Redirigiendo al acceso original de articulo en 18 segundos...
Inicio  /  Algorithms  /  Vol: 16 Par: 5 (2023)  /  Artículo
ARTÍCULO
TITULO

Enhancing the Distributed Acoustic Sensors? (DAS) Performance by the Simple Noise Reduction Algorithms Sequential Application

Artem T. Turov    
Yuri A. Konstantinov    
Fedor L. Barkov    
Dmitry A. Korobko    
Igor O. Zolotovskii    
Cesar A. Lopez-Mercado and Andrei A. Fotiadi    

Resumen

Moving differential and dynamic window moving averaging are simple and well-known signal processing algorithms. However, the most common methods of obtaining sufficient signal-to-noise ratios in distributed acoustic sensing use expensive and precise equipment such as laser sources, photoreceivers, etc., and neural network postprocessing, which results in an unacceptable price of an acoustic monitoring system for potential customers. This paper presents the distributed fiber-optic acoustic sensors data processing and noise suppression techniques applied both to raw data (spatial and temporal amplitude distributions) and to spectra obtained after the Fourier transform. The performance of algorithms? individual parts in processing distributed acoustic sensor?s data obtained in laboratory conditions for an optical fiber subjected to various dynamic impact events is studied. A comparative analysis of these parts? efficiency was carried out, and for each type of impact event, the most beneficial combinations were identified. The feasibility of existing noise reduction techniques performance improvement is proposed and tested. Presented algorithms are undemanding for computation resources and provide the signal-to-noise ratio enhancement of up to 13.1 dB. Thus, they can be useful in areas requiring the distributed acoustic monitoring systems? cost reduction as maintaining acceptable performance while allowing the use of cheaper hardware.

 Artículos similares

       
 
Yu Li, Feng Ding, Weijun Tian and Jinhua Zhou    
During the milling of thin-walled blades, the removal of material exhibits strong time-varying dynamics, leading to chatter and a decrease in surface quality. To address the issue of milling vibrations in the machining of complex thin-walled blades used ... ver más
Revista: Applied Sciences

 
Yankai Lv, Haiyan Ding, Hao Wu, Yiji Zhao and Lei Zhang    
Federated learning (FL) is an emerging decentralized machine learning framework enabling private global model training by collaboratively leveraging local client data without transferring it centrally. Unlike traditional distributed optimization, FL trai... ver más
Revista: Applied Sciences

 
Eman Daraghmi, Cheng-Pu Zhang and Shyan-Ming Yuan    
The saga pattern manages transactions and maintains data consistency across distributed microservices via utilizing local sequential transactions that update each service and publish messages to trigger the next ones. Failure by one transaction causes th... ver más
Revista: Applied Sciences

 
Lili Liang, Yufeng Hu, Zhiwu Liu, Yuntao Ye, Kuang Li, Kexin Liu, Haiqing Xu and Xiquan Liu    
The lumped hydrological model and empirical model have the problems of low accuracy and short forecasting period in real-time flood forecasting of small- and medium-sized rivers in a mountainous watershed. The sharing of underlying surface data such as h... ver más
Revista: Water

 
Linjian Wu, Zhouyu Xiang, Han Jiang, Mingwei Liu, Xueli Ju and Wenxiao Zhang    
Soda residue soil (SRS) is a man-made engineering foundation soil formed by soda residue; it is mainly distributed in coastal areas in China. SRS is rich in a variety of corrosive salts, among which the concentrations of chloride ions are about 2?3 times... ver más