4.6 Article

Magnetic Anomaly Detection Based on a Compound Tri-Stable Stochastic Resonance System

Journal

SENSORS
Volume 23, Issue 22, Pages -

Publisher

MDPI
DOI: 10.3390/s23229293

Keywords

magnetic anomaly detection; stochastic resonance; compound tri-stable; signal-to-noise ratio

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A new compound tri-stable stochastic resonance model is proposed in this paper, which improves the performance of weak signal detection by optimizing system parameters. Experimental results show that the detection probability of this model approaches 80%, and it also retains information about relative motion.
In the case of strong background noise, a tri-stable stochastic resonance model has higher noise utilization than a bi-stable stochastic resonance (BSR) model for weak signal detection. However, the problem of severe system parameter coupling in a conventional tri-stable stochastic resonance model leads to difficulty in potential function regulation. In this paper, a new compound tri-stable stochastic resonance (CTSR) model is proposed to address this problem by combining a Gaussian Potential model and the mixed bi-stable model. The weak magnetic anomaly signal detection system consists of the CTSR system and judgment system based on statistical analysis. The system parameters are adjusted by using a quantum genetic algorithm (QGA) to optimize the output signal-to-noise ratio (SNR). The experimental results show that the CTSR system performs better than the traditional tri-stable stochastic resonance (TTSR) system and BSR system. When the input SNR is -8 dB, the detection probability of the CTSR system approaches 80%. Moreover, this detection system not only detects the magnetic anomaly signal but also retains information on the relative motion (heading) of the ferromagnetic target and the magnetic detection device.

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