conditions caused by high-order systems,and a strategy for generating the initial values required by the maximum likelihood method is provided.Finally,the effectiveness of the proposed method in identifying the acoustic relative transfer function under reverberant environment is verified by simulation example and experimental tests.

关键词

声学相对传递函数/变量带误差/周期扫频/极大似然/福赛斯(Forsythe)多项式

Key words

acoustic relative transfer function/errors-in-variables/periodic chirp/maximum likelihood/Forsythe polynomials

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基金项目

国家自然科学基金(61873244)

出版年

2024
声学技术
中科院声学所东海研究站,同济大学声学所,上海市声学学会,上海船舶电子设备研究所

声学技术

CSTPCDCSCD北大核心
影响因子:0.415
ISSN:1000-3630
参考文献量16
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