Stockwell Transform Based Algorithm for Processing of Digital Communication Signals to Detect Superimposed Noise Disturbances

Monika Mathur, Vivek Upadhyaya, Rahul Srivastava
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Abstract

This research work presents a method using Stockwell transform which is aimed to process the communication signals to detect noise disturbances superimposed on the signals in the communication channel or at the transmitter or the receiver stations. The communication signals with noise disturbances are simulated with the help of mathematical relations. The communication signals with noise disturbance are decomposed with the help of Stockwell Transform and S-matrix is obtained. A summing of absolute values curve is proposed and calculated by summing of absolute values of each columns of S-matrix and plotted against time. A median curve is also proposed and calculated using median of absolute values of each columns of S- matrix. Proposed maximum absolute values plot is calculated using maximum values of absolute values of each columns of S- matrix. On comparing these plots of signal having noise disturbance with corresponding plots of pure sinusoidal communication signal, superimposed noise disturbances have been detected successfully. Proposed study is performed using the MATLAB software.
基于Stockwell变换的数字通信信号处理算法检测叠加噪声干扰
本研究提出了一种利用斯托克韦尔变换对通信信号进行处理的方法,以检测叠加在通信信道或发射台或接收机信号上的噪声干扰。利用数学关系对有噪声干扰的通信信号进行了仿真。利用斯托克韦尔变换对含噪声干扰的通信信号进行分解,得到s矩阵。通过对s矩阵各列的绝对值求和,并按时间绘制绝对值求和曲线,提出了绝对值求和曲线。利用S-矩阵各列绝对值的中位数,提出并计算了中位数曲线。利用S-矩阵各列绝对值的最大值,计算出建议的最大绝对值图。将这些有噪声干扰的信号图与纯正弦通信信号的相应图进行比较,成功地检测出了叠加噪声干扰。本研究采用MATLAB软件进行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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