Tao Ran, Shan Tao, Zhou Siyong, Wang Yue. Analyzing Undersampled Signals Using High Order Ambiguity Function Algorithm[J]. JOURNAL OF BEIJING INSTITUTE OF TECHNOLOGY, 1999, 8(2): 175-180.
Citation:
Tao Ran, Shan Tao, Zhou Siyong, Wang Yue. Analyzing Undersampled Signals Using High Order Ambiguity Function Algorithm[J].JOURNAL OF BEIJING INSTITUTE OF TECHNOLOGY, 1999, 8(2): 175-180.
Tao Ran, Shan Tao, Zhou Siyong, Wang Yue. Analyzing Undersampled Signals Using High Order Ambiguity Function Algorithm[J]. JOURNAL OF BEIJING INSTITUTE OF TECHNOLOGY, 1999, 8(2): 175-180.
Citation:
Tao Ran, Shan Tao, Zhou Siyong, Wang Yue. Analyzing Undersampled Signals Using High Order Ambiguity Function Algorithm[J].JOURNAL OF BEIJING INSTITUTE OF TECHNOLOGY, 1999, 8(2): 175-180.
Aim To find an effective and fast algorithm to analyze undersampled signals. Methods The advantage of high order ambiguity function(HAF) algorithm is that it can analyze polynomial phase signals by phase rank reduction. In this paper, it was first used to analyze the parameters of undersampled signals. When some conditions are satisfied, the problem of frequency confusion can be solved. Results and Conclusion As an example, we analyze undersampled linear frequency modulated signal. The simulation results verify the effectiveness of HAF algorithm. Compared with time frequency distribution, HAF algorithm reduces computation burden to a great extent, needs weak boundary conditions and doesn't have boundary effect.