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An adaptive data detection algorithm based on intermittent chaos with strong noise background

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Abstract

In order to realize the signal detection under the condition of lower SNR, this paper introduced the adaptive phase length based on the Duffing chaotic system and verified the measured signal at the optimal excitation frequency. The existence of the target signal was judged by observing whether there are two consecutive intermittent chaos in the time domain. Then the envelope of the intermittent chaos was obtained by Hilbert transform. Finally, the exact value of envelope spectrum was obtained by using the one-and-half-dimension spectrum, which can calculate the precise value of the frequency of the signal to be measured. The experimental results showed that the proposed algorithm can achieve a lower SNR than the conventional detection. Compared with the general chaotic detection, this algorithm can realize smart self-adaptation. It is unnecessary to specify different excitation frequencies and chaotic thresholds for different frequencies to be measured. In addition to the existence of the target signal judgment, the algorithm can also achieve accurate calculation of the frequency of the signal to be measured.

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Acknowledgements

The authors acknowledge the National Natural Science Foundation of China (Grant: 11574120, U1636117), the Natural Science Foundation of Jiangsu province of china (Grant: BK20161359); The Science and Technology on Underwater Acoustic Antagonizing Laboratory, Systems Engineering Research Institute of CSSC(Grant No. MB80038); The research presented in this paper was supported by the Open Project Program of the Key Laboratory of Underwater Acoustic Signal Processing, Ministry of Education, China (UASP1503) and Six Talent Peaks project of Jiangsu Province.

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Correspondence to W. Biao.

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Biao, W., Yu, F., Yang, W. et al. An adaptive data detection algorithm based on intermittent chaos with strong noise background. Neural Comput & Applic 32, 16755–16762 (2020). https://doi.org/10.1007/s00521-018-3839-9

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  • DOI: https://doi.org/10.1007/s00521-018-3839-9

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