4.5 Article

Detection Fusion of Weak Signal under Chaotic Noise Based on Distributed System

期刊

JOURNAL OF SENSORS
卷 2021, 期 -, 页码 -

出版社

HINDAWI LTD
DOI: 10.1155/2021/5597841

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资金

  1. Chongqing Natural Science Foundation of China [cstc2018jcyjAX0464, cstc2019jcyj-msxmX0491]
  2. Chongqing postgraduate research and innovation project funding [clgycx 20203143]

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This paper addresses the problem of signal detection under chaotic noise in a distributed detection fusion system, proposing a new mechanism that effectively detects weak signals under chaotic noise background and outperforms local sensors with low SNR in fusion performance.
In this paper, the problem of signal detection under chaotic noise was considered in the distributed detection fusion system. The problem which is urgent and difficult has important research value. A new detection and fusion mechanism for weak signal under chaotic noise based on a distributed system is proposed. Due to the short-term predictability of chaotic signals and their sensitivity to small disturbances, observation of each local sensor is reconstructed in phase space according to the Takens delay embedding theorem. The locally weighted regression (LOWESS) model is used to fit the observation of each local sensor in the phase space. Thus, the chaotic noise is stripped out from the observation, and the fitting error without chaotic noise is regarded as the new observation of each local sensor. Based on the new observation without chaotic noise, an optimization model aiming at minimizing the Bayesian risk of the fusion center is established. Under the condition that the observations of local sensors are conditionally independent, the fusion rule and the sensor decision rules are derived. An algorithm is proposed to obtain the fusion rule and local decision rules. The simulation results show that the proposed signal detection and fusion algorithm can effectively detect weak signals under chaotic noise background. Specifically, the fusion performance is obviously better than that of local sensors with low SNR.

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