针对S变换的滤波方法受到窗函数固定的限制,对信号的滤波不能达到良好效果,广义S变换时频滤波克服了传统S变换滤波因子不能随时间、频率变化而变化的缺陷.将信号用广义S变换方法变换到时频域,对不同时间内不同频率的噪声部分冲零,再将去噪后的信号利用广义S反变换到时间域,获得所需要的有效信号.通过理论计算和信号模型仿真表明,广义S变换时频滤波方法能够较为精确的分析数据的时间和频率特征,有效滤除不同时段不同频率的噪声,可以最大化的保留原始信息.该方法具有较高的实用性和灵活性.%S-transform filtering methods are restricted because window function is fixed, as a result, a satisfactory effect of filtering can not be obtained from actual data. Time-frequency filtering with Generalized S-transform overcomes the shortage that the filtering factors in traditional S-transform filtering and denoising approaches will not change with time and frequency variation. Signal data are transformed to time-frequency domain by using the Generalized S-transformation methods, then, the noises at different time intervals and with different frequencies are zeroed partly. Finally, the signal data after noise elimination are transformed into time domain again by using Generalized S-inversetransformation to achieve the effective signals needed. Based on theoretical and real signal model simulation, it is believed that Generalized S-transform is really effective method eliminating noises at different time intervals and with different frequencies. Generalized S-transformcould reserve the primary information maximally and accurately analyze the characteristics of the data in time-frequency domain. This method possesses adjustable time-frequency resolution with higher practicability and adaptability than other filtering methods.
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