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Application of probabilistic assessment for optimal prediction in active noise control algorithms

机译:概率评估在有源噪声控制算法中最优预测的应用

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This study explores a modified active noise control (ANC) system using a Bayesian inference approach as a pre-processing method. The key aspect of low-frequency noise attenuation is investigated with the existing control algorithms, the conventional filtered-x least mean square (FxLMS) algorithm and a new convex structure via an FxLMS/F algorithm (C-FxLMS/F), that combine Bayesian inference with a dynamic linear model (DLM). The combination of a Bayesian approach and a DLM comprises the statistic strategy and a descriptive time series, which is conductive to raw signal pre-processing and concurrently generating a predicted signal as a reference signal. For signal processing, pretreatment enables the determination of the noise characteristics of the operating machine and its feedback to the control system. This is an important input to enable the time domain control algorithm to prevent environmental disturbance and time-delay effects. In addition, the use of active control theory mainly relies on the response time of secondary source generation. The predicted signals based on prior observational information and Bayesian inference afford an alternative to the normal costs of the secondary path, such as those associated with electro-acoustic signal conversion and computation efforts in the control algorithm. In this work, the combination of a Bayesian approach and an FxLMS algorithm is studied via a case study. To explore more applicability, the combination of a C-FxLMS/F algorithm with Bayesian inference is also investigated, and a convergence analysis is presented. The in-situ measurement data obtained from a construction site acoustic apparatus is used for analysis. The simulation results are presented via two illustrative cases. In addition, a comparison for three different signal forms under the effect of Bayesian inference is also discussed. It is found that a Bayesian inference approach based on DLM is workable in the ANC system, and the convergence performance is superior to that of an ANC system without Bayesian inference. This suggests that to implement such a system for signal control, it is better to enhance the final system performance in the time-domain field of ANC algorithms. This pre-processing system based on a characteristic strategy and having a low computational loss is needed not only to reduce the time-delay compromise, but also to prevent the sudden disturbance of the reference signal. (C) 2020 Elsevier Ltd. All rights reserved.
机译:本研究探讨了使用贝叶斯推理方法作为预处理方法的修改的主动噪声控制(ANC)系统。通过FXLMS / F算法(C-FXLMS / F),研究了现有控制算法,传统的滤波X最小均线(FXLMS)算法和新的凸面结构,研究了低频噪声衰减的关键方面。贝叶斯推动动态线性模型(DLM)。贝叶斯方法和DLM的组合包括统计策略和描述性时间序列,其导向原始信号预处理并同时产生预测信号作为参考信号。对于信号处理,预处理使得能够确定操作机器的噪声特性及其对控制系统的反馈。这是一个重要的输入,以使时域控制算法能够防止环境干扰和时间延时效应。此外,使用主动控制理论主要依赖于二次源代的响应时间。基于现有观察信息和贝叶斯推理的预测信号提供次级路径的正常成本的替代,例如与控制算法中的电声信号转换和计算工作相关的那些。在这项工作中,通过案例研究研究了贝叶斯方法和FXLMS算法的组合。为了探讨更适用性,还研究了具有贝叶斯推理的C-FXLMS / F算法的组合,并提出了收敛分析。从施工现场声学设备获得的原位测量数据用于分析。仿真结果通过两个说明性案例呈现。此外,还讨论了在贝叶斯推理的效果下对三种不同信号形式进行比较。结果发现,基于DLM的贝叶斯推理方法在ANC系统中可行,收敛性能优于贝叶斯推断的ANC系统的。这表明要实现这种系统进行信号控制,最好提高ANC算法时域字段中的最终系统性能。这种基于特征策略和具有低计算损耗的预处理系统不仅需要减少时间延迟损害,而且需要防止参考信号的突然干扰。 (c)2020 elestvier有限公司保留所有权利。

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